Censor-Aware Semi-Supervised Survival Time Prediction in Lung Cancer Using Clinical and Radiomics Features
Arman Gorji, Ali Fathi Jouzdani, Nima Sanati, Ren Yuan, Arman Rahmim, Mohammad R. Salmanpour

TL;DR
This study presents a censor-aware semi-supervised learning framework that integrates clinical and radiomics features from PET and CT images to improve lung cancer survival time prediction, outperforming traditional supervised methods.
Contribution
Introduces a novel censor-aware semi-supervised learning approach combining clinical and radiomics data for enhanced survival prediction in lung cancer.
Findings
SSL reduced MAE by 26.5% in PET radiomics features.
Combining CT radiomics features with SSL achieved 7.96% better MAE than supervised learning.
SSL effectively differentiated high- and low-risk patient groups with a c-index of 0.65.
Abstract
Objectives: Lung cancer poses a significant global health challenge, necessitating improved prognostic methods for personalized treatment. This study introduces a censor-aware semi-supervised learning (SSL) framework that integrates clinical and imaging data, addressing biases in traditional models handling censored data. Methods: We analyzed clinical, PET and CT data from 199 lung cancer patients from public and local data respositories, focusing on overall survival (OS) time as the primary outcome. Handcrafted (HRF) and Deep Radiomics features (DRF) were extracted after preprocessing using ViSERA software and were combined with clinical features (CF). Feature dimensions were optimized using Principal Component Analysis (PCA), followed by the application of supervised learning (SL) and SSL. SSL incorporated pseudo-labeling of censored data to improve performance. Seven regressors and…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Advanced X-ray and CT Imaging
