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Machine learning functional impairment classification with electronic health record data.

Juliessa M Pavon1,2,3,4, Laura Previll1,2,4, Myung Woo5,6

  • 1Department of Medicine/Division of Geriatrics, Duke University, Durham, North Carolina, USA.

Journal of the American Geriatrics Society
|May 17, 2023
PubMed
Summary
This summary is machine-generated.

Machine learning accurately identifies functional impairment using electronic health records (EHR). This approach can help identify patients needing more health resources, improving care for those with poor functional status.

Keywords:
electronic health recordsfunctional statusmachine learning/artificial intelligenceolder adults

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Area of Science:

  • Gerontology
  • Health Informatics
  • Machine Learning

Background:

  • Functional status is a key indicator of morbidity but is often not assessed in clinical practice.
  • Electronic Health Records (EHR) offer a potential data source for assessing functional status.
  • Developing scalable methods to identify functional impairment is crucial for patient care.

Purpose of the Study:

  • To develop and evaluate a machine learning algorithm for identifying functional impairment using EHR data.
  • To create a scalable process for detecting patients with varying levels of functional status.
  • To assess the accuracy of the algorithm in differentiating normal, mild to moderate, and severe functional impairment.

Main Methods:

  • A cohort of 6484 patients with functional status screening data (2018-2020) was analyzed.
  • Unsupervised learning (K-means, t-SNE) classified patients into normal function (NF), mild to moderate (MFI), and severe (SFI) states.
  • An Extreme Gradient Boosting model was trained on 832 EHR features to predict functional status, with SHAP analysis for feature importance.

Main Results:

  • The model achieved high predictive accuracy with AUROC values of 0.92 (NF), 0.89 (MFI), and 0.87 (SFI).
  • Key predictors included age, falls, hospitalizations, home health use, lab values (albumin), comorbidities (dementia, heart failure, CKD), and social determinants (alcohol use).
  • The algorithm demonstrated strong performance in distinguishing between different functional status categories.

Conclusions:

  • Machine learning algorithms utilizing EHR data can effectively differentiate functional status in clinical settings.
  • These algorithms show promise in complementing traditional screening methods for functional status.
  • Further validation could lead to population-based strategies for identifying patients requiring additional health resources due to poor functional status.