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Elderly Health Care Interventions under the Mode of Smart Sports Rehabilitation and the Background of Big Data

Volume 14, Number 11, November 2018, pp. 2581-2588
DOI: 10.23940/ijpe.18.11.p4.25812588

Yanping Jiang

Xi’an Medical University, Xi’an, 710021, China

(Submitted on August 8, 2018; Revised on September 20, 2018; Accepted on October 16, 2018)


In recent years, there has been a tremendous transformation in the way of health care for the elderly. The in-depth research on the smart sports rehabilitation model has promoted medical innovation. China's health and medical interventions for the elderly have also shown a further deepening trend. Therefore, it is necessary to study elderly health care interventions under the smart physical rehabilitation mode in the context of big data. By constructing a smart sports rehabilitation model, all data can be collected and compared, and a targeted rehabilitation selection mode based on computer algorithms can be realized. The experiments have shown that the use of smart medical care is more convenient and effective for elderly health care interventions.


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