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Journal of the American Geriatrics Society. 2024 Apr;72(4):1145-1154. doi: 10.1111/jgs.18776 Q14.52024

Improved accuracy and efficiency of primary care fall risk screening of older adults using a machine learning approach

利用机器学习方法提高老年人跌倒风险筛查的准确性和效率 翻译改进

Wenyu Song  1  2, Nancy K Latham  1  2, Luwei Liu  1, Hannah E Rice  1, Michael Sainlaire  1, Lillian Min  3, Linying Zhang  4, Tien Thai  1, Min-Jeoung Kang  1  2, Siyun Li  1, Christian Tejeda  1, Stuart Lipsitz  1  2, Lipika Samal  1  2, Diane L Carroll  5, Lesley Adkison  6, Lisa Herlihy  7, Virginia Ryan  8, David W Bates  1  2, Patricia C Dykes  1  2

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作者单位

  • 1 Department of Medicine, Brigham and Women's Hospital, Boston, Massachusetts, USA.
  • 2 Harvard Medical School, Boston, Massachusetts, USA.
  • 3 Department of Internal Medicine, University of Michigan, Ann Arbor, Michigan, USA.
  • 4 Institute for Informatics, Data Science, and Biostatistics, Washington University School of Medicine, St. Louis, Missouri, USA.
  • 5 Yvonne L. Munn Center for Nursing Research, Massachusetts General Hospital, Boston, Massachusetts, USA.
  • 6 Department of Nursing and Patient Care Services, Newton Wellesley Hospital, Newton, Massachusetts, USA.
  • 7 Division of Nursing, Salem Hospital, Salem, Massachusetts, USA.
  • 8 Division of Nursing, Brigham and Women's Faulkner Hospital, Jamaica Plain, Massachusetts, USA.
  • DOI: 10.1111/jgs.18776 PMID: 38217355

    摘要 Ai翻译

    Background: While many falls are preventable, they remain a leading cause of injury and death in older adults. Primary care clinics largely rely on screening questionnaires to identify people at risk of falls. Limitations of standard fall risk screening questionnaires include suboptimal accuracy, missing data, and non-standard formats, which hinder early identification of risk and prevention of fall injury. We used machine learning methods to develop and evaluate electronic health record (EHR)-based tools to identify older adults at risk of fall-related injuries in a primary care population and compared this approach to standard fall screening questionnaires.

    Methods: Using patient-level clinical data from an integrated healthcare system consisting of 16-member institutions, we conducted a case-control study to develop and evaluate prediction models for fall-related injuries in older adults. Questionnaire-derived prediction with three questions from a commonly used fall risk screening tool was evaluated. We then developed four temporal machine learning models using routinely available longitudinal EHR data to predict the future risk of fall injury. We also developed a fall injury-prevention clinical decision support (CDS) implementation prototype to link preventative interventions to patient-specific fall injury risk factors.

    Results: Questionnaire-based risk screening achieved area under the receiver operating characteristic curve (AUC) up to 0.59 with 23% to 33% similarity for each pair of three fall injury screening questions. EHR-based machine learning risk screening showed significantly improved performance (best AUROC = 0.76), with similar prediction performance between 6-month and one-year prediction models.

    Conclusions: The current method of questionnaire-based fall risk screening of older adults is suboptimal with redundant items, inadequate precision, and no linkage to prevention. A machine learning fall injury prediction method can accurately predict risk with superior sensitivity while freeing up clinical time for initiating personalized fall prevention interventions. The developed algorithm and data science pipeline can impact routine primary care fall prevention practice.

    Keywords: community‐dwelling older adults; fall and fall‐related injury; machine learning; primary care; risk screening.

    Keywords:machine learning approach; fall risk screening; older adults

    Copyright © Journal of the American Geriatrics Society. 中文内容为AI机器翻译,仅供参考!

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    期刊名:Journal of the american geriatrics society

    缩写:J AM GERIATR SOC

    ISSN:0002-8614

    e-ISSN:1532-5415

    IF/分区:4.5/Q1

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