Novel drug discovery: Advancing Alzheimer's therapy through machine learning and network pharmacology

被引:1
|
作者
Alshabrmi, Fahad M. [1 ]
Alkhayl, Faris F. Aba [1 ]
Rehman, Abdur [2 ]
机构
[1] Qassim Univ, Coll Appl Med Sci, Dept Med Labs, Buraydah 51452, Saudi Arabia
[2] Northwest A&F Univ, Coll Life Sci, Ctr Bioinformat, Yangling 712100, Shaanxi, Peoples R China
关键词
Alzheimer's disease (AD); Network pharmacology; Machine learning; Molecular docking simulation; Compounds; Multi-target drug discovery; BCL-2; FAMILY; KNOWLEDGEBASE; VISUALIZATION; AUTOPHAGY;
D O I
10.1016/j.ejphar.2024.176661
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
Alzheimer's disease (AD), marked by tau tangles and amyloid-beta plaques, leads to cognitive decline. Despite extensive research, its complex etiology remains elusive, necessitating new treatments. This study utilized machine learning (ML) to analyze compounds with neuroprotective potential. This approach exposed the disease's complexity and identified important proteins, namely MTOR and BCL2, as central to the pathogenic network of AD. MTOR regulates neuronal autophagy and survival, whereas BCL2 regulates apoptosis, both of which are disrupted in AD. The identified compounds, including Armepavine, Oprea1_264702,1-cyclopropyl-7-fluoro-8methoxy-4-oxoquinoline-3-carboxylic acid,(2S)-4 '-Hydroxy-5,7,3 '-trimethoxyflavan,Oprea1_130514,Sativanone, 5-hydroxy-7,8-dimethoxyflavanone,7,4 '-Dihydroxy-8,3 '-dimethoxyflavanone,N,1-dicyclopropyl-6,Difluoro-Meth oxy-Gatifloxacin,6,8-difluoro-1-(2-fluoroethyl),1-ethyl-6-fluoro-7-(4-methylpiperidin-1-yl),Avicenol C, demonstrated potential modulatory effects on these proteins. The potential for synergistic effects of these drugs in treating AD has been revealed via network pharmacology. By targeting numerous proteins at once, these chemicals may provide a more comprehensive therapeutic approach, addressing many aspects of AD's complex pathophysiology. A Molecular docking, dynamic simulation, and Principle Component Analysis have confirmed these drugs' efficacy by establishing substantial binding affinities and interactions with important proteins such as MTOR and BCL2. This evidence implies that various compounds may interact within the AD pathological framework, providing a sophisticated and multifaceted therapy strategy. In conclusion, our study establishes a solid foundation for the use of these drugs in AD therapy. Thus current study highlights the possibility of multitargeted, synergistic therapeutic approaches in addressing the complex pathophysiology of AD by integrating machine learning, network pharmacology, and molecular docking simulations. This holistic technique not only advances drug development but also opens up new avenues for developing more effective treatments for this difficult and widespread disease.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Network pharmacology: the next paradigm in drug discovery
    Andrew L Hopkins
    Nature Chemical Biology, 2008, 4 : 682 - 690
  • [22] A NEW APPROACH IN DRUG DISCOVERY: NETWORK PHARMACOLOGY
    Diker, Neziha Yagmur
    Kutluay, Vahap Murat
    JOURNAL OF RESEARCH IN PHARMACY, 2023, 27 : 6 - 8
  • [23] Alzheimer’s disease: using gene/protein network machine learning for molecule discovery in olive oil
    Luís Rita
    Natalie R. Neumann
    Ivan Laponogov
    Guadalupe Gonzalez
    Dennis Veselkov
    Domenico Pratico
    Reza Aalizadeh
    Nikolaos S. Thomaidis
    David C. Thompson
    Vasilis Vasiliou
    Kirill Veselkov
    Human Genomics, 17
  • [24] Alzheimer's disease: using gene/protein network machine learning for molecule discovery in olive oil
    Rita, Luis
    Neumann, Natalie R.
    Laponogov, Ivan
    Gonzalez, Guadalupe
    Veselkov, Dennis
    Pratico, Domenico
    Aalizadeh, Reza
    Thomaidis, Nikolaos S.
    Thompson, David C.
    Vasiliou, Vasilis
    Veselkov, Kirill
    HUMAN GENOMICS, 2023, 17 (01)
  • [25] Advancing Alzheimer's disease therapy through engineered exosomal Macromolecules
    Jain, Smita
    Murmu, Ankita
    Chauhan, Aparna
    BRAIN RESEARCH, 2025, 1855
  • [26] Drug Repositioning Through Network Pharmacology
    Ye, Hao
    Wei, Jia
    Tang, Kailin
    Feuers, Ritchie
    Hong, Huixiao
    CURRENT TOPICS IN MEDICINAL CHEMISTRY, 2016, 16 (30) : 3646 - 3656
  • [27] Network pharmacology: a novel strategy for antidepressant discovery
    Zhang, Ting-ting
    Xue, Rui
    Zhao, Shi-wen
    Hong, Hao
    Li, Yun-feng
    Zhang, You-zhi
    Li, Shao
    ACTA PHARMACOLOGICA SINICA, 2013, 34 : 47 - 47
  • [28] Future avenues for Alzheimer's disease detection and therapy: liquid biopsy, intracellular signaling modulation, systems pharmacology drug discovery
    Hampel, Harald
    Vergallo, Andrea
    Caraci, Filippo
    Cuello, A. Claudio
    Lemercier, Pablo
    Vellas, Bruno
    Giudici, Kelly Virecoulon
    Baldacci, Filippo
    Hanisch, Britta
    Haberkamp, Marion
    Broich, Karl
    Nistico, Robert
    Emanuele, Enzo
    Llavero, Francisco
    Zugaza, Jose L.
    Lucia, Alejandro
    Giacobini, Ezio
    Lista, Simone
    NEUROPHARMACOLOGY, 2021, 185
  • [29] Deep learning tools for advancing drug discovery and development
    Sagorika Nag
    Anurag T. K. Baidya
    Abhimanyu Mandal
    Alen T. Mathew
    Bhanuranjan Das
    Bharti Devi
    Rajnish Kumar
    3 Biotech, 2022, 12
  • [30] Deep learning tools for advancing drug discovery and development
    Nag, Sagorika
    Baidya, Anurag T. K.
    Mandal, Abhimanyu
    Mathew, Alen T.
    Das, Bhanuranjan
    Devi, Bharti
    Kumar, Rajnish
    3 BIOTECH, 2022, 12 (05)