A Comprehensive Review on Machine Learning Techniques for Protein Family Prediction.

The protein journal Pub Date : 2024-04-01 Epub Date: 2024-03-01 DOI:10.1007/s10930-024-10181-5
T Idhaya, A Suruliandi, S P Raja
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Abstract

Proteomics is a field dedicated to the analysis of proteins in cells, tissues, and organisms, aiming to gain insights into their structures, functions, and interactions. A crucial aspect within proteomics is protein family prediction, which involves identifying evolutionary relationships between proteins by examining similarities in their sequences or structures. This approach holds great potential for applications such as drug discovery and functional annotation of genomes. However, current methods for protein family prediction have certain limitations, including limited accuracy, high false positive rates, and challenges in handling large datasets. Some methods also rely on homologous sequences or protein structures, which introduce biases and restrict their applicability to specific protein families or structures. To overcome these limitations, researchers have turned to machine learning (ML) approaches that can identify connections between protein features and simplify complex high-dimensional datasets. This paper presents a comprehensive survey of articles that employ various ML techniques for predicting protein families. The primary objective is to explore and improve ML techniques specifically for protein family prediction, thus advancing future research in the field. Through qualitative and quantitative analyses of ML techniques, it is evident that multiple methods utilizing a range of classifiers have been applied for protein family prediction. However, there has been limited focus on developing novel classifiers for protein family classification, highlighting the urgent need for improved approaches in this area. By addressing these challenges, this research aims to enhance the accuracy and effectiveness of protein family prediction, ultimately facilitating advancements in proteomics and its diverse applications.

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蛋白质家族预测的机器学习技术综述
蛋白质组学是一个致力于分析细胞、组织和生物体内蛋白质的领域,旨在深入了解它们的结构、功能和相互作用。蛋白质组学的一个重要方面是蛋白质家族预测,即通过研究蛋白质序列或结构的相似性来确定蛋白质之间的进化关系。这种方法在药物发现和基因组功能注释等应用领域具有巨大潜力。然而,目前的蛋白质家族预测方法有一定的局限性,包括准确性有限、假阳性率高以及在处理大型数据集时面临挑战。有些方法还依赖于同源序列或蛋白质结构,这会带来偏差并限制其对特定蛋白质家族或结构的适用性。为了克服这些局限性,研究人员转向了机器学习(ML)方法,这种方法可以识别蛋白质特征之间的联系并简化复杂的高维数据集。本文对采用各种 ML 技术预测蛋白质家族的文章进行了全面调查。其主要目的是探索和改进专门用于蛋白质家族预测的 ML 技术,从而推动该领域的未来研究。通过对 ML 技术的定性和定量分析,我们可以明显看出,利用一系列分类器的多种方法已被用于蛋白质家族预测。然而,人们对开发用于蛋白质家族分类的新型分类器的关注还很有限,这凸显了该领域对改进方法的迫切需求。通过应对这些挑战,本研究旨在提高蛋白质族预测的准确性和有效性,最终促进蛋白质组学及其各种应用的发展。
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