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An EM-MPM algorithmic approach to detect and classify thyroid dysfunction in medical thermal images

机译:一种用于在医学热图像中检测和分类甲状腺功能障碍的EM-MPM算法

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摘要

In this paper, a non-invasive method to diagnose thyroid using thermal imaging process is proposed. Heat distribution in an object is referred as thermography it is utilised in medical analysis as the human body emits certain amount of heat. The proposed technique is based on the following computational methods expectation maximisation - maximise of the posterior marginal algorithm (EM-MPM) for segmenting the thyroid region, grey-level co-occurrence matrix (GLCM) for feature extraction and support vector machine (SVM) for classifying abnormalities. The experiment was carried out of 40 thermal images of which ten were normal and 30 abnormal (hyper and hypo) from real human thyroid region thermal image. The accuracy of proposed system is 97.5% which is significantly good. As a result domain user are able to analyses the prediction given by the proposed system for decision support tool.
机译:本文提出了一种利用热成像技术诊断甲状腺的非侵入性方法。对象中的热分布称为热成像,由于人体散发一定量的热量,因此在医学分析中被使用。所提出的技术基于以下预期最大的计算方法-最大化用于分割甲状腺区域的后边缘算法(EM-MPM),用于特征提取的灰度级共现矩阵(GLCM)和支持向量机(SVM)用于对异常进行分类。从真实的人甲状腺区域的热图像中,对40个热图像进行了实验,其中10个正常,30个异常(高和低)。所提出系统的准确率为97.5%,非常好。结果,域用户能够分析所提出的用于决策支持工具的系统给出的预测。

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