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cACP-DeepGram:基于深度神经网络和 Skip-Gram 词嵌入模型的抗癌肽分类。

cACP-DeepGram: Classification of anticancer peptides via deep neural network and skip-gram-based word embedding model.

机构信息

Department of Computer Science, Abdul Wali Khan University Mardan, KP 23400, Pakistan.

Department of Computer Science, Abdul Wali Khan University Mardan, KP 23400, Pakistan.

出版信息

Artif Intell Med. 2022 Sep;131:102349. doi: 10.1016/j.artmed.2022.102349. Epub 2022 Jul 6.

DOI:10.1016/j.artmed.2022.102349
PMID:36100346
Abstract

Cancer is a Toxic health concern worldwide, it happens when cellular modifications cause the irregular growth and division of human cells. Several traditional approaches such as therapies and wet laboratory-based methods have been applied to treat cancer cells. However, these methods are considered less effective due to their high cost and diverse side effects. According to recent advancements, peptide-based therapies have attracted the attention of scientists because of their high selectivity. Peptide therapy can efficiently treat the targeted cells, without affecting the normal cells. Due to the rapid increase of peptide sequences, an accurate prediction model has become a challenging task. Keeping the significance of anticancer peptides (ACPs) in cancer treatment, an intelligent and reliable prediction model is highly indispensable. In this paper, a FastText-based word embedding strategy has been employed to represent each peptide sample via a skip-gram model. After extracting the peptide embedding descriptors, the deep neural network (DNN) model was applied to accurately discriminate the ACPs. The optimized parameters of DNN achieved an accuracy of 96.94 %, 93.41 %, and 94.02 % using training, alternate, and independent samples, respectively. It was observed that our proposed cACP-DeepGram model outperformed and reported ~10 % highest prediction accuracy than existing predictors. It is suggested that the cACP-DeepGram model will be a reliable tool for scientists and might play a valuable role in academic research and drug discovery. The source code and the datasets are publicly available at https://github.com/shahidakbarcs/cACP-DeepGram.

摘要

癌症是全球范围内的一种有毒健康隐患,当细胞发生变异导致人体细胞的异常生长和分裂时,癌症就会发生。许多传统方法,如治疗方法和基于湿实验室的方法,已被用于治疗癌细胞。然而,由于这些方法成本高且副作用多样,因此被认为效果不佳。根据最近的进展,基于肽的疗法引起了科学家的关注,因为它们具有很高的选择性。肽疗法可以有效地治疗靶向细胞,而不会影响正常细胞。由于肽序列的快速增加,一个准确的预测模型已经成为一项具有挑战性的任务。鉴于抗癌肽(ACPs)在癌症治疗中的重要性,一个智能且可靠的预测模型是非常必要的。在本文中,我们采用了基于 FastText 的单词嵌入策略,通过 skip-gram 模型来表示每个肽样本。在提取肽嵌入描述符之后,我们应用深度神经网络(DNN)模型来准确区分 ACPs。DNN 的优化参数在使用训练、交替和独立样本时,分别达到了 96.94%、93.41%和 94.02%的准确率。我们发现,与现有的预测器相比,我们提出的 cACP-DeepGram 模型表现更好,报告的预测准确率高出约 10%。建议将 cACP-DeepGram 模型作为科学家的可靠工具,并且可能在学术研究和药物发现中发挥有价值的作用。该模型的源代码和数据集可在 https://github.com/shahidakbarcs/cACP-DeepGram 上公开获取。

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