Predicting unplanned medical visits among patients with diabetes: translation from machine learning to clinical implementation.
Arielle S SelyaDrake AnshutzEmily GrieseTess L WeberBenson HsuCheryl WardPublished in: BMC medical informatics and decision making (2021)
Our machine-learning predictive model more accurately predicted unplanned medical visits among patients with diabetes, relative to conventional models. Post-hoc analysis of the model was used for hypothesis generation, namely that HDL and BP are the strongest contributors to unplanned medical visits among patients with diabetes. These findings were translated into a clinical intervention now being piloted at the sponsoring healthcare organization. In this way, this predictive model can be used in moving from prediction to implementation and improved diabetes care management in clinical settings.