A roadmap to implementing machine learning in healthcare: from concept to practice
Adam P. Yan, Lin Lawrence Guo, Jiro Inoue, Santiago Eduardo Arciniegas, Emily Vettese, Agata Wolochacz, Nicole Crellin‐Parsons, Brandon Purves, Steven P. Wallace, Azaz Patel, Medhat Roshdi, Karim Jessa, Bren Cardiff, Lillian Sung
Abstract
Background: The adoption of machine learning (ML) has been slow within the healthcare setting. We launched Pediatric Real-world Evaluative Data sciences for Clinical Transformation (PREDICT) at a pediatric hospital. Its goal was to develop, deploy, evaluate and maintain clinical ML models to improve pediatric patient outcomes using electronic health records data. Objective: To provide examples from the PREDICT experience illustrating how common challenges with clinical ML deployment were addressed. Materials and methods: We present common challenges in developing and deploying models in healthcare related to the following: identify clinical scenarios, establish data infrastructure and utilization, create machine learning operations and integrate into clinical workflows. Results: We show examples of how these challenges were overcome and provide suggestions for pragmatic solutions while maintaining best practices. Discussion: These approaches will require refinement over time as the number of deployments and experience increase.