应用神经网络提高缺血性脑血管病CT诊断水平

L. Ribeiro, A. Ruano, M. Ruano, P. Ferreira, A. Várkonyi-Kóczy
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引用次数: 3

摘要

技术和计算的发展促进了改善生活质量的新机会,特别是提高了诊断评价的质量。计算机断层扫描是技术进步最为显著的诊断成像设备之一。因此,由于所产生的诊断质量,它是临床应用中使用最多的设备之一。缺血性脑血管意外(ICVA)是一种需要经常使用计算机断层扫描的病理。对这种病理的兴趣,以及通常对作为预防性诊断的脑图像分析的兴趣,主要是由于ICV as在发展中国家的频繁发生及其社会经济影响。从这个意义上说,我们建议通过计算机断层扫描获得的组织密度图像来评估人工神经网络(ANN)自动识别ICVA的能力。这项工作使用颅脑计算机断层扫描检查和他们各自的医疗报告来训练人工神经网络分类器。从图像中提取的特征被用作分类器的输入。一旦人工神经网络被训练好,神经分类器就会用网络从未见过的数据进行测试。在这个阶段,我们可以得出结论,ann可以作为ICV的计算机断层扫描诊断辅助工具做出重大贡献,因为在测试案例中,缺血性病变的自动识别没有假阴性,假阳性很少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Diagnosis of Ischemic CVA's through CT Scan with Neural Networks
Technological and computing evolution promoted new opportunities to improve the quality of life, in particular, the quality of diagnostic evaluations. Computerized tomography is one of the imaging equipments of diagnosis which has most benefited from technological improvements. Because of that, and due to the quality of the diagnosis produced, it is one of the most employed equipments in clinical applications. The ischaemic cerebral vascular accident (ICVA) is the pathology that confirms the frequent use of the computerized tomography. The interest for this pathology, and in general for the encephalon image analysis as a preventive diagnosis, is mainly due to the frequent occurrence of ICV As in development countries and its social-economic impact. In this sense, we propose to evaluate the ability of artificial neural networks (ANN) for automatic identification of ICVA by means of tissue density images obtained by computerised tomography. This work employed cranioencephalon computerised tomography exams and their respective medical reports, to train ANNs classifiers. Features extracted from the images were used as inputs to the classifiers. Once the ANNs were trained, the neural classifiers were tested with data never seen by the network. At this stage we may conclude that the ANNs may significantly contribute as an ICV As computerised tomography diagnostic aid, since among the test cases the automatic identification of ischaemic lesions has been performed with no false negatives e very few false positives.
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