Application of Northern Goshawk Back-Propagation Artificial Neural Network in the Prediction of Monohydroxycarbazepine Concentration in Patients with Epilepsy

被引:0
|
作者
Xu, Yichao [1 ]
Shao, Rong [1 ]
Yang, Mingdong [2 ]
Chen, Meng [2 ]
Xu, Junjun [2 ]
Dai, Haibin [2 ]
机构
[1] Zhejiang Univ, Sch Med, Affiliated Hosp 2, Ctr Clin Pharmacol, Hangzhou, Zhejiang, Peoples R China
[2] Zhejiang Univ, Sch Med, Affiliated Hosp 2, Dept Pharm, 88 Jiefang Rd, Hangzhou 310009, Zhejiang, Peoples R China
关键词
Plasma concentration; Pharmacokinetic parameters; Epilepsy; Monohydroxycarbazepine; Back-propagation artificial neural network; OXCARBAZEPINE; CARBAMAZEPINE; POLYMORPHISMS; OPTIMIZATION; ASSOCIATION; SCN1A;
D O I
10.1007/s12325-024-02792-2
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
IntroductionA northern goshawk back-propagation artificial neural network (NGO-BPANN) model was established to predict monohydroxycarbazepine (MHD) concentration in patients with epilepsy.MethodsThe data were collected from 108 Han Chinese patients with epilepsy on oxcarbazepine monotherapy. The results of 14 genotype variates were selected as the input layer in the first BPANN model, and the variables that had a more significant impact on the plasma concentration of MHD were retained. With demographic characteristics and clinical laboratory test results, the genotypes of SCN1A rs2298771 and SCN2A rs17183814 were used to construct the BPANN model. The BPANN model was comprehensively validated and used to predict the MHD plasma concentration of five patients with epilepsy in our hospital.ResultsThe model demonstrated favorable fitness metrics, including a mean squared error of 0.00662, a gradient magnitude of 0.00753, an absence of validation tests amounting to zero, and a correlation coefficient of 0.980. Sex, BMI, and the genotype SCN1A rs2298771 were ranked highest by the absolute mean impact value (MIV), which is primarily associated with the concentration of MHD. The test group exhibited a range of - 20.84% to 31.03% bias between the predicted and measured values, with a correlation coefficient of 0.941 between the two. With BPANN, the MHD nadir concentration could be predicted precisely.ConclusionThe NGO-BPANN model exhibits exceptional predictive capability and can be a practical instrument for forecasting MHD concentration in patients with epilepsy.Clinical Trial Registrationwww.chiCTR-OOC-17012141.
引用
收藏
页码:1450 / 1461
页数:12
相关论文
共 50 条
  • [41] Application of Improved Back-propagation Neural Network to the Technologic Processing of Korshunskite Whiskers
    Ren Qingli
    Luo Qiang
    Yang Miaomiao
    [J]. HIGH-PERFORMANCE CERAMICS VIII, 2014, 602-603 : 312 - 315
  • [42] Development and application of a decision group Back-Propagation Neural Network for flood forecasting
    Chen, Chang-Shian
    Chen, Boris Po-Tsang
    Chou, Frederick Nai-Fang
    Yang, Chao-Chung
    [J]. JOURNAL OF HYDROLOGY, 2010, 385 (1-4) : 173 - 182
  • [43] Infilling annual rainfall data using feedforward back-propagation Artificial Neural Networks (ANN): Application of the standard and generalised back-propagation techniques
    Ilunga, M.
    [J]. JOURNAL OF THE SOUTH AFRICAN INSTITUTION OF CIVIL ENGINEERING, 2010, 52 (01) : 2 - 10
  • [44] Risk prediction model for drivers' in-vehicle activities - Application of task analysis and back-propagation neural network
    Ou, Yang-Kun
    Liu, Yung-Ching
    Shih, Feng-Yuan
    [J]. TRANSPORTATION RESEARCH PART F-TRAFFIC PSYCHOLOGY AND BEHAVIOUR, 2013, 18 : 83 - 93
  • [45] A Back Propagation Artificial Neural Network Application in Lithofacies Identification
    Dong, Yue
    Hou, Jiagen
    Liu, Yuming
    Wang, Ye
    Zhao, Jing
    Shi, Yanqing
    Zou, Jingyun
    [J]. 2015 11TH INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION (ICNC), 2015, : 1028 - 1033
  • [46] The improvement of a fuzzy neural network based on back-propagation
    Hua, Q
    Ha, MH
    [J]. 2002 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-4, PROCEEDINGS, 2002, : 2237 - 2239
  • [47] A Novel Learning Algorithm of Back-propagation Neural Network
    Gong, Bing
    [J]. 2009 IITA INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION AND SYSTEMS ENGINEERING, PROCEEDINGS, 2009, : 411 - 414
  • [48] An Investigation of Back-propagation Neural Network on University Selection
    Maharani, Sitti Syarah
    Yaakob, Razali
    Udzir, Nur Izura
    [J]. 2015 2ND INTERNATIONAL CONFERENCE ON COMPUTER, COMMUNICATIONS, AND CONTROL TECHNOLOGY (I4CT), 2015,
  • [49] Application of a back-propagation neural network for mechanical properties prediction of ferromagnetic materials by magnetic Barkhausen noise technique
    Zhang, Yanyan
    Liu, Wenbo
    Li, Kaiyu
    Wang, Ping
    Hang, Cheng
    Chen, Yang
    Han, Xiao
    Gao, Wenjuan
    [J]. INSIGHT, 2019, 61 (02) : 95 - 99
  • [50] A back-propagation neural network for recognizing fabric defects
    Kuo, CFJ
    Lee, CJ
    [J]. TEXTILE RESEARCH JOURNAL, 2003, 73 (02) : 147 - 151