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Unsupervised EHR‐based phenotyping via matrix and tensor decompositions.

Authors :
Becker, Florian
Smilde, Age K.
Acar, Evrim
Source :
WIREs: Data Mining & Knowledge Discovery. Jul/Aug2023, Vol. 13 Issue 4, p1-25. 25p.
Publication Year :
2023

Abstract

Computational phenotyping allows for unsupervised discovery of subgroups of patients as well as corresponding co‐occurring medical conditions from electronic health records (EHR). Typically, EHR data contains demographic information, diagnoses and laboratory results. Discovering (novel) phenotypes has the potential to be of prognostic and therapeutic value. Providing medical practitioners with transparent and interpretable results is an important requirement and an essential part for advancing precision medicine. Low‐rank data approximation methods such as matrix (e.g., nonnegative matrix factorization) and tensor decompositions (e.g., CANDECOMP/PARAFAC) have demonstrated that they can provide such transparent and interpretable insights. Recent developments have adapted low‐rank data approximation methods by incorporating different constraints and regularizations that facilitate interpretability further. In addition, they offer solutions for common challenges within EHR data such as high dimensionality, data sparsity and incompleteness. Especially extracting temporal phenotypes from longitudinal EHR has received much attention in recent years. In this paper, we provide a comprehensive review of low‐rank approximation‐based approaches for computational phenotyping. The existing literature is categorized into temporal versus static phenotyping approaches based on matrix versus tensor decompositions. Furthermore, we outline different approaches for the validation of phenotypes, that is, the assessment of clinical significance. This article is categorized under:Algorithmic Development > Structure DiscoveryFundamental Concepts of Data and Knowledge > Explainable AITechnologies > Machine Learning [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
19424787
Volume :
13
Issue :
4
Database :
Academic Search Index
Journal :
WIREs: Data Mining & Knowledge Discovery
Publication Type :
Academic Journal
Accession number :
164914591
Full Text :
https://doi.org/10.1002/widm.1494