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Healthcare pathway discovery and probabilistic machine learning

Authors :
Randall Britten
Andreas W. Kempa-Liehr
Dylan A. Mordaunt
Michael O'Sullivan
Jonathan Wallace
Christina Yin-Chieh Lin
Delwyn Armstrong
Source :
International journal of medical informatics. 137
Publication Year :
2019

Abstract

Background and purpose Healthcare pathways define the execution sequence of clinical activities as patients move through a treatment process, and they are critical for maintaining quality of care. The aim of this study is to combine healthcare pathway discovery with predictive models of individualized recovery times. The pathway discovery has a particular emphasis on producing pathway models that are easy to interpret for clinicians without a sufficient background in process mining. The predictive model takes the stochastic volatility of pathway performance indicators into account. Method This study utilizes the business process-mining software ProM to design a process mining pipeline for healthcare pathway discovery and enrichment using hospital records. The efficacy of combining learned healthcare pathways with probabilistic machine learning models is demonstrated via a case study that applies the proposed process mining pipeline to discover appendicitis pathways from hospital records. Machine learning methodologies based on probabilistic programming are utilized to explore pathway features that influence patient recovery time. Results The produced appendicitis pathway models are easy for clinical interpretation and provide an unbiased overview of patient movements through the treatment process. Analysis of the discovered pathway model enables reasons for longer than usual treatment times to be explored and deviations from standard treatment pathways to be identified. A probabilistic regression model that estimates patient recovery time based on the information extracted by the process mining pipeline is developed and has the potential to be very useful for hospital scheduling purposes. Conclusion This study establishes the application of the business process modelling tool ProM for the improvement of healthcare pathway mining methods. The proposed pipeline for healthcare pathway discovery has the potential to support the development of probabilistic machine learning models to further relate healthcare pathways to performance indicators such as patient recovery time.

Details

ISSN :
18728243
Volume :
137
Database :
OpenAIRE
Journal :
International journal of medical informatics
Accession number :
edsair.doi.dedup.....b2df6bf44482bccdf61c52dd1bf125eb