Machine learning functional impairment classification with electronic health record data.

dc.contributor.author

Pavon, Juliessa M

dc.contributor.author

Previll, Laura

dc.contributor.author

Woo, Myung

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Henao, Ricardo

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Solomon, Mary

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Rogers, Ursula

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Olson, Andrew

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Fischer, Jonathan

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Leo, Christopher

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Fillenbaum, Gerda

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Hoenig, Helen

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Casarett, David

dc.date.accessioned

2024-01-30T14:31:02Z

dc.date.available

2024-01-30T14:31:02Z

dc.date.issued

2023-09

dc.description.abstract

Background

Poor functional status is a key marker of morbidity, yet is not routinely captured in clinical encounters. We developed and evaluated the accuracy of a machine learning algorithm that leveraged electronic health record (EHR) data to provide a scalable process for identification of functional impairment.

Methods

We identified a cohort of patients with an electronically captured screening measure of functional status (Older Americans Resources and Services ADL/IADL) between 2018 and 2020 (N = 6484). Patients were classified using unsupervised learning K means and t-distributed Stochastic Neighbor Embedding into normal function (NF), mild to moderate functional impairment (MFI), and severe functional impairment (SFI) states. Using 11 EHR clinical variable domains (832 variable input features), we trained an Extreme Gradient Boosting supervised machine learning algorithm to distinguish functional status states, and measured prediction accuracies. Data were randomly split into training (80%) and test (20%) sets. The SHapley Additive Explanations (SHAP) feature importance analysis was used to list the EHR features in rank order of their contribution to the outcome.

Results

Median age was 75.3 years, 62% female, 60% White. Patients were classified as 53% NF (n = 3453), 30% MFI (n = 1947), and 17% SFI (n = 1084). Summary of model performance for identifying functional status state (NF, MFI, SFI) was AUROC (area under the receiving operating characteristic curve) 0.92, 0.89, and 0.87, respectively. Age, falls, hospitalization, home health use, labs (e.g., albumin), comorbidities (e.g., dementia, heart failure, chronic kidney disease, chronic pain), and social determinants of health (e.g., alcohol use) were highly ranked features in predicting functional status states.

Conclusion

A machine learning algorithm run on EHR clinical data has potential utility for differentiating functional status in the clinical setting. Through further validation and refinement, such algorithms can complement traditional screening methods and result in a population-based strategy for identifying patients with poor functional status who need additional health resources.
dc.identifier.issn

0002-8614

dc.identifier.issn

1532-5415

dc.identifier.uri

https://hdl.handle.net/10161/29900

dc.language

eng

dc.publisher

Wiley

dc.relation.ispartof

Journal of the American Geriatrics Society

dc.relation.isversionof

10.1111/jgs.18383

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Humans

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Hospitalization

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Comorbidity

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Algorithms

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Aged

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Female

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Male

dc.subject

Electronic Health Records

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Machine Learning

dc.title

Machine learning functional impairment classification with electronic health record data.

dc.type

Journal article

duke.contributor.orcid

Pavon, Juliessa M|0000-0002-9047-0051

duke.contributor.orcid

Previll, Laura|0000-0001-5541-8111

duke.contributor.orcid

Henao, Ricardo|0000-0003-4980-845X

duke.contributor.orcid

Fillenbaum, Gerda|0000-0002-3075-5223

duke.contributor.orcid

Hoenig, Helen|0000-0002-6682-2627

pubs.begin-page

2822

pubs.end-page

2833

pubs.issue

9

pubs.organisational-group

Duke

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Pratt School of Engineering

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School of Medicine

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Basic Science Departments

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Clinical Science Departments

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Institutes and Centers

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Biostatistics & Bioinformatics

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Electrical and Computer Engineering

pubs.organisational-group

Medicine

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Psychiatry & Behavioral Sciences

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Medicine, General Internal Medicine

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Medicine, Geriatrics

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Center for the Study of Aging and Human Development

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Head and Neck Surgery & Communication Sciences

pubs.organisational-group

Psychiatry & Behavioral Sciences, Adult Psychiatry & Psychology

pubs.organisational-group

Duke Center for Applied Genomics and Precision Medicine

pubs.organisational-group

Biostatistics & Bioinformatics, Division of Translational Biomedical

pubs.publication-status

Published

pubs.volume

71

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