Publication | Open Access
Investigating the Impact of Machine Learning in Pharmaceutical Industry
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2021
Year
Artificial IntelligenceEngineeringMachine LearningMachine Learning ToolData ScienceData MiningBiostatisticsAi HealthcarePublic HealthPredictive AnalyticsPharmacologyTarget PredictionDrug ManufacturePharmaceutical Machine LearningDrug DiscoveryRational Drug DesignHealth InformaticsDrug IntelligencePharmaceutical Research
In the pharmaceutical and consumer health industries, artificial intelligence and machine learning played an important role. These technologies are critical for the identification of patients with improved intelligence applications, such as disease detection and diagnostics for clinical testing, for medicine production and predictive forecasts. In recent years, advances in numerous analysis tools and machine learning algorithms have led to novel applications for machine learning in several areas of pharmaceutical science. This paper examines the past, present, and future impacts of machine learning on several areas, including medicine design and discovery. Artificial neural networks are employed in pharmaceutical machine learning because they can reproduce nonlinear interactions typical in pharmaceutical research. AI and learning machines are examined in everyday pharmaceutical needs, industrial and regulatory insights.