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Age Classification Through the Evaluation of Circadian Rhythms of Wrist Temperature

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Advances in Artificial Intelligence (CAEPIA 2016)

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Abstract

Chronobiology is the scientific discipline that deals with the study of the biological rhythms and their underlying mechanisms. The alteration of biological rhythms, such as blood pressure or temperature begins to be considered as a good marker of certain diseases and senescence. Among the variables, the wrist skin temperature has proven to be a good marker of the circadian rhythms of the subject. In this paper we evaluate the wrist temperature of four groups of subjects with different age in order to gain some knowledge on the evolution of the circadian rhythms and its application to age classification.

M. Campos—The authors wish to thank the Instituto de Salud Carlos III, the Ministry of Science and Innovation and the Ministry of Economy and Competitiveness for their financial support through the Ageing and Frailty Cooperative Research Network, RD12/0043/0011, RD12/0043/0020, SAF2013-49132-C2-1-R, the latter including FEDER cofunding, granted to Juan Antonio Madrid.

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Correspondence to M. Campos .

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Campos, M., Gomariz, A., Balsa, M., Rol, M.A., Madrid, J.A., Garcia, F.J. (2016). Age Classification Through the Evaluation of Circadian Rhythms of Wrist Temperature. In: Luaces , O., et al. Advances in Artificial Intelligence. CAEPIA 2016. Lecture Notes in Computer Science(), vol 9868. Springer, Cham. https://doi.org/10.1007/978-3-319-44636-3_10

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  • DOI: https://doi.org/10.1007/978-3-319-44636-3_10

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