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Study on Smegglutide for Weight Loss

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DOI: 10.23977/socmhm.2023.040106 | Downloads: 4 | Views: 325

Author(s)

Yanan Zhang 1

Affiliation(s)

1 Shandong Rongjun General Hospital, Jinan, Shandong, China

Corresponding Author

Yanan Zhang

ABSTRACT

Smegglutide is a new type of functional health care product, which has the effects of anti-gastric ulcer and lowering blood pressure. After years of research, it was found that this drug has hemostatic effect. In this paper, the comparison method and comparative analysis method were used to test the efficacy and safety of the simei cabinet in batches. The results showed that the drug can effectively inhibit the occurrence of human intestinal peristalsis within 6 hours after taking the drug and achieve the purpose of reducing weight loss. And two groups of tests showed that the liver can be emptied about 100 minutes after taking the simei cabinet, thus lowering blood pressure.

KEYWORDS

Smegglutide Drug, Weight Loss Research, Low Calorie, Exercise Prescription

CITE THIS PAPER

Yanan Zhang, Study on Smegglutide for Weight Loss. Social Medicine and Health Management (2023) Vol. 4: 37-43. DOI: http://dx.doi.org/10.23977/socmhm.2023.040106.

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