脑出血CT扫描图像的自动分割与分类

Bahareh Shahangian, H. Pourghassem
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引用次数: 24

摘要

脑出血的检测和分类是医生早期抢救患者的重要帮助。在本文中,我们试图引入一种自动检测和分类方法,以改善和加快医生的决策过程。为了达到这一目的,我们首先使用一种简单有效的分割方法来检测和分离出血区域与大脑的其他部分,然后我们从每个检测到的出血区域中提取一些特征。采用基于遗传算法(GA)的特征选择算法选择方便的特征。最后,我们区分了不同类型的出血。我们的算法在一组完美的ct扫描图像上进行了评估,对EDH、ICH和SDH三种主要出血类型的分割准确率分别为96.22%、95.14%和90.04%。在分类步骤中,多层神经网络比KNN分类器具有更高的准确率(93.3%)。最终,我们对脑出血的检测和分类准确率达到90%以上。
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Automatic brain hemorrhage segmentation and classification in CT scan images
Brain hemorrhage detection and classification is a major help to physicians to rescue patients in an early stage. In this paper, we have tried to introduce an automatic detection and classification method to improve and accelerate the process of physicians' decision-making. To achieve this purpose, at first we have used a simple and effective segmentation method to detect and separate the hemorrhage regions from other parts of the brain, and then we have extracted a number of features from each detected hemorrhage region. We selected some of convenient features by using a Genetic Algorithm (GA)-based feature selection algorithm. Eventually, we have classified the different types of hemorrhages. Our algorithm is evaluated on a perfect set of CT-scan images and the segmentation accuracy for three major types of hemorrhages (EDH, ICH and SDH) obtained 96.22%, 95.14% and 90.04%, respectively. In the classification step, multilayer neural network could be more successful than the KNN classifier because of its higher accuracy (93.3%). Finally, we achieved the accuracy rate of more than 90% for the detection and classification of brain hemorrhages.
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