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首页> 外文期刊>Clinical EEG and neuroscience: official journal of the EEG and Clinical Neuroscience Society (ENCS) >The 'MS-ROM/IFAST' Model, a Novel Parallel Nonlinear EEG Analysis Technique, Distinguishes ASD Subjects From Children Affected With Other Neuropsychiatric Disorders With High Degree of Accuracy
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The 'MS-ROM/IFAST' Model, a Novel Parallel Nonlinear EEG Analysis Technique, Distinguishes ASD Subjects From Children Affected With Other Neuropsychiatric Disorders With High Degree of Accuracy

机译:“MS-ROM / IFAST”模型,一种新的并行非线性EEG分析技术,将来自患儿的ASD受试者区分具有高精度的高精度

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Background and Objective. In a previous study, we showed a new EEG processing methodology called Multi-Scale Ranked Organizing Map/Implicit Function As Squashing Time (MS-ROM/IFAST) performing an almost perfect distinction between computerized EEG of Italian children with autism spectrum disorder (ASD) and typically developing children. In this study, we assessed this system in distinguishing ASD subjects from children affected with other neuropsychiatric disorders (NPD). Methods. At a psychiatric practice in Texas, 20 children diagnosed with ASD and 20 children diagnosed with NPD were entered into the study. Continuous segments of artifact-free EEG data lasting 10 minutes were entered in MS-ROM/IFAST. From the new variables created by MS-ROM/IFAST, only 12 has been selected according to a correlation criterion. The selected features represent the input on which supervised machine learning systems (MLS) acted as blind classifiers. Results. The overall predictive capability in distinguishing ASD from other NPD cases ranged from 93% to 97.5%. The results were confirmed in further experiments in which Italian and US data have been combined. In this analysis, the best MLS reached 95.0% global accuracy in 1 out of 3 classes distinction (ASD, NPD, controls). This study demonstrates the value of EEG processing with advanced MLS in the differential diagnosis between ASD and NPD cases. The results were not affected by age, ethnicity and technicalities of EEG acquisition, confirming the existence of a specific EEG signature in ASD cases. To further support these findings, it was decided to test the behavior of already trained neural networks on 10 Italian very young ASD children (25-37 months). In this test, 9 out of 10 cases have been correctly recognized as ASD subjects in the best case. Conclusions. These results confirm the possibility of an early automatic autism detection based on standard EEG.
机译:背景和目标。在以前的一项研究中,我们展示了一个新的EEG处理方法,称为多尺度排名组织地图/隐式功能作为压缩时间(MS-ROM / IFAST)在意大利语谱系(ASD)的意大利儿童的计算机化脑电图之间进行了几乎完美的区别通常发展孩子。在这项研究中,我们评估了在与其他神经精神疾病(NPD)影响的儿童中区分ASD受试者。方法。在德克萨斯州的精神科学实践中,诊断出患有ASD和20名儿童的20名儿童进入该研究。在MS-ROM / IFAST中输入持续10分钟的伪影的连续段。从MS-ROM / IFAST创建的新变量,仅根据相关标准选择了12个。所选功能表示哪些监控机器学习系统(MLS)充当盲分类器。结果。将ASD与其他NPD病例区别为93%至97.5%的总体预测能力。结果在进一步的实验中确认了意大利和美国数据的组合。在这种分析中,最佳MLS在3个类别(ASD,NPD,Controls)中有1个全球精度达到95.0%。本研究展示了ASD和NPD病例之间的差异诊断中具有晚期MLS的EEG处理的价值。结果不受年龄,种族和脑电图征收技术的影响,确认ASD病例中的特定EEG签名存在。为了进一步支持这些调查结果,决定在10个意大利非常年轻的ASD儿童(25-37个月)上测试已经训练有素的神经网络的行为。在该测试中,在最佳情况下,10例中有9例被正确被认为是ASD受试者。结论。这些结果证实了基于标准脑电图的早期自动自闭症检测的可能性。

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