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CT-based Radiomic Algorithm for Assisting Surgery Decision and Predicting Immunotherapy Response of NSCLC (TOP-RLC)

Sun Yat-sen University logo

Sun Yat-sen University

Status

Unknown

Conditions

Preinvasive Adenocarcinoma
Predictive Cancer Model
Lung Cancer

Treatments

Other: Radiomic Algorithm

Study type

Observational

Funder types

Other

Identifiers

NCT04452058
SYSEC-KY-KS-2019-107

Details and patient eligibility

About

The purpose of this study was to investigate whether the combined radiomic model based on radiomic features extracted from focus and perifocal area (5mm) can effectively improve prediction performance of distinguishing precancerous lesions from early-stage lung adenocarcinoma, which could assist clinical decision making for surgery indication. Besides, response and long term clinical benefit of immunotherapy of advanced NSCLC lung cancer patients could also be predicted by this strategy.

Full description

Early detection and diagnosis of pulmonary nodules is clinically significant regarding optimal treatment selection and avoidance of unnecessary surgical procedures. Deferential pathology results causes widely different prognosis after standard surgery among pulmonary precancerous lesion, atypical adenomatous hyperplasia (AAH) as well as adenocarcinoma in situ (AIS), and early stage invasive adenocarcinoma (IAC). The micro-invasion of pulmonary perifocal interstitium is difficult to identify from AIS unless pathology immunohistochemical study was implemented after operation,which may causes prolonged procedure time and inappropriate surgical decision-making. Key feature-derived variables screened from CT scans via statistics and machine learning algorithms, could form a radiomics signature for disease diagnosis, tumor staging, therapy response adn patient prognosis. The purpose of this study was to investigate whether the combined radiomic signature based on the focal and perifocal(5mm)radiomic features can effectively improve predictive performance of distinguishing precancerous lesions from early stage lung adenocarcinoma. Besides, immunotherapy response is various among patients and no more than 20% of patients could benefit from it. None reliable biomarker has been found yet expect Programmed death-ligand 1 (PD-L1) expression, the only approved biomarker for immunotherapy. However recent reports suggested that patients could benefit from immunotherapy regardless of PD-L1 positive or negative. On the contrast, radiomics has show it advantages of non-invasiveness, easy-acquired and no limitation of sampling. Therefore, we applied this strategy in prediction for the immunotherapy response of advanced NSCLC lung cancer patients receiving immune checkpoint inhibitors (ICIs), which would prevent some non-benefit patient from the adverse effect of ICIs.

Enrollment

500 estimated patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • (a) that were pathologically confirmed as precancerous lesions or Stage I lung adenocarcinoma (≤3cm)
  • (b) standard Chest CT scans with or without contrast enhancement performed <3 months before surgery;
  • (c) availability of clinical characteristics.

Exclusion criteria

  • (a) preoperative therapy (neoadjuvant chemotherapy or radiotherapy) performed,
  • (b) suffering from other tumor disease before or at the same time.
  • (c) Contain other pathological components such as squamous cell lung carcinoma (SCC) or small cell lung carcinoma (SCLC) or
  • (d) poor image quality.

Inclusion Criteria of immunotherapy cohort:

  • (a) that were diagnosed as advanced NSCLC
  • (b) Both standard Chest CT scans with contrast enhancement performed <3 months before and after first dose of immunotherapy are available;
  • (c) availability of clinical characteristics.

Exclusion Criteria of immunotherapy cohort:

  • (a) Ever receiving pulmonary operation on the same side of the lesion.
  • (b) suffering from other tumor disease before or at the same time.
  • (c) Contain other pathological components( SCLC or lymphoma) or
  • (d) poor image quality.
  • (e) incomplete clinical data.

Trial design

500 participants in 4 patient groups

Internal cohort
Description:
The internal cohort was retrospective enrolled in Guangdong Provincial People's hospital from March 1, 2015 to December 31,2019. Patients with single pulmonary lesion underwent preoperative chest CT scan and histologically confirmed precancerous lesions or early stage lung adenocarcinoma after thoracic surgery was included.
Treatment:
Other: Radiomic Algorithm
External cohort 1
Description:
The same inclusion/exclusion criteria were applied for another independent centers, Sun Yat-sen Memorial Hospital ,Guangdong Province, China, forming an external validation cohort of 73 patients
Treatment:
Other: Radiomic Algorithm
External cohort 2
Description:
The same inclusion/exclusion criteria were applied for another independent centers, Zhoushan Lung Cancer Institution, Zhejiang Province, China, forming second external validation cohort of 30 patients
Treatment:
Other: Radiomic Algorithm
Immune Cohort
Description:
The internal cohort was retrospective enrolled in Guangdong Provincial People's hospital from March 1, 2015 to May 31,2020. Patients with advanced lung cancer underwent preoperative chest CT scan and histologically confirmed NSCLC before receiving immunotherapy was included.
Treatment:
Other: Radiomic Algorithm

Trial contacts and locations

3

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Central trial contact

Haiyu Zhou, PhD; Luyu Huang

Data sourced from clinicaltrials.gov

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