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Machine learning based on blood test biomarkers predicts fast progression in advanced NSCLC patients treated with immunotherapy

Authors :
Jie Yang
Jian-Guo Zhou
Benjamin Frey
Hu Ma
Haitao Wang
Markus Hecht
Rainer Fietkau
Udo Gaipl
Xiaofei Chen
Ada Hang-Heng Wong
Fangya Tan
Si-Si He
Gang Shen
Yun-Jia Wang
Wenzhao Zhong
Source :
BMJ Oncology, Vol 3, Iss 1 (2024)
Publication Year :
2024
Publisher :
BMJ Publishing Group, 2024.

Abstract

Objective Fast progression (FP) represents a desperate situation for advanced non-small cell lung cancer (NSCLC) patients undergoing immune checkpoint inhibitor therapy. We aimed to develop a predictive framework based on machine learning (ML) methods to identify FP in advanced NSCLC patients using blood test biomarkers.Methods and analysis We extracted data of 1546 atezolizumab-treated patients from four multicentre clinical trials. In this study, patients from the OAK trial were taken for model training, whereas patients from the other trials were used for independent validations. The FP prediction model was developed using 21 pretreatment blood test variables in seven ML approaches. Prediction performance was evaluated by the receiver operating characteristic (ROC) curve.Results The prevalence of FP was 7.6% (118 of 1546) in all atezolizumab-treated patients. The most important variables for the prediction model were: C reactive protein, neutrophil count, lactate dehydrogenase and alanine transaminase. The Support Vector Machine (SVM) algorithm applied to these four blood test parameters demonstrated good performance: the area under the ROC curve obtained from the training cohort (OAK), validation cohort 1 (BIRCH) and cohort 2 (merged POPLAR and FIR) were 0.908, 0.666 and 0.776, respectively. In addition, the absolute difference in median survival between the SVM-predicted FP and non-FP groups was significant in both progression-free survival and overall survival (p

Details

Language :
English
ISSN :
20230001 and 27527948
Volume :
3
Issue :
1
Database :
Directory of Open Access Journals
Journal :
BMJ Oncology
Publication Type :
Academic Journal
Accession number :
edsdoj.20e430b979254079aac5e5c334ae163c
Document Type :
article
Full Text :
https://doi.org/10.1136/bmjonc-2023-000128