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Current Medicinal Chemistry

Editor-in-Chief

ISSN (Print): 0929-8673
ISSN (Online): 1875-533X

Review Article

Machine Learning, Molecular Modeling, and QSAR Studies on Natural Products Against Alzheimer’s Disease

Author(s): Érika Paiva de Moura, Natan Dias Fernandes, Alex France Messias Monteiro, Herbert Igor Rodrigues de Medeiros, Marcus Tullius Scotti and Luciana Scotti*

Volume 28, Issue 38, 2021

Published on: 24 August, 2021

Page: [7808 - 7829] Pages: 22

DOI: 10.2174/0929867328666210603104749

Price: $65

Abstract

Background: Alzheimer's disease (AD) is a very common neurodegenerative disorder in individuals over 65 years of age; however, younger individuals can also be affected due to brain damage.

Introduction: The general symptoms of this disease include progressive loss of memory, changes in behavior, deterioration of thinking, and gradual loss of ability to perform daily activities. According to the World Health Organization, dementia has affected more than 50 million people worldwide, and it is estimated that there are 10 million new cases per year, of which 70% are due to AD.

Methods: This paper reported a review of scientific articles available on the internet which discuss in silico analyzes such as molecular docking, molecular dynamics, and quantitative structure-activity relationship (QSAR) of different classes of natural products and their derivatives published from 2016 onwards. In addition, this work reports the potential of fermented papaya preparation against oxidative stress in AD.

Results: This research reviews the most recent studies on AD, computational analysis methods used in proposing new bioactive compounds and their possible molecular targets, and finally, the molecules or classes of natural products involved in each study.

Conclusion: Thus, studies like this can orientate new research works on neurodegenerative diseases, especially AD.

Keywords: Alzheimer's disease, in silico, molecular docking, molecular dynamics, QSAR, molecular learning.


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