Submitted:
06 April 2026
Posted:
09 April 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Animals and Experimental Design
2.2. Dose Calculation
2.3. Aging Score Assessment
- Score 0: Clearly glossy (normal condition)
- Score 1: Slightly reduced gloss
- Score 2: Clearly reduced gloss
- Score 3: Markedly reduced gloss
- Score 4: Severely deteriorated and dirty appearance
- Score 0: No hair loss
- Score 1: Hairless area < 25% and thinning < 50%
- Score 2: Hairless area < 25% and thinning ≥ 50%
- Score 3: Hairless area = 25–50%
- Score 4: Hairless area > 50%
- Score 0: No white hair
- Score 1: White hair detectable upon close inspection
- Score 2: Clearly visible white hair
- Score 3: Diffuse white hair
2.4. Functional Assessments
2.5. Sample Collection
2.6. Gut Microbiota Analysis
2.7. Measurement of Organic Acid Levels in Cecal Contents
2.8. mRNA Expression Analysis
2.9. Blood Biochemistry and Proteomics
2.10. Statistical Analyses
3. Results
3.1. Body Weight and Food Intake
3.1. Aging Score
3.3. Muscle and Cognitive Functions
3.4. Gut Microbiota
3.5. Organic Acid Levels in Cecal Contents
3.6. mRNA Expression Levels of Intestinal Genes
3.7. Blood Biochemistry and Proteomics
4. Discussion
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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