MotifMiner: a general toolkit for efficiently identifying common substructures in molecules

M. Coatney, S. Parthasarathy
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引用次数: 14

Abstract

Scientific research often involves examining structural relationships in molecules since scientists strongly believe in the causal relationship between structure and function. Traditionally, researchers have identified these patterns, or motifs, manually using biochemical expertise. However, with the massive influx of new biochemical data and the ability to gather data for very large molecules, there is great need for techniques that automatically and efficiently identify commonly occurring structural patterns in molecules. Previous automated substructure discovery approaches have each introduced variations of similar underlying techniques and have embedded domain knowledge. While doing so improves performance for the particular domain, this complicates extensibility to other domains. Also, they do not address scalability or noise, which is critical for certain structural domains like macromolecules. In this paper, we present MotifMiner, a general toolkit for automatically identifying common motifs in most any scientific molecular dataset. We describe both our application framework and services for identifying motifs, as well as demonstrate the flexibility of our system by analyzing several disparate domains, including protein, drug, and MD simulation datasets.
MotifMiner:用于有效识别分子中常见子结构的通用工具包
科学研究经常涉及检查分子的结构关系,因为科学家们坚信结构和功能之间的因果关系。传统上,研究人员已经确定了这些模式,或基序,手动使用生化专业知识。然而,随着新的生化数据的大量涌入和收集非常大分子数据的能力,非常需要自动有效地识别分子中常见的结构模式的技术。以前的自动化子结构发现方法都引入了类似底层技术的变体,并嵌入了领域知识。虽然这样做可以提高特定领域的性能,但这会使到其他领域的可扩展性变得复杂。此外,它们没有解决可扩展性或噪声问题,而这对于大分子等特定结构域至关重要。在本文中,我们提出了MotifMiner,一个用于自动识别大多数科学分子数据集中的公共基序的通用工具包。我们描述了用于识别基序的应用程序框架和服务,并通过分析几个不同的领域(包括蛋白质、药物和MD模拟数据集)展示了我们系统的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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