Predicting drug adverse effects using a new Gastro-Intestinal Pacemaker Activity Drug Database (GIPADD)

被引:0
|
作者
Julia Yuen Hang Liu
John A. Rudd
机构
[1] The Chinese University of Hong Kong,School of Biomedical Sciences, Faculty of Medicine
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Electrical data could be a new source of big-data for training artificial intelligence (AI) for drug discovery. A Gastro-Intestinal Pacemaker Activity Drug Database (GIPADD) was built using a standardized methodology to test drug effects on electrical gastrointestinal (GI) pacemaker activity. The current report used data obtained from 89 drugs with 4867 datasets to evaluate the potential use of the GIPADD for predicting drug adverse effects (AEs) using a machine-learning (ML) approach and to explore correlations between AEs and GI pacemaker activity. Twenty-four “electrical” features (EFs) were extracted using an automated analytical pipeline from the electrical signals recorded before and after acute drug treatment at three concentrations (or more) on four-types of GI tissues (stomach, duodenum, ileum and colon). Extracted features were normalized and merged with an online side-effect resource (SIDER) database. Sixty-six common AEs were selected. Different algorithms of classification ML models, including Naïve Bayes, discriminant analysis, classification tree, k-nearest neighbors, support vector machine and an ensemble model were tested. Separated tissue models were also tested. Averaging experimental repeats and dose adjustment were performed to refine the prediction results. Random datasets were created for model validation. After model validation, nine AEs classification ML model were constructed with accuracy ranging from 67 to 80%. EF can be further grouped into ‘excitatory’ and ‘inhibitory’ types of AEs. This is the first time drugs are being clustered based on EF. Drugs acting on similar receptors share similar EF profile, indicating potential use of the database to predict drug targets too. GIPADD is a growing database, where prediction accuracy is expected to improve. The current approach provides novel insights on how EF may be used as new source of big-data in health and disease.
引用
收藏
相关论文
共 50 条
  • [41] Adverse drug effects (ADE) of newer and older antipsychotics in the AGATE database
    Haen, E
    PHARMACOPSYCHIATRY, 2005, 38 (05) : 245 - 246
  • [42] Adverse events associated with Aveir™ VR leadless pacemaker: A Food and Drug Administration MAUDE database study
    Garg, Jalaj
    Shah, Kuldeep
    Bhardwaj, Rahul
    Contractor, Tahmeed
    Mandapati, Ravi
    Turagam, Mohit K.
    Lakkireddy, Dhanunjaya
    JOURNAL OF CARDIOVASCULAR ELECTROPHYSIOLOGY, 2023, 34 (06) : 1469 - 1471
  • [43] Novel fluorescent oxides provide insight into dynamics of nanoparticle-mediated drug uptake from gastro-intestinal tract
    Lipinski, Waldemar
    Ozogowska, Aleksandra
    Kaszewski, Jaroslaw
    Gajewski, Zdzislaw
    Godlewski, Marek
    Godlewski, Michal M.
    BIOPHOTONICS: PHOTONIC SOLUTIONS FOR BETTER HEALTH CARE VI, 2018, 10685
  • [44] Effects of Gastro-Intestinal Infusion of Taste Substances on the Afferent Activity of the Gastric and Celiac Branch of the Vagus Nerve
    Niijima, Akira
    Kitamura, Akihiko
    Torii, Kunio
    Uneyama, Hisayuki
    CHEMICAL SENSES, 2009, 34 (02) : J10 - J10
  • [45] FORMULATION DESIGN, IN-VITRO AND BIOLOGICAL CORRELATION OF SITE SPECIFIC DRUG DELIVERY SYSTEM FOR DISTAL GASTRO-INTESTINAL TRACT
    Patel, Mohammed Jameel
    Alobaidy, Kais
    Sakr, Farouk M.
    Shetty, Lokesh
    INTERNATIONAL JOURNAL OF PHARMACEUTICAL SCIENCES AND RESEARCH, 2015, 6 (12): : 5126 - 5133
  • [46] Categorisation of Pharmaceutical Adverse Events Using the Japanese Adverse Drug Event Report Database: Characteristic Adverse Drug Events of the Elderly Treated with Polypharmacy
    Akio Negishi
    Shinji Oshima
    Norimitsu Horii
    Mizue Mutoh
    Naoko Inoue
    Sachihiko Numajiri
    Shigeru Ohshima
    Daisuke Kobayashi
    Drugs - Real World Outcomes, 2021, 8 : 49 - 61
  • [47] Drug repositioning prediction for psoriasis using the adverse event reporting database
    Ko, Minoh
    Oh, Jung Mi
    Kim, In-Wha
    FRONTIERS IN MEDICINE, 2023, 10
  • [48] Categorisation of Pharmaceutical Adverse Events Using the Japanese Adverse Drug Event Report Database: Characteristic Adverse Drug Events of the Elderly Treated with Polypharmacy
    Negishi, Akio
    Oshima, Shinji
    Horii, Norimitsu
    Mutoh, Mizue
    Inoue, Naoko
    Numajiri, Sachihiko
    Ohshima, Shigeru
    Kobayashi, Daisuke
    DRUGS-REAL WORLD OUTCOMES, 2021, 8 (01) : 49 - 61
  • [49] Evaluation of Drug-Induced Photosensitivity Using the Japanese Adverse Drug Event Report (JADER) Database
    Nakao, Satoshi
    Hatahira, Haruna
    Sasaoka, Sayaka
    Hasegawa, Shiori
    Motooka, Yumi
    Ueda, Natsumi
    Abe, Junko
    Fukuda, Akiho
    Naganuma, Misa
    Kanoh, Hiroyuki
    Seishima, Mariko
    Ishiguro, Motoyuki
    Kinosada, Yasutomi
    Nakamura, Mitsuhiro
    BIOLOGICAL & PHARMACEUTICAL BULLETIN, 2017, 40 (12) : 2158 - 2165
  • [50] Analysis of patients with drug-induced pemphigoid using the Japanese Adverse Drug Event Report database
    Tanaka, Hiroyuki
    Ishii, Toshihiro
    JOURNAL OF DERMATOLOGY, 2019, 46 (03): : 240 - 244