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Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits.

Publication ,  Journal Article
Patterson, BW; Engstrom, CJ; Sah, V; Smith, MA; Mendonça, EA; Pulia, MS; Repplinger, MD; Hamedani, AG; Page, D; Shah, MN
Published in: Med Care
July 2019

BACKGROUND: Machine learning is increasingly used for risk stratification in health care. Achieving accurate predictive models do not improve outcomes if they cannot be translated into efficacious intervention. Here we examine the potential utility of automated risk stratification and referral intervention to screen older adults for fall risk after emergency department (ED) visits. OBJECTIVE: This study evaluated several machine learning methodologies for the creation of a risk stratification algorithm using electronic health record data and estimated the effects of a resultant intervention based on algorithm performance in test data. METHODS: Data available at the time of ED discharge were retrospectively collected and separated into training and test datasets. Algorithms were developed to predict the outcome of a return visit for fall within 6 months of an ED index visit. Models included random forests, AdaBoost, and regression-based methods. We evaluated models both by the area under the receiver operating characteristic (ROC) curve, also referred to as area under the curve (AUC), and by projected clinical impact, estimating number needed to treat (NNT) and referrals per week for a fall risk intervention. RESULTS: The random forest model achieved an AUC of 0.78, with slightly lower performance in regression-based models. Algorithms with similar performance, when evaluated by AUC, differed when placed into a clinical context with the defined task of estimated NNT in a real-world scenario. CONCLUSION: The ability to translate the results of our analysis to the potential tradeoff between referral numbers and NNT offers decisionmakers the ability to envision the effects of a proposed intervention before implementation.

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Published In

Med Care

DOI

EISSN

1537-1948

Publication Date

July 2019

Volume

57

Issue

7

Start / End Page

560 / 566

Location

United States

Related Subject Headings

  • Risk Assessment
  • Retrospective Studies
  • Male
  • Machine Learning
  • Humans
  • Health Policy & Services
  • Female
  • Emergency Service, Hospital
  • Electronic Health Records
  • Algorithms
 

Citation

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MLA
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Patterson, B. W., Engstrom, C. J., Sah, V., Smith, M. A., Mendonça, E. A., Pulia, M. S., … Shah, M. N. (2019). Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits. Med Care, 57(7), 560–566. https://doi.org/10.1097/MLR.0000000000001140
Patterson, Brian W., Collin J. Engstrom, Varun Sah, Maureen A. Smith, Eneida A. Mendonça, Michael S. Pulia, Michael D. Repplinger, Azita G. Hamedani, David Page, and Manish N. Shah. “Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits.Med Care 57, no. 7 (July 2019): 560–66. https://doi.org/10.1097/MLR.0000000000001140.
Patterson BW, Engstrom CJ, Sah V, Smith MA, Mendonça EA, Pulia MS, et al. Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits. Med Care. 2019 Jul;57(7):560–6.
Patterson, Brian W., et al. “Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits.Med Care, vol. 57, no. 7, July 2019, pp. 560–66. Pubmed, doi:10.1097/MLR.0000000000001140.
Patterson BW, Engstrom CJ, Sah V, Smith MA, Mendonça EA, Pulia MS, Repplinger MD, Hamedani AG, Page D, Shah MN. Training and Interpreting Machine Learning Algorithms to Evaluate Fall Risk After Emergency Department Visits. Med Care. 2019 Jul;57(7):560–566.

Published In

Med Care

DOI

EISSN

1537-1948

Publication Date

July 2019

Volume

57

Issue

7

Start / End Page

560 / 566

Location

United States

Related Subject Headings

  • Risk Assessment
  • Retrospective Studies
  • Male
  • Machine Learning
  • Humans
  • Health Policy & Services
  • Female
  • Emergency Service, Hospital
  • Electronic Health Records
  • Algorithms