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Individual classification of ADHD patients by integrating multiscale neuroimaging markers and advanced pattern recognition techniques

机译:通过整合多尺度神经影像标记和先进的模式识别技术对多动症患者进行个体分类

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摘要

Accurate classification or prediction of the brain state across individual subject, i.e., healthy, or with brain disorders, is generally a more difficult task than merely finding group differences. The former must be approached with highly informative and sensitive biomarkers as well as effective pattern classification/feature selection approaches. In this paper, we propose a systematic methodology to discriminate attention deficit hyperactivity disorder (ADHD) patients from healthy controls on the individual level. Multiple neuroimaging markers that are proved to be sensitive features are identified, which include multiscale characteristics extracted from blood oxygenation level dependent (BOLD) signals, such as regional homogeneity (ReHo) and amplitude of low-frequency fluctuations. Functional connectivity derived from Pearson, partial, and spatial correlation is also utilized to reflect the abnormal patterns of functional integration, or, dysconnectivity syndromes in the brain. These neuroimaging markers are calculated on either voxel or regional level. Advanced feature selection approach is then designed, including a brain-wise association study (BWAS). Using identified features and proper feature integration, a support vector machine (SVM) classifier can achieve a cross-validated classification accuracy of 76.15% across individuals from a large dataset consisting of 141 healthy controls and 98 ADHD patients, with the sensitivity being 63.27% and the specificity being 85.11%. Our results show that the most discriminative features for classification are primarily associated with the frontal and cerebellar regions. The proposed methodology is expected to improve clinical diagnosis and evaluation of treatment for ADHD patient, and to have wider applications in diagnosis of general neuropsychiatric disorders.
机译:准确地分类或预测单个受试者(即健康人或患有脑部疾病)的脑部状态通常比仅发现组间差异更为困难。前者必须使用高度信息化和敏感的生物标记物以及有效的模式分类/特征选择方法。在本文中,我们提出了一种系统的方法,可以将注意缺陷多动障碍(ADHD)患者与健康对照在个体水平上区分开。确定了多个被证明是敏感特征的神经影像标记,包括从血液氧合水平依赖性(BOLD)信号中提取的多尺度特征,例如区域均匀性(ReHo)和低频波动幅度。从皮尔森,部分和空间相关性得出的功能连通性也被用来反映功能整合的异常模式,或大脑中的连通性异常综合征。这些神经影像标记是在体素或区域水平上计算的。然后设计高级特征选择方法,包括脑智能关联研究(BWAS)。通过使用已识别的特征和适当的特征集成,支持向量机(SVM)分类器可以对来自141个健康对照和98个ADHD患者的大型数据集的个体进行交叉验证的分类准确性,达到76.15%,敏感性为63.27%和特异性为85.11%。我们的研究结果表明,最有区别的分类特征主要与额叶和小脑区域有关。所提出的方法有望改善多动症患者的临床诊断和治疗评估,并在一般神经精神疾病的诊断中具有更广泛的应用。

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