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PubCaseFinder: A Case-Report-Based, Phenotype-Driven Differential-Diagnosis System for Rare Diseases

机译:PUBCASEFINDER:罕见疾病的基于病例报告的表型驱动差异诊断系统

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摘要

Recently, to speed up the differential-diagnosis process based on symptoms and signs observed from an affected individual in the diagnosis of rare diseases, researchers have developed and implemented phenotype-driven differential-diagnosis systems. The performance of those systems relies on the quantity and quality of underlying databases of disease-phenotype associations (DPAs). Although such databases are often developed by manual curation, they inherently suffer from limited coverage. To address this problem, we propose a text-mining approach to increase the coverage of DPA databases and consequently improve the performance of differential-diagnosis systems. Our analysis showed that a text-mining approach using one million case reports obtained from PubMed could increase the coverage of manually curated DPAs in Orphanet by 125.6%. We also present PubCaseFinder (see ), a new phenotype-driven differential-diagnosis system in a freely available web application. By utilizing automatically extracted DPAs from case reports in addition to manually curated DPAs, PubCaseFinder improves the performance of automated differential diagnosis. Moreover, PubCaseFinder helps clinicians search for relevant case reports by using phenotype-based comparisons and confirm the results with detailed contextual information.
机译:最近,为了加速基于受影响个体诊断稀有疾病中观察到的症状和迹象的差异诊断过程,研究人员已经开发和实施了表型驱动的鉴别诊断系统。这些系统的性能依赖于疾病 - 表型关联(DPA)的潜在数据库的数量和质量。虽然这些数据库通常由手动策策开发,但它们本身遭受了有限的覆盖范围。为了解决这个问题,我们提出了一种文本挖掘方法来增加DPA数据库的覆盖范围,从而提高差异诊断系统的性能。我们的分析表明,使用从PubMed获得的一百万个案例报告的文本采矿方法可以将手动愈合的DPA的覆盖率增加125.6%。我们还在自由可用的Web应用程序中呈现了PubcaseFinder(参见),这是一种新的表型驱动的差分诊断系统。除了手动策划DPA之外,通过使用案例报告自动提取的DPA,PUBCASEFINDER可以提高自动差异诊断的性能。此外,PUBCASEFINDER通过使用基于表型的比较,帮助临床医生搜索相关病例报告,并通过详细的上下文信息确认结果。

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