Machine learning-based modeling to predict inhibitors of acetylcholinesterase

被引:23
|
作者
Sandhu, Hardeep [1 ]
Kumar, Rajaram Naresh [1 ]
Garg, Prabha [1 ]
机构
[1] Natl Inst Pharmaceut Educ & Res, Dept Pharmacoinformat, Sect 67, Mohali 160062, Punjab, India
关键词
Acetylcholinesterase (AChE); K-nearest neighbor (k-NN); Support vector machine (SVM); Random forest (RF); Machine learning; Shiny application; ALZHEIMERS-DISEASE; CLASSIFICATION; IMPACT;
D O I
10.1007/s11030-021-10223-5
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
Acetylcholinesterase enzyme is responsible for the degradation of acetylcholine and is an important drug target for the treatment of Alzheimer's disease. When this enzyme is inhibited, more acetylcholine is available in the synaptic cleft for the use, which leads to enhanced memory and cognitive ability. The aim of the present work is to create machine learning models for distinguishing between AChE inhibitors and non-inhibitors using algorithms like support vector machine (SVM), k-nearest neighbor (k-NN) and random forest (RF). The developed models were evaluated by 10-fold cross-validation and external dataset. Descriptor analysis was performed to identify most important features for the activity of molecules. Descriptors which were identified as important include maxssCH2, minHssNH, SaasC, minssCH2, bit 128 MACCS key, bit 104 MACCS key, bit 24 estate fingerprint and bit 18 estate fingerprints. The model developed using fingerprints based on random forest algorithm produced better results compared to other models. The overall accuracy of best model on test set was 85.38 percent. The developed model is available at http://14.139.57.41/achepredictor/. [GRAPHICS] .
引用
收藏
页码:331 / 340
页数:10
相关论文
共 50 条
  • [21] A machine learning-based multiscale model to predict bone formation in scaffolds
    Chi Wu
    Ali Entezari
    Keke Zheng
    Jianguang Fang
    Hala Zreiqat
    Grant P. Steven
    Michael V. Swain
    Qing Li
    Nature Computational Science, 2021, 1 : 532 - 541
  • [22] Machine learning-based modeling and controller tuning of a heat pump
    Khosravi, Mohammad
    Schmid, Nicolas
    Eichler, Annika
    Heer, Philipp
    Smith, Roy S.
    CLIMATE RESILIENT CITIES - ENERGY EFFICIENCY & RENEWABLES IN THE DIGITAL ERA (CISBAT 2019), 2019, 1343
  • [23] Machine learning-based stocks and flows modeling of road infrastructure
    Ebrahimi, Babak
    Rosado, Leonardo
    Wallbaum, Holger
    JOURNAL OF INDUSTRIAL ECOLOGY, 2022, 26 (01) : 44 - 57
  • [24] A machine learning-based diabetes risk prediction modeling study
    Ming, Jiexiu
    Xu, Junyi
    Zhang, Miaomiao
    Li, Ningyu
    Yan, Xu
    PROCEEDINGS OF 2024 INTERNATIONAL CONFERENCE ON COMPUTER AND MULTIMEDIA TECHNOLOGY, ICCMT 2024, 2024, : 363 - 369
  • [25] Pitfalls in Machine Learning-based Adversary Modeling for Hardware Systems
    Ganji, Fatemeh
    Amir, Sarah
    Tajik, Shahin
    Forte, Domenic
    Seifert, Jean-Pierre
    PROCEEDINGS OF THE 2020 DESIGN, AUTOMATION & TEST IN EUROPE CONFERENCE & EXHIBITION (DATE 2020), 2020, : 514 - 519
  • [26] Machine learning-based predictive modeling of depression in hypertensive populations
    Lee, Chiyoung
    Kim, Heewon
    PLOS ONE, 2022, 17 (07):
  • [27] Machine Learning-Based Predictive Modeling of Complications of Chronic Diabetes
    Derevitskii, Ilia, V
    Kovalchuk, Sergey, V
    9TH INTERNATIONAL YOUNG SCIENTISTS CONFERENCE IN COMPUTATIONAL SCIENCE, YSC2020, 2020, 178 : 274 - 283
  • [28] Machine Learning-Based Device Modeling and Performance Optimization for FinFETs
    Zhang, Huifan
    Jing, Youliang
    Zhou, Pingqiang
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS II-EXPRESS BRIEFS, 2023, 70 (04) : 1585 - 1589
  • [29] Machine Learning-Based Path Loss Modeling With Simplified Features
    Ethier, Jonathan
    Chateauvert, Mathieu
    IEEE ANTENNAS AND WIRELESS PROPAGATION LETTERS, 2024, 23 (11): : 3997 - 4001
  • [30] A Machine Learning-Based Approach for Virtual Network Function Modeling
    Mestres, Albert
    Alarcon, Eduard
    Cabellos, Albert
    2018 IEEE WIRELESS COMMUNICATIONS AND NETWORKING CONFERENCE WORKSHOPS (WCNCW), 2018, : 237 - 241