Z. Zolghadr, S. A. Batouli, M. Tehrani-Doost, Lida Shafaghi, M. Hadjighassem, H. Alavi Majd, Y. Mehrabi
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Methods: This cross-sectional study analyzed the preprocessed data from the 2011 ADHD-200 Global Competition. A total of 768 and 171 data items were considered training and test, respectively. The diagnosis status was used as a response variable. Age, gender, hand dominance, and activity relationship between 116 brain regions derived from inverse covariance matrix and inverse sparse covariance matrix were used as predictive variables. Accordingly, this study compared the performance of three models, namely support vector machine (SVM), distance-weighted discrimination (DWD), and data maximum dispersion classifier (DMDC) for ADHD categorization. Results: The highest value for the total accuracy was reported for the SVM model on the sparse covariance matrix. Moreover, the highest values for the balanced classification rate (BCR) (59%) and sensitivity (64%) were reported for DMDC on the sparse covariance matrix. The best level of specificity (99%) was obtained from DWD using the sparse covariance matrix. The highest levels of the values (i.e., total accuracy and BCR) were achieved through the model fitting on the sparse matrices. Among the six models, the DMDC model on sparse covariance matrix was the most optimal algorithm due to the superiority of the two indices (i.e., accuracy: 60% and BCR: 60%) and the favorable balance between sensitivity and specificity values. Conclusions: Among the current studied three models, DMDC performance, applying the sparse data, remarkably improved the results of classification processes. 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引用次数: 1
摘要
背景:注意缺陷多动障碍(ADHD)的准确诊断是具有挑战性的临床过程之一。通过功能性磁共振成像揭示的功能神经网络的紊乱最近有所贡献。机器学习方法,特别是分类方法,通常被用作各种数据分析的框架,表明有希望的医学诊断结果。然而,由于神经成像数据是高维的,样本量小(当前数据集),本研究旨在通过考虑数据矩阵稀疏度的具体贡献来评估模型的分类性能。方法:本横断面研究分析了2011年ADHD-200全球竞赛的预处理数据。总共有768和171个数据项分别被认为是训练和测试。诊断状态作为响应变量。用逆协方差矩阵和逆稀疏协方差矩阵得出的116个脑区年龄、性别、手优势和活动关系作为预测变量。因此,本研究比较了支持向量机(SVM)、距离加权判别(distance-weighted discrimination, DWD)和数据最大离散分类器(data maximum dispersion classifier, DMDC)三种模型对ADHD分类的性能。结果:SVM模型在稀疏协方差矩阵上的总准确率最高。此外,据报道,稀疏协方差矩阵上的DMDC的平衡分类率(BCR)(59%)和灵敏度(64%)最高。使用稀疏协方差矩阵从DWD获得最佳特异性水平(99%)。通过在稀疏矩阵上进行模型拟合,获得了最高水平的值(即总精度和BCR)。在6个模型中,基于稀疏协方差矩阵的DMDC模型由于两个指标(准确率为60%,BCR为60%)的优越性以及灵敏度和特异性值之间的良好平衡,是最优算法。结论:在目前研究的三种模型中,应用稀疏数据的DMDC性能显著改善了分类过程的结果。基于目前的发现,包括基底神经节和小脑部分的皮质下结构之间的神经元连接提供了ADHD受试者和健康对照组之间的区别。
Improvement of Classification Performance in High-Dimension Low-Sample-Size Modeling by Sparse Functional Connectivity States in Subjects with Attention Deficit-Hyperactivity Disorder and Healthy Controls
Background: The precise identification of attention deficit-hyperactivity disorder (ADHD) is one of the challenging clinical processes. Disorganizations in functional neural networks revealed via functional magnetic resonance imaging have recently been contributing. Machine learning approaches, particularly classification methods, have commonly been employed as a framework for diverse data analysis, indicating promising medical diagnosis results. However, as the neuroimaging data are high-dimensional with a low sample size (the current dataset), this study aimed to evaluate the classification performance of the models by considering the specific contribution of the sparsity of data matrices. Methods: This cross-sectional study analyzed the preprocessed data from the 2011 ADHD-200 Global Competition. A total of 768 and 171 data items were considered training and test, respectively. The diagnosis status was used as a response variable. Age, gender, hand dominance, and activity relationship between 116 brain regions derived from inverse covariance matrix and inverse sparse covariance matrix were used as predictive variables. Accordingly, this study compared the performance of three models, namely support vector machine (SVM), distance-weighted discrimination (DWD), and data maximum dispersion classifier (DMDC) for ADHD categorization. Results: The highest value for the total accuracy was reported for the SVM model on the sparse covariance matrix. Moreover, the highest values for the balanced classification rate (BCR) (59%) and sensitivity (64%) were reported for DMDC on the sparse covariance matrix. The best level of specificity (99%) was obtained from DWD using the sparse covariance matrix. The highest levels of the values (i.e., total accuracy and BCR) were achieved through the model fitting on the sparse matrices. Among the six models, the DMDC model on sparse covariance matrix was the most optimal algorithm due to the superiority of the two indices (i.e., accuracy: 60% and BCR: 60%) and the favorable balance between sensitivity and specificity values. Conclusions: Among the current studied three models, DMDC performance, applying the sparse data, remarkably improved the results of classification processes. Based on the present findings, the neuronal connectivity among subcortical structures comprising parts of the basal ganglia and cerebellum provides a distinction between ADHD subjects and healthy controls.
期刊介绍:
Archives of neuroscience is a clinical and basic journal which is informative to all practitioners like Neurosurgeons, Neurologists, Psychiatrists, Neuroscientists. It is the official journal of Brain and Spinal Injury Research Center. The Major theme of this journal is to follow the path of scientific collaboration, spontaneity, and goodwill for the future, by providing up-to-date knowledge for the readers. The journal aims at covering different fields, as the name implies, ranging from research in basic and clinical sciences to core topics such as patient care, education, procuring and correct utilization of resources and bringing to limelight the cherished goals of the institute in providing a standard care for the physically disabled patients. This quarterly journal offers a venue for our researchers and scientists to vent their innovative and constructive research works. The scope of the journal is as far wide as the universe as being declared by the name of the journal, but our aim is to pursue our sacred goals in providing a panacea for the intractable ailments, which leave a psychological element in the daily life of such patients. This authoritative clinical and basic journal was founded by Professor Madjid Samii in 2012.