论文标题
通过模拟CT采集评估放射线学特征稳定性
Assessing radiomics feature stability with simulated CT acquisitions
论文作者
论文摘要
医学成像定量特征曾经在临床研究中具有争议。如今,分析技术的进步,例如通过机器学习,使定量特征能够逐渐在诊断和研究中有用。通过“放射线”特征改善组织表征,其提取可以自动化。尽管取得了进步,但定量特征的稳定仍然是一个重要的开放问题。由于功能可以对采集细节的变化高度敏感,因此量化稳定性并有效选择稳定功能并不是微不足道的。在这项工作中,我们基于公开可用的Astra工具箱(www.astra-toolbox.com)开发和验证计算机断层扫描(CT)模拟器环境。我们表明,从模拟器产生的虚拟幻像图像中提取的放射线特征的可变性,稳定性和判别能力与在串联幻影研究中观察到的相似。此外,我们表明可变性是在多中心幻影研究和模拟结果之间匹配的。因此,我们证明可以利用模拟器来评估放射线特征的稳定性和辨别力。
Medical imaging quantitative features had once disputable usefulness in clinical studies. Nowadays, advancements in analysis techniques, for instance through machine learning, have enabled quantitative features to be progressively useful in diagnosis and research. Tissue characterisation is improved via the 'radiomics' features, whose extraction can be automated. Despite the advances, stability of quantitative features remains an important open problem. As features can be highly sensitive to variations of acquisition details, it is not trivial to quantify stability and efficiently select stable features. In this work, we develop and validate a Computed Tomography (CT) simulator environment based on the publicly available ASTRA toolbox (www.astra-toolbox.com). We show that the variability, stability and discriminative power of the radiomics features extracted from the virtual phantom images generated by the simulator are similar to those observed in a tandem phantom study. Additionally, we show that the variability is matched between a multi-center phantom study and simulated results. Consequently, we demonstrate that the simulator can be utilised to assess radiomics features' stability and discriminative power.