Proteome-informed machine learning studies of cocaine addiction
Kaifu Gao, Dong Chen, Alfred J Robison, and Guo-Wei Wei

TL;DR
This study introduces a proteome-informed machine learning platform to identify potential anti-cocaine addiction drugs by analyzing protein interactions and screening thousands of candidates for efficacy and safety.
Contribution
The paper presents a novel ML/DL approach integrating proteomic data and network analysis to discover and evaluate anti-cocaine addiction drug candidates.
Findings
Identified 141 key drug targets involved in cocaine dependence.
Screened over 60,000 drug candidates using an autoencoder model.
Found two promising lead compounds for further development.
Abstract
Cocaine addiction accounts for a large portion of substance use disorders and threatens millions of lives worldwide. There is an urgent need to come up with efficient anti-cocaine addiction drugs. Unfortunately, no medications have been approved by the Food and Drug Administration (FDA), despite the extensive effort in the past few decades. The main challenge is the intricate molecular mechanisms of cocaine addiction, involving synergistic interactions among proteins upstream and downstream of dopamine transporter (DAT) functions impacted by cocaine. However, traditional in vivo or in vitro experiments can not address the roles of so many proteins, highlighting the need for innovative strategies in the field. We propose a proteome-informed machine learning/deep learning (ML/DL) platform to discover nearly optimal anti-cocaine addiction lead compounds. We construct and analyze proteomic…
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Taxonomy
TopicsComputational Drug Discovery Methods · Metabolomics and Mass Spectrometry Studies · Advanced Proteomics Techniques and Applications
