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Machine intelligence in peptide therapeutics: A next‐generation tool for rapid disease screening

机译:肽治疗方法中的机器智能:一种用于快速疾病筛查的下一代工具

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摘要

Abstract Discovery and development of biopeptides are time‐consuming, laborious, and dependent on various factors. Data‐driven computational methods, especially machine learning (ML) approach, can rapidly and efficiently predict the utility of therapeutic peptides. ML methods offer an array of tools that can accelerate and enhance decision making and discovery for well‐defined queries with ample and sophisticated data quality. Various ML approaches, such as support vector machines, random forest, extremely randomized tree, and more recently deep learning methods, are useful in peptide‐based drug discovery. These approaches leverage the peptide data sets, created via high‐throughput sequencing and computational methods, and enable the prediction of functional peptides with increased levels of accuracy. The use of ML approaches in the development of peptide‐based therapeutics is relatively recent; however, these techniques are already revolutionizing protein research by unraveling their novel therapeutic peptide functions. In this review, we discuss several ML‐based state‐of‐the‐art peptide‐prediction tools and compare these methods in terms of their algorithms, feature encodings, prediction scores, evaluation methodologies, and software utilities. We also assessed the prediction performance of these methods using well‐constructed independent data sets. In addition, we discuss the common pitfalls and challenges of using ML approaches for peptide therapeutics. Overall, we show that using ML models in peptide research can streamline the development of targeted peptide therapies.
机译:摘要发现和发展生物肽的耗时,艰苦,依赖各种因素。数据驱动的计算方法,尤其是机器学习(ML)方法,可以快速有效地预测治疗肽的效用。 ML方法提供了一系列工具,可以加速和增强具有丰富和复杂数据质量的明确定义查询的决策和发现。各种ML方法,如支持向量机,随机林,极其随机树和最近的深度学习方法,可用于基于肽的药物发现。这些方法利用通过高通量测序和计算方法产生的肽数据集,并能够通过增加的精度水平预测功能肽。 ML方法在肽的疗法的发展中使用相对近期;然而,这些技术已经通过解开其新的治疗肽功能而彻底改变蛋白质研究。在该综述中,我们讨论了基于ML的最新肽预测工具,并在其算法,特征编码,预测分数,评估方法和软件实用程序方面进行比较这些方法。我们还使用良好构造的独立数据集评估了这些方法的预测性能。此外,我们讨论了使用ML肽治疗剂方法的常见陷阱和挑战。总体而言,我们表明,使用肽研究中的ML模型可以简化靶向肽疗法的发展。

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