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From Precision Medicine to Precision Health: A Full Angle from Diagnosis to Treatment and Prevention

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Part of the book series: Studies in Computational Intelligence ((SCI,volume 843))

Abstract

Health Intelligence, a term that encompasses a broad range of techniques and methods from artificial intelligence and data science that provide better insights and improved decision making about individuals’ health and well-being, is increasingly used in today’s medicine and healthcare services. Here we discuss some applications of precision medicine and health, innovative approaches that utilize health intelligence to improve diagnosing people’s illnesses and making decisions about different treatment and prevention options in a timely manner.

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Correspondence to Arash Shaban-Nejad .

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Shaban-Nejad, A., Michalowski, M. (2020). From Precision Medicine to Precision Health: A Full Angle from Diagnosis to Treatment and Prevention. In: Shaban-Nejad, A., Michalowski, M. (eds) Precision Health and Medicine. W3PHAI 2019. Studies in Computational Intelligence, vol 843. Springer, Cham. https://doi.org/10.1007/978-3-030-24409-5_1

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