识别蛋白质名称及其名称边界的概率模型。

Kazuhiro Seki, Javed Mostafa
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引用次数: 0

摘要

本文提出了一种识别生物医学文本中蛋白质名称的方法,重点是检测蛋白质名称边界。我们使用了一个概率模型,该模型利用了几个表面线索来表征蛋白质名称,并结合了词类进行泛化。与之前提出的方法相比,我们的方法不依赖于词性标注器和句法解析器等自然语言处理工具,从而减少了处理开销和需要估计的概率参数的潜在数量。为了提高识别的精度,还提出了确定性的概念。我们基于我们提出的方法实现了一个蛋白质名称识别系统,并结合之前的工作在现实世界的生物医学文本中评估了该系统。结果表明,总体而言,我们的系统与最先进的蛋白质名称识别系统性能相当,并且在化合物名称识别方面取得了更高的性能。此外,通过将系统输出限制在那些具有高确定性的名称上,我们的系统可以进一步提高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A probabilistic model for identifying protein names and their name boundaries.

This paper proposes a method for identifying protein names in biomedical texts with an emphasis on detecting protein name boundaries. We use a probabilistic model which exploits several surface clues characterizing protein names and incorporates word classes for generalization. In contrast to previously proposed methods, our approach does not rely on natural language processing tools such as part-of-speech taggers and syntactic parsers, so as to reduce processing overhead and the potential number of probabilistic parameters to be estimated. A notion of certainty is also proposed to improve precision for identification. We implemented a protein name identification system based on our proposed method, and evaluated the system on real-world biomedical texts in conjunction with the previous work. The results showed that overall our system performs comparably to the state-of-the-art protein name identification system and that higher performance is achieved for compound names. In addition, it is demonstrated that our system can further improve precision by restricting the system output to those names with high certainties.

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