The role of big data in healthcare: A review of implications for patient outcomes and treatment personalization

Author:

Ehizogie Paul Adeghe ,Chioma Anthonia Okolo ,Olumuyiwa Tolulope Ojeyinka

Abstract

The integration of big data analytics in healthcare has ushered in a transformative era, redefining the landscape of patient care and treatment strategies. This review examines the multifaceted implications of big data on patient outcomes and the individualization of medical interventions. Delving into the foundational elements of big data, we explore its evolution in the healthcare sector and highlight pivotal applications, such as predictive analytics, treatment personalization, and population health management. The paper underscores how big data-driven insights have revolutionized diagnosis and early detection, leading to more accurate and timely interventions. Treatment planning has witnessed a paradigm shift, with the tailoring of therapeutic approaches based on robust data analyses, fostering the realization of personalized medicine. Moreover, the role of big data in enhancing patient engagement and empowerment is explored, illuminating the potential for collaborative and informed decision-making. Despite these advancements, ethical considerations and challenges loom large. Privacy concerns, data security, and the ethical use of patient information demand meticulous attention to ensure the responsible application of big data in healthcare. The paper discusses the evolving regulatory frameworks and strategies to address these pressing issues. Looking ahead, the review outlines emerging trends and technologies poised to shape the future of big data in healthcare. It identifies research opportunities and encourages interdisciplinary collaborations to further propel innovation in this dynamic field. By addressing challenges and envisioning future possibilities, it seeks to contribute to the ongoing dialogue surrounding the responsible and impactful integration of big data in shaping the future of healthcare.

Publisher

GSC Online Press

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1. Optimizing Cancer Patient Classification Forecasting With Bayesian Pattern Recognition;International Journal of Healthcare Information Systems and Informatics;2024-08-14

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