International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

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Analysis Study Research Paper | Computer Science and Information Technology | India | Volume 13 Issue 6, June 2024 | Rating: 5.2 / 10


Machine Learning for Healthcare: Predictive Analytics and Personalized Medicine

Archana Reena Dhan | Dr Binod Kumar [2]


Abstract: In the realm of healthcare, the integration of machine learning has led to groundbreaking advancements in predictive analytics and personalized medicine. This abstract explores the transformative future of machine learning techniques in improving patient outcomes and healthcare delivery. Predictive analytics in healthcare refers to the usage of ancient statistics, statistical algorithms and machine gaining knowledge of techniques to become aware of patterns and foresee future events. By reading huge quantities of patient facts, along with medical facts, genetic facts and lifestyle factors, predictive fashions can assume the likelihood of diseases, health facility readmissions or detrimental activities. This proactive method allows healthcare carriers to intervene early, tailor interventions and allocate sources efficaciously, ultimately leading to higher patient outcomes and decreased healthcare expenses. Furthermore, machine learning empowers personalized medicine by leveraging individual patient data to tailor treatments and interventions to specific characteristics, such as genetics, demographics and environmental factors. By understanding each patient's unique biological makeup and health profile, healthcare providers can optimize treatment strategies, minimize adverse effects and enhance therapeutic efficacy. This shift from a one - size - fits - all approach to personalized interventions not only improves patient satisfaction but also contributes to more effective healthcare delivery and long - term health outcomes. However, the successful implementation of machine learning in healthcare is contingent upon several factors, including data quality, interoperability, privacy and ethical considerations. Additionally, addressing biases in data collection and algorithmic decision - making is crucial to mitigating disparities and promoting equitable healthcare access and outcomes for all patients. Overall, machine learning holds great promise for revolutionizing healthcare via predictive analytics and personalized medicine. By harnessing the power of statistics - driven insights and individualizing affected person care, machine learning has the ability to transform healthcare delivery, improve affected person consequences and develop the practice of medication inside the twenty first century.


Keywords: Machine Learning, Predictive Analytics, Personalized Medicine Healthcare Delivery, Patient Outcomes


Edition: Volume 13 Issue 6, June 2024,


Pages: 1307 - 1313

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