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首页> 外文期刊>Journal of molecular modeling >De novo design of anticancer peptides by ensemble artificial neural networks
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De novo design of anticancer peptides by ensemble artificial neural networks

机译:集团人工神经网络抗癌肽的德诺族设计

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摘要

Membranolytic anticancer peptides (ACPs) are drawing increasing attention as potential future therapeutics against cancer, due to their ability to hinder the development of cellular resistance and their potential to overcome common hurdles of chemotherapy, e.g., side effects and cytotoxicity. In this work, we present an ensemble machine learning model to design potent ACPs. Four counter-propagation artificial neural-networks were trained to identify peptides that kill breast and/or lung cancer cells. For prospective application of the ensemble model, we selected 14 peptides from a total of 1000 de novo designs, for synthesis and testing in vitro on breast cancer (MCF7) and lung cancer (A549) cell lines. Six de novo designs showed anticancer activity in vitro, five of which against both MCF7 and A549 cell lines. The novel active peptides populate uncharted regions of ACP sequence space.
机译:由于它们阻碍了细胞抗性的发展和克服了常见化学障碍,例如副作用和细胞毒性,因此膜抗癌肽(ACP)的潜在未来治疗患者对抗癌症的潜在未来治疗患者的潜在未来治疗药物。 在这项工作中,我们展示了一个集合机器学习模型来设计有效的ACP。 培训四个反传播人工神经网络以鉴定杀死乳腺和/或肺癌细胞的肽。 对于集合模型的前瞻性应用,我们选择了14种肽,总共1000 de Novo设计,用于在乳腺癌(MCF7)和肺癌(A549)细胞体外体外合成和测试。 六场诺维设计显示体外抗癌活性,其中5个反对MCF7和A549细胞系。 新型活性肽填充了ACP序列空间的未查查区域。

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