The capability of deep-radiomics to predict pathological response to neoadjuvant immunochemotherapy in non–small cell lung cancer: a retrospective multicenter study
Yuanxin Ye, Yuchi Tian, Lingling Wang, Zihan Xi, Yangfan Zhang, Tong Zhou, Zhenhua Zhao, Yifeng Zheng, Xiaoyun Liang, Haitao Jiang

TL;DR
This study develops a model combining radiomics, deep learning, and clinical data to predict lung cancer patients' response to neoadjuvant immunochemotherapy.
Contribution
A novel predictive model using combined radiomics, deep learning, and clinical features for predicting pathological response in NSCLC patients.
Findings
The post-NIT radiomics model outperformed pre-NIT in predicting pathological response.
The delta1 radiomics model showed the best efficacy among tested models.
Combined model 2 achieved the highest performance with AUCs of 0.955 (training), 0.882 (internal testing), and 0.839 (external testing).
Abstract
To establish a predictive model that combines radiomics, deep learning and clinical features for predicting the pathological complete response (pCR) of non-small cell lung cancer (NSCLC) patients after neoadjuvant immunochemotherapy (NIT). We retrospectively collected patients from three centers (split into training, internal testing and external testing cohorts). In this study, tumor segmentation was performed on chest CT images before (pre-NIT) and after (post-NIT) neoadjuvant therapy. The radiomics features were extracted from pre-NIT and post-NIT images. Deep learning (DL) features were extracted from the post-NIT images. The most meaningful features were selected using the mRMR and LASSO. A logistic regression classifier was then applied to create a classification model to predict pCR or non-pCR. The predicted probabilities were referred to as the Rad-scores and Deep-scores.…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Cancer Immunotherapy and Biomarkers
