Computerized migraine diagnostic tools: a systematic review

Background: Computerized migraine diagnostic tools have been developed and validated since 1960. We conducted a systematic review to summarize and critically appraise the quality of all published studies involving computerized migraine diagnostic tools. Methods: We performed a systematic literature...

Full description

Bibliographic Details
Main Authors: Yohannes W. Woldeamanuel, Robert P. Cowan
Format: Article
Language:English
Published: SAGE Publishing 2022-01-01
Series:Therapeutic Advances in Chronic Disease
Online Access:https://doi.org/10.1177/20406223211065235
_version_ 1798023787445223424
author Yohannes W. Woldeamanuel
Robert P. Cowan
author_facet Yohannes W. Woldeamanuel
Robert P. Cowan
author_sort Yohannes W. Woldeamanuel
collection DOAJ
description Background: Computerized migraine diagnostic tools have been developed and validated since 1960. We conducted a systematic review to summarize and critically appraise the quality of all published studies involving computerized migraine diagnostic tools. Methods: We performed a systematic literature search using PubMed, Web of Science, Scopus, snowballing, and citation searching. Cutoff date for search was 1 June 2021. Published articles in English that evaluated a computerized/automated migraine diagnostic tool were included. The following summarized each study: publication year, digital tool name, development basis, sample size, sensitivity, specificity, reference diagnosis, strength, and limitations. The Quality Assessment of Diagnostic Accuracy Studies (QUADAS) tool was applied to evaluate the quality of included studies in terms of risk of bias and concern of applicability. Results: A total of 41 studies (median sample size: 288 participants, median age = 43 years; 77% women) were included. Most (60%) tools were developed based on International Classification of Headache Disorders criteria, half were self-administered, and 82% were evaluated using face-to-face interviews as reference diagnosis. Some of the automated algorithms and machine learning programs involved case-based reasoning, deep learning, classifier ensemble, ant-colony, artificial immune, random forest, white and black box combinations, and hybrid fuzzy expert systems. The median diagnostic accuracy was concordance = 89% [interquartile range (IQR) = 76–93%; range = 45–100%], sensitivity = 87% (IQR = 80–95%; range = 14–100%), and specificity = 90% (IQR = 77–96%; range = 65–100%). Lack of random patient sampling was observed in 95% of studies. Case–control designs were avoided in all studies. Most (76%) reference tests exhibited low risk of bias and low concern of applicability. Patient flow and timing showed low risk of bias in 83%. Conclusion: Different computerized and automated migraine diagnostic tools are available with varying accuracies. Random patient sampling, head-to-head comparison among tools, and generalizability to other headache diagnoses may improve their utility.
first_indexed 2024-04-11T17:52:00Z
format Article
id doaj.art-606b8b08757e4bb08d27cfbbce04978e
institution Directory Open Access Journal
issn 2040-6231
language English
last_indexed 2024-04-11T17:52:00Z
publishDate 2022-01-01
publisher SAGE Publishing
record_format Article
series Therapeutic Advances in Chronic Disease
spelling doaj.art-606b8b08757e4bb08d27cfbbce04978e2022-12-22T04:11:03ZengSAGE PublishingTherapeutic Advances in Chronic Disease2040-62312022-01-011310.1177/20406223211065235Computerized migraine diagnostic tools: a systematic reviewYohannes W. WoldeamanuelRobert P. CowanBackground: Computerized migraine diagnostic tools have been developed and validated since 1960. We conducted a systematic review to summarize and critically appraise the quality of all published studies involving computerized migraine diagnostic tools. Methods: We performed a systematic literature search using PubMed, Web of Science, Scopus, snowballing, and citation searching. Cutoff date for search was 1 June 2021. Published articles in English that evaluated a computerized/automated migraine diagnostic tool were included. The following summarized each study: publication year, digital tool name, development basis, sample size, sensitivity, specificity, reference diagnosis, strength, and limitations. The Quality Assessment of Diagnostic Accuracy Studies (QUADAS) tool was applied to evaluate the quality of included studies in terms of risk of bias and concern of applicability. Results: A total of 41 studies (median sample size: 288 participants, median age = 43 years; 77% women) were included. Most (60%) tools were developed based on International Classification of Headache Disorders criteria, half were self-administered, and 82% were evaluated using face-to-face interviews as reference diagnosis. Some of the automated algorithms and machine learning programs involved case-based reasoning, deep learning, classifier ensemble, ant-colony, artificial immune, random forest, white and black box combinations, and hybrid fuzzy expert systems. The median diagnostic accuracy was concordance = 89% [interquartile range (IQR) = 76–93%; range = 45–100%], sensitivity = 87% (IQR = 80–95%; range = 14–100%), and specificity = 90% (IQR = 77–96%; range = 65–100%). Lack of random patient sampling was observed in 95% of studies. Case–control designs were avoided in all studies. Most (76%) reference tests exhibited low risk of bias and low concern of applicability. Patient flow and timing showed low risk of bias in 83%. Conclusion: Different computerized and automated migraine diagnostic tools are available with varying accuracies. Random patient sampling, head-to-head comparison among tools, and generalizability to other headache diagnoses may improve their utility.https://doi.org/10.1177/20406223211065235
spellingShingle Yohannes W. Woldeamanuel
Robert P. Cowan
Computerized migraine diagnostic tools: a systematic review
Therapeutic Advances in Chronic Disease
title Computerized migraine diagnostic tools: a systematic review
title_full Computerized migraine diagnostic tools: a systematic review
title_fullStr Computerized migraine diagnostic tools: a systematic review
title_full_unstemmed Computerized migraine diagnostic tools: a systematic review
title_short Computerized migraine diagnostic tools: a systematic review
title_sort computerized migraine diagnostic tools a systematic review
url https://doi.org/10.1177/20406223211065235
work_keys_str_mv AT yohanneswwoldeamanuel computerizedmigrainediagnostictoolsasystematicreview
AT robertpcowan computerizedmigrainediagnostictoolsasystematicreview