Patrick G. Johnston Centre for Cancer Research, Queen's University Belfast, Northern Ireland, UK.
Patrick G. Johnston Centre for Cancer Research, Queen's University Belfast, Northern Ireland, UK.
Radiother Oncol. 2024 Mar;192:110106. doi: 10.1016/j.radonc.2024.110106. Epub 2024 Jan 20.
Radiomics is a rapidly evolving area of research that uses medical images to develop prognostic and predictive imaging biomarkers. In this study, we aimed to identify radiomics features correlated with longitudinal biomarkers in preclinical models of acute inflammatory and late fibrotic phenotypes following irradiation.
Female C3H/HeN and C57BL6 mice were irradiated with 20 Gy targeting the upper lobe of the right lung under cone-beam computed tomography (CBCT) image-guidance. Blood samples and lung tissue were collected at baseline, weeks 1, 10 & 30 to assess changes in serum cytokines and histological biomarkers. The right lung was segmented on longitudinal CBCT scans using ITK-SNAP. Unfiltered and filtered (wavelet) radiomics features (n = 842) were extracted using PyRadiomics. Longitudinal changes were assessed by delta analysis and principal component analysis (PCA) was used to remove redundancy and identify clustering. Prediction of acute (week 1) and late responses (weeks 20 & 30) was performed through deep learning using the Random Forest Classifier (RFC) model.
Radiomics features were identified that correlated with inflammatory and fibrotic phenotypes. Predictive features for fibrosis were detected from PCA at 10 weeks yet overt tissue density was not detectable until 30 weeks. RFC prediction models trained on 5 features were created for inflammation (AUC 0.88), early-detection of fibrosis (AUC 0.79) and established fibrosis (AUC 0.96).
This study demonstrates the application of deep learning radiomics to establish predictive models of acute and late lung injury. This approach supports the wider application of radiomics as a non-invasive tool for detection of radiation-induced lung complications.
放射组学是一个快速发展的研究领域,它使用医学图像来开发预测和预后的影像学生物标志物。在这项研究中,我们旨在确定与照射后急性炎症和晚期纤维化表型的临床前模型中的纵向生物标志物相关的放射组学特征。
在锥形束 CT(CBCT)图像引导下,雌性 C3H/HeN 和 C57BL6 小鼠接受 20Gy 的上叶右肺照射。在基线、第 1、10 和 30 周采集血液样本和肺组织,以评估血清细胞因子和组织学生物标志物的变化。使用 ITK-SNAP 在纵向 CBCT 扫描上对右肺进行分割。使用 PyRadiomics 提取未经滤波和滤波(小波)的放射组学特征(n=842)。通过 delta 分析评估纵向变化,并使用主成分分析(PCA)去除冗余并识别聚类。通过随机森林分类器(RFC)模型使用深度学习对急性(第 1 周)和晚期(第 20 和 30 周)反应进行预测。
确定了与炎症和纤维化表型相关的放射组学特征。在第 10 周的 PCA 中检测到纤维化的预测特征,但直到第 30 周才检测到明显的组织密度。使用 5 个特征训练的炎症(AUC 0.88)、早期纤维化检测(AUC 0.79)和已建立纤维化(AUC 0.96)的 RFC 预测模型。
本研究证明了深度学习放射组学在建立急性和晚期肺损伤预测模型中的应用。这种方法支持将放射组学作为一种非侵入性工具来检测放射性肺损伤的更广泛应用。