Departamento de Bioingeniería e Ingeniería Aeroespacial, Universidad Carlos III de Madrid, Madrid, Spain.
Instituto de Investigación, Sanitaria Gregorio Marañón, Madrid, Spain.
PLoS One. 2020 Nov 30;15(11):e0242597. doi: 10.1371/journal.pone.0242597. eCollection 2020.
Few tools are available to predict tumor response to treatment. This retrospective study assesses visual and automatic heterogeneity from 18F-FDG PET images as predictors of response in locally advanced rectal cancer.
This study included 37 LARC patients who underwent an 18F-FDG PET before their neoadjuvant therapy. One expert segmented the tumor from the PET images. Blinded to the patient´s outcome, two experts established by consensus a visual score for tumor heterogeneity. Metabolic and texture parameters were extracted from the tumor area. Multivariate binary logistic regression with cross-validation was used to estimate the clinical relevance of these features. Area under the ROC Curve (AUC) of each model was evaluated. Histopathological tumor regression grade was the ground-truth.
Standard metabolic parameters could discriminate 50.1% of responders (AUC = 0.685). Visual heterogeneity classification showed correct assessment of the response in 75.4% of the sample (AUC = 0.759). Automatic quantitative evaluation of heterogeneity achieved a similar predictive capacity (73.1%, AUC = 0.815).
A response prediction model in LARC based on tumor heterogeneity (assessed either visually or with automatic texture measurement) shows that texture features may complement the information provided by the metabolic parameters and increase prediction accuracy.
目前用于预测肿瘤治疗反应的工具较少。本回顾性研究评估了 18F-FDG PET 图像的视觉和自动异质性,作为局部晚期直肠癌(LARC)患者对治疗反应的预测指标。
本研究纳入了 37 例接受新辅助治疗前 18F-FDG PET 检查的 LARC 患者。一名专家从 PET 图像中分割肿瘤。两位专家在不了解患者结果的情况下,通过共识建立了肿瘤异质性的视觉评分。从肿瘤区域提取代谢和纹理参数。采用交叉验证的多变量二分类逻辑回归估计这些特征的临床相关性。评估每个模型的 ROC 曲线下面积(AUC)。组织病理学肿瘤消退分级为金标准。
标准代谢参数可区分 50.1%的应答者(AUC=0.685)。视觉异质性分类正确评估了 75.4%的样本的反应(AUC=0.759)。自动定量评估异质性也具有相似的预测能力(73.1%,AUC=0.815)。
基于肿瘤异质性(通过视觉或自动纹理测量评估)的 LARC 反应预测模型表明,纹理特征可能补充代谢参数提供的信息,提高预测准确性。