AAontology: An Ontology of Amino Acid Scales for Interpretable Machine Learning

IF 4.7 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
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引用次数: 0

Abstract

Amino acid scales are crucial for protein prediction tasks, many of them being curated in the AAindex database. Despite various clustering attempts to organize them and to better understand their relationships, these approaches lack the fine-grained classification necessary for satisfactory interpretability in many protein prediction problems.

To address this issue, we developed AAontology—a two-level classification for 586 amino acid scales (mainly from AAindex) together with an in-depth analysis of their relations—using bag-of-word-based classification, clustering, and manual refinement over multiple iterations. AAontology organizes physicochemical scales into 8 categories and 67 subcategories, enhancing the interpretability of scale-based machine learning methods in protein bioinformatics. Thereby it enables researchers to gain a deeper biological insight. We anticipate that AAontology will be a building block to link amino acid properties with protein function and dysfunctions as well as aid informed decision-making in mutation analysis or protein drug design.

Abstract Image

AAontology:用于可解释机器学习的氨基酸尺度本体。
氨基酸尺度对蛋白质预测任务至关重要,AAindex 数据库中已收集了许多氨基酸尺度。尽管我们尝试了各种聚类方法来组织氨基酸尺度并更好地理解它们之间的关系,但这些方法缺乏在许多蛋白质预测问题中令人满意的可解释性所必需的精细分类。为了解决这个问题,我们开发了 AAontology--一种针对 586 个氨基酸标度(主要来自 AAindex)的两级分类法,并对它们之间的关系进行了深入分析--采用基于词袋的分类、聚类和多次迭代的人工细化方法。AAontology 将理化尺度分为 8 个类别和 67 个子类别,提高了蛋白质生物信息学中基于尺度的机器学习方法的可解释性。因此,它能让研究人员获得更深入的生物学见解。我们预计 AAontology 将成为将氨基酸特性与蛋白质功能和功能障碍联系起来的基石,并有助于在突变分析或蛋白质药物设计中做出明智的决策。
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来源期刊
Journal of Molecular Biology
Journal of Molecular Biology 生物-生化与分子生物学
CiteScore
11.30
自引率
1.80%
发文量
412
审稿时长
28 days
期刊介绍: Journal of Molecular Biology (JMB) provides high quality, comprehensive and broad coverage in all areas of molecular biology. The journal publishes original scientific research papers that provide mechanistic and functional insights and report a significant advance to the field. The journal encourages the submission of multidisciplinary studies that use complementary experimental and computational approaches to address challenging biological questions. Research areas include but are not limited to: Biomolecular interactions, signaling networks, systems biology; Cell cycle, cell growth, cell differentiation; Cell death, autophagy; Cell signaling and regulation; Chemical biology; Computational biology, in combination with experimental studies; DNA replication, repair, and recombination; Development, regenerative biology, mechanistic and functional studies of stem cells; Epigenetics, chromatin structure and function; Gene expression; Membrane processes, cell surface proteins and cell-cell interactions; Methodological advances, both experimental and theoretical, including databases; Microbiology, virology, and interactions with the host or environment; Microbiota mechanistic and functional studies; Nuclear organization; Post-translational modifications, proteomics; Processing and function of biologically important macromolecules and complexes; Molecular basis of disease; RNA processing, structure and functions of non-coding RNAs, transcription; Sorting, spatiotemporal organization, trafficking; Structural biology; Synthetic biology; Translation, protein folding, chaperones, protein degradation and quality control.
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