小鼠体内肿瘤模型来解释放射学特征的可解释性。

A. Rifi, F. Geirnaert, Camille Raets, C. Aisati, I. Dufait, M. Ridder, K. Barbé
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引用次数: 0

摘要

医学影像在肿瘤患者的管理中起着至关重要的作用,它通常用于肿瘤的诊断、分期和随访。此外,在放射治疗(RT)的背景下,医学物理学家利用医学图像进行剂量计划和准确的剂量传递。这些图像包含反映潜在表型的有价值的信息。这些信息可以通过提取定量特征来获取,这些特征随后用于设计机器学习预测模型。这个过程被称为放射组学。然而,放射学特征固有的非生物可解释性强烈地阻碍了它们的临床应用。因此,我们的目标是通过进行专门的临床前体内实验来揭示放射学特征的生物学意义。在本研究中,我们旨在推进和优化我们的原始设置。从体内小鼠肿瘤模型的计算机断层扫描(CT)中提取放射学特征。对小鼠进行扫描,然后给予RT、氧诱导药物或两者联合治疗并重新扫描。采用探索性因子分析(EFA)对特征进行分析和比较。结果显示,一些特征能够区分治疗组。此外,这些特征在重新扫描时表现出高水平的可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Murine in vivo tumor model to explain the interpretability of radiomic features.
Medical imaging plays a crucial role in the management of oncological patients, where it is routinely used for diagnosis, staging and follow-up of tumors. Additionally, in the context of radiotherapy (RT), medical physicists utilize medical images for dose planning and accurate dose delivery. These images contain valuable information that reflects the underlying phenotype. This information can be accessed through the extraction of quantitative features that are subsequently used to design machine learning prediction models. This process is referred to as radiomics. However, the inherent non-biological-interpretability of radiomic features strongly hinders their clinical application. Therefore, we aim to unravel the biological meaning of radiomic features by performing dedicated preclinical in vivo experiments. In this study, we aimed to advance and optimize our original setup. Radiomic features from computed tomography (CT) scans of an in vivo murine tumor model were extracted. Mice were scanned, afterwards treated with RT, an oxygen-inducing drug or a combination hereof and re-scanned. Features were analyzed and compared using an exploratory factor analysis (EFA). The results revealed that some features are able to differentiate between the treatment groups. Furthermore, the features exhibited a high level of repeatability upon rescanning.
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