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首页> 外文期刊>Cancer Imaging >A CT-based radiomics nomogram for distinguishing between benign and malignant bone tumours
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A CT-based radiomics nomogram for distinguishing between benign and malignant bone tumours

机译:基于CT基的辐射瘤载体,用于区分良性和恶性骨肿瘤

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Background We sought to evaluate the performance of a computed tomography (CT)-based radiomics nomogram we devised in distinguishing benign from malignant bone tumours. Methods Two hundred and six patients with bone tumours were spilt into two groups: a training set ( n ?=?155) and a validation set ( n ?=?51). A feature extraction process based on 3D Slicer software was used to extract the radiomics features from unenhanced CT images, and least absolute shrinkage and selection operator logistic regression was used to calculate the radiomic score to generate a radiomics signature. A clinical model comprised demographics and CT features. A radiomics nomogram combined with the clinical model and the radiomics signature was constructed. The performance of the three models was comprehensively evaluated from three aspects: identification ability, accuracy, and clinical value, allowing for generation of an optimal prediction model. Results The radiomics nomogram comprised clinical and radiomics signature features. The nomogram model displayed good performance in training and validation sets with areas under the curve of 0.917 and 0.823, respectively. The areas under the curve, decision curve analysis, and net reclassification improvement showed that the radiomics nomogram model could obtain better diagnostic performance than the clinical model and achieve greater clinical net benefits than the clinical and radiomics signature models alone. Conclusions We constructed a combined nomogram comprising a clinical model and radiomics signature as a noninvasive preoperative prediction method to distinguish between benign and malignant bone tumours and assist treatment planning.
机译:背景技术我们寻求评估计算机断层扫描(CT)的辐射瘤载体的性能,我们设计用于区分良性骨肿瘤。方法将二百六个骨肿瘤患者溢出分为两组:训练集(n?=?155)和验证集(n?=?51)。基于3D Slicer软件的特征提取过程用于提取来自未加薪CT图像的射频特征,并且最小的绝对收缩和选择操作员逻辑回归用于计算辐射测量以产生辐射族签名。临床模型包括人口统计数据和CT特征。构建了与临床模型相结合的辐射瘤载体签名。三个模型的性能从三个方面进行了全面评估:识别能力,准确性和临床价值,允许产生最佳预测模型。结果辐射族拓图组成了临床和辐射瘤特征。 Nom图案模型在培训和验证组中显示出具有0.917和0.823曲线下的区域的良好性能。曲线下的区域,判定曲线分析和净重新分类改进表明,辐射族载体模型可以获得比临床模型更好的诊断性能,并比单独的临床和辐射族特征模型实现更高的临床净效益。结论我们构建了一种组合的载体,包括临床模型和辐射瘤签名,作为非缺乏术前预测方法,以区分良性和恶性骨肿瘤并协助治疗计划。

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