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Detection of diffuse abnormal perfusion in SPECT using a normal brain atlas.

机译:使用正常脑图谱检测SPECT中的弥漫性异常灌注。

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摘要

Visual assessment, with significant inter- or intraobserver variability, is still the norm for the evaluation of Single Photon Emission Computerized Tomography (SPECT) cerebral perfusion studies. We present in this paper an automated method for screening SPECT studies to detect diffuse disseminated abnormalities based on a computerized atlas of normal regional cerebral blood flow (rCBF). To generate the atlas, a set of normal brain SPECT studies are registered together. The atlas contains the intensity mean, the nonlinear displacement mean, and the variance of the activity pattern. A patient is then evaluated by registering his or her SPECT volume to the atlas and computing the nonlinear 3-D displacement of each voxel needed for the best shape fit to it. A voxel is counted as abnormal registered patient (or if the 3-D motion necessary to move the voxel to its registered position) is superior to 3 SD of normal mean. The number of abnormal voxels is used to classify studies. We validated this approach on24 SPECT perfusion studies selected visually for having clear diffuse anomalies and 21 normal studies. A Markovian segmentation algorithm is also used to identify the white and gray matters for regional analysis. Based on the number of abnormal voxels, two supervised classifiers were tested: (1) minimum distance-to-mean and (2) Bayesian. The analysis of the intensity and displacement "abnormal" voxels allow one to achieve an 80% correct classification rate for the whole brain and a 93% rate if we consider only voxels in the segmented gray matter region.
机译:观察者之间或观察者内部具有明显差异的视觉评估仍是评估单光子发射计算机断层扫描(SPECT)脑灌注研究的标准。我们在本文中提出了一种自动方法,用于筛选SPECT研究,以基于正常区域脑血流(rCBF)的计算机图集来检测弥漫性弥散性异常。为了生成图集,将一组正常的大脑SPECT研究注册在一起。该图集包含强度平均值,非线性位移平均值和活动模式的方差。然后,通过将患者的SPECT体积注册到地图集并计算最佳体形所需的每个体素的非线性3D位移,对患者进行评估。将体素视为异常注册患者(或将体素移动到其注册位置所需的3-D运动)高于正常平均值的3 SD。异常体素的数量用于对研究进行分类。我们在视觉选择的24个SPECT灌注研究中验证了此方法,这些研究具有明显的弥散异常和21个正常研究。马尔可夫分割算法也用于识别白色和灰色物质,以进行区域分析。根据异常体素的数量,测试了两个监督分类器:(1)最小平均距离和(2)贝叶斯。通过对强度和位移“异常”体素的分析,可以使整个大脑的正确分类率达到80%,如果仅考虑分段灰质区域中的体素,则可以达到93%。

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