Aymerich María, Riveira-Martín Mercedes, García-Baizán Alejandra, González-Pena Mariña, Sebastià Carmen, López-Medina Antonio, Mesa-Álvarez Alicia, Tardágila de la Fuente Gonzalo, Méndez-Castrillón Marta, Berbel-Rodríguez Andrea, Matos-Ugas Alejandra C, Berenguer Roberto, Sabater Sebastià, Otero-García Milagros
Diagnostic Imaging Research Group, Galicia Sur Health Research Institute, Hospital Álvaro Cunqueiro, 36312 Vigo, Spain.
Medical Physics Research Group, Galicia Sur Health Research Institute, Hospital Álvaro Cunqueiro, 36312 Vigo, Spain.
Diagnostics (Basel). 2023 Apr 10;13(8):1384. doi: 10.3390/diagnostics13081384.
Since the Bosniak cysts classification is highly reader-dependent, automated tools based on radiomics could help in the diagnosis of the lesion. This study is an initial step in the search for radiomic features that may be good classifiers of benign-malignant Bosniak cysts in machine learning models. A CCR phantom was used through five CT scanners. Registration was performed with ARIA software, while Quibim Precision was used for feature extraction. R software was used for the statistical analysis. Robust radiomic features based on repeatability and reproducibility criteria were chosen. Excellent correlation criteria between different radiologists during lesion segmentation were imposed. With the selected features, their classification ability in benignity-malignity terms was assessed. From the phantom study, 25.3% of the features were robust. For the study of inter-observer correlation (ICC) in the segmentation of cystic masses, 82 subjects were prospectively selected, finding 48.4% of the features as excellent regarding concordance. Comparing both datasets, 12 features were established as repeatable, reproducible, and useful for the classification of Bosniak cysts and could serve as initial candidates for the elaboration of a classification model. With those features, the Linear Discriminant Analysis model classified the Bosniak cysts in terms of benignity or malignancy with 88.2% accuracy.
由于博斯尼亚克囊肿分类高度依赖阅片者,基于影像组学的自动化工具可能有助于病变的诊断。本研究是寻找在机器学习模型中可能成为博斯尼亚克囊肿良恶性良好分类器的影像组学特征的第一步。通过五台CT扫描仪使用了CCR体模。使用ARIA软件进行配准,同时使用Quibim Precision进行特征提取。使用R软件进行统计分析。基于重复性和再现性标准选择稳健的影像组学特征。在病变分割过程中对不同放射科医生之间设定了出色的相关性标准。利用选定的特征,评估了它们在良恶性方面的分类能力。从体模研究中,25.3%的特征是稳健的。对于囊性肿块分割中的观察者间相关性(ICC)研究,前瞻性选择了82名受试者,发现48.4%的特征在一致性方面非常出色。比较两个数据集,确定了12个特征具有可重复性、可再现性且对博斯尼亚克囊肿分类有用,可作为构建分类模型的初始候选特征。利用这些特征,线性判别分析模型对博斯尼亚克囊肿的良恶性分类准确率为88.2%。