Big Data and Discovery Sciences in Psychiatry.

作者: Kyoung-Sae Na , Changsu Han , Yong-Ku Kim

DOI: 10.1007/978-981-32-9721-0_1

关键词:

摘要: The modern society is a so-called era of big data. Whereas nearly everybody recognizes the “era data”, no one can exactly define how data “big data”. reason for ambiguity term mainly arises from widespread using that term. Along application digital technology in everyday life, large amount generated every second relation with human behavior (i.e., measuring body movements through sensors, texts sent and received via social networking services). In addition, nonhuman such as weather Global Positioning System signals has been cumulated analyzed perspectives (Kan et al. Int J Environ Res Public Health 15(4), 2018 [1]). also influenced medical science, which includes field psychiatry (Monteith Bipolar Disord 3(1):21, 2015 [2]). this chapter, we first introduce definition Then, discuss researches apply to solve problems clinical practice psychiatry.

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