DEPLOYR: a technical framework for deploying custom real-time machine learning models into the electronic medical record

Author:

Corbin Conor K1,Maclay Rob2,Acharya Aakash3,Mony Sreedevi3,Punnathanam Soumya3,Thapa Rahul3,Kotecha Nikesh3,Shah Nigam H4ORCID,Chen Jonathan H4

Affiliation:

1. Department of Biomedical Data Science , Stanford, California, USA

2. Stanford Children’s Health , Palo Alto, California, USA

3. Stanford Health Care , Palo Alto, California, USA

4. Center for Biomedical Informatics Research, Division of Hospital Medicine, Department of Medicine, Stanford University, School of Medicine , Stanford, California, USA

Abstract

Abstract Objective Heatlhcare institutions are establishing frameworks to govern and promote the implementation of accurate, actionable, and reliable machine learning models that integrate with clinical workflow. Such governance frameworks require an accompanying technical framework to deploy models in a resource efficient, safe and high-quality manner. Here we present DEPLOYR, a technical framework for enabling real-time deployment and monitoring of researcher-created models into a widely used electronic medical record system. Materials and Methods We discuss core functionality and design decisions, including mechanisms to trigger inference based on actions within electronic medical record software, modules that collect real-time data to make inferences, mechanisms that close-the-loop by displaying inferences back to end-users within their workflow, monitoring modules that track performance of deployed models over time, silent deployment capabilities, and mechanisms to prospectively evaluate a deployed model’s impact. Results We demonstrate the use of DEPLOYR by silently deploying and prospectively evaluating 12 machine learning models trained using electronic medical record data that predict laboratory diagnostic results, triggered by clinician button-clicks in Stanford Health Care’s electronic medical record. Discussion Our study highlights the need and feasibility for such silent deployment, because prospectively measured performance varies from retrospective estimates. When possible, we recommend using prospectively estimated performance measures during silent trials to make final go decisions for model deployment. Conclusion Machine learning applications in healthcare are extensively researched, but successful translations to the bedside are rare. By describing DEPLOYR, we aim to inform machine learning deployment best practices and help bridge the model implementation gap.

Funder

NIH

National Institute on Drug Abuse Clinical Trials Network

Stanford Artificial Intelligence in Medicine and Imaging– Human-Centered Artificial Intelligence

Doris Duke Charitable Foundation—Covid-19 Fund to Retain Clinical Scientists

American Heart Association—Strategically Focused Research Network—Diversity in Clinical Trials

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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