Abstract

PurposeMicrovascular invasion (MVI) is a valuable predictor of survival in hepatocellular carcinoma (HCC) patients. This study developed predictive models using eXtreme Gradient Boosting (XGBoost) and deep learning based on CT images to predict MVI preoperatively.MethodsIn total, 405 patients were included. A total of 7302 radiomic features and 17 radiological features were extracted by a radiomics feature extraction package and radiologists, respectively. We developed a XGBoost model based on radiomics features, radiological features and clinical variables and a three-dimensional convolutional neural network (3D-CNN) to predict MVI status. Next, we compared the efficacy of the two models.ResultsOf the 405 patients, 220 (54.3%) were MVI positive, and 185 (45.7%) were MVI negative. The areas under the receiver operating characteristic curves (AUROCs) of the Radiomics-Radiological-Clinical (RRC) Model and 3D-CNN Model in the training set were 0.952 (95% confidence interval (CI) 0.923–0.973) and 0.980 (95% CI 0.959–0.993), respectively (p = 0.14). The AUROCs of the RRC Model and 3D-CNN Model in the validation set were 0.887 (95% CI 0.797–0.947) and 0.906 (95% CI 0.821–0.960), respectively (p = 0.83). Based on the MVI status predicted by the RRC and 3D-CNN Models, the mean recurrence-free survival (RFS) was significantly better in the predicted MVI-negative group than that in the predicted MVI-positive group (RRC Model: 69.95 vs. 24.80 months, p < 0.001; 3D-CNN Model: 64.06 vs. 31.05 months, p = 0.027).ConclusionThe RRC Model and 3D-CNN models showed considerable efficacy in identifying MVI preoperatively. These machine learning models may facilitate decision-making in HCC treatment but requires further validation.

Highlights

  • Liver cancer is the sixth-most common cancer in the world and the fourth cause of cancer-related death worldwide (Villanueva 2019)

  • We developed models based on image analysis by XGBoost and 3D-CNN, which may enhance the accuracy of preoperative non-invasive assessment of microvascular invasion (MVI) in hepatocellular carcinoma (HCC) patients

  • Studies have reported that radiological features like the tumour margin, internal arteries, peritumoural enhancement and hypodense halos are essential in predicting MVI (Banerjee et al 2015; Renzulli et al 2016, 2018; Zheng et al 2017), which is consistent with the current study

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Summary

Introduction

Liver cancer is the sixth-most common cancer in the world and the fourth cause of cancer-related death worldwide (Villanueva 2019). The mainstay treatment for HCC is surgery, including hepatic resection and liver transplantation. For patients with MVI, a more aggressive treatment strategy may be preferred, such as a wide resection margin or anatomical resection for patients receiving hepatic resection (HR), an ablation margin of at least 0.5–1 cm 360° around the tumour for patients receiving ablation, and neoadjuvant therapy before surgery (Hirokawa et al 2014; Hocquelet et al 2016; Nakazawa et al 2007; Nault et al 2018; Zhao et al 2017). For liver transplantation (LT) in patients with HCC, MVI status has been recognized as an essential variable for identifying patients who will benefit most from LT (Mazzaferro et al 2009, 2018)

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