Department of Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, Hubei 430030, China.
Institute of Organ Transplantation, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Key Laboratory of Organ Transplantation of Ministry of Education, National Health Commission and Chinese Academy of Medical Sciences, Wuhan, Hubei 430030, China.
Eur J Radiol. 2022 Mar;148:110158. doi: 10.1016/j.ejrad.2022.110158. Epub 2022 Jan 15.
To develop a machine-learning-based radiomics signature of ADC for discriminating between benign and malignant testicular masses and compare its classification performance with that of minimum and mean ADC.
A total of ninety-seven patients with 101 histopathologically confirmed testicular masses (70 malignancies, 31 benignities) were evaluated in this retrospective study. Eight hundred fifty-one radiomics features were extracted from the preoperative ADC map of each lesion. The mean and minimum ADC values are part of the radiomics features. Thirty lesions were randomly selected to estimate the reliability of the features. The redundant features were eliminated using univariate analysis (independent t test and Mann-Whitney U test, where appropriate) and Spearman's rank correlation. The least absolute shrinkage and selection operator (LASSO) algorithm was employed for feature selection and radiomics signature generation. The classification performance of the radiomics signature and minimum and mean ADC values were evaluated by receiver operating characteristic (ROC) curve analysis and compared by DeLong's test.
The whole lesion-based mean ADC showed no difference between benign and malignant testicular masses (P = 0.070, training cohort; P = 0.418, validation cohort). Compared with the minimum ADC, the ADC-based radiomics signature yielded a higher area under the curve (AUC) in both the training (AUC: 0.904, 95% confidence interval [CI]: 0.832-0.975) and validation cohorts (AUC: 0.868, 95% CI: 0.728-1.00).
Conventional mean ADC values are not always helpful in discriminating between testicular benignities and malignancies. The minimum ADC and radiomics signature might be better alternatives, with the radiomics signature performing better than the minimum ADC.
开发一种基于机器学习的 ADC 放射组学特征,用于鉴别良恶性睾丸肿块,并比较其分类性能与最小和平均 ADC 的分类性能。
本回顾性研究共纳入 97 例 101 例经组织病理学证实的睾丸肿块患者(70 例恶性肿瘤,31 例良性肿瘤)。从每个病变的术前 ADC 图中提取 851 个放射组学特征。平均 ADC 值和最小 ADC 值是放射组学特征的一部分。随机选择 30 个病变来评估特征的可靠性。使用单变量分析(独立 t 检验和 Mann-Whitney U 检验,视情况而定)和 Spearman 秩相关来消除冗余特征。最小绝对收缩和选择算子(LASSO)算法用于特征选择和放射组学特征生成。通过受试者工作特征(ROC)曲线分析评估放射组学特征和最小、平均 ADC 值的分类性能,并通过 DeLong 检验进行比较。
全病变平均 ADC 值在良恶性睾丸肿块之间无差异(P=0.070,训练队列;P=0.418,验证队列)。与最小 ADC 相比,ADC 基放射组学特征在训练队列(AUC:0.904,95%置信区间[CI]:0.832-0.975)和验证队列(AUC:0.868,95%CI:0.728-1.00)中均产生了更高的 AUC。
常规平均 ADC 值并不总是有助于鉴别睾丸良恶性。最小 ADC 和放射组学特征可能是更好的替代方案,放射组学特征的性能优于最小 ADC。