Subtyping-based platform guides precision medicine for heavily pretreated metastatic triple-negative breast cancer: The FUTURE phase II umbrella clinical trial - PMC
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. 2023 Mar 27;33(5):389–402. doi:
10.1038/s41422-023-00795-2
Subtyping-based platform guides precision medicine for heavily pretreated metastatic triple-negative breast cancer: The FUTURE phase II umbrella clinical trial
Yin Liu
Yin Liu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Yin Liu
1,
2,
Xiu-Zhi Zhu
Xiu-Zhi Zhu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Xiu-Zhi Zhu
1,
2,
Yi Xiao
Yi Xiao
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Yi Xiao
1,
2,
Song-Yang Wu
Song-Yang Wu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Song-Yang Wu
1,
2,
Wen-Jia Zuo
Wen-Jia Zuo
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Wen-Jia Zuo
1,
Qiang Yu
Qiang Yu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Qiang Yu
1,
A-Yong Cao
A-Yong Cao
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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A-Yong Cao
1,
Jun-Jie Li
Jun-Jie Li
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Jun-Jie Li
1,
Ke-Da Yu
Ke-Da Yu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Ke-Da Yu
1,
Guang-Yu Liu
Guang-Yu Liu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Guang-Yu Liu
1,
Jiong Wu
Jiong Wu
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Jiong Wu
1,
Tao Sun
Tao Sun
Department of Medical Oncology, Cancer Hospital of China Medical University/Liaoning Cancer Hospital, Shenyang, Liaoning China
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Tao Sun
Jiu-Wei Cui
Jiu-Wei Cui
Department of Medical Oncology, First Hospital of Jilin University, Changchun, Jilin, China
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Jiu-Wei Cui
Zheng Lv
Zheng Lv
Department of Medical Oncology, First Hospital of Jilin University, Changchun, Jilin, China
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Zheng Lv
Hui-Ping Li
Hui-Ping Li
Department of Breast Oncology, Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education), Peking University Cancer Hospital & Institute, Beijing, China
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Hui-Ping Li
Xiao-Yu Zhu
Xiao-Yu Zhu
Jiangsu Hengrui Pharmaceuticals Co. Ltd, Shanghai, China
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Xiao-Yu Zhu
Yi-Zhou Jiang
Yi-Zhou Jiang
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Yi-Zhou Jiang
1,
2,
Zhong-Hua Wang
Zhong-Hua Wang
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Zhong-Hua Wang
1,
2,
Zhi-Ming Shao
Zhi-Ming Shao
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
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Zhi-Ming Shao
1,
2,
Department of Breast Surgery, Fudan University Shanghai Cancer Center, Shanghai, China
Key Laboratory of Breast Cancer in Shanghai, Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China
Department of Medical Oncology, Cancer Hospital of China Medical University/Liaoning Cancer Hospital, Shenyang, Liaoning China
Department of Medical Oncology, First Hospital of Jilin University, Changchun, Jilin, China
Department of Breast Oncology, Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education), Peking University Cancer Hospital & Institute, Beijing, China
Jiangsu Hengrui Pharmaceuticals Co. Ltd, Shanghai, China
Corresponding author.
Contributed equally.
Received 2022 Nov 13; Accepted 2023 Mar 1; Issue date 2023 May.
© The Author(s) 2023
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PMCID: PMC10156707  PMID:
36973538
Abstract
Triple-negative breast cancer (TNBC) is a heterogeneous disease and lacks effective treatment. Our previous study classified TNBCs into four subtypes with putative therapeutic targets. Here, we report the final results of FUTURE, a phase II umbrella trial designed to explore whether the subtyping-based strategy may improve the outcomes in metastatic TNBC patients. A total of 141 patients with a median of three previous lines of therapies in the metastatic setting were enrolled in seven parallel arms. Confirmed objective responses were achieved in 42 patients (29.8%; 95% confidence interval [CI], 22.4–38.1). The median values of progression-free survival and overall survival were 3.4 (95% CI: 2.7–4.2) and 10.7 (95% CI: 9.1–12.3) months, respectively. Given Bayesian predictive probability, efficacy boundaries were achieved in four arms. Furthermore, integrated genomic and clinicopathological profiling illustrated associations of clinical and genomic parameters with treatment efficacy, and the efficacy of novel antibody–drug conjugates was explored in preclinical TNBC models of subtypes for which treatment was futile. In general, the FUTURE strategy recruits patients efficiently and provides promising efficacy with manageable toxicities, outlining a direction for further clinical exploration.
Subject terms:
Breast cancer, Tumour heterogeneity, Targeted therapies
Introduction
Triple-negative breast cancer (TNBC) is pathologically defined as a subgroup of breast cancers that lacks estrogen receptor (ER), progesterone receptor (PR) and human epidermal growth factor receptor 2 (HER2) expression;
this precludes the use of targeted therapies, and the most available systemic treatment option is chemotherapy. Accounting for approximately 15% of invasive breast cancers, TNBC is associated with a high risk of early recurrence and poor patient outcome. The low response rate (5%–10%) of TNBC to standard chemotherapy in the later-line settings highlights the need for advances in therapeutic options.
In recent years, immunotherapy has emerged as a breakthrough for treating TNBC,
while PARP inhibitors have provided a significant benefit for patients carrying
BRCA
germline mutations.
10
However, these treatments are far from satisfactory for metastatic TNBC due to the lack of evidence supporting immunotherapy in later-line treatment
11
and the low prevalence of
BRCA
germline mutations.
12
Recently, sacituzumab govitecan and fam-trastuzumab deruxtecan-nxki (DS-8201a; T-DXd; tradename Enhertu [Daiichi Sankyo]), two novel antibody–drug conjugates (ADCs), have been successively granted regular approval by the U.S. Food and Drug Administration for patients with metastatic TNBC and patients with metastatic HER2-low breast cancer, respectively.
13
The identification of specific DNA alterations for available targeted therapies has also opened the door for genome-driven cancer treatment,
14
17
but only a small fraction of TNBCs have targetable mutations.
18
19
Owing to the overall poor prognosis and the complexity of molecular features of TNBC, there is an ongoing need to find effective therapeutic matches.
Studies describing targeted therapies for TNBC have laid the groundwork for precision medicine.
20
22
However, those studies mainly focused on specific targets, ignoring the intrinsic subtypes of TNBCs and limiting the enrollment of TNBC patients without druggable targets, which reduced their clinical applicability. Our previous study presented multi-omic profiling of 465 Chinese TNBCs and classified them into four subtypes, namely, luminal androgen receptor (LAR), immunomodulatory (IM), basal-like immune-suppressed (BLIS) and mesenchymal-like (MES).
18
Putative treatment options were then identified for each subtype, allowing for a broader population to achieve precision treatment. Building on that advancement, we developed an immunohistochemistry (IHC)-based classification approach, which simplified and increased the clinical utility of the subtyping system.
23
Here, we aimed to assess the efficacy and safety of molecular subtyping and genomic sequencing-guided precision therapy for heavily pretreated metastatic TNBC. Our study recruited metastatic TNBC patients who were resistant to the most common chemotherapeutic agents used in breast cancer treatment.
In the interim analysis, the outcomes were favorable, with an objective response rate (ORR) of 29.0% for 69 enrolled patients.
24
Here, we report the final clinical efficacy (including survival data for the first time), safety profile, biomarker analysis, and exploration of optimized regimens of the Fudan University Shanghai Cancer Center TNBC umbrella (FUTURE) trial.
Results
Patient characteristics
Between October 18, 2018, and February 11, 2022, 141 patients were enrolled (Fig.
). All patients were heavily pretreated (median of 3 previous lines of antitumor regimens in the metastatic setting [range, 1–8]), and most of them had received taxane (99.3%), anthracycline (92.9%), platinum (93.6%), vinorelbine (80.9%), capecitabine (87.9%) and gemcitabine (70.2%). The baseline characteristics are summarized in Table
. The presence of germline
BRCA1/2
mutations and the expression of PD-L1 are shown in Supplementary information, Table
S1
, Table
S2
, respectively. The median age was 50 years (range, 23–74). Seventy-one (50.4%) patients had three or more metastatic sites, 69 (48.9%) patients had lung metastasis, and 43 (30.5%) patients had liver metastasis. At the data cutoff (March 31, 2022), the median follow-up time was 18.3 months (95% CI: 16.7–19.9). Nine patients continued to receive treatment in the trial. Detailed information and reasons for discontinuation are shown in Supplementary information, Fig.
S1
Fig. 1. The FUTURE trial schema.
Open in a new tab
*Patients with heavily pretreated mTNBC were stratified into seven arms using FUSCC NGS panel testing and IHC subtyping. NGS next-generation sequencing, IHC immunohistochemistry, mTNBC metastatic triple-negative breast cancer, FUSCC Fudan University Shanghai Cancer Center, LAR luminal androgen receptor, IM immunomodulatory, BLIS basal-like immune-suppressed, MES mesenchymal-like, AR androgen receptor, PD-1 programmed cell death-1, PARPi poly ADP-ribose polymerase inhibitor, VEGF vascular endothelial growth factor, VEGFR vascular endothelial growth factor receptor, mTORi mammalian target of rapamycin inhibitor.
Table 1.
Demographic and clinical characteristics at baseline.
Characteristics
ITT (
= 141)
A (
= 4)
B (
= 20)
(n
= 46)
D (
= 10)
E (
= 46)
F (
= 6)
G (
= 9)
Age at enrollment, median (range), year
50 (23–74)
59.5 (54–65)
54 (33–74)
50.5 (29–71)
46 (29–56)
49 (28–66)
47 (34–58)
51 (23–65)
ECOG performance status
, No. of patients (%)
5 (3.5)
4 (8.7)
1 (2.2)
120 (85.1)
4 (100.0)
19 (95.0)
39 (84.8)
8 (80.0)
38 (82.6)
4 (66.7)
8 (88.9)
16 (11.3)
1 (5.0)
3 (6.5)
2 (20.0)
7 (15.2)
2 (33.3)
1 (11.1)
No. of previous therapies for metastatic disease, median (IQR)
3 (2–4)
4.5 (4–5)
3 (2–4)
3 (2–3)
3 (3–4)
3 (2–3)
2.5 (2–3)
3 (2–3)
Previous chemotherapy exposure, No. of patients (%)
Taxane
140 (99.3)
4 (100.0)
20 (100.0)
46 (100.0)
9 (90.0)
46 (100.0)
6 (100.0)
9 (100.0)
Anthracycline
131 (92.9)
4 (100.0)
18 (90.0)
44 (95.7)
9 (90.0)
44 (95.7)
5 (83.3)
7 (77.8)
Platinum
132 (93.6)
4 (100.0)
19 (95.0)
40 (87.0)
10 (100.0)
44 (95.7)
6 (100.0)
9 (100.0)
Gemcitabine
99 (70.2)
3 (75.0)
16 (80.0)
30 (65.2)
6 (60.0)
34 (73.9)
5 (83.3)
5 (55.6)
Capecitabine
124 (87.9)
4 (100.0)
19 (95.0)
37 (80.4)
8 (80.0)
41 (89.1)
6 (100.0)
9 (100.0)
Vinorelbine
114 (80.9)
3 (75.0)
16 (80.0)
35 (76.1)
9 (90.0)
39 (84.8)
6 (100.0)
6 (66.7)
No. of metastases, No. of patients (%)
21 (14.9)
7 (35.0)
5 (10.9)
1 (10.0)
5 (10.9)
2 (33.3)
1 (11.1)
49 (34.8)
2 (50.0)
4 (20.0)
19 (41.3)
2 (20.0)
16 (34.8)
2 (33.3)
4 (44.4)
≥ 3
71 (50.4)
2 (50.0)
9 (45.0)
22 (47.8)
7 (70.0)
25 (54.3)
2 (33.3)
4 (44.4)
Location of metastases, No. of patients (%)
Lymph nodes
96 (68.1)
2 (50.0)
6 (30.0)
35 (76.1)
8 (80.0)
35 (76.1)
5 (83.3)
5 (55.6)
Lung
69 (48.9)
2 (50.0)
8 (40.0)
19 (41.3)
5 (50.0)
29 (63.0)
2 (33.3)
4 (44.4)
Liver
43 (30.5)
2 (50.0)
12 (60.0)
11 (23.9)
3 (30.0)
10 (21.7)
1 (16.7)
4 (44.4)
Bone
69 (48.9)
3 (75.0)
8 (40.0)
21 (45.7)
5 (50.0)
25 (54.3)
3 (50.0)
4 (44.4)
Chest wall
51 (36.2)
1 (25.0)
7 (35.0)
15 (32.6)
5 (50.0)
20 (43.5)
1 (16.7)
2 (22.2)
Breast
32 (22.7)
1 (25.0)
4 (20.0)
12 (26.1)
4 (40.0)
7 (15.2)
1 (16.7)
3 (33.3)
Others
30 (21.3)
5 (25.0)
11 (23.9)
4 (40.0)
8 (17.4)
2 (33.3)
Duration of first-line therapy, No. of patients (%)
< 3 months
48 (34.0)
1 (25.0)
6 (30.0)
14 (30.4)
2 (20.0)
19 (41.3)
2 (33.3)
4 (44.4)
3–6 months
42 (29.8)
2 (50.0)
6 (30.0)
13 (28.3)
4 (40.0)
16 (34.8)
1 (16.7)
> 6 months
35 (24.8)
1 (25.0)
3 (15.0)
14 (30.4)
2 (20.0)
8 (17.4)
2 (33.3)
5 (55.6)
Unknown
16 (11.3)
5 (25.0)
5 (10.9)
2 (20.0)
3 (6.5)
1 (16.7)
Disease-free interval
, No. of patients (%)
< 6 months
53 (37.6)
2 (50.0)
5 (25.0)
15 (32.6)
3 (30.0)
24 (52.2)
3 (50.0)
1 (11.1)
6–12 months
17 (12.1)
1 (25.0)
5 (25.0)
5 (10.9)
5 (10.9)
1 (16.7)
> 12 months
47 (33.3)
1 (25.0)
7 (35.0)
16 (34.8)
3 (30.0)
14 (30.4)
2 (33.3)
4 (44.4)
Initially diagnosed as stage IV
24 (17.0)
3 (15.0)
10 (21.7)
4 (40.0)
3 (6.5)
4 (44.4)
Open in a new tab
ITT
Intention-to-treat,
ECOG
Eastern Cooperative Oncology Group,
IQR
interquartile range.
Scores on the ECOG scale range from 0 (no disability) to 5 (death).
Interval between the time of metastasis or relapse and the last dose of adjuvant chemotherapy or surgery (for neoadjuvant chemotherapy cases without adjuvant chemotherapy).
Primary and secondary outcomes of the whole cohort
Patients were enrolled into one of the following arms based on their TNBC subtypes and genomic features: (A) pyrotinib with capecitabine, (B) androgen receptor inhibitor backbone therapy, (C) anti-PD-1 with nab-paclitaxel, (D) PARP inhibitor backbone therapy, (E) anti-VEGF/VEGFR backbone therapy, (F) VEGFR inhibitor backbone therapy, and (G) mTOR inhibitor with nab-paclitaxel (Fig.
). A total of 112 of the 141 enrolled patients underwent at least one postbaseline assessment (Supplementary information, Fig.
S2
), and the reasons for the remaining 29 patients not undergoing postbaseline assessments are listed in Supplementary information Table
S3
. In general, an objective response (complete response [CR] and partial response [PR]) was achieved in 42 (29.8%; 95% CI: 22.4–38.1) patients (Fig.
2a, b
and Table
), with a median time to response of 1.8 months and a median duration of response of 4.9 months. At the data cutoff, nine patients had long-term responses for more than 12 (range, 13.6–19.7) months (Fig.
2c
). Disease control was achieved in 68 (48.2%; 95% CI: 39.7–56.8) patients (Fig.
2d
).
Fig. 2. Summary of the primary and secondary endpoints.
Open in a new tab
Summary of confirmed responses according to RECIST v1.1 in each arm in the ITT population.
Forest plots of the ORR and 95% CI of each arm in the ITT population.
Durability of response among 42 patients with a confirmed objective response. The dashed line is at 24 weeks of treatment.
Forest plots of the DCR and 95% CI of each arm in the ITT population.
Kaplan‒Meier analysis of PFS (
) and OS (
) in the ITT population. RECIST response evaluation criteria in solid tumors, NE not evaluated, CR complete response, PR partial response, SD stable disease, PD progressive disease, ORR objective response rate, ITT intention-to-treat, CI confidence interval, DCR disease control rate.
Table 2.
Tumor responses and survival outcomes.
Efficacy
ITT (
= 141)
A (
= 4)
B (
= 20)
C (
= 46)
D (
= 10)
E (
= 46)
F (
= 6)
G (
= 9)
CR
, No. of patients (%)
4 (2.8)
2 (4.3)
1 (10.0)
1 (2.2)
PR
, No. of patients (%)
38 (27.0)
3 (75.0)
18 (39.1)
1 (10.0)
12 (26.1)
1 (16.7)
3 (33.3)
SD, No. of patients (%)
26 (18.4)
2 (10.0)
10 (21.7)
1 (10.0)
11 (23.9)
1 (16.7)
1 (11.1)
PD, No. of patients (%)
44 (31.2)
1 (25.0)
10 (50.0)
9 (19.6)
4 (40.0)
15 (32.6)
2 (33.3)
3 (33.3)
NA
, No. of patients (%)
29 (20.6)
8 (40.0)
7 (14.3)
3 (30.0)
7 (15.2)
2 (33.3)
2 (22.2)
Objective response
No. of patients
42
20
13
Percentage of patients (95% CI)
29.8 (22.4–38.1)
75.0 (19.4–99.4)
43.5 (28.9–58.9)
20.0 (2.5–55.6)
28.3 (16.0–43.5)
16.7 (0.4–64.1)
33.3 (7.5–70.1)
Disease control
No. of patients
68
30
24
Percentage of patients (95% CI)
48.2 (39.7–56.8)
75.0 (19.4–99.4)
10.0 (1.2–31.7)
65.2 (49.8–78.6)
30.0 (6.7–65.3)
52.2 (36.9–67.1)
33.3 (4.3–77.7)
44.4 (13.7–78.8)
Median PFS (95% CI), month
3.4 (2.7–4.2)
3.4 (0–7.3)
1.9 (1.7–2.1)
4.6 (3.4–5.9)
2.0 (1.7–2.3)
3.4 (1.7–5.0)
1.2 (0–2.5)
3.0 (2.4–3.6)
Median OS (95% CI), month
10.7 (9.1–12.3)
16.7 (0–35.3)
6.1 (2.8–9.4)
16.1 (11.7–20.5)
6.2 (1.9–10.5)
10.1 (3.8–16.3)
2.7 (0–17.0)
4.5 (2.4–6.6)
Open in a new tab
ITT
Intention-to-treat,
CR
complete response,
PR
partial response,
SD
stable disease,
PD
progressive disease,
NA
not available,
CI
confidence intervals,
PFS
progression free survival,
OS
overall survival.
Confirmed responses only.
Signifies patients who discontinued therapy before the first postbaseline scan because of progressive disease or a treatment-related adverse event.
Defined as CR + PR.
Defined as CR + PR + SD.
Moreover, we formally disclosed the survival data of the FUTURE trial. The median progression-free survival (PFS) was 3.4 (95% CI: 2.7–4.2) months; the estimated probability of PFS was 26.5% (95% CI: 22.4–30.6) at 6 months and 12.4% (95% CI: 9.2–15.6) at 12 months (Fig.
2e
). At the data cutoff, 63.8% (90/141) of overall survival (OS) events were recorded. The median OS was 10.7 (95% CI: 9.1–12.3) months; the estimated probability of survival was 66.8% (95% CI: 62.7–70.9) at 6 months and 44.2% (95% CI: 39.7–48.7) at 12 months (Fig.
2f
). Detailed survival events and censoring proportions of each arm are described in Supplementary information, Table
S4
Arms achieving prespecified efficacy boundaries: A, C, E, G
According to the study design, arms A, C, E, and G reached the efficacy boundaries based on Bayesian prediction probability (see the “Bayesian prediction probability” part of the Materials and Methods section; more details in Supplementary information, Data
S1
).
25
As shown in the waterfall plot, which depicted tumor responses in patients of arms A, C, E, and G with at least one response assessment, a reduction in target lesions was achieved in 61.0% (64/105) of patients (Fig.
3a
). Examples of patients achieving objective responses are shown in Fig.
3b
Fig. 3. Tumor responses in arms that achieved prespecified efficacy boundary.
Open in a new tab
Best percent change in the sum of target lesion diameters (longest diameter for nonnodular lesions and short axis for nodal lesions) from baseline for 105 patients in arms A, C, E, G. The dashed lines at +20% and −30% indicate thresholds for progressive disease and partial response, respectively, according to RECIST v1.1. Eighty-seven patients in the 4 arms with postbaseline tumor assessments of target lesions are represented in the plot, while 18 patients without postbaseline tumor assessments of target lesions are not shown.
Examples of patients with objective responses. Yellow arrows indicate metastatic lesions. (1) A 66-year-old woman with mTNBC that progressed after 5 lines of previous treatment in the metastatic setting was identified as having the LAR subtype with an ERBB2 D769Y mutation; this patient was enrolled in arm A (December 2019). She received pyrotinib and capecitabine therapy and achieved a PR 1.6 months after the initiation of therapy. In April 2021, her intrahepatic lesions progressed. Baseline images of intrahepatic diffuse metastases and typical images of tumor regression during treatment are shown. (2) A 70-year-old woman with mTNBC that progressed after 3 lines of previous treatment in the metastatic setting was identified as having the IM subtype; this patient was enrolled in arm C (September 2019). She received anti-PD-1 therapy combined with nab-paclitaxel and achieved a PR 2.0 months after the initiation of therapy. She discontinued nab-paclitaxel and immunotherapy due to AEs in February and September 2020, respectively. She was followed up closely until March 2021, when her breast lesion had progressed. Images of the target lesion (right breast) before and during treatment are shown. (3) A 53-year-old female with mTNBC that progressed after 3 lines of previous therapy in the metastatic setting was identified as having the BLIS subtype; this patient was enrolled in arm E (October 2018). She received apatinib monotherapy and achieved a PR 1.9 months after the initiation of therapy. In September 2019, her lung metastases progressed. Computed tomography scans before and during treatment are shown. (4) A 54-year-old woman with mTNBC that progressed after 3 lines of previous treatment in the metastatic setting was identified as having the MES subtype with a PIK3CA H1047R mutation; this patient was enrolled in arm G (January 2021). She received everolimus with nab-paclitaxel therapy and achieved a PR 2.0 months after the initiation of therapy. She discontinued nab-paclitaxel chemotherapy after 10 cycles of therapy due to grade II neurotoxicity. In close follow-up, the patient’s disease remained stable for 14 months until March 2022. Images of the patient’s liver metastases before and during treatment are shown. AE adverse event, PD progressive disease, mTNBC metastatic triple-negative breast cancer, LAR luminal androgen receptor, IM immunomodulatory, BLIS basal-like immune-suppressed, MES mesenchymal-like.
Four patients who had the LAR subtype with
ERBB2
mutation identified by next-generation sequencing (NGS) were enrolled in arm A, and confirmed objective responses were achieved in 3 patients, with a median PFS of 3.4 (95% CI: 0–7.3) months and a median OS of 16.7 (95% CI: 0–35.3) months. Arm A was terminated early due to its high response rate and the low prevalence of
ERBB2
alteration.
Forty-six patients who had the IM subtype were enrolled in arm C and received camrelizumab plus nab-paclitaxel. Arm C was also terminated early as it reached the prespecified sample size (
= 46, more details in Supplementary information, Data
S1
) and tumor responses are shown in Supplementary information, Fig.
S3a
. In general, arm C achieved an ORR of 43.5% (95% CI: 28.9–58.9; Fig.
2a, b
), with a median PFS of 4.6 (95% CI: 3.4–5.9) months and a median OS of 16.1 (95% CI: 11.7–20.5) months (Supplementary information, Table
S4
). Of the 20 patients meeting confirmed objective responses, the median duration of response was 8.6 (range 1.2–19.7) months (Supplementary information, Fig.
S3b, c
).
Forty-six patients who had the BLIS subtype without germline
BRCA1/2
mutation were enrolled in arm E to receive anti-VEGF/VEGFR backbone therapy. Thirteen patients achieved confirmed objective responses, with 1 CR and 12 PRs (Supplementary information, Fig.
S3d
). The ORR was 28.3% (95% CI: 16.0–43.5; Fig.
2a, b
), with a median PFS of 3.4 (95% CI: 1.7–5.0) months and a median OS of 10.1 (95% CI: 3.8–16.3) months (Supplementary information, Table
S4
). Among the 13 patients meeting confirmed objective responses, the median duration of response was 4.2 (range 0.9–15.3) months (Supplementary information, Fig.
S3e, f
).
Nine patients who had the MES subtype with
PI3K/AKT
mutation were enrolled in arm G, and confirmed objective responses were achieved in 3 patients, with a median PFS of 3.0 (95% CI: 2.4–3.6) months and a median OS of 4.5 (95% CI: 2.4–6.6) months (Supplementary information, Table
S4
).
Arms not achieving prespecified efficacy boundaries: B, D, F
According to the study design, arms B, D, and F did not reach the efficacy boundaries (see the “Bayesian prediction probability” part of the Materials and Methods section; more details in Supplementary information, Data
S1
). Twenty patients who had the LAR subtype without
ERBB2
mutations were enrolled in arm B and received an AR inhibitor as the backbone of their treatment. Despite multiple adjustments to the combination regimen of AR inhibitors (more details in Supplementary information, Data
S1
), none of the patients achieved confirmed objective responses.
Arms D and F remained unclosed according to the study protocol until data cutoff. Ten patients who had the BLIS subtype with
BRCA
germline mutations were enrolled in arm D, and confirmed objective responses were achieved in two patients. Six patients who had the MES subtype without
PI3K/AKT
mutations were enrolled in arm F, and a confirmed objective response was achieved in only one patient. Detailed survival data for arms D and F are shown in Table
and Supplementary information, Table
S4
Safety
Safety data were consistent with the known safety profiles of relevant drugs.
24
26
No grade 5 treatment-related adverse events (TRAEs) were reported. The most common grade 3–4 adverse events (AEs) were leukopenia (15.6%), neutropenia (14.9%), anemia (12.1%), and thrombocytopenia (9.9%), while the most common grade 3–4 nonhematologic events were hypertension (5.0%) and proteinuria (2.8%). AEs of any grade occurring in more than 10% of patients and grade 3–4 AEs occurring in ≥ 1 patient are summarized in Table
. The treatment discontinuation (due to AE) rate was 8.5%, and the dose reduction and/or delay rate was 23.4%. The number of AEs of any grade and grade 3–4 occurring in each arm are shown in Supplementary information, Table
S5
Table 3.
Summary of treatment-related AEs.
AE
ITT (
= 141)
A (
= 4)
B (
= 20)
C (
= 46)
D (
= 10)
E (
= 46)
F (
= 6)
G (
= 9)
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
Any
Grade ≥ 3
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
(%)
Nausea
33 (23.4)
1 (25.0)
2 (10.0)
6 (13.0)
5 (50.0)
18 (39.1)
1 (16.7)
Anorexia
21 (14.9)
3 (2.1)
2 (50.0)
2 (4.3)
1 (2.2)
1 (10.0)
12 (26.1)
2 (4.3)
4 (66.7)
Vomiting
20 (14.2)
1 (25.0)
2 (10.0)
4 (8.7)
3 (30.0)
10 (21.7)
Diarrhea
14 (9.9)
1 (0.7)
3 (75.0)
2 (10.0)
1 (5.0)
3 (6.5)
6 (13.0)
Constipation
3 (2.1)
1 (2.2)
1 (10.0)
1 (2.2)
Dyspnea
6 (4.3)
1 (0.7)
1 (5.0)
1 (5.0)
1 (2.2)
3 (6.5)
1 (2.2)
1 (16.7)
Cough
9 (6.4)
2 (4.3)
5 (10.9)
2 (33.3)
Fatigue
40 (28.4)
1 (25.0)
3 (15.0)
12 (26.1)
1 (10.0)
19 (41.3)
2 (33.3)
2 (22.2)
Pyrexia
8 (5.7)
2 (1.4)
5 (10.9)
1 (2.2)
1 (2.2)
1 (16.7)
1 (11.1)
1 (11.1)
Weight loss
13 (9.2)
2 (50.0)
2 (4.3)
8 (17.4)
1 (11.1)
Rash
10 (7.1)
1 (0.7)
6 (13.0)
1 (2.2)
4 (8.7)
Arthralgia
6 (4.3)
1 (5.0)
2 (4.3)
1 (10.0)
2 (4.3)
Myalgia
4 (2.8)
3 (6.5)
1 (10.0)
Back pain
3 (2.1)
1 (0.7)
1 (5.0)
1 (2.2)
1 (16.7)
1 (16.7)
Mucositis
20 (14.2)
2 (50.0)
2 (10.0)
3 (6.5)
1 (10.0)
6 (13.0)
3 (50.0)
3 (33.3)
PPE
20 (14.2)
3 (2.1)
1 (25.0)
2 (4.3)
17 (37.0)
4 (8.7)
1 (16.7)
Peripheral neuropathy
34 (24.1)
1 (25.0)
3 (15.0)
20 (43.5)
9 (19.6)
1 (11.1)
Pneumonia
8 (5.7)
2 (1.4)
1 (5.0)
2 (4.3)
1 (2.2)
4 (44.4)
2 (22.2)
Hypertension
29 (20.6)
7 (5.0)
2 (4.3)
1 (10.0)
22 (47.8)
6 (13.0)
3 (50.0)
1 (16.7)
1 (11.1)
Anemia
78 (55.3)
17 (12.1)
1 (25.0)
8 (40.0)
4 (20.0)
29 (63.0)
5 (10.9)
5 (50.0)
1 (10.0)
25 (54.3)
3 (6.5)
4 (66.7)
1 (16.7)
5 (55.6)
3 (33.3)
Leukopenia
82 (58.2)
22 (15.6)
1 (25.0)
6 (30.0)
34 (74.0)
12 (26.1)
4 (40.0)
1 (10.0)
25 (54.3)
6 (13.0)
4 (66.7)
1 (16.7)
8 (88.9)
2 (22.2)
Neutropenia
51 (36.2)
21 (14.9)
1 (25.0)
3 (15.0)
1 (5.0)
23 (50.0)
11 (23.9)
3 (30.0)
2 (20.0)
15 (32.6)
4 (8.7)
4 (66.7)
2 (33.3)
2 (22.2)
1 (11.1)
Thrombocytopenia
48 (34.0)
14 (9.9)
1 (25.0)
6 (30.0)
3 (15.0)
12 (26.1)
3 (6.5)
5 (50.0)
4 (40.0)
16 (34.8)
2 (4.3)
3 (50.0)
1 (16.7)
5 (55.6)
1 (11.1)
Elevated ALT/AST
35 (24.8)
3 (2.1)
1 (25.0)
5 (25.0)
10 (21.7)
2 (4.3)
13 (28.3)
2 (4.3)
3 (50.0)
3 (33.3)
Proteinuria
21 (14.9)
4 (2.8)
1 (2.2)
16 (34.8)
4 (8.7)
5 (83.3)
1 (16.7)
Urinary occult blood
2 (1.4)
1 (0.7)
1 (10.0)
1 (10.0)
1 (16.7)
RCCEP
28 (19.9)
1 (0.7)
28 (60.9)
1 (2.2)
Hypothyroidism
6 (4.3)
1 (0.7)
4 (8.7)
1 (2.2)
2 (4.3)
Hyperglycemia
3 (2.1)
1 (0.7)
2 (4.3)
1 (2.2)
1 (2.2)
Hypokalemia
1 (0.7)
1 (0.7)
1 (25.0)
1 (25.0)
Stroke
1 (0.7)
1 (0.7)
1 (2.2)
1 (2.2)
Edema limbs
9 (6.4)
7 (15.2)
2 (4.3)
Skin ulceration
3 (2.1)
3 (2.1)
3 (6.5)
3 (6.5)
Open in a new tab
ITT
Intention-to-treat,
ALT
alanine aminotransferase,
AST
aspartate transaminase,
PPE
palmar-plantar erythrodysesthesia,
RCCEP
reactive cutaneous capillary endothelial proliferation.
Events of any grade occurring in ≥ 10% of patients or grade 3–4 events occurring ≥ 1 patient are shown. No grade 5 events occurred.
Bullous dermatitis.
Post hoc biomarker analysis
We then explored clinical features and genomic events associated with treatment response and tested the efficacy of novel ADCs in different subtypes of TNBCs to further inform precision oncology (Fig.
4a
).
Fig. 4. Potential predictive biomarkers of treatment efficacy.
Open in a new tab
A sketch map showing the subtype-based comprehensive study of FUSCC TNBC precision medicine.
Genomic landscape of refractory TNBC patients.
An exploratory forest plot of PFS in each arm and genes significantly affecting PFS are shown. Somatic mutations significantly affecting PFS were found only in arms C and E. Specific somatic mutations and unstratified hazard ratios with 95% CIs for PFS were obtained by univariate Cox hazard analysis. FUSCC Fudan University Shanghai Cancer Center, TNBC triple-negative breast cancer, LAR luminal androgen receptor, IM immunomodulatory, BLIS basal-like immunesuppressed, MES mesenchymal-like, CR complete response, PR partial response, SD stable disease, PD progressive disease, PFS progressionfree survival, HR hazard ratios, CI confidence interval, WT wild-type, MT mutation.
We first evaluated the ORR in a variety of clinical subgroups in the FUTURE trial. Patients with more than 3 different organ metastases had a significantly lower ORR (17.1% [95% CI: 7.2–32.1] vs 35.0% [95% CI: 25.7–45.2]), while those over 50 years of age at diagnosis had a higher ORR (39.4% [95% CI: 28.0–51.7] vs 20.0% [95% CI: 11.4–31.3]) (Supplementary information, Table
S6
). Genomic analysis included 129 (91.5%) patients with Fudan University Shanghai Cancer Center (FUSCC) NGS sequencing. The most prevalent somatic variations were
TP53
(78%),
PIK3CA
(25%) and
PKD1
(11%) (Fig.
4b
). High mutation frequencies were observed in the genome integrity (83%), PI3K signaling (44%) and RTK signaling (25%) pathways (Supplementary information, Fig.
S4
). We then used univariate Cox regression analyses to explore the predictive value of frequent somatic mutations (≥ 5%) for PFS in each arm. Interestingly, a reduced clinical benefit of immunotherapy (arm C) was observed in patients with
PDGFRB
UNC13D
or
TSC2
mutations; patients with
EPHB1
mutation had shorter PFS in arm E (Fig.
4c
). Additionally, we analyzed the genomic characteristics of patients treated with everolimus for
PIK3CA
mutation (B and G arms). Despite the similar
PI3KCA
mutation site (seven with H1047R and one with H1047L), the favorable outcome of everolimus was observed only in arm G (Supplementary information, Fig.
S5
), further suggesting the need for a subtyping-based precision treatment strategy.
ADCs provide great efficacy in BLIS and LAR subtypes
Considering the poor outcomes in BLIS and LAR subtype patients, we then tried to explore new treatment strategies for these patients. ADCs have shown strong antitumor activity in solid tumors, especially breast cancer.
27
For breast cancer, anti-HER2 ADCs and anti-Trop-2 ADCs are promising.
13
In our multi-omic data from a TNBC patient cohort (
= 360),
18
we observed that the expression of
ERBB2
(encoding HER2 protein) was higher in the LAR subtype than in other subtypes, both at the protein (
< 0.001, Fig.
5a
) and mRNA levels (
< 0.001, Fig.
5b
), suggesting that patients diagnosed with the TNBC LAR subtype might benefit from anti-HER2 ADCs. Interestingly, in LAR and BLIS subtype patients, the mRNA expression of
TACSTD2
(encoding Trop-2 protein) was higher than that in IM and MES subtype patients, suggesting that the LAR and BLIS subtypes might be sensitive to anti-Trop-2 ADC (
< 0.001, Fig.
5c
). Subsequently, we investigated the efficacy of these two ADCs in TNBC cell lines and patient-derived organoids (PDOs) grouped by subtype (Fig.
5d–g
; Supplementary information, Fig.
S6a
). Notably, both models showed that the LAR subtype had lower IC
50
and viability in response to anti-HER2 ADC RC48 (Fig.
5d, f
). In addition, tumors of LAR and BLIS subtypes had better responses to anti-Trop-2 ADC sacituzumab govitecan (SG) (Fig.
5e, g
). Moreover, the expression levels of HER2 and Trop-2 in the TNBC cell lines and PDOs correlated with the ADCs efficacy (Supplementary information, Figs.
S6b
S7
). Collectively, ADCs showed great efficacy in BLIS and LAR subtypes, holding promise for future design of precision strategies.
Fig. 5. Potent antitumor activity of ADCs in LAR and BLIS subtypes.
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IHC score of HER2 in TNBC molecular subtypes.
values were calculated by the chi-square test.
ERBB2
) and
TACSTD2
) mRNA expression in TNBC molecular subtypes.
values were calculated by Wilcoxon’s test and Kruskal–Wallis test.
Growth curves of different subtypes of TNBC cell lines in response to the anti-HER2 ADC RC48 (
) and the anti-Trop-2 ADC sacituzumab govitecan (
).
Viability of PDOs in response to the anti-HER2 ADC RC48 at 0.5 μg/mL (
) and the anti-Trop-2 ADC sacituzumab govitecan at 1.0 μg/mL (
).
values were calculated by two-tailed Student’s
-test. Scale bars, 100 μm. IHC immunohistochemistry, LAR luminal androgen receptor, IM immunomodulatory, BLIS basal-like immune-suppressed, MES mesenchymallike, ADC antibody‒drug conjugate, SG sacituzumab govitecan, PDO patient-derived organoid.
Discussion
In this prospective umbrella trial, we evaluated the feasibility and clinical utility of the subtyping-based precision strategy in heavily pretreated metastatic TNBC patients. Our work established a subtyping platform to navigate the precision treatment of TNBC based on the recognition of molecular characteristics instead of genomic alterations. The main purpose of this work was to highlight the superiority of the platform, not the superiority of a specific drug or regimen, as future advances in drug development could supplant the leading drugs. Notable accomplishments in this study include the following: (1) we demonstrated that TNBC subtyping combined with NGS was clinically feasible for matching and enrolling patients, with new biomarker-driven treatment arms being introduced and conducted simultaneously after previous arms reached a futility or efficacy boundary; (2) promising outcomes were confirmed in a subtype and genomic characteristics dual-directed therapeutic strategy, and these outcomes can be translated into long-term survival benefit; (3) integrated genomic and clinicopathological profiling illustrated associations of clinical and genomic parameters with treatment efficacy, and for arms with unsatisfactory response, novel ADCs were tested, providing clues for further exploration.
The FUTURE study recruited 141 TNBC patients. Unlike most umbrella trials focusing on specific therapies,
14
15
28
this study was mainly driven by molecular subtyping rather than single gene alterations. Therefore, because of treatment allocation according to molecular subtype, FUTURE allowed enrollment of more screened patients (93.4% [141/151] compared with a 10%–20% enrollment rate in most biomarker-driven studies), which was critical for mTNBC patients with limited treatment options after progression on multiple lines of chemotherapy. In addition, Bayesian predictive probability was adopted to make adequacy of sample size of each arm more flexible,
25
allowing the potential efficacy of the drug combination to be tested quickly and efficiently, especially in the arms with relatively low enrollment rates.
In addition, patients enrolled in this study were heavily pretreated and chemotherapy resistant with a short disease-free interval and duration of first-line therapy. In this study, the ORR reached nearly 30%, the median PFS reached 3.4 months, and the median OS reached 10.7 months, all of which were more favorable than the outcomes of traditional chemotherapy in the heavily pretreated patients of the TNBC population (ORR of 5%, median PFS of 1.7 months, and median OS of 6.7 months).
Among the reported 7 arms, arms A, C, E, and G reached an efficacy boundary and arm B reached a futility boundary, while the data from arms D and F were immature due to the low proportion of these 2 specific subgroups. The imbalance of patient numbers between different arms may reflect the natural distribution of TNBC molecular subtypes in the metastatic setting as arms D and F remained open during the whole recruitment.
Arms A, C, E, and G demonstrated promising outcomes. For arm C, the results for PD-1 blockade plus chemotherapy in the IM subtype showed the highest ORR reported in a prospective trial conducted with heavily pretreated metastatic TNBC patients. A highlight of arm C was the usage of CD8 to define the IM subtype and match “immune-hot” tumors, validating the initial hypothesis that we proposed.
18
Arm C achieved an ORR of 43.5%, with a median PFS of 4.6 months and a median OS of 16.1 months. In addition, the favorable response was remarkably durable, with a median duration of 8.6 months. This was also validated in the FUTURE-C-Plus trial, where the camrelizumab backbone regimen achieved a confirmed ORR of 81.3% and a median PFS of 13.6 months in the first-line treatment of CD8
advanced TNBC patients.
29
30
The subsequent randomized controlled phase III study (
NCT05134194
) is ongoing.
BLIS is characterized by high expression of the VEGF signature, which is associated with tumor angiogenesis and poor prognosis.
18
In patients with the BLIS subtype without
BRCA
germline mutation in arm E, we assessed the effect of anti-VEGF/VEGFR therapy. A confirmed ORR of nearly 30% was achieved, which was higher than previously reported results in heavily pretreated TNBC patients.
31
These findings suggested that anti-VEGF/VEGFR therapy showed preliminary efficacy in
BRCA
wild-type BLIS tumors, and it warrants further exploitation in
BRCA
-mutated patients. Bevacizumab or low-dose apatinib combined with VP-16 may be more tolerated than apatinib 500 mg.
Interestingly, arms A and G showed promising outcomes in a small sample size. In rare instances (2%–4%), patients with metastatic breast cancer have
ERBB2
mutations but are HER2-negative according to clinical guidelines.
32
In patients with LAR subtypes,
ERBB2
mutations were enriched.
18
Arm A achieved a confirmed ORR of 75% after receiving capecitabine plus pyrotinib. This arm suggested the potential of anti-HER2 therapy in tumors harboring
HER2
mutations. Similarly, the SUMMIT study demonstrated that neratinib combined with trastuzumab showed good antitumor activity in patients with
ERBB2
-mutated TNBC after previous multiline therapy, with an ORR of 33.3% and a median PFS of 6.2 months.
33
A total of 9 MES patients with
PI3K/AKT
mutations were enrolled in arm G, and 3 of them achieved confirmed PRs. Similarly, the PAKT trial and the LOTUS trial showed that the addition of the AKT inhibitor capivasertib or ipatasertib to first-line paclitaxel therapy resulted in significantly longer PFS, with more pronounced benefits in
PIK3CA/AKT1/PTEN
-altered tumors.
34
35
Conversely, IPATunity130 failed to repeat the benefit in HER2-negative patients.
36
Overall, these two arms proved the utility of FUTURE to evaluate drug activity in patients harboring rare genomic aberrations in the context of molecular subtyping.
By comparison, treatment efficacy was unsatisfactory in arms B, D, and F. For BLIS with
BRCA
germline mutation, arm D tested the efficacy of PARP inhibitors plus famitinib, but only 2 patients responded, which might be attributable to prior usage of platinum. All patients in arm D had previously undergone treatment with platinum agents, and 8 of them had progressed during platinum treatment. Such patients were deemed resistant to PARP inhibitors and were excluded from clinical trials evaluating the efficacy of PARP inhibitors.
10
Moreover, we experimentally demonstrated that anti-Trop-2 ADC had a strong inhibitory effect in the BLIS subtype, probably due to higher
TACSTD2
expression in BLIS. Hence, anti-Trop-2 ADC might be promising in the treatment of BLIS subtype patients.
37
38
Meanwhile, although previous studies suggested that the LAR subtype was enriched with Chr9p21 loss,
CDKN2A
losses/deletions
18
and somatic mutations in the PI3K signaling pathway,
39
the overall efficacy of arm B was disappointing, with no patient responding to AR inhibitors with CDK4/6 inhibitors or mTOR inhibitors and with a median PFS of 1.9 months. In a recent study, bicalutamide plus abiraterone achieved a 19% clinical benefit rate in AR-positive advanced TNBC.
40
41
This inconsistency may be due to tumor evolution and patient selection after multiline chemotherapy in our study; another possibility is that AR may only be a biomarker rather than a therapeutic target. Interestingly, we observed that the LAR subtype exhibited relatively higher
ERBB2
and
TACSTD2
expression. In vitro experiments confirmed that anti-HER2 and anti-Trop-2 ADCs had strong inhibitory effects in cell lines and organoids of LAR subtype patients. Therefore, these drugs may be promising in treating LAR subtype patients and should be tested in further studies. Finally, only six patients who had the MES subtype and no
PI3K/AKT
mutations were enrolled in arm F, which does not provide sufficient grounds for a conclusion at the current stage.
FUTURE is a pilot study designed to generate clues for clinical practice. Owing to the design of this umbrella trial, the number of patients is relatively small in some arms and unbalanced between arms, which has been discussed above. Notwithstanding the relatively limited sample size, this study offers valuable insights into tailoring and bolstering precision therapy through prospective molecular subtyping selection. Next, direct comparison with other chemotherapy approaches was not available in this trial because of its noncomparative design and the lack of accessible treatment options for the heavily pretreated patients of this population. Our randomized controlled umbrella FUTURE-SUPER trial (
NCT04395989
) is currently in progress. Finally, although PFS was not as satisfactory as sacituzumab govitecan, the primary endpoints ORR and OS were both comparable.
Likewise, as the first step in tailoring treatment contingent on molecular subtyping in metastatic TNBC, the “FUTURE” strategy may constitute a platform to test the possibility of combining novel drugs within the framework of subtyping hereafter.
Collectively, the subtyping-based and genomic sequencing-guided strategy promotes promising efficacy with manageable toxicity in patients with heavily pretreated metastatic TNBC. As a dynamic and ongoing platform for novel targeted regimens, FUTURE can enable efficient testing of potential new drug–biomarker combinations in the context of subtyping, generating clues for further validation in expansion trials.
Materials and methods
Study design and participants
FUTURE is a phase II, open-label, multicenter, umbrella trial evaluating the efficacy and safety of multiple precision treatments based on molecular subtype and tumor characteristics in patients with heavily pretreated metastatic TNBCs. Eligibility criteria included the following: (1) female patients diagnosed with metastatic breast carcinoma with an ER-negative, PR-negative, and HER2-negative phenotype (the IHC cutoff for ER/PR-negative status was less than 1% staining in nuclei, and HER2-negative status was defined as a score of 0 or 1 by IHC analysis or the absence of ERBB2 amplification by fluorescence in situ hybridization with an IHC score); (2) central pathologic examination of tumor specimens performed by the Department of Pathology at FUSCC; (3) an Eastern Cooperative Oncology Group (ECOG) performance status of 0 to 2; (4) at least one measurable lesion according to Response Evaluation Criteria In Solid Tumors (RECIST) version 1.1; and (5) adequate hematologic function, hepatic function, and renal function. Patients with uncontrolled brain metastasis were excluded from enrollment. Full eligibility criteria are provided in the study protocol in Supplementary information, Data
S1
The trial was conducted in accordance with the Declaration of Helsinki and the Good Clinical Practice guidelines of the International Conference on Harmonization. The study protocol was approved by the institutional review board and ethics committee of FUSCC. The ethics committee reference number was 1807188-16. All patients provided written informed consent to participate in this study.
Procedures
Patients who had heavily pretreated metastatic TNBCs and experienced disease progression during or following almost all standard chemotherapies (anthracycline, taxane, platinum, vinorelbine, capecitabine, and gemcitabine) were screened in four centers, including FUSCC, Beijing Cancer Hospital, Liaoning Cancer Hospital and Institute and the First Hospital of Jilin University. Tumor biopsies were obtained to allow IHC staining (AR, CD8 and FOXC1) and NGS (Supplementary information, Table
S7
23
in order to classify the tumors into four subtypes (LAR, IM, BLIS, MES),
24
and each patient was then enrolled into one of seven arms: (A) pyrotinib (HER1/HER2/HER4 inhibitor) 400 mg orally once daily continuously plus capecitabine 1000 mg/m
orally twice daily from day 1 to day 14 on a 21-day cycle for LAR subtype with
ERBB2
somatic mutation or amplification; (B) AR inhibitor (SHR3680) 240 mg orally once daily backbone therapy for LAR subtype without
ERBB2
somatic mutation or amplification; (C) anti-PD-1 antibody (SHR1210) 200 mg intravenously once every 2 weeks with nab-paclitaxel 100 mg/m
intravenously on days 1, 8, and 15 in a 28-day cycle for IM subtype; (D) PARP inhibitor (SH3162) 150 mg orally twice daily plus VEGFR inhibitor (famitinib) 20 mg orally once daily for BLIS subtype with
BRCA1/2
germline mutation; (E) anti-VEGF/VEGFR backbone therapy for BLIS subtype without
BRCA1/2
germline mutation; (F) VEGFR inhibitor (famitinib) orally once daily continuously plus etoposide (VP-16) 50 mg orally once daily from day 1 to day 14 in a 21-day cycle for MES subtype without
PI3K/AKT
mutation; (G) mTOR inhibitor (everolimus) 10 mg orally once daily continuously with nab-paclitaxel by intravenous 100 mg/m
on days 1, 8, and 15 in a 28-day cycle for MES subtype with
PI3K/AKT
mutation. Details are provided in Table 5 of Supplementary information, Data
S1
Bayesian predictive probability, sample size, and protocol modifications
Considering different degrees of enrollment efficiency and different population distributions among the treatment arms, we used the Bayesian predictive probability approach to lay out an adaptive design in the new protocol amendment (July 24, 2020). This study was originally designed to have 10–20 patients enrolled in each arm, bringing the estimated sample size to approximately 140 patients. Referring to the historical data of heavily pretreated TNBC patients after multiline chemotherapy,
42
if three or more patients in each arm reached CR or PR, then the arm would be considered to have reached the efficacy boundary. Using Bayesian predictive probability, based on the number of patients who achieved objective response (CR + PR) in real time, each arm could be terminated independently according to futility or efficacy boundaries.
43
Assuming that the reference objective response rate is p0 = 15%, the prior probability fits the beta distribution (0.05, 0.05). The final threshold value of 0.5 was adopted for the arm to achieve effectiveness, 0.1 was adopted as the threshold value for early termination due to ineffectiveness, and 0.9 was adopted as the threshold value for early termination due to effectiveness. Using Bayesian prediction probability, futility and efficacy boundaries were obtained, and the simulation results under different true values of ORR are shown in the Supplementary information, Data
S1
Due to the difficulty of enrollment and the promising efficacy observed in other arms in the interim analysis, arms A and G could be terminated early at fewer than 10 patients (more details in Supplementary information, Data
S1
). Arm C was expanded to a maximum of 41 cases based on the efficacy reported in the interim analysis. Considering a dropout rate of 10%, 46 patients needed to be enrolled.
Some modifications have been made in the new version of protocol, and we briefly summarized them as follows: (1) the sample sizes in each arm were set to be more flexible according to Bayesian prediction probability method, and the rationale behind it was explained as above, (2) CTCAE version 4.0 was updated to version 5.0, (3) bevacizumab or low dose VEGFR inhibitors have been explored due to the toxicity issues with the VEGFR inhibitors.
The study design allowed arms to be dynamic so that old arms could be eliminated when finished and new arms could be added. Notably, the investigators used FUTURE as a platform to test the safety and efficacy of potential new drug–biomarker combinations in heavily pretreated TNBC patients.
Outcomes
The primary endpoint was the ORR per investigator according to RECIST v1.1 using imaging at baseline and every two cycles until disease progression.
44
A CR or a PR was confirmed with one sequential tumor assessment at least 4 weeks later. Secondary endpoints were PFS (defined as the interval from the start of treatment to disease progression or death from any cause, whichever occurred first, or last PFS assessment for patients alive without progression), OS (first study dose until death from any cause), disease control rate (DCR, proportion of patients who experience a best response of CR or PR or stable disease ≥ 8 weeks according to RECIST version 1.1), and safety and tolerability. For PFS analysis, death before the first progressive disease (PD) assessment was computed as progressed, death between adequate assessment visits was computed as progressed, and death after more than one missed visit was censored on the date of last documented nonprogression. Treatment discontinuation for undocumented progression was censored on the date of last assessment without progression. Safety evaluations included assessments of AEs and serious AEs (SAEs), laboratory safety evaluations, vital signs, and physical examination. AEs were assessed in accordance with the National Cancer Institute Common Terminology Criteria for AEs, version 5.0. For AEs with various grades, the maximum reported grade was used in the summary table.
Biospecimen collection, quality control, and processing
Tumor and matched blood DNA were isolated from tumor samples and peripheral lymphocytes using TGuide M24 (Tiangen, Beijing, China). Absorbance at 260 nm (A260) and 280 nm (A280) was measured to estimate the purity and quantity of the total DNA by a NanoDrop 2000 spectrophotometer (Thermo Scientific, Wilmington, DE, USA). The extracted DNA was considered suitable for subsequent experiments if the A260/A280 ratio was between 1.6 and 1.9.
Sequencing using the FUSCC-BC panel
Details on the sequencing protocol have been described previously.
19
The FUSCC breast cancer (FUSCC-BC) panel was used in this study (Supplementary information, Table
S7
). Both tumor and matched blood samples were sequenced. A KAPA HyperPlus kit (Kapa Biosystems) and Illumina HiSeq X TEN platform (Illumina Inc., San Diego, CA, USA) were used during NGS sequencing. Each alteration identified by the pipeline was manually reviewed to ensure that no false positives were reported.
Genomic biomarker analysis
Somatic mutations were called from the tissue and blood BAM files using GATK4 Mutect2 with the default parameters. The VCF files were annotated using ANNOVAR. The variants and annotation results were transferred into Excel spreadsheets. Oncogenic signaling pathways were defined based on a previous study.
45
In post hoc exploratory analyses, PFS for each cohort was analyzed by tissue somatic mutation status.
19
TNBC organoid and cell line classification
TNBC organoids were subjected to IHC staining (AR, CD8 and FOXC1) for subtyping.
23
We performed hierarchical clustering to determine the TNBC subtype of common TNBC cell lines based on the similarity of expression profiles between patients and cell lines (Supplementary information, Fig.
S6a
). Patient RNA-seq data along with TNBC subtype annotations were obtained from our previous study.
18
Cell line RNA-seq data were derived from the Cancer Cell Line Encyclopedia database and the study of Gong and colleagues.
46
Cell lines with specific TNBC subtypes (according to the consistency of the FUSCC TNBC subtype and Lehmann subtype
20
) were chosen for further experiments.
Cell proliferation assay
We used the human TNBC cell lines BT-549, HCC1187, HCC1599, Hs 578 T, MDA-MB-157, MDA-MB-436, and MFM223 (from ATCC). Cell proliferation assays were performed as previously described.
47
48
Briefly, the cells of interest (1 × 10
–3 × 10
cells per well) were seeded into 96-well plates overnight in 100 μL of complete growth medium and then treated with the indicated drugs for 5 days in triplicate. Cell viability was tested using the cell counting kit-8 (CCK-8) assay (Dojindo Molecular Technologies, Japan, CK04) according to the manufacturer’s instructions.
Organoid preparation and culture
We developed a biobank for organoid storage as previously described.
46
Briefly, fresh breast cancer tissues were minced into small fragments using sterile scalpels. Tissues were digested and resuspended in 10 mL of TAC buffer, incubated for 3 min to remove red blood cells and passed through a 100 mm cell strainer (Corning). For passaging, 5 mL of harvesting solution (Trevigen, 3700-100-01) was used to digest the basement membrane extract, which was incubated on ice for 1 h. Subsequently, the organoids were centrifuged at 350×
for 5 min, washed in digestion buffer and spun down. Next, 3 mL TrypLE Express (Invitrogen) was added, and organoids were incubated at room temperature for 3 min, followed by mechanical dissociation to small cell clusters by pipetting. Organoids were passaged at a 1:2–3 dilution every 2–3 weeks.
Drug response test of TNBC organoids
Drug response testing of TNBC organoids was performed according to a previous paper.
49
For organoid drug treatment, organoids in good condition were harvested and digested into single cells. Twenty-five microliters of organoid suspension was added to a cell-repellent black surface in clear bottom 384-well plates (Greiner 781976-SIN) with 1 × 10
–3 × 10
cells per well and cultured for another 5–6 days before drug treatments. Organoids with ADCs were cultured for 2 weeks before testing for viability. Organoid cell viability was evaluated by a CellTiter-Glo 3D cell viability assay (Promega, G9683) according to the manufacturer’s instructions.
PD-L1 and Trop-2 IHC
Baseline PD-L1 expression in the FUTURE trial was assessed at a central laboratory and characterized according to the combined positive score (CPS) as reported previously.
11
CPS was defined as the ratio of PD-L1-positive cells (tumor cells, lymphocytes, and macrophages) out of the total number of tumor cells multiplied by 100. Available tumor specimens were stained for Trop-2 by IHC as reported previously.
37
50
Positivity required at least 10% of the tumor cells to be stained.
Statistical analysis
The primary efficacy analysis population was the intention-to-treat population, including all eligible patients enrolled in the study. Safety was analyzed in all patients who received at least one dose of the study medication. The ORR and DCR with 95% CI were calculated using the Clopper–Pearson method. PFS and OS with 95% CI were assessed using the Kaplan–Meier method. In post hoc exploratory analyses, PFS for each cohort was analyzed by tissue somatic mutation. The association between the HER2 IHC scores and TNBC subtypes was examined using the chi-square test and Fisher’s exact test. Two-tailed Student’s
-test, Wilcoxon’s test and Kruskal‒Wallis test were utilized to compare continuous variables where appropriate. All tests were two-sided, and
< 0.05 was regarded as statistically significant unless otherwise stated.
SPSS (version 20) and R (version 4.1.1) were used for statistical analysis. The full statistical analysis plan is available in the protocol.
Supplementary information
Data S1
(1MB, pdf)
Supplementary Figure 1
(265.3KB, pdf)
Supplementary Figure 2
(362.6KB, pdf)
Supplementary Figure 3
(418.5KB, pdf)
Supplementary Figure 4
(430.4KB, pdf)
Supplementary Figure 5
(291.8KB, pdf)
Supplementary Figure 6
(2.5MB, pdf)
Supplementary Figure 7
(268.5KB, pdf)
Supplementary Table 1
(46.6KB, pdf)
Supplementary Table 2
(89.9KB, pdf)
Supplementary Table 3
(71.3KB, pdf)
Supplementary Table 4
(92.1KB, pdf)
Supplementary Table 5
(272.8KB, pdf)
Supplementary Table 6
(135.8KB, pdf)
Supplementary Table 7
(92.5KB, pdf)
Acknowledgements
The authors would like to extend thanks to all patients, clinicians, and nurses for their efforts in this study. This work was supported by Jiangsu Hengrui Pharmaceuticals Co. Ltd. (Shanghai, China), grants from the National Key R&D Project of China (2020YFA0112304), the National Natural Science Foundation of China (91959207 and 92159301), the Shanghai Key Laboratory of Breast Cancer (12DZ2260100), the Shanghai Key Clinical Specialty of Oncology (shslczdzk02001), the Clinical Research Plan of SHDC (SHDC2020CR4002, SHDC2020CR5005), the Natural Science Foundation of Shanghai (21ZR1414700) and the SHDC Municipal Project for Developing Emerging and Frontier Technology in Shanghai Hospitals (SHDC12021103).
Author contributions
Z.-M.S., Z.-H.W., and Y.-Z.J. conceived and designed the study. Z.-M.S., Z.-H.W., and Y.-Z.J. supervised the study. Y.L., T.S., J.-W.C., Z.L., H.-P.L., and Z.-H.W. carried out the clinical trial. Y.L., X.-Z.Z. and Q.Y. acquired the data. Y.L., X.-Z.Z. did the statistical analysis. Y.L. and X.-Z.Z. analyzed and interpreted the data. Y.L., X.-Z.Z., S.-Y.W., Y.X., W.-J.Z., and Y.-Z.J. drafted the manuscript. All authors critically revised the manuscript. J.-J.L., A.-Y.C., K.-D.Y., G.-Y.L., J.W., T.S., J.-W.C., Z.L., H.-P.L., Z.-M.S., Z.-H.W., and Y.-Z.J. provided resources. Z.-M.S., Z.-H.W., Y.-Z.J., Y.L. and X.-Y.Z. obtained funding. Z.-M.S., Z.-H.W., and Y.-Z.J. have accessed and verified the data.
Competing interests
X.-Y.Z. is an employee of Jiangsu Hengrui Pharmaceuticals (formerly Jiangsu Hengrui Medicine). All other authors have no conflicts of interest to declare.
Footnotes
These authors contributed equally: Yin Liu, Xiu-Zhi Zhu, Yi Xiao, Song-Yang Wu.
Contributor Information
Yi-Zhou Jiang, Email: yizhoujiang@fudan.edu.cn.
Zhong-Hua Wang, Email: zhonghuawang95@hotmail.com.
Zhi-Ming Shao, Email: zhimingshao@fudan.edu.cn.
Supplementary information
The online version contains supplementary material available at 10.1038/s41422-023-00795-2.
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Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data S1
(1MB, pdf)
Supplementary Figure 1
(265.3KB, pdf)
Supplementary Figure 2
(362.6KB, pdf)
Supplementary Figure 3
(418.5KB, pdf)
Supplementary Figure 4
(430.4KB, pdf)
Supplementary Figure 5
(291.8KB, pdf)
Supplementary Figure 6
(2.5MB, pdf)
Supplementary Figure 7
(268.5KB, pdf)
Supplementary Table 1
(46.6KB, pdf)
Supplementary Table 2
(89.9KB, pdf)
Supplementary Table 3
(71.3KB, pdf)
Supplementary Table 4
(92.1KB, pdf)
Supplementary Table 5
(272.8KB, pdf)
Supplementary Table 6
(135.8KB, pdf)
Supplementary Table 7
(92.5KB, pdf)
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