Literature DB >> 27744022

Semi-supervised learning of the electronic health record for phenotype stratification.

Brett K Beaulieu-Jones1, Casey S Greene2.   

Abstract

Patient interactions with health care providers result in entries to electronic health records (EHRs). EHRs were built for clinical and billing purposes but contain many data points about an individual. Mining these records provides opportunities to extract electronic phenotypes, which can be paired with genetic data to identify genes underlying common human diseases. This task remains challenging: high quality phenotyping is costly and requires physician review; many fields in the records are sparsely filled; and our definitions of diseases are continuing to improve over time. Here we develop and evaluate a semi-supervised learning method for EHR phenotype extraction using denoising autoencoders for phenotype stratification. By combining denoising autoencoders with random forests we find classification improvements across multiple simulation models and improved survival prediction in ALS clinical trial data. This is particularly evident in cases where only a small number of patients have high quality phenotypes, a common scenario in EHR-based research. Denoising autoencoders perform dimensionality reduction enabling visualization and clustering for the discovery of new subtypes of disease. This method represents a promising approach to clarify disease subtypes and improve genotype-phenotype association studies that leverage EHRs. Copyright Â
© 2016 The Author(s). Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Denoising autoencoder; Disease subtyping; Electronic health record; Electronic phenotyping; Patient stratification; Unsupervised

Mesh:

Year:  2016        PMID: 27744022     DOI: 10.1016/j.jbi.2016.10.007

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  49 in total

1.  Using Electronic Health Records To Generate Phenotypes For Research.

Authors:  Sarah A Pendergrass; Dana C Crawford
Journal:  Curr Protoc Hum Genet       Date:  2018-12-05

2.  An Experience of Electronic Health Records Implementation in a Mexican Region.

Authors:  Belmar Mex Uc; Gema Castillo-Sánchez; Gonçalo Marques; Jon Arambarri; Isabel de la Torre-Díez
Journal:  J Med Syst       Date:  2020-04-22       Impact factor: 4.460

3.  Unsupervised Extraction of Stable Expression Signatures from Public Compendia with an Ensemble of Neural Networks.

Authors:  Jie Tan; Georgia Doing; Kimberley A Lewis; Courtney E Price; Kathleen M Chen; Kyle C Cady; Barret Perchuk; Michael T Laub; Deborah A Hogan; Casey S Greene
Journal:  Cell Syst       Date:  2017-07-12       Impact factor: 10.304

4.  Deep representation learning of electronic health records to unlock patient stratification at scale.

Authors:  Isotta Landi; Benjamin S Glicksberg; Hao-Chih Lee; Sarah Cherng; Giulia Landi; Matteo Danieletto; Joel T Dudley; Cesare Furlanello; Riccardo Miotto
Journal:  NPJ Digit Med       Date:  2020-07-17

Review 5.  Artificial Intelligence for Mental Health and Mental Illnesses: an Overview.

Authors:  Sarah Graham; Colin Depp; Ellen E Lee; Camille Nebeker; Xin Tu; Ho-Cheol Kim; Dilip V Jeste
Journal:  Curr Psychiatry Rep       Date:  2019-11-07       Impact factor: 5.285

6.  MISSING DATA IMPUTATION IN THE ELECTRONIC HEALTH RECORD USING DEEPLY LEARNED AUTOENCODERS.

Authors:  Brett K Beaulieu-Jones; Jason H Moore
Journal:  Pac Symp Biocomput       Date:  2017

7.  Interpretation of machine learning predictions for patient outcomes in electronic health records.

Authors:  William La Cava; Christopher Bauer; Jason H Moore; Sarah A Pendergrass
Journal:  AMIA Annu Symp Proc       Date:  2020-03-04

Review 8.  Biomedical informatics and machine learning for clinical genomics.

Authors:  James A Diao; Isaac S Kohane; Arjun K Manrai
Journal:  Hum Mol Genet       Date:  2018-05-01       Impact factor: 6.150

Review 9.  Deep learning in pharmacogenomics: from gene regulation to patient stratification.

Authors:  Alexandr A Kalinin; Gerald A Higgins; Narathip Reamaroon; Sayedmohammadreza Soroushmehr; Ari Allyn-Feuer; Ivo D Dinov; Kayvan Najarian; Brian D Athey
Journal:  Pharmacogenomics       Date:  2018-04-26       Impact factor: 2.533

10.  Deep Learning Prediction of Mild Cognitive Impairment using Electronic Health Records.

Authors:  Sajjad Fouladvand; Michelle M Mielke; Maria Vassilaki; Jennifer St Sauver; Ronald C Petersen; Sunghwan Sohn
Journal:  Proceedings (IEEE Int Conf Bioinformatics Biomed)       Date:  2020-02-06
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