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  5. A comparison of machine learning methods for predicting recurrence and death after curative-intent radiotherapy for non-small cell lung cancer: Development and validation of multivariable clinical prediction models.
 
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A comparison of machine learning methods for predicting recurrence and death after curative-intent radiotherapy for non-small cell lung cancer: Development and validation of multivariable clinical prediction models.
File(s)
1-s2.0-S2352396422000950-main.pdf (1.82 MB)
Published version
Author(s)
Hindocha, Sumeet
Charlton, Thomas George
Linton-Reid, Kristofer
Hunter, Benjamin
Chan, Charleen
more
Type
Journal Article
Abstract
Background

Surveillance is universally recommended for non-small cell lung cancer (NSCLC) patients treated with curative-intent radiotherapy. High-quality evidence to inform optimal surveillance strategies is lacking. Machine learning demonstrates promise in accurate outcome prediction for a variety of health conditions. The purpose of this study was to utilise readily available patient, tumour, and treatment data to develop, validate and externally test machine learning models for predicting recurrence, recurrence-free survival (RFS) and overall survival (OS) at 2 years from treatment.
Methods

A retrospective, multicentre study of patients receiving curative-intent radiotherapy for NSCLC was undertaken. A total of 657 patients from 5 hospitals were eligible for inclusion. Data pre-processing derived 34 features for predictive modelling. Combinations of 8 feature reduction methods and 10 machine learning classification algorithms were compared, producing risk-stratification models for predicting recurrence, RFS and OS. Models were compared with 10-fold cross validation and an external test set and benchmarked against TNM-stage and performance status. Youden Index was derived from validation set ROC curves to distinguish high and low risk groups and Kaplan-Meier analyses performed.
Findings

Median follow-up time was 852 days. Parameters were well matched across training-validation and external test sets: Mean age was 73 and 71 respectively, and recurrence, RFS and OS rates at 2 years were 43% vs 34%, 54% vs 47% and 54% vs 47% respectively. The respective validation and test set AUCs were as follows: 1) RFS: 0·682 (0·575–0·788) and 0·681 (0·597–0·766), 2) Recurrence: 0·687 (0·582–0·793) and 0·722 (0·635–0·81), and 3) OS: 0·759 (0·663–0·855) and 0·717 (0·634–0·8). Our models were superior to TNM stage and performance status in predicting recurrence and OS.
Interpretation

This robust and ready to use machine learning method, validated and externally tested, sets the stage for future clinical trials entailing quantitative personalised risk-stratification and surveillance following curative-intent radiotherapy for NSCLC.
Funding

A full list of funding bodies that contributed to this study can be found in the Acknowledgements section.
Date Issued
2022-03-03
Date Acceptance
2022-02-16
Citation
EBioMedicine, 2022, 77
URI
http://hdl.handle.net/10044/1/95806
DOI
https://www.dx.doi.org/10.1016/j.ebiom.2022.103911
ISSN
2352-3964
Publisher
Elsevier
Journal / Book Title
EBioMedicine
Volume
77
Copyright Statement
© 2022 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY license
(http://creativecommons.org/licenses/by/4.0/)
License URL
(http://creativecommons.org/licenses/by/4.0/
Subjects
Early detection
Machine learning
Non-small cell lung cancer
Overall survival
Prediction
Radiotherapy
Recurrence
1103 Clinical Sciences
1117 Public Health and Health Services
Publication Status
Published
Article Number
ARTN 103911
Date Publish Online
2022-03-03
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