In silico protein function prediction: the rise of machine learning-based approaches.

Medical review (Berlin, Germany) Pub Date : 2023-11-29 eCollection Date: 2023-12-01 DOI:10.1515/mr-2023-0038
Jiaxiao Chen, Zhonghui Gu, Luhua Lai, Jianfeng Pei
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Abstract

Proteins function as integral actors in essential life processes, rendering the realm of protein research a fundamental domain that possesses the potential to propel advancements in pharmaceuticals and disease investigation. Within the context of protein research, an imperious demand arises to uncover protein functionalities and untangle intricate mechanistic underpinnings. Due to the exorbitant costs and limited throughput inherent in experimental investigations, computational models offer a promising alternative to accelerate protein function annotation. In recent years, protein pre-training models have exhibited noteworthy advancement across multiple prediction tasks. This advancement highlights a notable prospect for effectively tackling the intricate downstream task associated with protein function prediction. In this review, we elucidate the historical evolution and research paradigms of computational methods for predicting protein function. Subsequently, we summarize the progress in protein and molecule representation as well as feature extraction techniques. Furthermore, we assess the performance of machine learning-based algorithms across various objectives in protein function prediction, thereby offering a comprehensive perspective on the progress within this field.

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硅学蛋白质功能预测:基于机器学习方法的兴起。
蛋白质在重要的生命过程中发挥着不可或缺的作用,因此蛋白质研究领域是一个基础领域,具有推动药物和疾病研究进步的潜力。在蛋白质研究的背景下,揭示蛋白质功能和解开复杂的机理基础成为当务之急。由于实验研究固有的高昂成本和有限的通量,计算模型为加速蛋白质功能注释提供了一个前景广阔的替代方案。近年来,蛋白质预训练模型在多项预测任务中取得了显著进步。这一进步凸显了有效处理与蛋白质功能预测相关的复杂下游任务的显著前景。在这篇综述中,我们将阐明预测蛋白质功能的计算方法的历史演变和研究范式。随后,我们总结了蛋白质和分子表示以及特征提取技术方面的进展。此外,我们还评估了基于机器学习的算法在蛋白质功能预测的各种目标中的表现,从而为该领域的进展提供了一个全面的视角。
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