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肾实质期肾嗜酸细胞瘤与嫌色性肾细胞癌鉴别诊断中影像组学特征作用的探索性分析

Exploratory Analysis of the Role of Radiomic Features in the Differentiation of Oncocytoma and Chromophobe RCC in the Nephrographic CT Phase.

作者信息

Aymerich María, García-Baizán Alejandra, Franco Paolo Niccolò, Otero-García Milagros

机构信息

Diagnostic Imaging Research Group, Galicia Sur Health Research Institute, Hospital Álvaro Cunqueiro, 36312 Vigo, Spain.

Radiology Department, Hospital Álvaro Cunqueiro, 36312 Vigo, Spain.

出版信息

Life (Basel). 2023 Sep 23;13(10):1950. doi: 10.3390/life13101950.

Abstract

In diagnostic imaging, distinguishing chromophobe renal cell carcinomas (chRCCs) from renal oncocytomas (ROs) is challenging, since they both present similar radiological characteristics. Radiomics has the potential to help in the differentiation between chRCCs and ROs by extracting quantitative imaging. This is a preliminary study of the role of radiomic features in the differentiation of chRCCs and ROs using machine learning models. In this retrospective work, 38 subjects were involved: 19 diagnosed with chRCCs and 19 with ROs. The CT nephrographic contrast phase was selected in each case. Three-dimensional segmentations of the lesions were performed and the radiomic features were extracted. To assess the reliability of the features, the intraclass correlation coefficient was calculated from the segmentations performed by three radiologists with different degrees of expertise. The selection of features was based on the criteria of excellent intraclass correlation coefficient (ICC), high correlation, and statistical significance. Three machine learning models were elaborated: support vector machine (SVM), random forest (RF), and logistic regression (LR). From 105 extracted features, 41 presented an excellent ICC and 6 were not highly correlated with each other. Only two features showed significant differences according to histological type and machine learning models were developed with them. LR was the better model, in particular, with an 83% precision.

摘要

在诊断成像中,区分嫌色性肾细胞癌(chRCC)和肾嗜酸细胞瘤(RO)具有挑战性,因为它们具有相似的放射学特征。放射组学有潜力通过提取定量成像数据来帮助区分chRCC和RO。这是一项使用机器学习模型研究放射组学特征在chRCC和RO鉴别诊断中作用的初步研究。在这项回顾性研究中,纳入了38名受试者:19名被诊断为chRCC,19名被诊断为RO。在每种情况下均选择CT肾实质期造影图像。对病变进行三维分割并提取放射组学特征。为评估这些特征的可靠性,由三名不同专业水平的放射科医生进行分割,计算组内相关系数。特征选择基于组内相关系数(ICC)优秀、相关性高和具有统计学意义的标准。构建了三种机器学习模型:支持向量机(SVM)、随机森林(RF)和逻辑回归(LR)。从提取的105个特征中,41个具有优秀的ICC,6个彼此之间相关性不高。仅两个特征根据组织学类型显示出显著差异,并据此构建机器学习模型。LR是表现更好的模型,特别是其精度达到83%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba37/10607929/ea2305f524aa/life-13-01950-g001.jpg

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