ESP Journal of Engineering & Technology Advancements |
© 2022 by ESP JETA |
Volume 2 Issue 3 |
Year of Publication : 2022 |
Authors : Sarika Mulukuntla, Saigurudatta Pamulaparthyvenkata |
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Sarika Mulukuntla, Saigurudatta Pamulaparthyvenkata, 2022. "Realizing the Potential of AI in Improving Health Outcomes: Strategies for Effective Implementation" ESP Journal of Engineering & Technology Advancements 2(3): 32-40.
In the transformative realm of healthcare, Artificial Intelligence (AI) stands out as a beacon of hope for drastically improving patient outcomes. This narrative explores the strategic deployment of AI to enhance diagnostics, personalize treatments, and predict medical events before they unfold. Overcoming challenges such as data privacy, ethical considerations, and the need for substantial infrastructure is crucial for success. AI's promise extends to revolutionizing preventive care, streamlining healthcare operations, and enabling medical professionals to concentrate on providing care. By fostering cross-disciplinary collaborations and advocating for ethical AI practices, the healthcare sector can unlock AI's full potential, paving the way for a future where healthcare is not only reactive but also predictive and personalized, ensuring improved health outcomes for all.
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