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Unsupervised Scoliosis Diagnosis via a Joint Recognition Method with Multifeature Descriptors and Centroids Extraction

机译:通过多特征描述符和质心提取的联合识别方法进行无监督的脊柱侧弯诊断

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To solve the problem of scoliosis recognition without a labeled dataset, an unsupervised method is proposed by combining the cascade gentle AdaBoost (CGAdaBoost) classifier and distance regularized level set evolution (DRLSE). The main idea of the proposed method is to establish the relationship between individual vertebrae and the whole spine with vertebral centroids. Scoliosis recognition can be transferred into automatic vertebral detection and segmentation processes, which can avoid the manual data-labeling processing. In the CGAdaBoost classifier, diversified vertebrae images and multifeature descriptors are considered to generate more discriminative features, thus improving the vertebral detection accuracy. After that, the detected bounding box represents an appropriate initial contour of DRLSE to make the vertebral segmentation more accurate. It is helpful for the elimination of initialization sensitivity and quick convergence of vertebra boundaries. Meanwhile, vertebral centroids are extracted to connect the whole spine, thereby describing the spinal curvature. Different parts of the spine are determined as abnormal or normal in accordance with medical prior knowledge. The experimental results demonstrate that the proposed method cannot only effectively identify scoliosis with unlabeled spine CT images but also have superiority against other state-of-the-art methods.
机译:为了解决脊柱侧弯识别中没有标签数据集的问题,提出了一种结合级联轻度AdaBoost(CGAdaBoost)分类器和距离正则化水平集演化(DRLSE)的无监督方法。提出的方法的主要思想是通过椎体质心建立单个椎骨与整个脊柱之间的关系。脊柱侧弯的识别可以转移到自动椎骨检测和分割过程中,从而可以避免手动进行数据标记处理。在CGAdaBoost分类器中,可以考虑使用多样化的椎骨图像和多特征描述符来生成更多的判别特征,从而提高椎骨检测的准确性。之后,检测到的边界框代表DRLSE的适当初始轮廓,以使椎骨分割更准确。这有助于消除初始化敏感性和快速收敛椎骨边界。同时,提取椎体质心以连接整个脊柱,从而描述脊柱弯曲。根据医学先验知识,将脊柱的不同部分确定为异常或正常。实验结果表明,所提出的方法不仅可以有效地利用未标记的脊柱CT图像识别脊柱侧弯,而且还具有优于其他最新技术的优势。

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