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Subphenotyping depression using machine learning and electronic health records
OBJECTIVE: To identify depression subphenotypes from Electronic Health Records (EHRs) using machine learning methods, and analyze their characteristics with respect to patient demographics, comorbidities, and medications. MATERIALS AND METHODS: Using EHRs from the INSIGHT Clinical Research Network (...
Autores principales: | , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley and Sons Inc.
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7556423/ https://www.ncbi.nlm.nih.gov/pubmed/33083540 http://dx.doi.org/10.1002/lrh2.10241 |
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author | Xu, Zhenxing Wang, Fei Adekkanattu, Prakash Bose, Budhaditya Vekaria, Veer Brandt, Pascal Jiang, Guoqian Kiefer, Richard C. Luo, Yuan Pacheco, Jennifer A. Rasmussen, Luke V. Xu, Jie Alexopoulos, George Pathak, Jyotishman |
author_facet | Xu, Zhenxing Wang, Fei Adekkanattu, Prakash Bose, Budhaditya Vekaria, Veer Brandt, Pascal Jiang, Guoqian Kiefer, Richard C. Luo, Yuan Pacheco, Jennifer A. Rasmussen, Luke V. Xu, Jie Alexopoulos, George Pathak, Jyotishman |
author_sort | Xu, Zhenxing |
collection | PubMed |
description | OBJECTIVE: To identify depression subphenotypes from Electronic Health Records (EHRs) using machine learning methods, and analyze their characteristics with respect to patient demographics, comorbidities, and medications. MATERIALS AND METHODS: Using EHRs from the INSIGHT Clinical Research Network (CRN) database, multiple machine learning (ML) algorithms were applied to analyze 11 275 patients with depression to discern depression subphenotypes with distinct characteristics. RESULTS: Using the computational approaches, we derived three depression subphenotypes: Phenotype_A (n = 2791; 31.35%) included patients who were the oldest (mean (SD) age, 72.55 (14.93) years), had the most comorbidities, and took the most medications. The most common comorbidities in this cluster of patients were hyperlipidemia, hypertension, and diabetes. Phenotype_B (mean (SD) age, 68.44 (19.09) years) was the largest cluster (n = 4687; 52.65%), and included patients suffering from moderate loss of body function. Asthma, fibromyalgia, and Chronic Pain and Fatigue (CPF) were common comorbidities in this subphenotype. Phenotype_C (n = 1452; 16.31%) included patients who were younger (mean (SD) age, 63.47 (18.81) years), had the fewest comorbidities, and took fewer medications. Anxiety and tobacco use were common comorbidities in this subphenotype. CONCLUSION: Computationally deriving depression subtypes can provide meaningful insights and improve understanding of depression as a heterogeneous disorder. Further investigation is needed to assess the utility of these derived phenotypes to inform clinical trial design and interpretation in routine patient care. |
format | Online Article Text |
id | pubmed-7556423 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | John Wiley and Sons Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-75564232020-10-19 Subphenotyping depression using machine learning and electronic health records Xu, Zhenxing Wang, Fei Adekkanattu, Prakash Bose, Budhaditya Vekaria, Veer Brandt, Pascal Jiang, Guoqian Kiefer, Richard C. Luo, Yuan Pacheco, Jennifer A. Rasmussen, Luke V. Xu, Jie Alexopoulos, George Pathak, Jyotishman Learn Health Syst Research Reports OBJECTIVE: To identify depression subphenotypes from Electronic Health Records (EHRs) using machine learning methods, and analyze their characteristics with respect to patient demographics, comorbidities, and medications. MATERIALS AND METHODS: Using EHRs from the INSIGHT Clinical Research Network (CRN) database, multiple machine learning (ML) algorithms were applied to analyze 11 275 patients with depression to discern depression subphenotypes with distinct characteristics. RESULTS: Using the computational approaches, we derived three depression subphenotypes: Phenotype_A (n = 2791; 31.35%) included patients who were the oldest (mean (SD) age, 72.55 (14.93) years), had the most comorbidities, and took the most medications. The most common comorbidities in this cluster of patients were hyperlipidemia, hypertension, and diabetes. Phenotype_B (mean (SD) age, 68.44 (19.09) years) was the largest cluster (n = 4687; 52.65%), and included patients suffering from moderate loss of body function. Asthma, fibromyalgia, and Chronic Pain and Fatigue (CPF) were common comorbidities in this subphenotype. Phenotype_C (n = 1452; 16.31%) included patients who were younger (mean (SD) age, 63.47 (18.81) years), had the fewest comorbidities, and took fewer medications. Anxiety and tobacco use were common comorbidities in this subphenotype. CONCLUSION: Computationally deriving depression subtypes can provide meaningful insights and improve understanding of depression as a heterogeneous disorder. Further investigation is needed to assess the utility of these derived phenotypes to inform clinical trial design and interpretation in routine patient care. John Wiley and Sons Inc. 2020-08-03 /pmc/articles/PMC7556423/ /pubmed/33083540 http://dx.doi.org/10.1002/lrh2.10241 Text en © 2020 The Authors. Learning Health Systems published by Wiley Periodicals LLC on behalf of University of Michigan. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Research Reports Xu, Zhenxing Wang, Fei Adekkanattu, Prakash Bose, Budhaditya Vekaria, Veer Brandt, Pascal Jiang, Guoqian Kiefer, Richard C. Luo, Yuan Pacheco, Jennifer A. Rasmussen, Luke V. Xu, Jie Alexopoulos, George Pathak, Jyotishman Subphenotyping depression using machine learning and electronic health records |
title | Subphenotyping depression using machine learning and electronic health records |
title_full | Subphenotyping depression using machine learning and electronic health records |
title_fullStr | Subphenotyping depression using machine learning and electronic health records |
title_full_unstemmed | Subphenotyping depression using machine learning and electronic health records |
title_short | Subphenotyping depression using machine learning and electronic health records |
title_sort | subphenotyping depression using machine learning and electronic health records |
topic | Research Reports |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7556423/ https://www.ncbi.nlm.nih.gov/pubmed/33083540 http://dx.doi.org/10.1002/lrh2.10241 |
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