Identification of Active Components for Sports Supplements: Machine Learning-Driven Classification and Cell-Based Validation
The identification of active components is critical for the development of sports supplements. However, high-throughput screening of active components remains a challenge. This study sought to construct prediction models to screen active components from herbal medicines via machine learning and vali...
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Veröffentlicht in: | ACS omega 2024-03, Vol.9 (10), p.11347-11355 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | The identification of active components is critical for the development of sports supplements. However, high-throughput screening of active components remains a challenge. This study sought to construct prediction models to screen active components from herbal medicines via machine learning and validate the screening by using cell-based assays. The six constructed models had an accuracy of >0.88. Twelve randomly selected active components from the screening were tested for their active potency on C2C12 cells, and 11 components induced a significant increase in myotube diameters and protein synthesis. The effect and mechanism of luteolin among the 11 active components as potential sports supplements were then investigated by using immunofluorescence staining and high-content imaging analysis. It showed that luteolin increased the skeletal muscle performance via the activation of PGC-1α and MAPK signaling pathways. Thus, high-throughput prediction models can be effectively used to screen active components as sports supplements. |
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ISSN: | 2470-1343 2470-1343 |
DOI: | 10.1021/acsomega.3c07395 |