Unraveling the biological meaning of radiomic features

A. Rifi, I. Dufait, C. Aisati, M. Ridder, K. Barbé
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引用次数: 5

Abstract

Radiomics has the potential of characterizing the tumor phenotype hidden in medical images, allowing us to get more out of medical images than the eyes can see and liberating us from only using lesion size as a tumor response criterion. The extracted radiomics features are typically used in machine learning models to predict tumor responses. However, the inherent non-biological-interpretability of the features strongly hinders their clinical application. Therefore, our group aims to discover the biological meaning of radiomics features by performing dedicated in vivo experiments. Here, as a proof of concept, the radiomics features extracted from the CT scans of three widely used and well-characterized murine tumor models (CT26, 4T1 and EMT6) were analyzed and compared using an exploratory factor analysis. The results suggest that the features were able to differentiate between the different tumor models. To the best of our knowledge, this is the first attempt to directly link biological meaning to radiomic features using controlled in vivo experiments.
揭示放射学特征的生物学意义
放射组学具有表征隐藏在医学图像中的肿瘤表型的潜力,使我们能够从医学图像中获得比眼睛所能看到的更多,并将我们从仅使用病变大小作为肿瘤反应标准中解放出来。提取的放射组学特征通常用于机器学习模型来预测肿瘤反应。然而,这些特征固有的非生物学可解释性强烈地阻碍了它们的临床应用。因此,我们小组的目标是通过进行专门的体内实验来发现放射组学特征的生物学意义。在这里,作为概念证明,从三种广泛使用和表征良好的小鼠肿瘤模型(CT26, 4T1和EMT6)的CT扫描中提取放射组学特征,并使用探索性因子分析进行分析和比较。结果表明,这些特征能够区分不同的肿瘤模型。据我们所知,这是第一次尝试使用受控体内实验将生物学意义与放射学特征直接联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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