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Graph Theory Based Classification of Brain Connectivity Network for Autism Spectrum Disorder

机译:基于图论的自闭症谱系大脑连通性网络分类

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Connections in the human brain can be examined efficiently using brain imaging techniques such as Diffusion Tensor Imaging (DTI), Resting-State fMRI. Brain connectivity networks are constructed by using image processing and statistical methods, these networks explain how brain regions interact with each other. Brain networks can be used to train machine learning models that can help the diagnosis of neurological disorders. In this study, two types (DTI, fMRI) of brain connectivity networks are examined to retrieve graph theory based knowledge and feature vectors of samples. The classification model is developed by integrating three machine learning algorithms with a naieve voting scheme. The evaluation of the proposed model is performed on the brain connectivity samples of patients with Autism Spectrum Disorder. When the classification model is compared with another state-of-the-art study, it is seen that the proposed method outperforms the other one. Thus, graph-based measures computed on brain connectivity networks might help to improve diagnostic capability of in-silico methods. This study introduces a graph theory based classification model for diagnostic purposes that can be easily adapted for different neurological diseases.
机译:可以使用脑成像技术(例如扩散张量成像(DTI),静止状态fMRI)有效地检查人脑中的连接。大脑连接网络是通过使用图像处理和统计方法构建的,这些网络解释了大脑区域之间如何相互作用。脑网络可用于训练有助于学习神经系统疾病的机器学习模型。在这项研究中,研究了两种类型的(DTI,fMRI)大脑连接网络,以检索基于图论的知识和样本特征向量。通过将三种机器学习算法与朴素的投票方案相集成来开发分类模型。对自闭症谱系障碍患者的大脑连通性样本进行了所提出模型的评估。当将分类模型与另一项最新研究进行比较时,可以看出所提出的方法优于另一种方法。因此,在大脑连接网络上计算的基于图的度量可能有助于提高计算机模拟方法的诊断能力。这项研究引入了一种基于图论的分类模型进行诊断,可以轻松地适应不同的神经系统疾病。

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