醫學研究

恭喜 黃凱堯研究員 及 高慧茹研究員 之研究成果發表於國際頂尖學術期刊 International Journal of Molecular Sciences

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TAGS

發表期刊:

International Journal of Molecular Sciences
(IF=4.9, Q1)

 

研究題目:

Integrating In Silico and In Vitro Approaches to Identify Natural Peptides with Selective Cytotoxicity against Cancer Cells

 

作者列表:

Hui-Ju Kao, Tzu-Han Weng, Chia-Hung Chen, Yu-Chi Chen, Yu-Hsiang Chi, Kai-Yao Huang*, Shun-Long Weng*

 

論文摘要:

Anticancer peptides (ACPs) are bioactive compounds known for their selective cytotoxicity against tumor cells via various mechanisms. Recent studies have demonstrated that in silico machine learning methods are effective in predicting peptides with anticancer activity. In this study, we collected and analyzed over a thousand experimentally verified ACPs, specifically targeting peptides derived from natural sources. We developed a precise prediction model based on their sequence and structural features, and the model's evaluation results suggest its strong predictive ability for anticancer activity. To enhance reliability, we integrated the results of this model with those from other available methods. In total, we identified 176 potential ACPs, some of which were synthesized and further evaluated using the MTT colorimetric assay. All of these putative ACPs exhibited significant anticancer effects and selective cytotoxicity against specific tumor cells. In summary, we present a strategy for identifying and characterizing natural peptides with selective cytotoxicity against cancer cells, which could serve as novel therapeutic agents. Our prediction model can effectively screen new molecules for potential anticancer activity, and the results from in vitro experiments provide compelling evidence of the candidates' anticancer effects and selective cytotoxicity.