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Chapter 1 Introduction to smart pharma: foundation of AI and big data

  • Rishabha Malviya , Shristy Verma , Sonali Sundram and Harshil Shah
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Digital Blockchain
This chapter is in the book Digital Blockchain

Abstract

Due to its potential to completely transform the pharmaceutical business, artificial intelligence (AI) has emerged as a potent instrument in the medical community. However, the potential isn’t fully realized yet. This chapter provides information about AI and big data in the pharma and other healthcare industries. Nevertheless, AI techniques such as big data and natural language processing (NLP) can expedite and rehabilitate the process by facilitating a more precise and efficient analysis of large datasets. To achieve this, the test administration may be simplified. The application of AI in the field of chemistry has recently garnered significant attention due to its potential to provide valuable insights into developing efficient drug delivery systems. AI significantly influences the medication manufacturing process and the drug repurposing strategy. Despite its numerous obstacles, AI has the potential to enhance medical imaging services and help diagnose patients. However, healthcare systems are responsible for informing patients about the benefits and drawbacks of AI-supported healthcare systems. A conclusion of the recent state of the field for AI applications in the healthcare industry is provided in the chapter, taking into account the rapid advancements in AI combined with AI-integrated medical systems.

Abstract

Due to its potential to completely transform the pharmaceutical business, artificial intelligence (AI) has emerged as a potent instrument in the medical community. However, the potential isn’t fully realized yet. This chapter provides information about AI and big data in the pharma and other healthcare industries. Nevertheless, AI techniques such as big data and natural language processing (NLP) can expedite and rehabilitate the process by facilitating a more precise and efficient analysis of large datasets. To achieve this, the test administration may be simplified. The application of AI in the field of chemistry has recently garnered significant attention due to its potential to provide valuable insights into developing efficient drug delivery systems. AI significantly influences the medication manufacturing process and the drug repurposing strategy. Despite its numerous obstacles, AI has the potential to enhance medical imaging services and help diagnose patients. However, healthcare systems are responsible for informing patients about the benefits and drawbacks of AI-supported healthcare systems. A conclusion of the recent state of the field for AI applications in the healthcare industry is provided in the chapter, taking into account the rapid advancements in AI combined with AI-integrated medical systems.

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