SPECT图像中致痫区的反向定位

C. Aguerrebere, P. Sprechmann, P. Musé, R. Ferrando
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引用次数: 7

摘要

在难治性癫痫中,神经影像学的目标是定位癫痫发作的区域。示踪剂在注射时累积并保持固定比例的区域脑血流量(rCBF),用于获得癫痫发作期间和发作之间的大脑活动的SPECT图像。检测癫痫区最常用的方法是对两幅图像进行共配准和归一化相减,并对其进行阈值处理。该方法已被证明是非常有用的,但也有一些缺点:结果取决于所选择的阈值和假检测的丰度。在本文中,我们提出了一种反向算法,用于检测大脑区域与显著变化的rCBF使用两个SPECT图像。该方法由形式演绎而来,不涉及任意参数。比较两种方法在六个病人提出。该算法在所有情况下都显示出良好的结果,并且比阈值法具有更强的鲁棒性。
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A-contrario localization of epileptogenic zones in SPECT images
In refractory epilepsy, the goal of neuroimaging is to localize the region of seizure onset. Tracers that accumulate and remain fixed proportional to regional cerebral blood flow (rCBF) at the time of injection are used to obtain SPECT images of the brain activity during and between seizures. The most used technique for detecting the epileptogenic zone (EZ) is to threshold the co-registered and normalized subtraction of these two images. This method has proven to be very useful but has some disadvantages: result depends on the selected threshold and abundance of false detections. In this paper we propose an a-contrario algorithm for detecting regions of the brain with significant changes in the rCBF using two SPECT images. This new method arises from formal deduction and no arbitrary parameters are involved. Comparisons of both methodologies on six patients are presented. The proposed algorithm shows good results in all cases and is more robust than the thresholding method.
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