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Evaluating the Impact of Machine Learning in Predictive Analytics for Personalized Healthcare Informatics

Author

Listed:
  • Banothu Vijay
  • Lakshya Swarup
  • Ayush Gandhi
  • Sonia Mehta
  • Naresh Kaushik
  • Satish Choudhury

Abstract

By adding machine learning (ML) into predictive analytics, the area of personalised healthcare computing has evolved and new approaches to enhance patient outcomes via tailored treatment plans have been generated. This paper examines how healthcare treatments could be tailored and predicted using machine learning methods. It underlines how crucial sophisticated analytics are for enhancing patient care and guiding clinical choices. Treatment is more accurate, more efficient, and better generally when one can predict how a condition will worsen, choose the best course of action for taking drugs, and observe any issues. Like controlled and unstructured learning algorithms, machine learning models have proved to be able to efficiently examine large and complex clinical datasets including electronic health records (EHR) and genetic data. These models identify hidden trends, relationships, and patterns that enable us to forecast individual health paths, identify those at risk, and simplify preventive action. ML also makes it feasible to merge many kinds of data, therefore providing clinicians with a more complete picture of every patient's health and, ultimately, facilitates the provision of more individualised, better treatment. Many facets of healthcare, including management of chronic illnesses, cancer detection, mental health analysis, and new medication discovery, employ predictive models. By helping clinicians make decisions based on data, ML models assist to reduce errors and enhance the flow of treatment. Still, there are issues including concerns about data security, model understanding, and the necessity of consistent frameworks to ensure models are robust and dependable in real-life clinical environments. This work also addresses the moral issues raised by using machine learning algorithms in tailored healthcare. It addresses issues like prejudice, justice, and patient agreement. It emphasises the need of cooperation among legislators, data scientists, and healthcare professionals to maintain developing models so that the whole potential of machine learning in healthcare may be fulfilled.

Suggested Citation

Handle: RePEc:dbk:medicw:v:3:y:2024:i::p:502:id:502
DOI: 10.56294/mw2024502
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