Neuropsychopharmacology in the era of artificial intelligence and biomolecule prediction software

Abstract The development and adoption of artificial intelligence (AI) provides moonshot opportunities to redefine how we generate treatments for neuropsychiatric disease. Despite the rapid advancement of AI across biomedical spheres, its implementation in drug discovery, proteomics, and neurobiology...

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Bibliographic Details
Main Authors: Rubén A. García-Reyes, Laura N. Massó Quiñones, Hajin Ruy, Daniel C. Castro
Format: Article
Language:English
Published: Springer 2025-06-01
Series:NPP-Digital Psychiatry and Neuroscience
Online Access:https://doi.org/10.1038/s44277-025-00038-9
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Summary:Abstract The development and adoption of artificial intelligence (AI) provides moonshot opportunities to redefine how we generate treatments for neuropsychiatric disease. Despite the rapid advancement of AI across biomedical spheres, its implementation in drug discovery, proteomics, and neurobiology has been met with new and unexpected limitations. Historically, neuropharmacology research has used observational and invasive experimental approaches to identify novel therapeutics. Unfortunately, this classic approach suffers from laborious chemical synthesis and in vivo testing which ultimately leads to translational bottlenecks. With the implementation of AI, we are now able to expedite this early testing by modeling how a drug or protein complex may interact with a receptor of interest. By applying powerful, precision-based protein structure prediction tools, we can better tailor therapeutics and minimize undesired outcomes. Though promising, important caveats like predicting chirality of molecules, conformational changes upon binding, and determining downstream signaling elements remain critical roadblocks that functionally limit the efficacy of prediction software. This Perspective article will briefly discuss how AI-powered protein prediction software will impact drug development to transform neuropsychopharmacology research and therapeutics, while also providing insights into the limitations of these digital tools.
ISSN:2948-1570