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Journal of Addiction Research & Therapy
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  • J Addict Res Ther, Vol 16(5)

Revolutionizing Addiction Treatment: The Role of AI-Based Drug Discovery in Developing Targeted Therapies

Yousra A. El-Maradny*
Pharmaceutical and Fermentation Industries Development Center, City of Scientific Research and Technological Applications (SRTA-City), Egypt
*Corresponding Author: Yousra A. El-Maradny, Pharmaceutical and Fermentation Industries Development Center, City of Scientific Research and Technological Applications (SRTA-City), Egypt, Email: yousra789@gmail.com

Received: 01-May-2025 / Manuscript No. jart-25-165891 / Editor assigned: 05-May-2025 / PreQC No. jart-25-165891 (PQ) / Reviewed: 15-May-2025 / QC No. jart-25-165891 / Revised: 23-May-2025 / Manuscript No. jart-25-165891 (R) / Published Date: 30-May-2025

Keywords

AI-based drug discovery; Targeted addiction therapies; Machine learning in pharmacology; Artificial intelligence in healthcare; Substance use disorder; Neuropharmacology; Personalized medicine; Computational drug screening; Predictive modeling; Addiction treatment innovation

Introduction

Addiction continues to pose a significant global health challenge, with high rates of relapse, limited treatment options, and substantial individual and societal burdens. Traditional drug discovery processes in addiction therapy are slow, expensive, and frequently yield treatments with modest efficacy. In recent years, artificial intelligence (AI) has emerged as a transformative force in biomedical research, particularly in the domain of drug discovery [1-5].

By leveraging machine learning algorithms, deep learning networks, and big data analytics, AI-based drug discovery offers a data-driven, high-throughput approach to identifying novel therapeutic targets and compounds. This technological shift is revolutionizing the landscape of addiction treatment, enabling the development of more precise, effective, and individualized therapies. The use of AI in addiction pharmacology holds the promise of tailoring interventions based on molecular, genetic, and behavioral profiles, thus enhancing treatment outcomes and reducing relapse rates [6-10].

Discussion

AI-based drug discovery refers to the application of artificial intelligence technologies to the identification, design, and development of pharmacological agents. In the context of addiction, AI systems can analyze complex biological datasets—including genomics, proteomics, neuroimaging, and electronic health records—to identify patterns and predict drug-target interactions with high accuracy. For instance, machine learning models can be trained on known drug response data to predict how new compounds will interact with receptors involved in addictive behaviors, such as dopamine and opioid receptors. Furthermore, AI-driven simulations can model how these compounds behave in virtual biological systems, significantly accelerating preclinical testing.

One notable advantage of AI is its ability to mine existing databases for drug repurposing opportunities, identifying existing compounds with untapped potential for treating substance use disorders. Additionally, AI facilitates personalized medicine by integrating patient-specific genetic or phenotypic data to optimize drug selection and dosage. These advancements are crucial in a field where interindividual variability in treatment response is high and the consequences of ineffective therapy can be severe.

Beyond pharmacodynamics and pharmacokinetics, AI is also being utilized to understand behavioral and environmental contributors to addiction. For example, predictive analytics can identify individuals at high risk for relapse based on their digital health footprints—offering timely, proactive interventions. Integration of such AI models with pharmacological research enhances the targeting of neural circuits implicated in reward, craving, and withdrawal.

However, challenges remain. Data quality and availability are critical, as AI models require large, high-fidelity datasets for training. Ethical considerations surrounding data privacy, algorithmic bias, and equitable access to AI-developed treatments must also be addressed. Moreover, regulatory frameworks must evolve to assess and approve AI-generated compounds, ensuring safety and efficacy while preserving innovation. Collaborative efforts between computational scientists, addiction researchers, clinicians, and regulators are essential for translating these technological innovations into clinical success.

Conclusion

AI-based drug discovery is reshaping the future of addiction treatment by enabling faster, more accurate, and personalized therapeutic development. Its capacity to handle complex biological data and simulate drug interactions offers immense potential for creating targeted therapies that address the underlying neurobiological mechanisms of addiction. As the field matures, the integration of AI with clinical pharmacology, behavioral science, and regulatory policy will be pivotal in transforming how we prevent, diagnose, and treat substance use disorders. By embracing these innovations, we move closer to a future where addiction treatment is not only more effective but also more humane, equitable, and science-driven.

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Citation: El-Maradny YA (2025) Revolutionizing Addiction Treatment: The Role of AI-Based Drug Discovery in Developing Targeted Therapies. J Addict Res Ther 16: 779.

Copyright: 漏 2025 El-Maradny YA. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

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