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Applications of Machine Learning in Palliative Care: A Systematic Review

Erwin Vu, Nina Steinmann, Christina Schröder, Robert Förster, Daniel M. Aebersold, Steffen Eychmüller, Nikola Čihorić, Caroline Hertler, Paul Windisch, Daniel R. Zwahlen

2023Cancers38 citationsDOIOpen Access PDF

Abstract

Objective: To summarize the available literature on using machine learning (ML) for palliative care practice as well as research and to assess the adherence of the published studies to the most important ML best practices. Methods: The MEDLINE database was searched for the use of ML in palliative care practice or research, and the records were screened according to PRISMA guidelines. Results: In total, 22 publications using machine learning for mortality prediction (n = 15), data annotation (n = 5), predicting morbidity under palliative therapy (n = 1), and predicting response to palliative therapy (n = 1) were included. Publications used a variety of supervised or unsupervised models, but mostly tree-based classifiers and neural networks. Two publications had code uploaded to a public repository, and one publication uploaded the dataset. Conclusions: Machine learning in palliative care is mainly used to predict mortality. Similarly to other applications of ML, external test sets and prospective validations are the exception.

Topics & Concepts

Palliative careMachine learningUploadMEDLINEMedicineArtificial intelligenceComputer scienceVariety (cybernetics)Decision treeNursingWorld Wide WebLawPolitical sciencePalliative Care and End-of-Life IssuesArtificial Intelligence in Healthcare and EducationMachine Learning in Healthcare
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