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CancerGram: An Effective Classifier for Differentiating Anticancer from Antimicrobial Peptides

机译:CancerGram:一种用于区分抗菌肽的有效分类器

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摘要

Antimicrobial peptides (AMPs) constitute a diverse group of bioactive molecules that provide multicellular organisms with protection against microorganisms, and microorganisms with weaponry for competition. Some AMPs can target cancer cells; thus, they are called anticancer peptides (ACPs). Due to their small size, positive charge, hydrophobicity and amphipathicity, AMPs and ACPs interact with negatively charged components of biological membranes. AMPs preferentially permeabilize microbial membranes, but ACPs additionally target mitochondrial and plasma membranes of cancer cells. The preference towards mitochondrial membranes is explained by their membrane potential, membrane composition resulting from α-proteobacterial origin and the fact that mitochondrial targeting signals could have evolved from AMPs. Taking into account the therapeutic potential of ACPs and millions of deaths due to cancer annually, it is of vital importance to find new cationic peptides that selectively destroy cancer cells. Therefore, to reduce the costs of experimental research, we have created a robust computational tool, CancerGram, that uses n-grams and random forests for predicting ACPs. Compared to other ACP classifiers, CancerGram is the first three-class model that effectively classifies peptides into: ACPs, AMPs and non-ACPson-AMPs, with AU1U amounting to 0.89 and a Kappa statistic of 0.65. CancerGram is available as a web server and R package on GitHub.
机译:抗微生物肽(AMPs)构成多种生物活性分子组,可提供多细胞生物,这些组织生物体保护与微生物保护,以及武器武器进行竞争的微生物。一些安培可以靶向癌细胞;因此,它们称为抗癌肽(ACPS)。由于它们的体积小,阳性电荷,疏水性和两亲性,AMP和ACP与生物膜带负电荷的组分相互作用。 AMPS优先渗透微生物膜,但ACP还靶向癌细胞的线粒体和血浆膜。对线粒体膜的偏好是通过其膜电位,由α-植物来源引起的膜组合物的偏好以及线粒体靶向信号可以从AMPS演变的事实。考虑到每年癌症的ACP和数百万死亡的治疗潜力,发现选择性地破坏癌细胞的新阳离子肽至关重要。因此,为了降低实验研究的成本,我们创建了一种强大的计算工具,癌症图,使用n克和随机森林来预测ACP。与其他ACP分类器相比,CancerGram是第一个三类模型,有效地将肽分类为:ACPS,AMP和非ACPS /非AMPS,AU1U含量为0.89和κ统计为0.65。 CancerGram在GitHub上可用作Web服务器和R包。

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