首页> 外文会议>International conference of computational methods in sciences and engineering >PROBABILISTIC NEURAL NETWORK CLASSIFIER VERSUS MULTILAYER PERCEPTRON CLASSIFIER IN DISCRIMINATING BRAIN SPECT IMAGES OF PATIENTS WITH DIABETES FROM NORMAL CONTROLS
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PROBABILISTIC NEURAL NETWORK CLASSIFIER VERSUS MULTILAYER PERCEPTRON CLASSIFIER IN DISCRIMINATING BRAIN SPECT IMAGES OF PATIENTS WITH DIABETES FROM NORMAL CONTROLS

机译:概率神经网络分类器与多层Perceptron分类器在鉴别正常对照中患有糖尿病患者的脑部Spect图像

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The aim of this study was to compare the performance of the probabilistic neural network (PNN) classifier with the multilayer perceptron (MLP) classifier, in an attempt to discriminate between patients with diabetes mellitus type Ⅱ (DMII) and normal subjects using medical images from brain single photon emission computed tomography (SPECT). Features from the gray-level histogram and the spatial-dependence matrix were generated from image-samples collected from brain SPECT images of diabetic patients and healthy volunteers, and they were used as input to the PNN and the MLP classifiers. Highest accuracies were 99.5% for the MLP and 99% for the PNN and they were achieved in the left inferior parietal lobule, employing the mean value and correlation features. Our findings show that the MLP classifier outperformed slightly the PNN classifier in almost all cerebral regions, but the lower computational time of the PNN makes him a very useful classification tool. The high precision of both classifiers indicate significant differences in radio-pharmaceutical (99mTc-ECD) uptake of diabetic patients compared to the normal controls, which may be due to cerebral blood flow disruption in patients with DMII.
机译:本研究的目的是将概率神经网络(PNN)分类器与多层感知(MLP)分类器的性能进行比较,以便在患有糖尿病Ⅱ型(DMII)和正常受试者的患者之间进行区分脑单光子发射计算断层扫描(SPECT)。从糖尿病患者和健康志愿者的脑SPECT图像收集的图像样本中产生来自灰度直方图和空间依赖性矩阵的特征,它们用作PNN和MLP分类器的输入。对于MLP的最高精度为99.5%,PNN为99%,它们在左下方瓣膜中实现,采用平均值和相关特征。我们的研究结果表明,MLP分类器在几乎所有脑区中PNN分类器略微表现出略微地,但PNN的较低计算时间使他成为一个非常有用的分类工具。两种分类器的高精度表明与正常对照相比,糖尿病患者的无线电药物(99MTC-ECD)摄取的显着差异,这可能是由于DMII患者的脑血流破坏。

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