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A morphological descriptors-based pattern recognition system for the characterization of hip osteoarthritis severity from X-ray images

机译:基于形态描述符的模式识别系统,用于从X射线图像表征髋骨关节炎严重程度

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摘要

A pattern recognition system is proposed for the characterization of hip osteoarthritis (OA) severity. Sixty-four (64) hips, corresponding to 32 unilateral and bilateral OA patients were studied. Employing the Kellgren and Lawrence scale, hips were grouped into three OA severity categories: "Normal", "Mild/Moderate", and "Severe". Utilizing custom-developed software, 64 ROIs, corresponding to patients' radiographic Hip Joint Spaces (HJSs), were determined on digitized radiographs. A Probabilistic Neural Network classifier was designed employing morphological descriptors of the HJS-ROIs. The classifier discriminated successfully between (i) normal and OA hips (92.2% accuracy) and (ii) hips of "Mild/Moderate" OA and of "Severe" OA (91.3% accuracy). The proposed system could contribute in assessing hip OA severity.
机译:提出了一种模式识别系统来表征髋骨关节炎(OA)的严重程度。研究了六十四(64)髋,分别对应于32例单侧和双侧OA患者。采用Kellgren和Lawrence量表,将髋部分为三个OA严重性类别:“正常”,“轻度/中度”和“严重”。使用定制开发的软件,在数字化的X射线照片上确定了与患者的影像学髋关节间隙(HJS)相对应的64个ROI。利用HJS-ROI的形态学描述符设计了概率神经网络分类器。分类器成功地区分了(i)正常和OA髋(准确度为92.2%)和(ii)“轻度/中度” OA和“严重” OA的臀部(准确度为91.3%)。拟议的系统可以有助于评估髋骨OA的严重程度。

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