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A support vector machines classifier to assess the severity of idiopathic scoliosis from surface topography

机译:支持向量机分类器,用于从表面形貌评估特发性脊柱侧弯的严重程度

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A support vector machines (SVM) classifier was used to assess the severity of idiopathic scoliosis (IS) based on surface topographic images of human backs. Scoliosis is a condition that involves abnormal lateral curvature and rotation of the spine that usually causes noticeable trunk deformities. Based on the hypothesis that combining surface topography and clinical data using a SVM would produce better assessment results, we conducted a study using a dataset of 111 IS patients. Twelve surface and clinical indicators were obtained for each patient. The result of testing on the dataset showed that the system achieved 69-85% accuracy in testing. It outperformed a linear discriminant function classifier and a decision tree classifier on the dataset.
机译:支持向量机(SVM)分类器用于基于人的背部表面地形图像来评估特发性脊柱侧凸(IS)的严重性。脊柱侧弯是一种涉及异常侧弯和脊柱旋转的疾病,通常会引起明显的躯干畸形。基于使用SVM结合表面形貌和临床数据可以产生更好评估结果的假设,我们使用111名IS患者的数据集进行了一项研究。为每位患者获得十二个表面和临床指标。对数据集的测试结果表明,该系统在测试中达到了69-85%的准确性。它在数据集上的表现优于线性判别函数分类器和决策树分类器。

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