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Molecular Subtyping of Extensive Stage Small Cell Lung Cancer and Relevent Clinical Significance (MOSAIC)

P

Peking University Cancer Hospital & Institute

Status

Completed

Conditions

SCLC,Extensive Stage

Treatments

Drug: PD-(L)1 antibody immunotherapy

Study type

Observational

Funder types

Other

Identifiers

NCT05933863
2021YJZ97

Details and patient eligibility

About

To validate the predictive value of transcriptome-based molecular subtyping of extensive stage small cell lung cancer (SCLC) for the efficacy of programmed death-1(PD-1)/programmed death-ligand1(PD-L1) inhibitor in the first line setting; to explore the differences of immune microenvironment between different SCLC subtypes to reveal the mechanisms of immunotherapy resistance of SCLC

Full description

This retrospective observational study examines the predictive value of transcriptome-based molecular subtyping of extensive stage SCLC for PD-1/PD-L1 inhibitor efficacy and explores immune microenvironment differences between subtypes to uncover immunotherapy resistance mechanisms. Patients with extensive stage SCLC receiving first-line standard treatment are enrolled, and baseline tumor tissue and peripheral blood samples are collected for transcriptome sequencing and immunohistochemistry (IHC). Based on results, patients are classified into four molecular subtypes, and treatment efficacy and safety are recorded. The study compares the efficacy between SCLC subtypes to determine if molecular typing predicts immunotherapy efficacy and investigates immune microenvironment differences between subtypes to uncover resistance mechanisms. Treatment regimens follow first-line extensive stage SCLC guidelines, including cisplatin+etoposide or carboplatin+etoposide and PD-(L)1 inhibitors, with options determined by the supervising physician.

Enrollment

168 patients

Sex

All

Ages

18 to 100 years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • The enrolled subjects shall meet all the following conditions at the same time.

    1. Male or female, aged 18 to 100 years
    2. Patients with untreated advanced small cell lung cancer clearly diagnosed by histopathology
    3. Be able to provide tumor biopsy tissue sample for molecular analysis
    4. Eastern Cooperative oncology Group (ECOG) score: 0~2
    5. Expected survival of more than 3 months.
    6. Has at least 1 measurable or evaluable tumor lesion with a longest diameter ≥ 10 mm at baseline (in case of lymph nodes, a shortest diameter ≥ 15 mm is required) according to RECIST v1.1
    7. Received first-line chemotherapy or chemotherapy+PD-(L)1 inhibitor and be able to provide complete treatment information and efficacy evaluation results.
    8. Voluntary signed informed consent and expected good compliance.

Exclusion criteria

  • Those meeting any of the following conditions may not be included.

    1. Patient unable to tolerate chemotherapy.
    2. Patients unable to provide tumor tissue samples for testing
    3. Patients with other malignant tumors or a history of other malignant tumors
    4. Patients have any other reason to be unfit to participate in this study.

Trial design

168 participants in 2 patient groups

immunotherapy cohort
Description:
Extensive stage SCLC patients receiving first-line chemotherapy plus PD-(L)1 antibody treatment will be enrolled in this cohort. Baseline tumor tissue samples and peripheral blood samples will be collected for transcriptome and immunohistochemistry analysis etc.
Treatment:
Drug: PD-(L)1 antibody immunotherapy
chemotherapy cohort
Description:
Extensive stage SCLC patients receiving only first-line etoposide plus platinum chemotherapy will be enrolled in this cohort. Baseline tumor tissue samples and peripheral blood samples will be collected for transcriptome and immunohistochemistry analysis etc.

Trial documents
1

Trial contacts and locations

1

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Central trial contact

Minglei Zhuo, Physician

Data sourced from clinicaltrials.gov

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