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Machination of Human Carpus

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Data Engineering for Smart Systems

Part of the book series: Lecture Notes in Networks and Systems ((LNNS,volume 238))

Abstract

Along with its multiple benefits, advancements in technology brings the serious problem of sedentary lifestyle. A sedentary lifestyle is defined as a type of lifestyle where an individual does not receive regular amounts of physical activity. This physical inactivity is a leading cause of joint immobility in younger adults as well as adults. Joint immobility has serious impacts on a person’s social, mental and physical well-being. The model presents an ideal initiation to the determination of dysfunction in the human wrist. The ideal is to bring about a design to better understand the range of motion of the human wrist at its two extremes, by plotting it on the co-ordinate axis. The idea is to bring about a reform in the domain of anatomical displacements.

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Correspondence to Sumit Bhardwaj .

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Bhardwaj, S., Tomar, B.S., Ankur, A., Gupta, P. (2022). Machination of Human Carpus. In: Nanda, P., Verma, V.K., Srivastava, S., Gupta, R.K., Mazumdar, A.P. (eds) Data Engineering for Smart Systems. Lecture Notes in Networks and Systems, vol 238. Springer, Singapore. https://doi.org/10.1007/978-981-16-2641-8_34

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