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Artificial Intelligence in Pharmaceutical and Healthcare Research

Subrat Kumar BhattamisraDepartment of Pharmacology, GITAM School of Pharmacy, GITAM (Deemed to Be University), Visakhapatnam 530045, Andhra Pradesh, IndiaPriyanka BanerjeeDepartment of Pharmaceutical Technology, School of Medical Sciences, Adamas University, Kolkata 700126, West Bengal, IndiaPratibha GuptaDepartment of Pharmaceutical Technology, School of Medical Sciences, Adamas University, Kolkata 700126, West Bengal, IndiaJayashree MayurenDepartment of Pharmaceutical Technology, School of Pharmacy, International Medical University, Kuala Lumpur 57000, MalaysiaSusmita PatraDepartment of Pharmaceutical Technology, School of Medical Sciences, Adamas University, Kolkata 700126, West Bengal, IndiaMayuren CandasamyDepartment of Life Sciences, School of Pharmacy, International Medical University, Kuala Lumpur 57000, Malaysia
2023en
ABI

Аннотация

Artificial intelligence (AI) is a branch of computer science that allows machines to work efficiently, can analyze complex data. The research focused on AI has increased tremendously, and its role in healthcare service and research is emerging at a greater pace. This review elaborates on the opportunities and challenges of AI in healthcare and pharmaceutical research. The literature was collected from domains such as PubMed, Science Direct and Google scholar using specific keywords and phrases such as ‘Artificial intelligence’, ‘Pharmaceutical research’, ‘drug discovery’, ‘clinical trial’, ‘disease diagnosis’, etc. to select the research and review articles published within the last five years. The application of AI in disease diagnosis, digital therapy, personalized treatment, drug discovery and forecasting epidemics or pandemics was extensively reviewed in this article. Deep learning and neural networks are the most used AI technologies; Bayesian nonparametric models are the potential technologies for clinical trial design; natural language processing and wearable devices are used in patient identification and clinical trial monitoring. Deep learning and neural networks were applied in predicting the outbreak of seasonal influenza, Zika, Ebola, Tuberculosis and COVID-19. With the advancement of AI technologies, the scientific community may witness rapid and cost-effective healthcare and pharmaceutical research as well as provide improved service to the general public.

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