Identification of the risk for liver fibrosis on CHB patients using an artificial neural network based on routine and serum markers

被引:34
|
作者
Wang, Danan [1 ]
Wang, Qinghui [1 ]
Shan, Fengping [1 ]
Liu, Beixing [1 ]
Lu, Changlong [1 ]
机构
[1] China Med Univ, Inst Immunol, Shenyang, Liaoning, Peoples R China
关键词
CHRONIC HEPATITIS-B; LOGISTIC-REGRESSION; NONINVASIVE MARKERS; RATIO INDEX; PREDICTION; BIOPSY; MANAGEMENT; LAMIVUDINE; INFECTION; MODEL;
D O I
10.1186/1471-2334-10-251
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
Background: Liver fibrosis progression is commonly found in patients with CHB. Liver biopsy is a gold standard for identifying the extent of liver fibrosis, but has many draw-backs. It is essential to construct a noninvasive model to predict the levels of risk for liver fibrosis. It would provide very useful information to help reduce the number of liver biopsies of CHB patients. Methods: 339 chronic hepatitis B patients with HBsAg-positive were investigated retrospectively, and divided at random into 2 subsets with twice as many patients in the training set as in the validation set; 116 additional patients were consequently enrolled in the study as the testing set. A three-layer artificial neural network was developed using a Bayesian learning algorithm. Sensitivity and ROC analysis were performed to explain the importance of input variables and the performance of the neural network. Results: There were 329 patients without significant fibrosis and 126 with significant fibrosis in the study. All markers except gender, HB, ALP and TP were found to be statistically significant factors associated with significant fibrosis. The sensitivity analysis showed that the most important factors in the predictive model were age, AST, platelet, and GGT, and the influence on the output variable among coal miners were 22.3-24.6%. The AUROC in 3 sets was 0.883, 0.884, and 0.920. In the testing set, for a decision threshold of 0.33, sensitivity and negative predictive values were 100% and all CHB patients with significant fibrosis would be identified. Conclusions: The artificial neural network model based on routine and serum markers would predict the risk for liver fibrosis with a high accuracy. 47.4% of CHB patients at a decision threshold of 0.33 would be free of liver biopsy and wouldn't be missed.
引用
收藏
页数:8
相关论文
共 50 条
  • [1] Identification of the risk for liver fibrosis on CHB patients using an artificial neural network based on routine and serum markers
    Danan Wang
    Qinghui Wang
    Fengping Shan
    Beixing Liu
    Changlong Lu
    BMC Infectious Diseases, 10
  • [2] Assessing routine and serum markers of liver fibrosis in CHB patients using parallel and serial interpretation
    Hongbo, Liu
    Xiaohui, Lv.
    Hong, Kong
    Wei, Wang
    Yong, Zhang
    CLINICAL BIOCHEMISTRY, 2007, 40 (08) : 562 - 566
  • [3] Noninvasive Evaluation of Liver Fibrosis Reverse Using Artificial Neural Network Model for Chronic Hepatitis B Patients
    Wei, Wei
    Wu, Xiaoning
    Zhou, Jialing
    Sun, Yameng
    Kong, Yuanyuan
    Yang, Xu
    COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2019, 2019
  • [4] Liver Fibrosis Serum Markers indicate Risk of Heart Failure
    Klein, Friederike
    ZEITSCHRIFT FUR GASTROENTEROLOGIE, 2025, 63 (01):
  • [5] Deep learning-based identification of patients at increased risk of cancer using routine laboratory markers
    Vivek Singh
    Shikha Chaganti
    Matthias Siebert
    Sowmya Rajesh
    Andrei Puiu
    Raj Gopalan
    Jamie Gramz
    Dorin Comaniciu
    Ali Kamen
    Scientific Reports, 15 (1)
  • [6] Traffic identification using artificial neural network
    Ali, AA
    Tervo, R
    CANADIAN CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING 2001, VOLS I AND II, CONFERENCE PROCEEDINGS, 2001, : 667 - 672
  • [7] System Identification Using Artificial Neural Network
    Wilfred, K. J. Nidhil
    Sreeraj, S.
    Vijay, B.
    Bagyaveereswaran, V.
    2015 INTERNATIONAL CONFERENCED ON CIRCUITS, POWER AND COMPUTING TECHNOLOGIES (ICCPCT-2015), 2015,
  • [8] Metabolite Identification Using Artificial Neural Network
    Fan, Ziling
    Ghaffari, Kian
    Alley, Amber
    Ressom, Habtom W.
    2019 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2019, : 244 - 248
  • [9] STATISTICAL VIBRATION BASED DAMAGE IDENTIFICATION USING ARTIFICIAL NEURAL NETWORK
    Bakhary, Norhisham
    JURNAL TEKNOLOGI, 2010, 52
  • [10] Accurate prediction of liver fibrosis in chronic hepatitis C patients using a model based on serum markers.
    Joseph, J
    Rossi, E
    Adams, LA
    Bulsara, M
    de Boer, B
    George, J
    Farrell, G
    McCaughan, G
    Jeffrey, GP
    CLINICAL CHEMISTRY, 2005, 51 : A169 - A169