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MRI-based radiomics models to assess prostate cancer, extracapsular extension and positive surgical margins

机译:基于MRI的辐射瘤模型,用于评估前列腺癌,折刷延伸和正面手术边距

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Purpose To investigate the performance of magnetic resonance imaging (MRI)-based radiomics models for benign and malignant prostate lesion discrimination and extracapsular extension (ECE) and positive surgical margins (PSM) prediction. Methods and materials In total, 459 patients who underwent multiparametric MRI (mpMRI) before prostate biopsy were included. Radiomic features were extracted from both T2-weighted imaging (T2WI) and the apparent diffusion coefficient (ADC). Patients were divided into different training sets and testing sets for different targets according to a ratio of 7:3. Radiomics signatures were built using radiomic features on the training set, and integrated models were built by adding clinical characteristics. The areas under the receiver operating characteristic curves (AUCs) were calculated to assess the classification performance on the testing sets. Results The radiomics signatures for benign and malignant lesion discrimination achieved AUCs of 0.775 (T2WI), 0.863 (ADC) and 0.855 (ADC? ?T2WI). The corresponding integrated models improved the AUC to 0.851/0.912/0.905, respectively. The radiomics signatures for ECE achieved the highest AUC of 0.625 (ADC), and the corresponding integrated model achieved the highest AUC (0.728). The radiomics signatures for PSM prediction achieved AUCs of 0.614 (T2WI) and 0.733 (ADC). The corresponding integrated models reached AUCs of 0.680 and 0.766, respectively. Conclusions The MRI-based radiomics models, which took advantage of radiomic features on ADC and T2WI scans, showed good performance in discriminating benign and malignant prostate lesions and predicting ECE and PSM. Combining radiomics signatures and clinical factors enhanced the performance of the models, which may contribute to clinical diagnosis and treatment.
机译:目的探讨磁共振成像(MRI)的性能,基于良性和恶性前列腺病变鉴别和骨折延伸(ECE)和阳性手术边缘(PSM)预测。包括总共459名患者的方法和材料,在前列腺活检前接受多次MRI(MPMRI)。从T2加权成像(T2WI)和表观扩散系数(ADC)中提取射线瘤特征。根据7:3的比例,患者分为不同训练集和测试组,针对不同目标的比例。在训练集上使用射线组件建立了辐射瘤签名,通过添加临床特征来构建集成模型。计算接收器操作特征曲线(AUC)下的区域以评估测试集上的分类性能。结果良性和恶性病变鉴别的辐射瘤特征达到0.775(T2WI),0.863(ADC)和0.855(ADC?T2WI)的AUC。相应的集成模型分别改善AUC至0.851 / 0.912 / 0.905。 ECE的辐射瘤签名达到了0.625(ADC)的最高AUC,相应的集成模型实现了最高的AUC(0.728)。 PSM预测的辐射瘤签名达到0.614(T2WI)和0.733(ADC)的AUC。相应的集成模型分别达到0.680和0.766的AUC。结论基于MRI的辐射瘤模型,它利用ADC和T2WI扫描的射出物特征,表现出良好的性能,在鉴别良性和恶性前列腺病变和预测ECE和PSM方面表现出良好的性能。结合辐射瘤特征和临床因素增强了模型的性能,这可能有助于临床诊断和治疗。

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