首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >Biomarkers for Identifying First-Episode Schizophrenia Patients Using Diffusion Weighted Imaging
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Biomarkers for Identifying First-Episode Schizophrenia Patients Using Diffusion Weighted Imaging

机译:使用扩散加权成像识别初发性精神分裂症患者的生物标志物

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Recent advances in diffusion weighted MR imaging (dMRI) has made it a tool of choice for investigating white matter abnormalities of the brain and central nervous system. In this work, we design a system that detects abnormal features (biomarkers) of first-episode schizophrenia patients and then classifies them using these features. We use two different models of the dMRI data, namely, spherical harmonics and the two-tensor model. The algorithm works by first computing several diffusion measures from each model. An affine-invariant representation of each subject is then computed, thus avoiding the need for registration. This representation is used within a kernel based feature selection algorithm to determine the biomarkers that are statistically different between the two populations. Confirmation of how well these biomarkers identify each population is obtained by using several classifiers such as, k-nearest neighbors, Parzen window classifier, and support vector machines to separate 21 first-episode patients from 20 age-matched normal controls. Classification results using leave-many-out cross-validation scheme are given for each representation. This algorithm is a first step towards early detection of schizophrenia.
机译:弥散加权MR成像(dMRI)的最新进展使其成为研究大脑和中枢神经系统白质异常的首选工具。在这项工作中,我们设计了一个系统,该系统可检测出首发精神分裂症患者的异常特征(生物标志物),然后使用这些特征对其进行分类。我们使用两种不同的dMRI数据模型,即球谐函数和两张量模型。该算法通过首先从每个模型计算几个扩散度量来起作用。然后计算每个受试者的仿射不变表示,从而避免了注册的需要。该表示法在基于内核的特征选择算法中使用,以确定两个种群之间统计上不同的生物标记。通过使用几个分类器(例如k近邻,Parzen窗口分类器和支持向量机)将21个首发患者与20个年龄匹配的正常对照区分开来,可以确定这些生物标记物对每个人群的识别程度。对于每种表示,都给出了使用多出交叉验证方案的分类结果。该算法是早期发现精神分裂症的第一步。

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