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Classification of malignant and benign liver tumors using a radiomics approach

机译:利用辐射族方法对恶性和良性肝肿瘤进行分类

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Correct diagnosis of the liver tumor phenotype is crucial for treatment planning, especially the distinction between malignant and benign lesions. Clinical practice includes manual scoring of the tumors on Magnetic Resonance (MR) images by a radiologist. As this is challenging and subjective, it is often followed by a biopsy. In this study, we propose a radiomics approach as an objective and non-invasive alternative for distinguishing between malignant, and benign phenotypes. T2-weighted (T2w) MR sequences of 119 patients from multiple centers were collected. We developed an efficient semi-automatic segmentation method, which was used by a radiologist to delineate the tumors. Within these regions, features quantifying tumor shape, intensity, texture, heterogeneity and orientation were extracted. Patient characteristics and semantic features were added for a total of 424 features. Classification was performed using Support Vector Machines (SVMs). The performance was evaluated using internal random-split cross-validation. On the training set within each iteration, feature selection and hyperparameter optimization were performed. To this end, another cross validation was performed by splitting the training sets in training and validation parts. The optimal settings were evaluated on the independent test sets. Manual scoring by a radiologist was also performed. The radiomics approach resulted in 95% confidence intervals of the AUC of [0.75, 0.92], specificity [0.76, 0.96] and sensitivity [0.52, 0.82]. These approach the performance of the radiologist, which were an AUC of 0.93, specificity 0.70 and sensitivity 0.93. Hence, radiomics has the potential to predict the liver tumor benignity in an objective and non-invasive manner.
机译:肝脏肿瘤表型的正确诊断对于治疗规划至关重要,尤其是恶性和良性病变之间的区别。临床实践包括放射科医师磁共振(MR)图像上的肿瘤的手动评分。因为这是挑战性和主观性的,它通常是活检。在这项研究中,我们提出了一种辐射族方法作为区分恶性和良性表型的客观和非侵入性的替代品。收集来自多个中心的119名患者的T2加权(T2W)MR序列。我们开发了一种有效的半自动分段方法,其被放射科医生使用来描绘肿瘤。在这些区域内,提取了量化肿瘤形状,强度,质地,异质性和取向的特征。添加了424个特征的患者特征和语义特征。使用支持向量机(SVM)进行分类。使用内部随机分割交叉验证评估性能。在每次迭代中设置的训练中,执行特征选择和超代amotization。为此,通过将培训集分配在训练和验证部分中来执行另一种交叉验证。在独立的测试集上评估最佳设置。还进行了放射学家的手动评分。辐射瘤方法导致AUC的95%置信区间[0.75,0.92],特异性[0.76,0.96]和敏感性[0.52,0.82]。这些方法是放射科学家的性能,其为0.93,特异性0.70和0.93的灵敏度为0.93。因此,辐射瘤有可能以目标和非侵入性方式预测肝肿瘤症状。

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