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Feature-based statistical analysis of structural MR data for automatic detection of focal cortical dysplastic (FCD) lesions

机译:基于特征的结构MR数据统计分析,可自动检测局灶性皮质发育不良(FCD)病变

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We present a framework for automatic detection of focal cortical dysplastic (FCD) lesions from MR images of human brain. Our method extends, and improves the lesion detection specificity of a previously published voxel-based technique using cortical thickness and signal gradient as discriminating features of FCD lesions. In absence of any prior anatomical hypothesis regarding the spatial location of the lesion, the method examines each intracerebral voxel individually and simultaneously, and constructs a statistical parametric map indicating evidence against a null hypothesis of no effect in the patient versus a normal control group. Upon interrogation of the statistical map with an optimally selected threshold, the voxels demonstrating the improbability of the null hypothesis are reported as lesions. The method correctly detects 5 out of the 10 cases with a very high significance. The cases we did not detect were in deep gray matter regions, where the variance in the feature maps was high, decreasing the significance of the effect.
机译:我们提出了一个框架,用于从人脑的MR图像自动检测局灶性皮质发育异常(FCD)病变。我们的方法扩展并改进了以前发布的基于体素的技术的病变检测特异性,该技术使用皮质厚度和信号梯度作为FCD病变的识别特征。在没有关于病变空间位置的任何先前解剖学假设的情况下,该方法分别并同时检查每个脑内体素,并构建统计参数图,以表明证据表明患者对正常对照组没有无效的无效假设。用最佳选择的阈值询问统计图时,表明无效假设不可能的体素被报告为病变。该方法可以正确地检测出十分重要的10个案例中的5个。我们未发现的案例位于深灰质区域,这些区域的特征图差异很大,从而降低了效果的重要性。

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