A Synthetic Lethality-Focused Algorithm to Identify Therapeutic Options in Advanced Metastatic Breast Cancer (SYNTHESIS-Breast)
- Conditions
- Breast CancerBreast CarcinomaCancer of the BreastMalignant Neoplasm of Breast
- Registration Number
- NCT07067138
- Lead Sponsor
- National Cancer Institute (NCI)
- Brief Summary
Background:
Breast cancer is the most common cancer in US women. There are different types of breast cancers; some are aggressive and difficult to treat. Researchers want to know if an algorithm (ENLIGHT) can help choose approved drugs that will treat these cancers more effectively.
Objective:
To test whether ENLIGHT can find better treatments for aggressive breast cancers.
Eligibility:
People aged 18 years and older with triple-negative or endocrine therapy resistant breast cancer; the cancer must have either failed to respond to treatment or come back after treatment.
Design:
Participants will be screened. A sample of tissue taken from the tumor will be tested using ENLIGHT as well as another method (TruSight Oncology 500).
Participants will be assigned to 1 of 3 groups based on the algorithm search results:
Group 1: No drug option was recommended. Participants will continue with their standard treatment with their local doctors.
Group 2: A drug already approved for the participant's disease was recommended, but the participant has not yet received it. These results will be sent to the participant's local doctors. Participants may return to the NIH if their disease gets worse after using the suggested drugs.
Group 3: A drug approved for other uses was recommended. Participants will be treated with the recommended drugs at the NIH; their care will be managed by an NIH doctor. They will continue to receive treatment as long as the drugs are helping them. They will have follow-up visits for 2 years after treatment ends.
Participants who are not treated at the NIH will be contacted for a check on their health every 3 months for 2 years.
- Detailed Description
Background:
* While 10-20% of breast cancers diagnosed in the U.S. are "triple-negative" (TNBC), the 5-year survival rate among TNBC patients with metastatic disease at diagnosis is 12%, and median survival after recurrence is approximately 24 months, demonstrating clear need for additional therapeutic options.
* Patients with metastatic hormone-receptor positive (HR+) breast cancer who develop endocrine-refractory disease (that is, no longer responsive to combinations including endocrine therapy) also suffer from a dearth of therapeutic options beyond cytotoxic chemotherapy, with overall survival after standard of care treatment (as seen across recent trials) often less than 1 year.
* Personalized oncology strategies have the potential to identify therapies across multiple cancer types. However, such strategies (which currently use patient DNA sequencing) only select a small subgroup of candidate patients by targeting direct matches in their cancers necessitating approaches that can broaden the pool of patients who may benefit from targeted therapies.
* Recent computational approaches are able to leverage additional -omics data, such as whole-transcriptome RNA-seq, and relationships between genes, such as synthetic lethality, to better predict responses to off-label targeted therapy or immunotherapy treatments compared to single-target strategies in retrospective clinical trial data.
* This study will apply the use of one such published computational transcriptomics algorithm, ENLIGHT, to prospectively identify therapeutic options for participants with metastatic breast cancer who currently experience limited treatment options.
Objectives:
* Part A: To assess the feasibility of using the ENLIGHT algorithm to match heavily pretreated participants with metastatic breast cancer to off-label therapies
* Part B (If feasibility-run in is met): To assess the objective response rate (ORR) of participants with advanced breast cancer using treatment recommended by the computational transcriptomics algorithm ENLIGHT
Eligibility:
* Participants must have a histologically confirmed diagnosis of metastatic breast cancer.
* Participant tumor subtypes will be enrolled as follows:
* TNBC Cohort: TNBC will be defined as estrogen receptor (ER) \< 10% or progesterone receptor (PR) \<10% by immunohistochemistry (IHC).
* Endocrine-Refractory Cohort: HR+ (ER positive and/or PR positive). HR+ will be defined as ER \>=10% or PR \>= 10% by IHC.
* For both cohorts, HER2 will be considered negative if not amplified as per ASCO-CAP guidelines per IHC/FISH. Note: HER2-low status will be regarded in accordance with NCCN guidelines (in which this designation serves as a predictive marker for trastuzumab deruxtecan, but participants are otherwise not considered eligible for other HER2-directed therapies).
* Participants must have been treated with at least one line of standard systemic therapy after diagnosis of metastatic disease, have progressive disease on their current regimen, and must not be eligible for another approved/standard therapy that has been shown to improve overall survival.
* Participants with HR+ disease must be deemed refractory to endocrine therapy per their clinical team, with concordance by study team.
* Participants must have measurable disease per RECIST v1.1.
* Archival tumor (preserved via FFPE) must be available from a biopsy performed within the past 6 months, or participants will need to undergo core biopsy and have at least one amenable tumor for the procedure, to optimize reliability of ENLIGHT results.
* Age \>=18 years
Design:
* This is an exploratory study that uses the ENLIGHT algorithm (Pangea Biomed) on whole-exome RNA-seq extracted from FFPE tissue to recommend and prioritize off-label therapies for participants.
* FFPE blocks from biopsies performed locally may be submitted if obtained 6 months or less prior to study enrollment, or biopsies may be obtained at the NIH in those participants for whom archival tissue is not available and there is at least one measurable site of disease that is deemed safe to biopsy.
* All RNA-seq extraction and sequencing will be performed by the CLIA-certified Laboratory of Pathology at the Center for Cancer Research, National Cancer Institute.
* Using the ENLIGHT algorithm to recommend and prioritize possible treatment options will test utility of this algorithm, which leverages RNA-seq, to add to clinical decision support.
* While on treatment at the NIH, participants will be asked to provide both blood correlative samples and an optional post-treatment tissue biopsy at day 15 / start of cycle 2 as per their treatment protocol.
Recruitment & Eligibility
- Status
- NOT_YET_RECRUITING
- Sex
- All
- Target Recruitment
- 175
Not provided
Not provided
Study & Design
- Study Type
- INTERVENTIONAL
- Study Design
- PARALLEL
- Primary Outcome Measures
Name Time Method Part A: To assess the feasibility of using the ENLIGHT algorithm to match heavily pretreated participants with metastatic breast cancer to off-label therapies Assessed after the Reporting Visit of the 20th participant to the study, and to be completed before Part B The number of participants of the first 20 enrolled overall having a match via ENLIGHT and being assigned to Arm 3.
Part B: (If feasibility lead-in met) To assess the objective response rate (ORR) of participants with advanced breast cancer using treatment recommended by the ENLIGHT algorithm Every 2 cycles until progression of disease, completion of treatment, or 2 years after treatment initiation (whichever comes first) ORR is reported as a single endpoint measure (percentage) at time of interim analysis and at time of study completion and will be accompanied by a 95% confidence interval.
- Secondary Outcome Measures
Name Time Method To assess the ORR/duration of clinical benefit for participants undergoing an additional iteration of treatment as recommended by the ENLIGHT algorithm Every 2 cycles until progression of disease, completion of treatment, or 2 years after treatment initiation (whichever comes first) Reported using the Kaplan-Meier method along with the median duration of clinical benefit and its 95% confidence interval, separately by cohort
To determine the overall frequency of the ENLIGHT algorithm in recommending matches of targeted therapy or immunotherapy for participants who would otherwise be ineligible per existing biomarkers associated with FDA-approved, on-label treatments Every 2 cycles until progression of disease, completion of treatment, or 2 years after treatment initiation (whichever comes first) Fraction of the eligible participants who match with a treatment by ENLIGHT along with a 95% confidence interval on the fraction, separately by cohort
To assess the duration of clinical benefit for treatments recommended by the ENLIGHT algorithm Every 2 cycles until progression of disease, completion of treatment, or 2 years after treatment initiation (whichever comes first) Reported using the Kaplan-Meier method along with the median duration of clinical benefit and its 95% confidence interval, separately by cohort
To determine the specific agents for which ENLIGHT demonstrates the best predictive performance in the context of breast cancer Ongoing Frequency of patients matched to therapeutic options on study (Count of participants per unique therapy in Arm 3)
To determine extent of therapy associated toxicity burden and related outcomes for participants who are matched to a therapy through the ENLIGHT algorithm At least Day 1 of each cycle, throughout treatment, and at the end-of treatment visit; then every 3 months for up to 2 years. Frequency of adverse events (AE) per CTCAE v5.0, by type and grade of toxicity
Trial Locations
- Locations (1)
National Institutes of Health Clinical Center
🇺🇸Bethesda, Maryland, United States
National Institutes of Health Clinical Center🇺🇸Bethesda, Maryland, United StatesNational Cancer Institute Referral OfficeContact888-624-1937ncimo_referrals@mail.nih.gov