Mechanism of Zuogui pill enhancing ovarian function and skin elastic repair in premature aging rats based on artificial intelligence medical image analysis

Background AI medical image analysis shows potential applications in research on premature aging and skin. The purpose of this study was to explore the mechanism of the Zuogui pill based on artificial intelligence medical image analysis on ovarian function enhancement and skin elasticity repair in r...

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Published in:Skin research and technology Vol. 30; no. 9; pp. e70050 - n/a
Main Authors: Zhang, Xinpei, Wang, Fuju, Zhu, Xiaodan, Xu, Lan, Qin, Ling, Xu, Wenjuan, Fan, Bozhen
Format: Journal Article
Language:English
Published: England John Wiley & Sons, Inc 01-09-2024
John Wiley and Sons Inc
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Summary:Background AI medical image analysis shows potential applications in research on premature aging and skin. The purpose of this study was to explore the mechanism of the Zuogui pill based on artificial intelligence medical image analysis on ovarian function enhancement and skin elasticity repair in rats with premature aging. Materials and Methods The premature aging rat model was established by using an experimental animal model. Then Zuogui pills were injected into the rats with premature aging, and the images were detected by an optical microscope. Then, through the analysis of artificial intelligence medical images, the image data is analyzed to evaluate the indicators of ovarian function. Results Through optical microscope image detection, we observed that the Zuogui pill played an active role in repairing ovarian tissue structure and increasing the number of follicles in mice, and Zuogui pill also significantly increased the level of progesterone in the blood of mice. Conclusion Most of the ZGP‐induced outcomes are significantly dose‐dependent.
Bibliography:Xinpei Zhang and Fuju Wang are co‐first authors.
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ISSN:0909-752X
1600-0846
1600-0846
DOI:10.1111/srt.70050