Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review

Background: Considering the emergence of electronic health records and their related technologies, an increasing attention is paid to data driven approaches like machine learning, data mining, and process mining. The aim of this paper was to identify and classify these approaches to enhance the qual...

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Main Authors: Parivash Khalili, Mohammad Reza Rasouli, Mohammad Fathian
Format: Article
Language:fas
Published: Shahid Sadoughi University of Medical Sciences 2020-12-01
Series:Rāhburdhā-yi Mudīriyyat dar Niẓām-i Salāmat
Subjects:
Online Access:http://mshsj.ssu.ac.ir/article-1-320-en.html
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spelling doaj-722fc7904f7f49209383afa8216ff8ad2020-12-23T05:32:02ZfasShahid Sadoughi University of Medical SciencesRāhburdhā-yi Mudīriyyat dar Niẓām-i Salāmat2476-68792538-15632020-12-0153236251Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic ReviewParivash Khalili0Mohammad Reza Rasouli1Mohammad Fathian2 MSc in Information Technology (IT) Engineering, Department of System Engineering, School of Industrial Engineering, Iran University of Science & Technology, Tehran, Iran Assistant Professor, Department of System Engineering, School of Industrial Engineering, Iran University of Science & Technology, Tehran, Iran استاد، گروه مهندسی سیستم، دانشکده مهندسی صنایع، دانشگاه علم و صنعت ایران، تهران، ایران Background: Considering the emergence of electronic health records and their related technologies, an increasing attention is paid to data driven approaches like machine learning, data mining, and process mining. The aim of this paper was to identify and classify these approaches to enhance the quality of clinical processes. Methods: In order to determine the knowledge related to the research question, a systematic literature review was conducted. To this end, the related studies were searched in the web of science documentation database, as a comprehensive and authoritative database covering 1536 scientific publications from 2000 to 2019. The studies found from the initial search were investigated and the relevance of their title with the inclusion and exclusion criteria was determined. As a result, 184 articles were selected. Further investigations resulted in 84 studies that remained after reviewing the abstracts and full texts of these articles. These studies were also evaluated with regard to their field of study and the quality of presented evidence. Consequently, the final synthesis was performed on the evidence extracted from these articles. Results: Examination of the identified evidences resulted in 4 general categories of "event-based approaches", "process intelligence", "clinical knowledge systems", and "data-driven control and monitoring" as data-driven approaches that can be used to manage the quality of clinical processes. Conclusion: The findings demonstrated that event-bases approaches had more applications as data driven approaches in the context of health care. Furthermore, process mining is a novel approach that can be used by future studies. The results of this study can be used to complement clinical governance procedures regarding emerging data driven opportunities.http://mshsj.ssu.ac.ir/article-1-320-en.htmldata analysisquality controlsystematic review
collection DOAJ
language fas
format Article
sources DOAJ
author Parivash Khalili
Mohammad Reza Rasouli
Mohammad Fathian
spellingShingle Parivash Khalili
Mohammad Reza Rasouli
Mohammad Fathian
Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
Rāhburdhā-yi Mudīriyyat dar Niẓām-i Salāmat
data analysis
quality control
systematic review
author_facet Parivash Khalili
Mohammad Reza Rasouli
Mohammad Fathian
author_sort Parivash Khalili
title Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
title_short Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
title_full Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
title_fullStr Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
title_full_unstemmed Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
title_sort data-driven approaches to improve the quality of clinical processes: a systematic review
publisher Shahid Sadoughi University of Medical Sciences
series Rāhburdhā-yi Mudīriyyat dar Niẓām-i Salāmat
issn 2476-6879
2538-1563
publishDate 2020-12-01
description Background: Considering the emergence of electronic health records and their related technologies, an increasing attention is paid to data driven approaches like machine learning, data mining, and process mining. The aim of this paper was to identify and classify these approaches to enhance the quality of clinical processes. Methods: In order to determine the knowledge related to the research question, a systematic literature review was conducted. To this end, the related studies were searched in the web of science documentation database, as a comprehensive and authoritative database covering 1536 scientific publications from 2000 to 2019. The studies found from the initial search were investigated and the relevance of their title with the inclusion and exclusion criteria was determined. As a result, 184 articles were selected. Further investigations resulted in 84 studies that remained after reviewing the abstracts and full texts of these articles. These studies were also evaluated with regard to their field of study and the quality of presented evidence. Consequently, the final synthesis was performed on the evidence extracted from these articles. Results: Examination of the identified evidences resulted in 4 general categories of "event-based approaches", "process intelligence", "clinical knowledge systems", and "data-driven control and monitoring" as data-driven approaches that can be used to manage the quality of clinical processes. Conclusion: The findings demonstrated that event-bases approaches had more applications as data driven approaches in the context of health care. Furthermore, process mining is a novel approach that can be used by future studies. The results of this study can be used to complement clinical governance procedures regarding emerging data driven opportunities.
topic data analysis
quality control
systematic review
url http://mshsj.ssu.ac.ir/article-1-320-en.html
work_keys_str_mv AT parivashkhalili datadrivenapproachestoimprovethequalityofclinicalprocessesasystematicreview
AT mohammadrezarasouli datadrivenapproachestoimprovethequalityofclinicalprocessesasystematicreview
AT mohammadfathian datadrivenapproachestoimprovethequalityofclinicalprocessesasystematicreview
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