Recurrence-Free Survival Prediction for Anal Squamous Cell Carcinoma Chemoradiotherapy using Planning CT-based Radiomics Model
Shanshan Tang, Kai Wang, David Hein, Gloria Lin, Nina N. Sanford, Jing, Wang

TL;DR
This study develops a radiomics-based model from pretreatment CT scans combined with clinical data to predict recurrence-free survival in anal squamous cell carcinoma patients, outperforming models using only clinical variables.
Contribution
The paper introduces a novel radiomics-clinical combined model that improves RFS prediction accuracy for ASCC patients post-CRT using planning CT images.
Findings
Radiomics features significantly predict RFS.
Combined model outperforms clinical-only model in C-index and AUC.
Risk stratification effectively distinguishes high- and low-risk groups.
Abstract
Objectives: Approximately 30% of non-metastatic anal squamous cell carcinoma (ASCC) patients will experience recurrence after chemoradiotherapy (CRT), and currently available clinical variables are poor predictors of treatment response. We aimed to develop a model leveraging information extracted from radiation pretreatment planning CT to predict recurrence-free survival (RFS) in ASCC patients after CRT. Methods: Radiomics features were extracted from planning CT images of 96 ASCC patients. Following pre-feature selection, the optimal feature set was selected via step-forward feature selection with a multivariate Cox proportional hazard model. The RFS prediction was generated from a radiomics-clinical combined model based on an optimal feature set with five repeats of five-fold cross validation. The risk stratification ability of the proposed model was evaluated with Kaplan-Meier…
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Taxonomy
TopicsColorectal and Anal Carcinomas · Radiomics and Machine Learning in Medical Imaging · Cholangiocarcinoma and Gallbladder Cancer Studies
MethodsFeature Selection
