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首页> 外文期刊>Medical informatics and the Internet in medicine >Support vector machines based analysis of brain SPECT images for determining cerebral abnormalities in asymptomatic diabetic patients.
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Support vector machines based analysis of brain SPECT images for determining cerebral abnormalities in asymptomatic diabetic patients.

机译:基于支持向量机的脑SPECT图像分析,用于确定无症状糖尿病患者的脑部异常。

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Purpose: An image processing method was developed to investigate whether brain SPECT images of patients with diabetes mellitus type II (DMII) and no brain damage differ from those of normal subjects. Materials and methods: Twenty-five DMII patients and eight healthy volunteers underwent brain 99mTc-Bicisate SPECT examination. A semi-automatic method, allowing for physician's interaction, was developed to delineate specific brain regions (ROIs) on the SPECT images. Twenty-eight features from the grey-level histogram and the spatial-dependence matrix were computed from numerous small image-samples collected from each specific ROI. Classification into 'diabetics' and 'non-diabetics' was performed for each ROI separately. The classical least squares-minimum distance (LSMD) classifier and the recently developed support vector machines (SVM) classifier were used. System performance was evaluated by means of the leave-one-out method; one sample was left out, the classifier was trained by the rest of the samples, and the left-out sample was classified. By repeating for all samples, the classifier's performance could be tested on data not incorporated in its design. Results: Highest classification accuracies (LSMD: 97.8%, SVM: 99.1%) were achieved at the right occipital lobule employing two features, the standard deviation and entropy. For the rest of the ROIs classification accuracies ranged between 84.5 and 98.6%. Conclusion: Our findings indicate cerebral blood flow disruption in patients with DMII. The proposed system may assist physicians in evaluating cerebral blood flow in patients with DMII undergoing brain SPECT.
机译:目的:开发了一种图像处理方法来研究II型糖尿病(DMII)且无脑损伤的患者的大脑SPECT图像是否与正常受试者的图像不同。材料和方法:25例DMII患者和8名健康志愿者接受了99mTc-Bicisate脑的SPECT检查。开发了一种允许医师互动的半自动方法,以在SPECT图像上描绘特定的大脑区域(ROI)。从从每个特定ROI收集的大量小图像样本中计算了灰度直方图和空间依赖矩阵的28个特征。对每个ROI分别进行“糖尿病”和“非糖尿病”分类。使用经典的最小二乘最小距离(LSMD)分类器和最近开发的支持向量机(SVM)分类器。系统性能通过留一法进行评估;遗漏一个样本,其余样本对分类器进行训练,并对遗漏的样本进行分类。通过对所有样本重复进行,可以对未包含在设计中的数据进行测试。结果:右枕小叶采用标准偏差和熵这两个特征实现了最高的分类准确度(LSMD:97.8%,SVM:99.1%)。对于其余的ROI分类,其准确性介于84.5和98.6%之间。结论:我们的发现表明DMII患者的脑血流中断。拟议的系统可以帮助医生评估患有脑SPECT的DMII患者的脑血流量。

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