Alzheimer’s disease: using gene/protein network machine learning for molecule discovery in olive oil

Author:

Rita Luís,Neumann Natalie R.,Laponogov Ivan,Gonzalez Guadalupe,Veselkov Dennis,Pratico Domenico,Aalizadeh Reza,Thomaidis Nikolaos S.,Thompson David C.,Vasiliou Vasilis,Veselkov Kirill

Abstract

AbstractAlzheimer’s disease (AD) poses a profound human, social, and economic burden. Previous studies suggest that extra virgin olive oil (EVOO) may be helpful in preventing cognitive decline. Here, we present a network machine learning method for identifying bioactive phytochemicals in EVOO with the highest potential to impact the protein network linked to the development and progression of the AD. A balanced classification accuracy of 70.3 ± 2.6% was achieved in fivefold cross-validation settings for predicting late-stage experimental drugs targeting AD from other clinically approved drugs. The calibrated machine learning algorithm was then used to predict the likelihood of existing drugs and known EVOO phytochemicals to be similar in action to the drugs impacting AD protein networks. These analyses identified the following ten EVOO phytochemicals with the highest likelihood of being active against AD: quercetin, genistein, luteolin, palmitoleate, stearic acid, apigenin, epicatechin, kaempferol, squalene, and daidzein (in the order from the highest to the lowest likelihood). This in silico study presents a framework that brings together artificial intelligence, analytical chemistry, and omics studies to identify unique therapeutic agents. It provides new insights into how EVOO constituents may help treat or prevent AD and potentially provide a basis for consideration in future clinical studies.

Funder

Fundação para a Ciência e a Tecnologia

ERC Proof of Concept

UK Research and Innovation

European Union

Vodafone Foundation

NIHR Imperial Biomedical Research Centre

ERC-Consolidator

Publisher

Springer Science and Business Media LLC

Subject

Drug Discovery,Genetics,Molecular Biology,Molecular Medicine

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