Department of Graduate, Shandong First Medical University and Shandong Academy of Medical Sciences, Jinan, China; Department of Radiation Oncology of the Thorax Cancer (5th Radiation Oncology) Oncology, Shandong Cancer Hospital and Institute, Shandong First Medical University and Shandong Academy of Medical Sciences, Jinan, China.
Department of Radiology, Wayne State University, Detroit, United States.
Phys Med. 2022 Apr;96:130-139. doi: 10.1016/j.ejmp.2022.03.002. Epub 2022 Mar 11.
Quantitative radiomics features extracted from medical images have been shown to provide value in predicting clinical outcomes. The study for robustness and reproducibility of radiomics features obtained with magnetic resonance image guided linear accelerator (MR-Linac) is insufficient. The objective of this work was to investigate the stability of radiomics features extracted from T2-weighted images of MR-Linac for five common effect factors.
In this work, ten jellies, five fruits/vegetables, and a dynamic phantom were used to evaluate the impact of test-retest, intraobserver, varied thicknesses, radiation, and motion. These phantoms were scanned on a 1.5 T MRI system of MR-Linac. For test-retest data, the phantoms were scanned twice with repositioning within 15 min. To assess for intraobserver comparison, the segmentation of MR images was repeated by one observer in a double-blind manner. Three slice thicknesses (1.2 mm, 2.4 mm, and 4.8 mm) were used to select robust features that were insensitive to different thicknesses. The effect of radiation on features was studied by acquiring images when the beam was on. Common movement images of patients during radiotherapy were simulated by a dynamic phantom with five motion states to study the motion effect. A total of 1409 radiomics features, including shape features, first-order features, and texture features, were extracted from the original, wavelet, square, logarithmic, exponential and gradient images. The robustness and reproducibility features were evaluated using the concordance correlation coefficient (CCC).
The intraobserver group had the most robust features (936/1079, 86.7%), while the group of motion effects had the lowest robustness (56/936, 6.0%), followed by the group of different thickness cohorts (374/936, 40.0%). The stability of features in the test-retest and radiation groups was 1072 of 1312 (81.7%) and 810 of 936 (86.5%), respectively. Overall, 25 of 1409 (2.4%) radiomics features remained robust in all five tests, mostly focusing on the image type of the wavelet. The number of stable features extracted from when the beam was on was less than that extracted when the beam was off. Shape features were the most robust of all of the features in all of the groups, excluding the motion group.
Compared with other factors fewer features remained robust to the effect of motion. This result emphasizes the need to consider the effect of respiration motion. The study for T2-weighted images from MR-Linac under different conditions will help us to build a robust predictive model applicable for radiotherapy.
从医学图像中提取的定量放射组学特征已被证明可用于预测临床结果。但是,用于评估磁共振引导直线加速器(MR-Linac)中获得的放射组学特征的稳健性和可重复性的研究还不够充分。本研究的目的是研究从 MR-Linac 的 T2 加权图像中提取的放射组学特征在五种常见影响因素下的稳定性。
本研究使用了 10 个果冻、5 种水果/蔬菜和一个动态体模来评估测试-重测、观察者内、不同厚度、辐射和运动的影响。这些体模在 MR-Linac 的 1.5T MRI 系统上进行了扫描。对于测试-重测数据,将体模在 15 分钟内重新定位进行两次扫描。为了评估观察者内的比较,由一名观察者以双盲方式重复进行 MR 图像的分割。使用三种切片厚度(1.2mm、2.4mm 和 4.8mm)选择稳健的特征,这些特征对不同的厚度不敏感。通过在光束开启时获取图像来研究辐射对特征的影响。通过一个具有五种运动状态的动态体模模拟患者在放射治疗期间的常见运动图像,研究运动效果。从原始图像、小波图像、平方图像、对数图像、指数图像和梯度图像中总共提取了 1409 个放射组学特征,包括形状特征、一阶特征和纹理特征。使用一致性相关系数(CCC)评估稳健性和可重复性特征。
观察者内组具有最稳健的特征(936/1079,86.7%),而运动效果组的稳健性最低(56/936,6.0%),其次是不同厚度组(374/936,40.0%)。测试-重测组和辐射组的特征稳定性分别为 1312 个中的 1072 个(81.7%)和 936 个中的 810 个(86.5%)。总体而言,在所有五项测试中,有 25 个(2.4%)放射组学特征保持稳健,主要集中在小波图像类型上。当光束开启时提取的稳定特征数量少于光束关闭时提取的特征数量。在所有组中,形状特征除了运动组之外,都是所有特征中最稳健的。
与其他因素相比,运动的影响使较少的特征保持稳健。该结果强调了需要考虑呼吸运动的影响。对 MR-Linac 的 T2 加权图像在不同条件下的研究将有助于我们建立一个适用于放射治疗的稳健预测模型。