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Development and Validation of a Non-Invasive Model for Predicting Liver Cirrhosis in Patients with Chronic Hepatitis B

33 Pages Posted: 4 Aug 2020

See all articles by Xiangyu Zhang

Xiangyu Zhang

Fudan University - Liver Cancer Institute

Jie Hu

Fudan University - Liver Cancer Institute

Kaiqian Zhou

Fudan University - Liver Cancer Institute

Feiyu Chen

Fudan University - Liver Cancer Institute

Cheng Zhou

Fudan University - Liver Cancer Institute

Xinyu Wang

Fudan University - Liver Cancer Institute

Yuanfei Peng

Fudan University - Liver Cancer Institute

Lei Yu

Fudan University - Liver Cancer Institute

Qing Lu

Fudan University - Department of Ultrasound

Jia Fan

Fudan University - Liver Cancer Institute

Jian Zhou

Fudan University - Liver Cancer Institute; Fudan University - State Key Laboratory of Genetic Engineering

Zheng Wang

Fudan University - Liver Cancer Institute

More...

Abstract

Background: Liver cirrhosis is closely related to the abnormal liver function and occurrence of liver cancer. Accurate non-invasive assessment of liver cirrhosis is of great significance for prevent disease progression and treatment decision-making. We aimed to develop and validate a non-invasive prediction model for liver cirrhosis in patients with chronic hepatitis B.

Methods: We enrolled 1350 patients with chronic hepatitis B to develop the prediction model, and clinical data was collected from July 2015 to May 2017. Least absolute shrinkage and selection operator (Lasso) regression was used for feature selection and binary logistic regression analysis was chosen to build prediction model. For convenient usage, prediction model was presented as a nomogram and evaluated for calibration, discrimination and clinical usefulness. We prospectively validated the model in an independent cohort contained 421 consecutive patients from April 2017 to November 2017.

Findings: The prediction model, which consists of 12 selection clinical characteristics, showed the strongest correlation with liver fibrosis stage (ρ = 0.53, P <.05). Compared with 2D-SWE, APRI, FIB-4, King’s Score, and Forns Index, the model presented the optimal discrimination and the best predictive performance with the highest AUC in the training cohort (0.8067, 95%CI 0.7834-0.8296, P <.05) and validation cohorts (0.7965, 95%CI 0.7547-0.8384, P <.05). Decision curve analysis demonstrated that nomogram based on the model was extremely useful for predicting cirrhosis in patients with chronic hepatitis B.

Interpretation: This study proposes a non-invasive prediction model that incorporates the clinical predictors which can be conveniently used in the individualized prediction of liver cirrhosis in patients with chronic hepatitis B.

Funding Statement: Supported by the National Natural Science Foundation of China (81372650; 81401929), Shanghai Rising-Star Program (16QA1401000) and National Science and Technology Major Project (2018ZX10723204-004).

Declaration of Interests: The authors declare no conflicts of interest relevant to this manuscript.

Ethics Approval Statement: This study protocol was approved by the Ethics Committee of Zhongshan Hospital, Fudan University, and informed consent was obtained from all patients.

Keywords: Nomogram; Diagnosis; Liver cirrhosis; Chronic hepatitis B

Suggested Citation

Zhang, Xiangyu and Hu, Jie and Zhou, Kaiqian and Chen, Feiyu and Zhou, Cheng and Wang, Xinyu and Peng, Yuanfei and Yu, Lei and Lu, Qing and Fan, Jia and Zhou, Jian and Wang, Zheng, Development and Validation of a Non-Invasive Model for Predicting Liver Cirrhosis in Patients with Chronic Hepatitis B (4/20/2020). Available at SSRN: https://ssrn.com/abstract=3582798 or http://dx.doi.org/10.2139/ssrn.3582798

Xiangyu Zhang (Contact Author)

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Jie Hu

Fudan University - Liver Cancer Institute ( email )

Shanghai, 200032
China

Kaiqian Zhou

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Feiyu Chen

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Cheng Zhou

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Xinyu Wang

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Yuanfei Peng

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Lei Yu

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Qing Lu

Fudan University - Department of Ultrasound

Shanghai, 200032
China

Jia Fan

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Jian Zhou

Fudan University - Liver Cancer Institute

Shanghai, 200032
China

Fudan University - State Key Laboratory of Genetic Engineering

Shanghai
China

Zheng Wang

Fudan University - Liver Cancer Institute ( email )

Shanghai, 200032
China

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