Institute of Biostructures and Bioimaging of the National Research Council, Naples, Italy.
Department of Advanced Biomedical Sciences, University of Naples "Federico II", Naples, Italy.
Eur J Radiol. 2022 Apr;149:110226. doi: 10.1016/j.ejrad.2022.110226. Epub 2022 Feb 21.
To investigate radiomics and machine learning (ML) as possible tools to enhance MRI-based risk stratification in patients with endometrial cancer (EC).
From two institutions, 133 patients (Institution1 = 104 and Institution2 = 29) with EC and pre-operative MRI were retrospectively enrolled and divided in two a low-risk and a high-risk group according to EC stage and grade. T2-weighted (T2w) images were three-dimensionally annotated to obtain volumes of interest of the entire tumor. A PyRadiomics based and previously validated pipeline was used to extract radiomics features and perform feature selection. In particular, feature stability, variance and pairwise correlation were analyzed. Then, the least absolute shrinkage and selection operator technique and recursive feature elimination were used to obtain the final feature set. The performance of a Support Vector Machine (SVM) algorithm was assessed on the dataset from Institution 1 via 2-fold cross-validation. Then, the model was trained on the entire Institution 1 dataset and tested on the external test set from Institution 2.
In total, 1197 radiomics features were extracted. After the exclusion of unstable, low variance and intercorrelated features least absolute shrinkage and selection operator and recursive feature elimination identified 4 features that were used to build the predictive ML model. It obtained an accuracy of 0.71 and 0.72 in the train and test sets respectively.
Whole-lesion T2w-derived radiomics showed encouraging results and good generalizability for the identification of low-risk EC patients.
探究影像组学和机器学习(ML)是否可以作为增强子宫内膜癌(EC)患者基于 MRI 的风险分层的工具。
从两个机构回顾性地招募了 133 名患有 EC 和术前 MRI 的患者(机构 1=104 例,机构 2=29 例),并根据 EC 分期和分级将其分为低危组和高危组。对 T2 加权(T2w)图像进行三维标注,以获得整个肿瘤的感兴趣区域。使用基于 PyRadiomics 的先前验证的管道提取影像组学特征并进行特征选择。特别是,分析了特征稳定性、方差和两两相关性。然后,使用最小绝对收缩和选择算子技术和递归特征消除来获得最终特征集。通过在机构 1 的数据集上进行 2 折交叉验证评估支持向量机(SVM)算法的性能。然后,在整个机构 1 数据集上训练模型,并在机构 2 的外部测试集上进行测试。
共提取了 1197 个影像组学特征。在排除不稳定、低方差和相互关联的特征后,最小绝对收缩和选择算子以及递归特征消除确定了 4 个用于构建预测 ML 模型的特征。它在训练集和测试集中的准确率分别为 0.71 和 0.72。
全病变 T2w 衍生的影像组学在识别低危 EC 患者方面显示出令人鼓舞的结果和良好的泛化能力。