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首页> 外文期刊>NeuroImage >Statistical analysis of minimum cost path based structural brain connectivity.
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Statistical analysis of minimum cost path based structural brain connectivity.

机译:基于最小成本路径的结构性大脑连接性的统计分析。

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摘要

Diffusion MRI can be used to study the structural connectivity within the brain. Brain connectivity is often represented by a binary network whose topology can be studied using graph theory. We present a framework for the construction of weighted structural brain networks, containing information about connectivity, which can be effectively analyzed using statistical methods. Network nodes are defined by segmentation of subcortical structures and by cortical parcellation. Connectivity is established using a minimum cost path (mcp) method with an anisotropic local cost function based directly on diffusion weighted images. We refer to this framework as Statistical Analysis of Minimum cost path based Structural Connectivity (SAMSCo) and the weighted structural connectivity networks as mcp-networks. In a proof of principle study we investigated the information contained in mcp-networks by predicting subject age based on the mcp-networks of a group of 974 middle-aged and elderly subjects. Using SAMSCo, age was predicted with an average error of 3.7 years. This was significantly better than predictions based on fractional anisotropy or mean diffusivity averaged over the whole white matter or over the corpus callosum, which showed average prediction errors of at least 4.8 years. Additionally, we classified subjects, based on the mcp-networks, into groups with low and high white matter lesion load, while correcting for age, sex and white matter atrophy. The SAMSCo classification outperformed the classification based on the diffusion measures with a classification accuracy of 76.0% versus 63.2%. We also performed a classification in groups with mild and severe atrophy, correcting for age, sex and white matter lesion load. In this case, mcp-networks and diffusion measures yielded similar classification accuracies of 68.3% and 67.8% respectively. The SAMSCo prediction and classification experiments indicate that the mcp-networks contain information regarding age, white matter lesion load and white matter atrophy, and that in case of age and white matter lesion load the mcp-network based models outperformed the predictions based on diffusion measures.
机译:扩散MRI可用于研究大脑内部的结构连接性。大脑的连通性通常由二进制网络表示,该二进制网络的拓扑可以使用图论进行研究。我们提供了一个用于构建加权结构脑网络的框架,其中包含有关连通性的信息,可以使用统计方法对其进行有效分析。网络节点通过皮层下结构的分割和皮层分隔来定义。连接是使用最小成本路径(mcp)方法和各向异性局部成本函数直接基于扩散加权图像建立的。我们将此框架称为“基于最小成本路径的结构连接性(SAMSCo)的统计分析”,并将加权结构连接性网络称为mcp-networks。在原理验证研究中,我们基于一组974名中老年受试者的mcp网络,通过预测受试者年龄来调查mcp网络中包含的信息。使用SAMSCo可以预测年龄,平均误差为3.7年。这明显好于基于分数各向异性或整个白质或or体平均扩散率的平均预测,后者的平均预测误差至少为4.8年。此外,我们根据mcp网络将受试者分为低和高白质病变负荷组,同时校正年龄,性别和白质萎缩。 SAMSCo分类优于基于扩散度量的分类,分类精度为76.0%对63.2%。我们还对轻度和严重萎缩的人群进行了分类,校正了年龄,性别和白质病变负荷。在这种情况下,mcp网络和扩散度量分别产生相似的分类准确度,分别为68.3%和67.8%。 SAMSCo预测和分类实验表明,mcp网络包含有关年龄,白质病变负荷和白质萎缩的信息,并且在年龄和白质病变负荷的情况下,基于mcp网络的模型优于基于扩散测度的预测。

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