3.8 Article

ClinicNet: machine learning for personalized clinical order set recommendations

Journal

JAMIA OPEN
Volume 3, Issue 2, Pages 216-224

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jamiaopen/ooaa021

Keywords

clinical decision support systems; precision medicine; electronic health records; order sets; deep learning

Funding

  1. NIH Big Data 2 Knowledge initiative via the National Institute of Environmental Health Sciences [K01ES026837]
  2. Gordon and Betty Moore Foundation [GBMF8040]
  3. Stanford Undergraduate Advising and Research Grant
  4. Stanford HumanCentered Artificial Intelligence Seed Grant

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Objective: This study assessesA whether neural networks trained on electronic health record (EHR) data can anticipate what individual clinical orders and existing institutional order set templates clinicians will use more accurately than existing decision support tools. Materials and Methods: We process 57 624 patients worth of clinical event EHR data from 2008 to 2014. We train a feed-forward neural network (ClinicNet) and logistic regression applied to the traditional problem structure of predicting individual clinical items as well as our proposed workflow of predicting existing institutional order set template usage. Results: ClinicNet predicts individual clinical orders (precision = 0.32, recall = 0.47) better than existing institutional order sets (precision = 0.15, recall = 0.46). The ClinicNet model predicts clinician usage of existing institutional order sets (avg. precision = 0.31) with higher average precision than a baseline of order set usage frequencies (avg. precision = 0.20) or a logistic regression model (avg. precision = 0.12). Discussion: Machine learning methods can predict clinical decision-making patterns with greater accuracy and less manual effort than existing static order set templates. This can streamline existing clinical workflows, but may not fit if historical clinical ordering practices are incorrect. For this reason, manually authored content such as order set templates remain valuable for the purposeful design of care pathways. ClinicNet's capability of predicting such personalized order set templates illustrates the potential of combining both top-down and bottomup approaches to delivering clinical decision support content. Conclusion: ClinicNet illustrates the capability for machine learning methods applied to the EHR to anticipate both individual clinical orders and existing order set templates, which has the potential to improve upon current standards of practice in clinical order entry.

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