Identification of Biomarkers for Methamphetamine Exposure Time Prediction in Mice Using Metabolomics and Machine Learning Approaches

被引:7
|
作者
Sheng, Wei [1 ,2 ]
Sun, Runbin [1 ,2 ]
Zhang, Ran [2 ]
Xu, Peng [3 ]
Wang, Youmei [3 ]
Xu, Hui [2 ]
Aa, Jiye [2 ]
Wang, Guangji [2 ]
Xie, Yuan [2 ]
机构
[1] China Pharmaceut Univ, Nanjing Drum Tower Hosp, Nanjing 210000, Peoples R China
[2] China Pharmaceut Univ, Key Lab Drug Metab & Pharmacokinet, State Key Lab Nat Med, Nanjing 210009, Peoples R China
[3] China Pharmaceut Univ, China Pharmaceut Univ Joint Lab Key Technol Narcot, China Natl Narcot Control Commiss, Nanjing 210009, Peoples R China
基金
中国国家自然科学基金;
关键词
biomarker; drug abuse; methamphetamine; metabolomics; machine learning; GLUTAMINE-SYNTHETASE; POTENTIAL MARKERS; OXIDATIVE STRESS; AMMONIA; BRAIN; HYPEROXALURIA; NEUROTOXICITY; HEROIN; CANCER; INJURY;
D O I
10.3390/metabo12121250
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Methamphetamine (METH) abuse has become a global public health and safety problem. More information is needed to identify the time of drug abuse. In this study, methamphetamine was administered to male C57BL/6J mice with increasing doses from 5 to 30 mg kg(-1) (once a day, i.p.) for 20 days. Serum and urine samples were collected for metabolomics studies using gas chromatography-mass spectrometry (GC-MS). Six machine learning models were used to infer the time of drug abuse and the best model was selected to predict administration time preliminarily. The metabolic changes caused by methamphetamine were explored. As results, the metabolic patterns of methamphetamine exposure mice were quite different from the control group and changed over time. Specifically, serum metabolomics showed enhanced amino acid metabolism and increased fatty acid consumption, while urine metabolomics showed slowed metabolism of the tricarboxylic acid (TCA) cycle, increased organic acid excretion, and abnormal purine metabolism. Phenylalanine in serum and glutamine in urine increased, while palmitic acid, 5-HT, and monopalmitin in serum and gamma-aminobutyric acid in urine decreased significantly. Among the six machine learning models, the random forest model was the best to predict the exposure time (serum: MAE = 1.482, RMSE = 1.69, R squared = 0.981; urine: MAE = 2.369, RMSE = 1.926, R squared = 0.946). The potential biomarker set containing four metabolites in the serum (palmitic acid, 5-hydroxytryptamine, monopalmitin, and phenylalanine) facilitated the identification of methamphetamine exposure. The random forest model helped predict the methamphetamine exposure time based on these potential biomarkers.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] Writer identification using machine learning approaches: a comprehensive review
    Rehman, Arshia
    Naz, Saeeda
    Razzak, Muhammad Imran
    MULTIMEDIA TOOLS AND APPLICATIONS, 2019, 78 (08) : 10889 - 10931
  • [42] Writer identification using machine learning approaches: a comprehensive review
    Arshia Rehman
    Saeeda Naz
    Muhammad Imran Razzak
    Multimedia Tools and Applications, 2019, 78 : 10889 - 10931
  • [43] Semantic role identification for Malayalam using machine learning approaches
    Jayan, Jisha P. P.
    Kumar, J. Satheesh
    Amudha, T.
    INNOVATIONS IN SYSTEMS AND SOFTWARE ENGINEERING, 2025, 21 (01) : 279 - 285
  • [44] Credit Card Fraud Identification Using Machine Learning Approaches
    Kumar, Pawan
    Iqbal, Fahad
    PROCEEDINGS OF 2019 1ST INTERNATIONAL CONFERENCE ON INNOVATIONS IN INFORMATION AND COMMUNICATION TECHNOLOGY (ICIICT 2019), 2019,
  • [45] The Identification of Negative Content in Websites by Using Machine Learning Approaches
    Amalia, Amalia
    Gunawan, Dani
    Lydia, Maya Silvi
    Wesley
    2019 5TH INTERNATIONAL CONFERENCE ON COMPUTING, ENGINEERING, AND DESIGN (ICCED), 2019,
  • [46] Combining Machine Learning and Metabolomics to Identify Weight Gain Biomarkers
    Dias-Audibert, Flavia Luisa
    Navarro, Luiz Claudio
    de Oliveira, Diogo Noin
    Delafiori, Jeany
    Melo, Carlos Fernando Odir Rodrigues
    Guerreiro, Tatiane Melina
    Rosa, Flavia Troncon
    Petenuci, Diego Lima
    Watanabe, Maria Angelica Ehara
    Velloso, Licio Augusto
    Rocha, Anderson Rezende
    Catharino, Rodrigo Ramos
    FRONTIERS IN BIOENGINEERING AND BIOTECHNOLOGY, 2020, 8
  • [47] Metabolomics composite biomarkers selected by machine learning predicts NASH
    Brown, Elizabeth
    Karrar, Azza
    Hellings, Samuel
    Stepanova, Maria
    Warrack, Bethane
    Lam, Brian
    Onorato, Joelle
    Felix, Sean
    Apfel, Abraham
    Jeffers, Thomas
    Rajput, Bijal
    Charles, Edgar
    Nader, Fatema
    Luo, Yi
    Reily, Michael
    Zhao, Lei
    Thompson, John
    Goodman, Zachary
    Younossi, Zobair
    JOURNAL OF HEPATOLOGY, 2020, 73 : S409 - S410
  • [48] Identification of sepsis-associated encephalopathy biomarkers through machine learning and bioinformatics approaches
    Lei, Jingchao
    Zhai, Jia
    Qi, Jing
    Sun, Chuanzheng
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [49] Exposure Process Optimization Using Machine Learning Overlay Prediction
    Yoshida, Masahiro
    Wang, W. H.
    Huang, C. H.
    Yang, Elvis
    Yang, T. H.
    Chen, K. C.
    Takarada, Yosuke
    Sakamoto, Yoshiki
    Egashira, Shin-ichi
    Otani, Ken
    Saito, Tsukasa
    Katayama, Shoshi
    Miura, Seiya
    Shelton, Douglas
    METROLOGY, INSPECTION, AND PROCESS CONTROL XXXVI, 2022, 12053
  • [50] In silico prediction of hERG blockers using machine learning and deep learning approaches
    Chen, Yuanting
    Yu, Xinxin
    Li, Weihua
    Tang, Yun
    Liu, Guixia
    JOURNAL OF APPLIED TOXICOLOGY, 2023, 43 (10) : 1462 - 1475