Magnetic Resonance Deep Learning Radiomic Model Based on Distinct Metastatic Vascular Patterns for Evaluating Recurrence‐Free Survival in Hepatocellular Carcinoma

Author:

Zhang Cheng1ORCID,Ma Li‐di1,Zhang Xiao‐lan2,Lei Cai3,Yuan Sha‐sha4,Li Jian‐peng5,Geng Zhi‐jun1,Li Xin‐ming6,Quan Xian‐yue6ORCID,Zheng Chao2,Geng Ya‐yuan2,Zhang Jie7,Zheng Qiao‐li8,Hou Jing9,Xie Shu‐yi10,Lu Liang‐he11,Xie Chuan‐miao1ORCID

Affiliation:

1. Department of Radiology Sun Yat‐sen University Cancer Center Guangzhou China

2. Shukun (Beijing) Technology Co, Ltd. Beijing China

3. Department of Pathology Sun Yat‐sen University Cancer Center Guangzhou China

4. Department of Pathology, The First Affiliated Hospital Sun Yat‐sen University Guangzhou Guangdong China

5. Department of Radiology The Tenth Affiliated Hospital of Southern Medical University (Dongguan People's Hospital) Dongguan Guangdong China

6. Department of Radiology, Zhujiang Hospital Southern Medical University Guangzhou China

7. Department of Radiology Zhuhai People's Hospital (Zhuhai Hospital Affiliated with Jinan University) Zhuhai China

8. Department of Pathology Zhuhai People's Hospital (Zhuhai Hospital Affiliated with Jinan University) Zhuhai China

9. Department of Radiology Hunan Cancer Hospital Guangzhou China

10. Department of Radiology Guangzhou People's Eighth Hospital Guangzhou China

11. Department of Hepatobiliary Surgery Sun Yat‐sen University Cancer Center Guangzhou China

Abstract

BackgroundThe metastatic vascular patterns of hepatocellular carcinoma (HCC) are mainly microvascular invasion (MVI) and vessels encapsulating tumor clusters (VETC). However, most existing VETC‐related radiological studies still focus on the prediction of VETC status.PurposeThis study aimed to build and compare VETC‐MVI related models (clinical, radiomics, and deep learning) associated with recurrence‐free survival of HCC patients.Study TypeRetrospective.Population398 HCC patients (349 male, 49 female; median age 51.7 years, and age range: 22–80 years) who underwent resection from five hospitals in China. The patients were randomly divided into training cohort (n = 358) and test cohort (n = 40).Field Strength/Sequence3‐T, pre‐contrast T1‐weighted imaging spoiled gradient recalled echo (T1WI SPGR), T2‐weighted imaging fast spin echo (T2WI FSE), and contrast enhanced arterial phase (AP), delay phase (DP).AssessmentTwo radiologists performed the segmentation of HCC on T1WI, T2WI, AP, and DP images, from which radiomic features were extracted. The RFS related clinical characteristics (VETC, MVI, Barcelona stage, tumor maximum diameter, and alpha fetoprotein) and radiomic features were used to build the clinical model, clinical‐radiomic (CR) nomogram, deep learning model. The follow‐up process was done 1 month after resection, and every 3 months subsequently. The RFS was defined as the date of resection to the date of recurrence confirmed by radiology or the last follow‐up. Patients were followed up until December 31, 2022.Statistical TestsUnivariate COX regression, least absolute shrinkage and selection operator (LASSO), Kaplan–Meier curves, log‐rank test, C‐index, and area under the curve (AUC). P < 0.05 was considered statistically significant.ResultsThe C‐index of deep learning model achieved 0.830 in test cohort compared with CR nomogram (0.731), radiomic signature (0.707), and clinical model (0.702). The average RFS of the overall patients was 26.77 months (range 1–80 months).Data ConclusionMR deep learning model based on VETC and MVI provides a potential tool for survival assessment.Evidence Level3Technical EfficacyStage 3

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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