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Voxelwise Detection of Cerebral Microbleed in CADASIL Patients by Naive Bayesian Classifier

机译:朴素贝叶斯分类器患者中脑微微患者的脑素检测

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It is important to detect cerebral microbleed voxels from the brain image of cerebral autosomal-dominant arteriopathy with subcortical infarcts and Leukoencephalopathy (CADASIL) patients. Methods developed by other researchers before have a high variablity of intra-observer and inter-observer. In our study, we collect our dataset from the 20 brain volumetric images, 10 for CADASIL patients and 10 for healthy controls. And we used naive baysian classifier to get the results. We use cross validation to improve the performance of naive Baysian classifier. The results show that the average sensitivity is 74.53±0.96%, the average specificity is 74.51±1.05%, and the average accuracy is 74.52±1.00%.
机译:探测来自脑常染色体显性动脉病的脑形象的脑微孔体素与皮下梗死和白细胞病(Cadasil)患者。其他研究人员开发的方法在观察者内具有高变形和观察者间。在我们的研究中,我们从20个脑体积图像中收集我们的数据集,10例为Cadasil患者,10例健康控制。我们使用Naive Baysian分类器来获得结果。我们使用交叉验证来提高朴素贝塞分类器的性能。结果表明,平均灵敏度为74.53±0.96%,平均特异性为74.51±1.05%,平均精度为74.52±1.00%。

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