Early MS Identification Using Non-linear Functional Connectivity and Graph-theoretic Measures of Cognitive Task-fMRI Data.

IF 1 Q4 NEUROSCIENCES
Farzad Azarmi, Ahmad Shalbaf, Seyedeh Naghmeh Miri Ashtiani, Hamid Behnam, Mohammad Reza Daliri
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引用次数: 0

Abstract

Introduction: Functional neuroimaging has developed a fundamental ground for understanding the physical basis of the brain. Recent studies have extracted invaluable information from the underlying substrate of the brain. However, cognitive deficiency has insufficiently been assessed by researchers in multiple sclerosis (MS). Therefore, extracting the brain network differences among relapsing-remitting MS (RRMS) patients and healthy controls as biomarkers of cognitive task functional magnetic resonance imaging (fMRI) data and evaluating such biomarkers using machine learning were the aims of this study.

Methods: In order to activate cognitive functions of the brain, blood-oxygen-level-dependent (BOLD) data were collected throughout the application of a cognitive task. Accordingly, a nonlinear-based brain network was established using kernel mutual information based on the automated anatomical labeling atlas (AAL). Subsequently, a statistical test was carried out to determine the variation in brain network measures between the two groups on binary adjacency matrices. We also found the prominent graph features by merging the Wilcoxon rank-sum test with the Fisher score as a hybrid feature selection method.

Results: The results of the classification performance measures showed that the construction of a brain network using a new nonlinear connectivity measure in task-fMRI performs better than the linear connectivity measures in terms of classification. The Wilcoxon rank-sum test also demonstrated a superior result for clinical applications.

Conclusion: We believe that non-linear connectivity measures, like KMI, outperform linear connectivity measures, like correlation coefficient in finding the biomarkers of MS disease according to classification performance metrics.

Highlights: The performance of some brain regions (the hippocampus, parahippocampus, cuneus, pallidum, and two segments of the cerebellum) is different between healthy and MS people.Non-linear connectivity measures, such as Kernel mutual information, perform better than linear connectivity measures, such as correlation coefficient, in finding the biomarkers of MS disease.

Plain language summary: Multiple sclerosis (MS) can disrupt the function of the central nervous system. The function of brain network is impaired in these patients. In this study, we evaluated the change in brain network based on a non-linear connectivity measure using cognitive task-based fMRI data between MS patients and healthy controls. We used Kernel mutual information (KMI) and designed a graph network based on the results of connectivity analysis. The the paced auditory serial addition test was used to activate cognitive functions of the brain. The classification was employed for the results using different decision tree -based technique and support vector machine. KMI can be considered a valid measure of connectivity over linear measures, like the correlation coefficient. KMI does not have the drawbacks of mutual information technique. However, further studies should be implemented on brain data of MS patients to draw more definite conclusions.

利用认知任务-核磁共振成像数据的非线性功能连接性和图论测量方法早期识别多发性硬化症
引言功能神经成像为了解大脑的物理基础奠定了基础。最近的研究已经从大脑的基本结构中提取了宝贵的信息。然而,研究人员对多发性硬化症(MS)患者的认知缺陷评估不足。因此,提取复发性多发性硬化症(RRMS)患者和健康对照组之间的大脑网络差异作为认知任务功能磁共振成像(fMRI)数据的生物标志物,并利用机器学习评估这些生物标志物是本研究的目的:为了激活大脑的认知功能,在执行认知任务的整个过程中收集了血氧水平依赖性(BOLD)数据。因此,利用基于自动解剖标记图谱(AAL)的核互信息建立了基于非线性的大脑网络。随后,我们对二元邻接矩阵进行了统计检验,以确定两组之间脑网络测量的差异。我们还通过将 Wilcoxon 秩和检验与 Fisher 评分合并作为一种混合特征选择方法,发现了突出的图特征:分类性能测量结果表明,在任务-磁共振成像中使用新的非线性连通性测量方法构建大脑网络的分类性能优于线性连通性测量方法。Wilcoxon秩和检验在临床应用方面也显示出更优越的结果:我们认为,在根据分类性能指标寻找多发性硬化症疾病生物标志物方面,KMI 等非线性连通性指标优于相关系数等线性连通性指标:核互信息等非线性连接度量在寻找多发性硬化症疾病生物标志物方面的表现优于相关系数等线性连接度量。这些患者的大脑网络功能受损。在这项研究中,我们使用基于认知任务的 fMRI 数据评估了多发性硬化症患者和健康对照组之间基于非线性连通性测量的脑网络变化。我们使用核互信息(KMI),并根据连通性分析结果设计了一个图网络。我们使用步调听觉连续加法测试来激活大脑的认知功能。我们使用不同的决策树技术和支持向量机对结果进行了分类。与相关系数等线性测量方法相比,KMI 可被视为连接性的有效测量方法。KMI 没有互信息技术的缺点。不过,要得出更明确的结论,还需要对多发性硬化症患者的大脑数据进行进一步研究。
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
64
审稿时长
4 weeks
期刊介绍: BCN is an international multidisciplinary journal that publishes editorials, original full-length research articles, short communications, reviews, methodological papers, commentaries, perspectives and “news and reports” in the broad fields of developmental, molecular, cellular, system, computational, behavioral, cognitive, and clinical neuroscience. No area in the neural related sciences is excluded from consideration, although priority is given to studies that provide applied insights into the functioning of the nervous system. BCN aims to advance our understanding of organization and function of the nervous system in health and disease, thereby improving the diagnosis and treatment of neural-related disorders. Manuscripts submitted to BCN should describe novel results generated by experiments that were guided by clearly defined aims or hypotheses. BCN aims to provide serious ties in interdisciplinary communication, accessibility to a broad readership inside Iran and the region and also in all other international academic sites, effective peer review process, and independence from all possible non-scientific interests. BCN also tries to empower national, regional and international collaborative networks in the field of neuroscience in Iran, Middle East, Central Asia and North Africa and to be the voice of the Iranian and regional neuroscience community in the world of neuroscientists. In this way, the journal encourages submission of editorials, review papers, commentaries, methodological notes and perspectives that address this scope.
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