自然语言处理在VA电子健康记录中的应用,以识别临床和研究目的的表型特征。

Adi V Gundlapalli, Brett R South, Shobha Phansalkar, Anita Y Kinney, Shuying Shen, Sylvain Delisle, Trish Perl, Matthew H Samore
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引用次数: 0

摘要

提取和分析患者临床信息的信息学工具落后于生物信息学的数据挖掘发展。虽然对个体部分或完整基因型的分析几乎是现实,但伴随基因型的表型特征并不为人所知,而且在自由文本的患者健康记录中很大程度上无法获得。随着电子病历采用的增加,迫切需要提取相关的表型信息,并将其提供给临床医生和研究人员。这通常要求数据采用既可搜索又易于计算的结构化格式。以炎症性肠病为例,本研究展示了自然语言处理系统(MedLEE)在无纸化VA医疗保健系统中挖掘临床记录的实用性。MedLEE的这种适应性对于识别具有特定临床状况的患者、有患病风险的患者或具有提示这些疾病症状的患者非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of Natural Language Processing to VA Electronic Health Records to Identify Phenotypic Characteristics for Clinical and Research Purposes.

Application of Natural Language Processing to VA Electronic Health Records to Identify Phenotypic Characteristics for Clinical and Research Purposes.

Informatics tools to extract and analyze clinical information on patients have lagged behind data-mining developments in bioinformatics. While the analyses of an individual's partial or complete genotype is nearly a reality, the phenotypic characteristics that accompany the genotype are not well known and largely inaccessible in free-text patient health records. As the adoption of electronic medical records increases, there exists an urgent need to extract pertinent phenotypic information and make that available to clinicians and researchers. This usually requires the data to be in a structured format that is both searchable and amenable to computation. Using inflammatory bowel disease as an example, this study demonstrates the utility of a natural language processing system (MedLEE) in mining clinical notes in the paperless VA Health Care System. This adaptation of MedLEE is useful for identifying patients with specific clinical conditions, those at risk for or those with symptoms suggestive of those conditions.

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