Deep learning approach to predict autism spectrum disorder: a systematic review and meta-analysis

被引:8
作者
Ding, Yang [1 ]
Zhang, Heng [1 ]
Qiu, Ting [1 ]
机构
[1] Jiangnan Univ, Wuxi Matern & Child Hlth Care Hosp, Affiliated Womens Hosp, Dept Child Hlth Care, Wuxi 214002, Peoples R China
关键词
Meta-analysis; Machine learning; Deep learning; And autism spectrum disease; CLASSIFICATION; CONNECTIVITY; CHILDREN; BIOMARKERS; MACHINE;
D O I
10.1186/s12888-024-06116-0
中图分类号
R749 [精神病学];
学科分类号
100205 ;
摘要
BackgroundThe use of the deep learning (DL) approach has been suggested or applied to identify childhood autism spectrum disorder (ASD). The capacity to predict ASD, however, differs across investigations. Our study's objective was to conduct a meta-analysis to determine the DL for ASD in children's classification accuracy.MethodsEligibility criteria were designed according to the purpose of the meta-analysis; PubMed, EMBASE, Cochrane Library, and Web of Science Database were searched for articles published up to April 16, 2023, on the accuracy of DL methods for ASD classification. Using the Revised Tool for the Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) to assess the quality of the included studies. Sensitivity, specificity, areas under the curve (AUC), summary receiver operating characteristic (SROC), and corresponding 95% confidence intervals (CIs) were compiled by using the bivariate random-effects models.ResultsA total of 11 predictive trials based on DL models were included, involving 9495 ASD patients from 6 different databases. According to bivariate random-effects models' results, the overall sensitivity, specificity, and AUC of the DL technique for ASD were, 0.95 (95% CI = 0.88-0.98), 0.93 (95% CI = 0.85-0.97), and 0.98 (95%CI: 0.97-0.99), respectively. Subgroup analysis results found that different datasets did not cause heterogeneity (meta-regression P = 0.55). The Kaggle dataset's sensitivity and specificity were 0.94 (95%CI: 0.82-1.00) and 0.91 (95%CI: 0.76-1.00), and with 0.97 (95%CI: 0.92-1.00) and 0.97 (95%CI: 0.92-1.00) for ABIDE dataset.ConclusionsDL techniques has satisfactory sensitivity, specificity, and AUC in ASD classification. However, the major heterogeneity of the included studies limited the effectiveness of this meta-analysis. Further trials need to be performed to demonstrate the clinical practicability of DL diagnosis.
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页数:10
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