Machine learning-aided screening framework for wound healing peptides

IF 1.9 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Sathish Kumar Gunaseelan, Yashi Khandelwal, Arnab Dutta, Debirupa Mitra, Swati Biswas
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Abstract

Chronic wounds characterized by prolonged inflammation and persistent infection pose a significant burden to global healthcare systems. Currently, antibiotics and non-steroidal anti-inflammatory drugs (NSAIDs) are administered to patients. Prolonged use of antibiotics is severely discouraged owing to the rapid rise in antimicrobial resistance, and the use of NSAIDs can also increase the risk of infection. Thus, the discovery of novel therapeutics for chronic wounds is crucial. Antimicrobial peptides (AMPs) are an emerging class of therapeutics, which are effective and has no known mechanism of inducing resistance. Anti-inflammatory peptides (AIPs) are another class of therapeutic peptides that can reduce inflammation by eliciting anti-inflammatory cytokine response. A single peptide possessing both AMP and AIP activities can be an ideal therapeutic for the treatment of chronic wounds. However, the discovery of peptides with multiple properties via experimental testing is a daunting task. In this work, we propose a classification framework using machine learning for the identification of wound healing peptides (WHPs) i.e., which possess both AMP and AIP activities. The proposed framework uses XGBoost algorithm with amino-acid composition, sequence analysis and physicochemical properties as feature representation methods (FRMs) to develop binary classifiers. The model developed by combining all the three FRMs, resulted in the highest accuracy of 93.3 and 76.2% for AMP and AIP classifications, respectively. An easy-to-use freely accessible web tool (WHP-Pred) has also been developed.

Abstract Image

伤口愈合肽的机器学习辅助筛选框架
以长期炎症和持续感染为特征的慢性伤口给全球医疗系统带来了沉重负担。目前,患者主要使用抗生素和非甾体抗炎药(NSAIDs)。由于抗菌药耐药性的迅速增加,长期使用抗生素已被严格禁止,而使用非甾体抗炎药也会增加感染风险。因此,发现治疗慢性伤口的新型疗法至关重要。抗菌肽(AMPs)是一类新兴的治疗药物,它疗效显著,而且没有已知的诱发抗药性的机制。抗炎肽(AIPs)是另一类治疗肽,可通过激发抗炎细胞因子反应来减轻炎症。同时具有 AMP 和 AIP 活性的单一肽是治疗慢性伤口的理想疗法。然而,通过实验测试发现具有多种特性的多肽是一项艰巨的任务。在这项工作中,我们提出了一种利用机器学习识别伤口愈合肽(WHPs)的分类框架,即同时具有 AMP 和 AIP 活性的肽。该框架采用 XGBoost 算法,并将氨基酸组成、序列分析和理化性质作为特征表示方法(FRM)来开发二元分类器。结合所有三种特征表示方法开发的模型对 AMP 和 AIP 分类的准确率最高,分别达到 93.3% 和 76.2%。此外,还开发了一个易于使用、可免费访问的网络工具(WHP-Pred)。
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来源期刊
Bulletin of Materials Science
Bulletin of Materials Science 工程技术-材料科学:综合
CiteScore
3.40
自引率
5.60%
发文量
209
审稿时长
11.5 months
期刊介绍: The Bulletin of Materials Science is a bi-monthly journal being published by the Indian Academy of Sciences in collaboration with the Materials Research Society of India and the Indian National Science Academy. The journal publishes original research articles, review articles and rapid communications in all areas of materials science. The journal also publishes from time to time important Conference Symposia/ Proceedings which are of interest to materials scientists. It has an International Advisory Editorial Board and an Editorial Committee. The Bulletin accords high importance to the quality of articles published and to keep at a minimum the processing time of papers submitted for publication.
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