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Machine learning for optimized individual survival prediction in resectable upper gastrointestinal cancer

Jin‐On Jung, Nerma Crnovrsanin, Naita M. Wirsik, Henrik Nienhüser, Leila Priscila Peters, Felix Popp, A. Schulze, Martin Wagner, Beat P. Müller‐Stich, Markus W. Büchler, Thomas Schmidt

2022Journal of Cancer Research and Clinical Oncology41 citationsDOIOpen Access PDF

Abstract

PURPOSE: Surgical oncologists are frequently confronted with the question of expected long-term prognosis. The aim of this study was to apply machine learning algorithms to optimize survival prediction after oncological resection of gastroesophageal cancers. METHODS: Eligible patients underwent oncological resection of gastric or distal esophageal cancer between 2001 and 2020 at Heidelberg University Hospital, Department of General Surgery. Machine learning methods such as multi-task logistic regression and survival forests were compared with usual algorithms to establish an individual estimation. RESULTS: The study included 117 variables with a total of 1360 patients. The overall missingness was 1.3%. Out of eight machine learning algorithms, the random survival forest (RSF) performed best with a concordance index of 0.736 and an integrated Brier score of 0.166. The RSF demonstrated a mean area under the curve (AUC) of 0.814 over a time period of 10 years after diagnosis. The most important long-term outcome predictor was lymph node ratio with a mean AUC of 0.730. A numeric risk score was calculated by the RSF for each patient and three risk groups were defined accordingly. Median survival time was 18.8 months in the high-risk group, 44.6 months in the medium-risk group and above 10 years in the low-risk group. CONCLUSION: The results of this study suggest that RSF is most appropriate to accurately answer the question of long-term prognosis. Furthermore, we could establish a compact risk score model with 20 input parameters and thus provide a clinical tool to improve prediction of oncological outcome after upper gastrointestinal surgery.

Topics & Concepts

Brier scoreMedicineConcordanceLogistic regressionRandom forestInternal medicineSurvival analysisCancerSurgeryMachine learningComputer scienceEsophageal Cancer Research and TreatmentRadiomics and Machine Learning in Medical ImagingGastric Cancer Management and Outcomes
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