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Published in: Journal of Gastrointestinal Surgery 9/2023

05-07-2023 | Anal Cancer | Original Article

Estimating Risk of Locoregional Failure and Overall Survival in Anal Cancer Following Chemoradiation: A Machine Learning Approach

Authors: Kevin A. Chen, Paolo Goffredo, David Hu, Chinmaya U. Joisa, Jose G. Guillem, Shawn M. Gomez, Muneera R. Kapadia

Published in: Journal of Gastrointestinal Surgery | Issue 9/2023

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Abstract

Background

Optimal treatment of anal squamous cell carcinoma (ASCC) is definitive chemoradiation. Patients with persistent or recurrent disease require abdominoperineal resection (APR). Current models for predicting need for APR and overall survival are limited by low accuracy or small datasets. This study sought to use machine learning (ML) to develop more accurate models for locoregional failure and overall survival for ASCC.

Methods

This study used the National Cancer Database from 2004–2018, divided into training, validation, and test sets. We included patients with stage I-III ASCC who underwent chemoradiation. Our primary outcomes were need for APR and 3-year overall survival. Random forest (RF), gradient boosting (XGB), and neural network (NN) ML-based models were developed and compared with logistic regression (LR). Accuracy was assessed using area under the receiver operating characteristic curve (AUROC).

Results

APR was required in 5.3% (1,015/18,978) of patients. XGB performed best with AUROC of 0.813, compared with 0.691 for LR. Tumor size, lymphovascular invasion, and tumor grade showed the strongest influence on model predictions. Mortality was 23.6% (7,988/33,834). AUROC for XGB and LR were similar at 0.766 and 0.748, respectively. For this model, age, radiation dose, sex, and insurance status were the most influential variables.

Conclusions

We developed and internally validated machine learning-based models for predicting outcomes in ASCC and showed higher accuracy versus LR for locoregional failure, but not overall survival. After external validation, these models may assist clinicians with identifying patients with ASCC at high risk of treatment failure.
Literature
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Metadata
Title
Estimating Risk of Locoregional Failure and Overall Survival in Anal Cancer Following Chemoradiation: A Machine Learning Approach
Authors
Kevin A. Chen
Paolo Goffredo
David Hu
Chinmaya U. Joisa
Jose G. Guillem
Shawn M. Gomez
Muneera R. Kapadia
Publication date
05-07-2023
Publisher
Springer US
Published in
Journal of Gastrointestinal Surgery / Issue 9/2023
Print ISSN: 1091-255X
Electronic ISSN: 1873-4626
DOI
https://doi.org/10.1007/s11605-023-05755-0

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