Department of Radiology and Nuclear Medicine, Erasmus MC, Rotterdam, The Netherlands.
Department of Surgery, Erasmus MC Cancer Institute, Rotterdam, The Netherlands.
Clin Exp Metastasis. 2021 Oct;38(5):483-494. doi: 10.1007/s10585-021-10119-6. Epub 2021 Sep 17.
Histopathological growth patterns (HGPs) are independent prognosticators for colorectal liver metastases (CRLM). Currently, HGPs are determined postoperatively. In this study, we evaluated radiomics for preoperative prediction of HGPs on computed tomography (CT), and its robustness to segmentation and acquisition variations. Patients with pure HGPs [i.e. 100% desmoplastic (dHGP) or 100% replacement (rHGP)] and a CT-scan who were surgically treated at the Erasmus MC between 2003-2015 were included retrospectively. Each lesion was segmented by three clinicians and a convolutional neural network (CNN). A prediction model was created using 564 radiomics features and a combination of machine learning approaches by training on the clinician's and testing on the unseen CNN segmentations. The intra-class correlation coefficient (ICC) was used to select features robust to segmentation variations; ComBat was used to harmonize for acquisition variations. Evaluation was performed through a 100 × random-split cross-validation. The study included 93 CRLM in 76 patients (48% dHGP; 52% rHGP). Despite substantial differences between the segmentations of the three clinicians and the CNN, the radiomics model had a mean area under the curve of 0.69. ICC-based feature selection or ComBat yielded no improvement. Concluding, the combination of a CNN for segmentation and radiomics for classification has potential for automatically distinguishing dHGPs from rHGP, and is robust to segmentation and acquisition variations. Pending further optimization, including extension to mixed HGPs, our model may serve as a preoperative addition to postoperative HGP assessment, enabling further exploitation of HGPs as a biomarker.
组织学生长模式(HGPs)是结直肠癌肝转移(CRLM)的独立预后因素。目前,HGPs 是在术后确定的。在这项研究中,我们评估了 CT 术前预测 HGPs 的放射组学,并评估了其对分割和采集变化的稳健性。回顾性纳入 2003-2015 年在伊拉斯谟医学中心接受单纯 HGPs [即 100%纤维性(dHGP)或 100%替代型(rHGP)] 和 CT 扫描并接受手术治疗的患者。每个病变由三位临床医生和一个卷积神经网络(CNN)进行分割。使用 564 个放射组学特征和机器学习方法的组合,通过对临床医生的训练和对未见过的 CNN 分割的测试来创建预测模型。使用组内相关系数(ICC)选择对分割变化稳健的特征;使用 ComBat 来协调采集变化。通过 100×随机分割交叉验证进行评估。该研究纳入了 76 名患者中的 93 例 CRLM(48% dHGP;52% rHGP)。尽管三位临床医生和 CNN 的分割之间存在很大差异,但放射组学模型的曲线下面积平均值为 0.69。基于 ICC 的特征选择或 ComBat 没有改善。总之,CNN 用于分割和放射组学用于分类的组合具有自动区分 dHGP 和 rHGP 的潜力,并且对分割和采集变化具有稳健性。在进一步优化之前,包括扩展到混合 HGPs,我们的模型可以作为术后 HGP 评估的术前补充,进一步利用 HGPs 作为生物标志物。