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Recognition of vertebral compression fractures in magnetic resonance images using statistics of height and width

机译:使用高度和宽度的统计量识别磁共振图像中的椎体压缩性骨折

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Vertebral compression fractures (VCFs) present as partial collapses of vertebral bodies and may occur secondary to osteoporosis bone fragility and to metastatic cancer infiltration. The correct diagnosis of nontraumatic VCFs is therefore, fundamental for correct treatment. We aimed to classify VCFs using T1-weighted magnetic resonance images (MRI) of the lumbar spine acquired in the sagittal plane. Our study group comprised 63 patients (38 women and 25 men). From these patients 102 lumbar VCFs (53 benign and 49 malignant) and 89 normal vertebral bodies were manually segmented. The principal axis of each vertebral body region of interest was identified using moments. Statistical features of height and width measured perpendicular and parallel to the principal axis were computed. The k-nearest-neighbor method, a neural network with radial basis functions, and the naïve Bayes classifier were used with feature selection for classification. Areas under the receiver operating characteristic curve of 0.96 in the recognition of VCFs as compared with normal vertebral bodies and 0.73 for the classification of benign versus malignant VCFs were obtained. The proposed methods are promising for the recognition of VCFs, but additional features are needed to improve the classification of benign versus malignant VCFs.
机译:椎骨压缩性骨折(VCF)表现为椎体的部分塌陷,可能继发于骨质疏松症,骨脆性和转移性癌浸润。因此,正确诊断非创伤性VCF是正确治疗的基础。我们旨在使用矢状面采集的腰椎的T1加权磁共振图像(MRI)对VCF进行分类。我们的研究组包括63位患者(38位女性和25位男性)。从这些患者中手动分割出102个腰椎VCF(53个良性和49个恶性)和89个正常椎体。使用力矩识别每个感兴趣的椎体区域的主轴。计算垂直和平行于主轴测得的高度和宽度的统计特征。 k近邻法,具有径向基函数的神经网络和朴素的贝叶斯分类器与特征选择一起用于分类。与正常椎体相比,在识别VCF时,接收器工作特性曲线下的面积为0.96,对于良性和恶性VCF的分类,获得的面积为0.73。提出的方法有望用于VCF的识别,但是还需要其他功能来改善良性和恶性VCF的分类。

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