A Transformer‐Based microvascular invasion classifier enhances prognostic stratification in HCC following radiofrequency ablation

Author:

Wang Wentao12,Wang Yueyue3,Song Danjun45,Zhou Yingting6,Luo Rongkui7,Ying Siqi89,Yang Li12,Sun Wei1,Cai Jiabin10,Wang Xi11,Bao Zhen12,Zheng Jiaping45,Zeng Mengsu12,Gao Qiang1013,Wang Xiaoying10,Zhou Jian1013,Wang Manning89,Shao Guoliang45,Rao Sheng‐xiang12ORCID,Zhu Kai10ORCID

Affiliation:

1. Department of Radiology, Cancer Center, Zhongshan Hospital Fudan University Shanghai China

2. Shanghai Institute of Medical Imaging Shanghai China

3. Huawei Technologies Shanghai China

4. Department of Interventional Therapy Zhejiang Cancer Hospital Hangzhou China

5. Hangzhou Institute of Medicine (HIM) Chinese Academy of Sciences Hangzhou China

6. Department of Hepatic Oncology, Liver Cancer Institute, Zhongshan Hospital Fudan University Shanghai China

7. Department of Pathology, Zhongshan Hospital Fudan University Shanghai China

8. Digital Medical Research Center, School of Basic Medical Sciences Fudan University Shanghai China

9. Shanghai Key Laboratory of Medical Imaging Computing and Computer Assisted Intervention Shanghai China

10. Department of Liver Surgery, Key Laboratory of Carcinogenesis and Cancer Invasion of Ministry of Education, Liver Cancer Institute, Zhongshan Hospital Fudan University Shanghai China

11. Department of Ultrasound, Zhongshan Hospital Fudan University Shanghai China

12. Department of Pathology Zhejiang Cancer Hospital Hangzhou China

13. Institutes of Biomedical Sciences Fudan University Shanghai China

Abstract

AbstractBackground & AimsWe aimed to develop a Transformer‐based deep learning (DL) network for prognostic stratification in hepatocellular carcinoma (HCC) patients undergoing RFA.MethodsA Swin Transformer DL network was trained to establish associations between magnetic resonance imaging (MRI) datasets and the ground truth of microvascular invasion (MVI) based on 696 surgical resection (SR) patients with solitary HCC ≤3 cm, and was validated in an external cohort (n = 180). The multiphase MRI‐based DL risk outputs using an optimal threshold of .5 was employed as a MVI classifier for prognosis stratification in the RFA cohort (n = 180).ResultsOver 90% of all enrolled patients exhibited hepatitis B virus infection. Liver cirrhosis was significantly more prevalent in the RFA cohort compared to the SR cohort (72.2% vs. 44.1%, p < .001). The MVI risk outputs exhibited good performance (area under the curve values = .938 and .883) for predicting MVI in the training and validation cohort, respectively. The RFA patients at high risk of MVI classified by the MVI classifier demonstrated significantly lower recurrence‐free survival (RFS) and overall survival rates at 1, 3 and 5 years compared to those classified as low risk (p < .001). Multivariate cox regression modelling of a‐fetoprotein > 20 ng/mL [hazard ratio (HR) = 1.53; 95% confidence interval (95% CI): 1.02–2.33, p = .047], high risk of MVI (HR = 3.76; 95% CI: 2.40–5.88, p < .001) and unfavourable tumour location (HR = 2.15; 95% CI: 1.40–3.29, p = .001) yielded a c‐index of .731 (bootstrapped 95% CI: .667–.778) for evaluating RFS after RFA. Among the three risk factors, MVI was the most powerful predictor for intrahepatic distance recurrence.ConclusionsThe proposed MVI classifier can serve as a valuable imaging biomarker for prognostic stratification in early‐stage HCC patients undergoing RFA.

Funder

National Natural Science Foundation of China

Science and Technology Commission of Shanghai Municipality

Publisher

Wiley

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