Rule-based human gene normalization in biomedical text with confidence estimation.

W. Lau, Calvin A. Johnson, Kevin Becker
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引用次数: 11

Abstract

The ability to identify gene mentions in text and normalize them to the proper unique identifiers is crucial for "down-stream" text mining applications in bioinformatics. We have developed a rule-based algorithm that divides the normalization task into two steps. The first step includes pattern matching for gene symbols and an approximate term searching technique for gene names. Next, the algorithm measures several features based on morphological, statistical, and contextual information to estimate the level of confidence that the correct identifier is selected for a potential mention. Uniqueness, inverse distance, and coverage are three novel features we quantified. The algorithm was evaluated against the BioCreAtIvE datasets. The feature weights were tuned by the Nealder-Mead simplex method. An F-score of .7622 and an AUC (area under the recall-precision curve) of .7461 were achieved on the test data using the set of weights optimized to the training data.
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基于规则的生物医学文本人类基因归一化与置信度估计。
识别文本中提到的基因并将其规范化为适当的唯一标识符的能力对于生物信息学中的“下游”文本挖掘应用至关重要。我们开发了一种基于规则的算法,将规范化任务分为两个步骤。第一步包括基因符号的模式匹配和基因名称的近似术语搜索技术。接下来,该算法基于形态学、统计学和上下文信息测量几个特征,以估计为潜在提及选择正确标识符的置信度。唯一性、逆距离和覆盖是我们量化的三个新特征。根据BioCreAtIvE数据集对该算法进行了评估。采用Nealder-Mead单纯形法对特征权值进行了调整。使用针对训练数据优化的权值集,测试数据的f得分为0.7622,AUC(召回精度曲线下面积)为0.7461。
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