Predicting Patient No-Shows: Situated Machine Learning with Imperfect Data

Christopher Gyldenkærne, Jakob Grue Simonsen, Gustav From, Morten Hertzum

1 Citationer (Scopus)

Abstract

Patients who do not show up for scheduled appointments are a considerable cost and concern in healthcare. In this study, we predict patient no-shows for outpatient surgery at the endoscopy ward of a hospital in Denmark. The predictions are made by training machine leaning (ML) models on available data, which have been recorded for purposes other than ML, and by doing situated work in the hospital setting to understand local data practices and fine-tune the models. The best performing model (XGBoost with oversampling) predicts no-shows at sensitivity = 0.97, specificity = 0.66, and accuracy = 0.95. Importantly, the situated work engaged local hospital staff in the design process and led to substantial quantitative improvements in the performance of the models. We consider the results promising but acknowledge that they are from a single ward. To transfer the no-show models to other wards and hospitals, the situated work must be redone.

OriginalsprogEngelsk
BogserieStudies in Health Technology and Informatics
Vol/bind316
Sider (fra-til)1598-1602
Antal sider5
ISSN0926-9630
DOI
StatusUdgivet - 22 aug. 2024

Fingeraftryk

Dyk ned i forskningsemnerne om 'Predicting Patient No-Shows: Situated Machine Learning with Imperfect Data'. Sammen danner de et unikt fingeraftryk.

Citationsformater