Histological analysis is vital for understanding skeletal muscle diseases. However, quantifying data requires much effort, so automation is expected to reduce workload. The present study proposes a semi-automated method to quantify expressed paired box protein (Pax-7) /bromodeoxyuridine (BrdU)-positive cells. Soleus muscle was harvested from mice 2âweeks after oral administration of the epicatechin tetramer cinnamantanin A2 (A2), known to induce skeletal muscle hypertrophy. Before the necropsy, mice were treated with BrdU to facilitate cell tracking. For histological examination, frozen sections were stained with hematoxylin and eosin (HE) to measure cell size by cross-sectional area (CSA) and were immunostained with anti-BrdU and anti-Pax-7 antibodies. Treatment with A2 caused a shift in the CSA distribution curve towards larger values, thus revealing an increase in muscle size. The analysis of BrdU/Pax-7 positive cells, performed both manually and semi-automatically, revealed a slight increase with A2 treatment, while Pax-7 positive cells remained unchanged. Correlation between manual and semi-automated analysis showed a coefficient of determination of 0.7132, indicating a significant reduction in analysis time by approximately 20 times. This study highlights the effectiveness of semi-automated histological analysis in skeletal muscle research and provides a practical solution to increase the efficiency of muscle regeneration evaluation.
A semi-automated observation approach to quantify mouse skeletal muscle differentiation using immunohistochemistry.
利用免疫组织化学方法对小鼠骨骼肌分化进行定量分析的半自动观察方法
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作者:Shimizu Kenta, Yoshida Yamato, Iwasa Kenshin, Fujii Yasuyuki, Jacob Ursula M, Fritsch Tilman, Abdelhameed Ali S, Calabrese Vittorio, Osakabe Naomi
| 期刊: | Physiological Reports | 影响因子: | 1.900 |
| 时间: | 2025 | 起止号: | 2025 Apr;13(7):e70330 |
| doi: | 10.14814/phy2.70330 | 种属: | Mouse |
| 研究方向: | 免疫/内分泌 | ||
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