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A monitoring framework for health care processes using Generalized Additive Models and Auto-Encoders.
Yeganeh, Ali; Johannssen, Arne; Chukhrova, Nataliya; Erfanian, Mahdiyeh; Azarpazhooh, Mahmoud Reza; Morovatdar, Negar.
Affiliation
  • Yeganeh A; University of Hamburg, 20146 Hamburg, Germany. Electronic address: yeganeh.ali1369@gmail.com.
  • Johannssen A; University of Hamburg, 20146 Hamburg, Germany. Electronic address: arne.johannssen@uni-hamburg.de.
  • Chukhrova N; University of Hamburg, 20146 Hamburg, Germany. Electronic address: nataliya.chukhrova@uni-hamburg.de.
  • Erfanian M; Department of Statistics, Ferdowsi University of Mashhad, Mashhad, Iran. Electronic address: m.erfaniyan@mail.um.ac.ir.
  • Azarpazhooh MR; Department of Neurology, Ghaem Hospital, Mashhad University of Medical Sciences (MUMS), Mashhad, Iran; Department of Clinical Neurological Sciences, Schulich School of Medicine and Dentistry, Western University, London, Ontario, Canada. Electronic address: Reza.azarpazhooh@lhsc.on.ca.
  • Morovatdar N; Clinical Research Development Unit, Imam Reza Hospital, Faculty of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran. Electronic address: negarmorovat@gmail.com.
Artif Intell Med ; 146: 102689, 2023 12.
Article in En | MEDLINE | ID: mdl-38042610
ABSTRACT
In recent years, there has been a considerable focus on developing effective methods for monitoring health care processes. Utilizing Statistical Process Monitoring (SPM) approaches, particularly risk-adjusted control charts, has emerged as a highly promising approach for achieving robust frameworks for this aim. Considering risk-adjusted control charts, longitudinal health care process data is typically monitored by establishing a regression relationship between various risk factors (explanatory variables) and patient outcomes (response variables). While the majority of prior research has primarily employed logistic models in risk-adjusted control charts, there are more intricate health care processes that necessitate the incorporation of both parametric and nonparametric risk factors. In such scenarios, the Generalized Additive Model (GAM) proves to be a suitable choice, albeit it often introduces higher computational complexity and associated challenges. Surprisingly, there are limited instances where researchers have proposed advancements in this direction. The primary objective of this paper is to introduce an SPM framework for monitoring health care processes using a GAM over time, coupled with a novel risk-adjusted control chart driven by machine learning techniques. This control chart is implemented on a data set encompassing two stroke types ischemic and hemorrhagic. The key focus of this study is to monitor the stability of the relationship between stroke types and predefined explanatory variables over time within this data set. Extensive simulation results, based on real data from patients with acute stroke, demonstrate the remarkable flexibility of the proposed method in terms of its detection capabilities compared to conventional approaches.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Delivery of Health Care Limits: Humans Language: En Journal: Artif Intell Med Journal subject: INFORMATICA MEDICA Year: 2023 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Delivery of Health Care Limits: Humans Language: En Journal: Artif Intell Med Journal subject: INFORMATICA MEDICA Year: 2023 Document type: Article