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International Journal of Sports Technology, 2022, 3(1); doi: 10.38007/IJST.2022.030105.

Tendon Repair after Rotator Cuff Injury in Go Training under Medical Image

Author(s)

Yongfeng Shi

Corresponding Author:
Yongfeng Shi
Affiliation(s)

China Water & Power Press, Beijing 100043, China

Abstract

Injury of the rotator cuff is a relatively common clinical disease, which often occurs in people engaged in more intensive physical labor and related athletes who have been doing strength training for a long time. The injury of the rotator cuff is often caused by the damage of the posterior tendon. The relevant data confirms that Go training can play a good role in the repair of the tendon after the rotator cuff injury. Therefore, it is indispensable to carry out relevant research on the effect of tendon repair after rotator cuff injury under Go training under medical images. The purpose of this article is to explore the effect of Go training on tendon repair after rotator cuff injury. Under the premise of understanding the basic pathology of tendon injury after rotator cuff injury, we explored the use of medical image method to generate specific images for the repair of tendon after rotator cuff injury in Go, and discussed and analyzed the generated medical images in detail. In addition, through the establishment of an experimental group and a control group, and the 20 experimental subjects of the experimental group were trained with three strengths of Go, the experimental results were analyzed in detail. The results of the study show that Go training has a better effect on tendon repair after rotator cuff injury. The medical image of the tendon after the rotator cuff injury after the Go training in the experimental group was better than the control group. The posterior tendon strength of the experimental group was stronger than the control group by about 25%, and the tensile strength of the posterior tendon after the test was stronger than the control group by about 20%.

Keywords

Medical Imaging, Go Training, Rotator Cuff Injury, Posterior Tendon Repair

Cite This Paper

Yongfeng Shi. Tendon Repair after Rotator Cuff Injury in Go Training under Medical Image. International Journal of Sports Technology (2022), Vol. 3, Issue 1: 51-62. https://doi.org/10.38007/IJST.2022.030105.

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