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Recurrence quantification analysis of resting state EEG signals in autism spectrum disorder – a systematic methodological exploration of technical and demographic confounders in the search for biomarkers

机译:自闭症谱系障碍静息状态脑电信号的复发定量分析–技术和人口混杂因素在寻找生物标志物中的系统方法学探索

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Abstract BackgroundAutism spectrum disorder (ASD) is a neurodevelopmental disorder with a worldwide prevalence of 1–2%. In low-resource environments, in particular, early identification and diagnosis is a significant challenge. Therefore, there is a great demand for ‘language-free, culturally fair’ low-cost screening tools for ASD that do not require highly trained professionals. Electroencephalography (EEG) has seen growing interest as an investigational tool for biomarker development in ASD and neurodevelopmental disorders. One of the key challenges is the identification of appropriate multivariate, next-generation analytical methodologies that can characterise the complex, nonlinear dynamics of neural networks in the brain, mindful of technical and demographic confounders that may influence biomarker findings. The aim of this study was to evaluate the robustness of recurrence quantification analysis (RQA) as a potential biomarker for ASD using a systematic methodological exploration of a range of potential technical and demographic confounders.MethodsRQA feature extraction was performed on continuous 5-second segments of resting state EEG (rsEEG) data and linear and nonlinear classifiers were tested. Data analysis progressed from a full sample of 16 ASD and 46 typically developing (TD) individuals (age 0–18 years, 4802 EEG segments), to a subsample of 16 ASD and 19 TD children (age 0–6 years, 1874 segments), to an age-matched sample of 7 ASD and 7 TD children (age 2–6 years, 666 segments) to prevent sample bias and to avoid misinterpretation of the classification results attributable to technical and demographic confounders. A clinical scenario of diagnosing an unseen subject was simulated using a leave-one-subject-out classification approach.ResultsIn the age-matched sample, leave-one-subject-out classification with a nonlinear support vector machine classifier showed 92.9% accuracy, 100% sensitivity and 85.7% specificity in differentiating ASD from TD. Age, sex, intellectual ability and the number of training?and?test segments per group were identified as possible demographic and technical confounders. Consistent repeatability, i.e. the correct identification of all segments per subject, was found to be a challenge.ConclusionsRQA of rsEEG was an accurate classifier of ASD in an age-matched sample, suggesting the potential of this approach for global screening in ASD. However, this study also showed experimentally how a range of technical challenges and demographic confounders can skew results, and highlights the importance of probing for these in future studies. We recommend validation of this methodology in a large and well-matched sample of infants and children, preferably in a low- and middle-income setting.
机译:摘要背景自闭症谱系障碍(ASD)是一种神经发育障碍,全世界的患病率为1-2%。特别是在资源匮乏的环境中,早期识别和诊断是一项重大挑战。因此,迫切需要用于ASD的“无语言,文化公平”的低成本筛选工具,这些工具不需要训练有素的专业人员。脑电图(EEG)作为一种在ASD和神经发育障碍中发展生物标志物的研究工具越来越引起人们的兴趣。关键的挑战之一是确定合适的多元分析方法,这些分析方法可以表征大脑中神经网络的复杂,非线性动力学,同时注意可能影响生物标志物发现的技术和人口混杂因素。这项研究的目的是通过对一系列潜在的技术和人口混杂因素进行系统的方法学探索,评估复发定量分析(RQA)作为ASD潜在生物标志物的稳健性。测试了静态EEG(rsEEG)数据以及线性和非线性分类器。数据分析从16名ASD和46名典型的发育中(TD)个体(0-18岁,4802个EEG段)的完整样本发展为16名ASD和19名TD儿童(0-6岁,1874年段)的子样本。 ,以年龄匹配的方式对7名ASD和7名TD儿童(2-6岁,666个细分市场)进行抽样,以防止抽样偏差并避免对归因于技术和人口统计学混淆因素的分类结果进行误解。结果使用年龄一匹配的样本,使用非线性支持向量机分类器对一个对象无分类的分类显示出92.9%的准确度,为100区分ASD和TD的敏感性为%,特异性为85.7%。年龄,性别,智力和每组培训和测试部分的数量被确定为可能的人口和技术混杂因素。结论rsEEG的RQA是年龄匹配的样本中ASD的准确分类器,这表明rsEEG的RQA是ASD的准确分类器,这表明该方法在ASD中进行全球筛查的潜力。但是,该研究还通过实验显示了一系列技术挑战和人口混杂因素如何使结果产生偏差,并强调了在未来的研究中进行探索的重要性。我们建议在大量且匹配良好的婴儿和儿童样本中(最好在中低收入环境中)验证此方法。

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