Computational inference of difficult word boundaries in DNA languages

G. Tsafnat, Paul Setzermann, S. Partridge, D. Grimm
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引用次数: 3

Abstract

Many applications in molecular and systems biology exploit similarities between DNA and languages to make predictions about cell function. This approach provides structure to an otherwise monotonous sequence of nucleotides. However, one of the major differences between DNA sequences and text is in how semantic units (e.g. words) are distinguished within them. Whereas words and sentences are separated by spaces and punctuation in natural languages, no such markers exist in DNA. Some semantic units in DNA (e.g. genes) can be identified relatively easily and with relatively high accuracy. Other units may have less known molecular mechanisms and are therefore harder to identify accurately. In this paper we discuss three machine learning methods to elucidate the boundaries of such difficult units: heuristic approaches use hypothesized models of the mechanism to identify word boundaries, supervised machine learning methods generalise labelled examples of word boundaries to a model that can be used to detect these boundaries, and unsupervised machine learning methods infer a model from unlabeled data. As an example, we use a bacterial transposable element called ISEcp1 that moves DNA segments of variable length. We assess the accuracy of each of the above methods using rediscovery experiments. We demonstrate the power of the methods by examining 9 instances of DNA segments associated with ISEcp1 that lack known boundaries. We identified 6 units that include genes that confer resistance to clinically important antibiotics.
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DNA语言中难词边界的计算推理
分子生物学和系统生物学中的许多应用都利用DNA和语言之间的相似性来预测细胞功能。这种方法为单调的核苷酸序列提供了结构。然而,DNA序列和文本之间的主要区别之一是语义单位(如单词)的区别。在自然语言中,单词和句子是由空格和标点符号分隔的,而在DNA中却没有这样的标记。DNA中的一些语义单位(如基因)可以相对容易地识别,并且具有较高的准确性。其他单位可能具有鲜为人知的分子机制,因此难以准确识别。在本文中,我们讨论了三种机器学习方法来阐明这些困难单元的边界:启发式方法使用机制的假设模型来识别词边界,监督机器学习方法将词边界的标记示例概括为可用于检测这些边界的模型,无监督机器学习方法从未标记的数据中推断模型。作为一个例子,我们使用一种叫做ISEcp1的细菌转座因子来移动可变长度的DNA片段。我们使用再发现实验来评估上述每种方法的准确性。我们通过检查与ISEcp1缺乏已知边界的DNA片段的9个实例来证明该方法的力量。我们确定了6个单位,其中包括对临床重要抗生素产生耐药性的基因。
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