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首页> 外文期刊>Frontiers in Psychiatry >The Utility of a Computerized Algorithm Based on a Multi-Domain Profile of Measures for the Diagnosis of Attention Deficit/Hyperactivity Disorder
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The Utility of a Computerized Algorithm Based on a Multi-Domain Profile of Measures for the Diagnosis of Attention Deficit/Hyperactivity Disorder

机译:基于多域测量手段的计算机化算法对注意力缺陷/多动症的诊断

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The current gold standard for diagnosis of attention deficit/hyperactivity disorder (ADHD) includes subjective measures, such as clinical interview, observation, and rating scales. The significant heterogeneity of ADHD symptoms represents a challenge for this assessment and could prevent an accurate diagnosis. The aim of this work was to investigate the ability of a multi-domain profile of measures, including blood fatty acid (FA) profiles, neuropsychological measures, and functional measures from near-infrared spectroscopy (fNIRS), to correctly recognize school-aged children with ADHD. To answer this question, we elaborated a supervised machine-learning method to accurately discriminate 22 children with ADHD from 22 children with typical development by means of the proposed profile of measures. To assess the performance of our classifier, we adopted a nested 10-fold cross validation, where the original dataset was split into 10 subsets of equal size, which were used repeatedly for training and testing. Each subset was used once for performance validation. Our method reached a maximum diagnostic accuracy of 81% through the combining of the predictive models trained on neuropsychological, FA profiles, and deoxygenated-hemoglobin features. With respect to the analysis of a single-domain dataset per time, the most discriminant neuropsychological features were measures of vigilance, focused and sustained attention, and cognitive flexibility; the most discriminating blood FAs were linoleic acid and the total amount of polyunsaturated fatty acids. Finally, with respect to the fNIRS data, we found a significant advantage of the deoxygenated-hemoglobin over the oxygenated-hemoglobin data in terms of predictive accuracy. These preliminary findings show the feasibility and applicability of our machine-learning method in correctly identifying children with ADHD based on multi-domain data. The present machine-learning classification approach might be helpful for supporting the clinical practice of diagnosing ADHD, even fostering a computer-aided diagnosis perspective.
机译:当前用于诊断注意力不足/多动障碍(ADHD)的金标准包括主观措施,例如临床访谈,观察和评定量表。 ADHD症状的显着异质性对该评估提出了挑战,并可能阻止准确的诊断。这项工作的目的是研究多域测量方法的能力,包括血液脂肪酸(FA)测量,神经心理学测量和近红外光谱(fNIRS)的功能测量,以正确识别学龄儿童与多动症。为了回答这个问题,我们提出了一种有监督的机器学习方法,通过拟议的措施概况,将22名患有ADHD的儿童与22名典型发育的儿童准确地区分开。为了评估分类器的性能,我们采用了嵌套的10倍交叉验证,其中原始数据集被分为10个大小相等的子集,这些子集被重复用于训练和测试。每个子集仅用于性能验证。通过对神经心理学,FA概况和脱氧血红蛋白特征进行训练的预测模型的组合,我们的方法达到了最高81%的诊断准确性。关于每次对单域数据集的分析,最有区别的神经心理学特征是警惕性,集中注意力和持续注意力以及认知灵活性。血液中最能区分的FA是亚油酸和多不饱和脂肪酸的总量。最后,关于fNIRS数据,就预测准确性而言,我们发现脱氧血红蛋白优于氧合血红蛋白数据。这些初步发现表明,我们的机器学习方法基于多域数据正确识别多动症儿童的可行性和适用性。当前的机器学习分类方法可能有助于支持诊断多动症的临床实践,甚至建立计算机辅助的诊断视角。

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