Monitoring multistage healthcare processes using state space models and a machine learning based framework

Ali Yeganeh, Arne Johannssen, Nataliya Chukhrova*, Mohammad Rasouli

*Corresponding author for this work

Research output: Contribution to journalJournal articleResearchpeer-review

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Abstract

Monitoring healthcare processes, such as surgical outcomes, with a keen focus on detecting changes and unnatural conditions at an early stage is crucial for healthcare professionals and administrators. In line with this goal, control charts, which are the most popular tool in the field of Statistical Process Monitoring, are widely employed to monitor therapeutic processes. Healthcare processes are often characterized by a multistage structure in which several components, states or stages form the final products or outcomes. In such complex scenarios, Multistage Process Monitoring (MPM) techniques become invaluable for monitoring distinct states of the process over time. However, the healthcare sector has seen limited studies employing MPM. This study aims to fill this gap by developing an MPM control chart tailored for healthcare data to promote early detection, confirmation, and patient safety. As it is important to detect unnatural conditions in healthcare processes at an early stage, the statistical control charts are combined with machine learning techniques (i.e., we deal with Intelligent Control Charting, ICC) to enhance detection ability. Through Monte Carlo simulations, our method demonstrates better performance compared to its statistical counterparts. To underline the practical application of the proposed ICC framework, real data from a two-stage thyroid cancer surgery is utilized. This real-world case serves as a compelling illustration of the effectiveness of the developed MPM control chart in a healthcare setting.

Original languageEnglish
Article number102826
JournalArtificial Intelligence in Medicine
Volume151
Number of pages17
ISSN0933-3657
DOIs
Publication statusPublished - May 2024

Keywords

  • Control charts
  • Intelligent Control Charting (ICC)
  • Machine learning
  • Multistage Process Monitoring (MPM)
  • State space model (SSM)
  • Statistical Process Monitoring (SPM)

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