Accuracy of machine learning algorithms for the diagnosis of autism spectrum disorder based on cerebral sMRI, rs-fMRI, and EEG: protocols for three systematic reviews and meta-analyses
Author:
Valizadeh AmirORCID, Moassefi ManaORCID, Nakhostin-Ansari AminORCID, Oskoie Iman MenbariORCID, Some’eh Soheil HeidariORCID, Aghajani Faezeh, Torbati MehrnushORCID, Ghorbani Zahra MalekiORCID, Aghajani ReyhanehORCID, Hosseini Asl Seyed HosseinORCID, Mirzamohammadi AlirezaORCID, Ghafouri MohammadORCID, Faghani ShahriarORCID, Memari Amir HosseinORCID
Abstract
AbstractObjectiveTo determine the diagnostic accuracy of the applied machine learning algorithms for the diagnosis of autism spectrum disorder (ASD) based on structural magnetic resonance imaging (sMRI), resting-state functional MRI (rs-fMRI), and electroencephalography (EEG).MethodsWe will include cross-sectional studies (both single-gates and two-gates) that have evaluated the diagnostic accuracy of machine learning algorithms on the sMRI data of ASD patients regardless of age, sex, and ethnicity. On the 22nd of May 2021, we searched Embase, MEDLINE, APA PsycINFO, IEEE Xplore, Scopus, and Web of Science for eligible studies. We also searched grey literature within various sources. We will use an adapted version of the Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) tool to assess the risk of bias and applicability. Data will be synthesized using the relatively new Split Component Synthesis (SCS) method. We plan to assess heterogeneity using the I2 statistics and assess publication bias using trim and fill tests combined with ln DOR. Certainty of evidence will be assessed using the GRADE approach for diagnostic studies.FundingThese studies are funded by Sports Medicine Research Center, Tehran, Iran.RegistrationPROSPERO submission IDs: 262575, 262825, and 262831.Administrative informationRegistrationSubmitted in the International Prospective Register of Systematic Reviews (PROSPERO) under the submission numbers: 262575 (sMRI), 262825 (rs-fMRI), and 262831 (EEG).ContributionsAV is the leading author for protocol development, analyses, and dissemination.AmendmentsImportant protocol amendments post registration will be recorded and included in dissemination.SupportThese studies are funded by the Sports Medicine Research Center, Tehran, Iran.Conflicts of interestAll authors declare there are no conflicts of interest regarding this study or its possible results.
Publisher
Cold Spring Harbor Laboratory
Reference36 articles.
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