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

03/11/2023
by   Conor K. Corbin, et al.
0

Machine learning (ML) applications in healthcare are extensively researched, but successful translations to the bedside are scant. Healthcare institutions are establishing frameworks to govern and promote the implementation of accurate, actionable and reliable models that integrate with clinical workflow. Such governance frameworks require an accompanying technical framework to deploy models in a resource efficient manner. Here we present DEPLOYR, a technical framework for enabling real-time deployment and monitoring of researcher created clinical ML models into a widely used electronic medical record (EMR) system. We discuss core functionality and design decisions, including mechanisms to trigger inference based on actions within EMR 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. We demonstrate the use of DEPLOYR by silently deploying and prospectively evaluating twelve ML models triggered by clinician button-clicks in Stanford Health Care's production instance of Epic. Our study highlights the need and feasibility for such silent deployment, because prospectively measured performance varies from retrospective estimates. By describing DEPLOYR, we aim to inform ML deployment best practices and help bridge the model implementation gap.

READ FULL TEXT

page 3

page 6

page 7

research
06/08/2020

Serverless on FHIR: Deploying machine learning models for healthcare on the cloud

Machine Learning (ML) plays a vital role in implementing digital health....
research
09/29/2019

ISTHMUS: Secure, Scalable, Real-time and Robust Machine Learning Platform for Healthcare

In recent times, machine learning (ML) and artificial intelligence (AI) ...
research
05/22/2023

Evaluating Model Performance in Medical Datasets Over Time

Machine learning (ML) models deployed in healthcare systems must face da...
research
05/08/2021

Chameleon: A Semi-AutoML framework targeting quick and scalable development and deployment of production-ready ML systems for SMEs

Developing, scaling, and deploying modern Machine Learning solutions rem...
research
06/06/2022

A Human-Centric Take on Model Monitoring

Predictive models are increasingly used to make various consequential de...
research
05/27/2023

MLOps: A Step Forward to Enterprise Machine Learning

Machine Learning Operations (MLOps) is becoming a highly crucial part of...
research
11/04/2021

Scanflow: A multi-graph framework for Machine Learning workflow management, supervision, and debugging

Machine Learning (ML) is more than just training models, the whole workf...

Please sign up or login with your details

Forgot password? Click here to reset