Is Regular Re-Training of a Predictive Delirium Model Necessary After Deployment in Routine Care?

Sai Veeranki (Vortragende:r), Diether Kramer, Dieter Hayn, Stefanie Jauk, Alphons Eggerth, Franz Quehenberger, Werner Leodolter, Günter Schreier

Publikation: Beitrag in Buch oder TagungsbandBeitrag in Tagungsband mit PosterpräsentationBegutachtung

Abstract

Adoption of electronic medical records in hospitals generates a large amount of data. Health care professionals can easily lose their sight on the important insights of the patients´ clinical and medical history. Although machine learning algorithms have already proved their significance in healthcare research, remains a challenge translation and dissemination of fully automated prediction algorithms from research to decision support at the point of care. In this paper, we address the effect of changes in the characteristics of data over time on the performance of deployed models for the use case of predicting delirium in hospitalised patients. We have analysed the stability of models trained with subsets of data from one single year (2012, 2013...2016, respectively), and tested the models with data from 2017. Our results show that in the case of delirium prediction, the models were stable over time, indicating that re-training
OriginalspracheEnglisch
TiteldHealth 2019 - From eHealth to dHealth
Redakteure/-innenDieter Hayn
Seiten186-191
Seitenumfang6
DOIs
PublikationsstatusVeröffentlicht - 2019
VeranstaltungdHealth 2019 - 13th annual conference on health informatics meets digital health -
Dauer: 28 Mai 201929 Mai 2019

Konferenz

KonferenzdHealth 2019 - 13th annual conference on health informatics meets digital health
Zeitraum28/05/1929/05/19

Research Field

  • Exploration of Digital Health

Schlagwörter

  • machine learning
  • model deployment
  • model stability
  • prediction

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