Title of article :
Noninvasive Evaluation of Liver Fibrosis Reverse Using Artificial Neural Network Model for Chronic Hepatitis B Patients
Author/Authors :
Wei, Wei Beijing Friendship Hospital - Capital Medical University - Beijing, China , Wu, Xiaoning Beijing Friendship Hospital - Capital Medical University - Beijing, China , Zhou, Jialing Beijing Friendship Hospital - Capital Medical University - Beijing, China , Sun, Yameng Beijing Friendship Hospital - Capital Medical University - Beijing, China , Kong, Yuanyuan Beijing Friendship Hospital - Capital Medical University - Beijing, China , Yang, Xu School of Computer Science and Technology - Beijing Institute of Technology - Beijing, China
Abstract :
The diagnostic performance of an artificial neural network model for chronic HBV-induced liver fibrosis reverse is not well
established. Our research aims to construct an ANN model for estimating noninvasive predictors of fibrosis reverse in chronic
HBV patients after regular antiviral therapy. In our study, 141 consecutive patients requiring liver biopsy at baseline and 1.5 years
were enrolled. Several serum biomarkers and liver stiffness were measured during antiviral therapy in both reverse and nonreverse
groups. Statistically significant variables between two groups were selected to form an input layer of the ANN model. The ROC
(receiver-operating characteristic) curve and AUC (area under the curve) were calculated for comparison of effectiveness of the
ANN model and logistic regression model in predicting HBV-induced liver fibrosis reverse. The prevalence of fibrosis reverse of
HBV patients was about 39% (55/141) after 78-week antiviral therapy. The Ishak scoring system was used to assess fibrosis reverse.
Our study manifested that AST (aspartate aminotransferase; importance coefficient = 0.296), PLT (platelet count; IC= 0.159),
WBC (white blood cell; IC = 0.142), CHE (cholinesterase; IC = 0.128), LSM (liver stiffness measurement; IC = 0.125), ALT (alanine
aminotransferase; IC = 0.110), and gender (IC= 0.041) were the most crucial predictors of reverse. ,e AUC of the ANN model
and logistic model was 0.809 ± 0.062 and 0.756 ± 0.059, respectively. In our study, we concluded that the ANN model with
variables consisting of AST, PLT, WBC, CHE, LSM, ALT, and gender may be useful in diagnosing liver fibrosis reverse for chronic
HBV-induced liver fibrosis patients.
Keywords :
ANN , HBV , Hepatitis B
Journal title :
Computational and Mathematical Methods in Medicine