Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review

Syncope is a transient loss of consciousness with rapid onset. The aims of the study were to systematically evaluate available machine learning (ML) algorithm for supporting syncope diagnosis to determine their performance compared to existing point scoring protocols. We systematically searched IEEE...

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Main Authors: Goh, Choon-Hian, Ferdowsi, Mahbuba, Gan, Ming Hong, Kwan, Ban-How, Lim, Wei Yin, Tee, Yee Kai, Rosli, Roshaslina, Tan, Maw Pin *
Format: Article
Published: Elsevier 2024
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Online Access:http://eprints.sunway.edu.my/2553/
https://doi.org/10.1016/j.mex.2023.102508
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spelling my.sunway.eprints.25532024-05-02T03:08:44Z http://eprints.sunway.edu.my/2553/ Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review Goh, Choon-Hian Ferdowsi, Mahbuba Gan, Ming Hong Kwan, Ban-How Lim, Wei Yin Tee, Yee Kai Rosli, Roshaslina Tan, Maw Pin * Q Science (General) RB Pathology Syncope is a transient loss of consciousness with rapid onset. The aims of the study were to systematically evaluate available machine learning (ML) algorithm for supporting syncope diagnosis to determine their performance compared to existing point scoring protocols. We systematically searched IEEE Xplore, Web of Science, and Elsevier for English articles (Jan 2011 - Sep 2021) on individuals aged five and above, employing ML algorithms in syncope detection with Head-up titl table test (HUTT)-monitored hemodynamic parameters and reported metrics. Extracted data encompassed subject count, age range, syncope protocols, ML type, hemodynamic parameters, and performance metrics. Of the 6301 studies initially identified, 10 studies, involving 1205 participants aged 5 to 82 years, met the inclusion criteria, and formed the basis for it. Selected studies must use ML algorithms in syncope detection with hemodynamic parameters recorded throughout HUTT. The overall ML algorithm performance achieved a sensitivity of 88.8% (95% CI: 79.4–96.1%), specificity of 81.5% (95% CI: 69.8–92.8%) and accuracy of 85.8% (95% CI: 78.6–92.8%). Machine learning improves syncope diagnosis compared to traditional scoring, requiring fewer parameters. Future enhancements with larger databases are anticipated. Integrating ML can curb needless admissions, refine diagnostics, and enhance the quality of life for syncope patients. Elsevier 2024 Article PeerReviewed Goh, Choon-Hian and Ferdowsi, Mahbuba and Gan, Ming Hong and Kwan, Ban-How and Lim, Wei Yin and Tee, Yee Kai and Rosli, Roshaslina and Tan, Maw Pin * (2024) Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review. MethodsX, 12. ISSN 2215-0161 https://doi.org/10.1016/j.mex.2023.102508 10.1016/j.mex.2023.102508
institution Sunway University
building Sunway Campus Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Sunway University
content_source Sunway Institutional Repository
url_provider http://eprints.sunway.edu.my/
topic Q Science (General)
RB Pathology
spellingShingle Q Science (General)
RB Pathology
Goh, Choon-Hian
Ferdowsi, Mahbuba
Gan, Ming Hong
Kwan, Ban-How
Lim, Wei Yin
Tee, Yee Kai
Rosli, Roshaslina
Tan, Maw Pin *
Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
description Syncope is a transient loss of consciousness with rapid onset. The aims of the study were to systematically evaluate available machine learning (ML) algorithm for supporting syncope diagnosis to determine their performance compared to existing point scoring protocols. We systematically searched IEEE Xplore, Web of Science, and Elsevier for English articles (Jan 2011 - Sep 2021) on individuals aged five and above, employing ML algorithms in syncope detection with Head-up titl table test (HUTT)-monitored hemodynamic parameters and reported metrics. Extracted data encompassed subject count, age range, syncope protocols, ML type, hemodynamic parameters, and performance metrics. Of the 6301 studies initially identified, 10 studies, involving 1205 participants aged 5 to 82 years, met the inclusion criteria, and formed the basis for it. Selected studies must use ML algorithms in syncope detection with hemodynamic parameters recorded throughout HUTT. The overall ML algorithm performance achieved a sensitivity of 88.8% (95% CI: 79.4–96.1%), specificity of 81.5% (95% CI: 69.8–92.8%) and accuracy of 85.8% (95% CI: 78.6–92.8%). Machine learning improves syncope diagnosis compared to traditional scoring, requiring fewer parameters. Future enhancements with larger databases are anticipated. Integrating ML can curb needless admissions, refine diagnostics, and enhance the quality of life for syncope patients.
format Article
author Goh, Choon-Hian
Ferdowsi, Mahbuba
Gan, Ming Hong
Kwan, Ban-How
Lim, Wei Yin
Tee, Yee Kai
Rosli, Roshaslina
Tan, Maw Pin *
author_facet Goh, Choon-Hian
Ferdowsi, Mahbuba
Gan, Ming Hong
Kwan, Ban-How
Lim, Wei Yin
Tee, Yee Kai
Rosli, Roshaslina
Tan, Maw Pin *
author_sort Goh, Choon-Hian
title Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
title_short Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
title_full Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
title_fullStr Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
title_full_unstemmed Assessing the efficacy of machine learning algorithms for syncope classification: A systematic review
title_sort assessing the efficacy of machine learning algorithms for syncope classification: a systematic review
publisher Elsevier
publishDate 2024
url http://eprints.sunway.edu.my/2553/
https://doi.org/10.1016/j.mex.2023.102508
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score 13.18916