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Extracting the Potential Features of Digital Panoramic Radiograph Images by Combining Radio Morphometry Index, Texture Analysis, and Morphological Features

机译:结合射电形态指标,纹理分析和形态特征提取数字全景射线照相图像的潜在特征

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摘要

Osteoporosis is a type of disease that is not easily detected visually. It contributes to bone fracture and so early diagnosis is particularly important to prevent bone fracture. An integrated approach for extraction of cortical and trabecular bone on the digital panoramic radiograph (DPR) images was proposed to screen osteoporosis. We performed radio morphometry index (RM1), texture analysis, and morphology analysis to extract the features of DPR images. Then, the extracted features were further applied to decision tree technique which lead to obtain potential or significant features about osteoporosis. An automated classifier was developed based on Learning Vector Quantization (LVQ) to differentiate between normal and osteoporotic class. In this study, seven major features playing significant role in the osteoporosis identification. For testing purpose, the accuracy of decision tree technique resulted 96,77% and the accuracy of LVQ was 80%.
机译:骨质疏松症是一种视觉上不易发现的疾病。它会导致骨折,因此早期诊断对于预防骨折尤为重要。提出了一种在数字全景X射线照片(DPR)图像上提取皮质和小梁骨的综合方法,以筛查骨质疏松症。我们执行了射电形态指标(RM1),纹理分析和形态分析,以提取DPR图像的特征。然后,将提取的特征进一步应用于决策树技术,从而获得有关骨质疏松症的潜在或重要特征。基于学习向量量化(LVQ)的自动分类器已开发出来,以区分正常和骨质疏松分类。在这项研究中,七个主要特征在骨质疏松症的鉴定中起着重要作用。出于测试目的,决策树技术的准确性为96.77%,LVQ的准确性为80%。

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