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Identifying influenza-like illness presentation from unstructured general practice clinical narrative using a text classifier rule-based expert system versus a clinical expert

机译:使用基于文本分类器规则的专家系统和临床专家,从非结构化的常规临床叙述中识别类似流感的疾病表现

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Background We designed and validated a rule-based expert system to identify influenza like illness (ILI) from routinely recorded general practice clinical narrative to aid a larger retrospective research study into the impact of the 2009 influenza pandemic in New Zealand. Methods Rules were assessed using pattern matching heuristics on routine clinical narrative. The system was trained using data from 623 clinical encounters and validated using a clinical expert as a gold standard against a mutually exclusive set of 901 records. Results We calculated a 98.2?% specificity and 90.2?% sensitivity across an ILI incidence of 12.4?% measured against clinical expert classification. Peak problem list identification of ILI by clinical coding in any month was 9.2?% of all detected ILI presentations. Our system addressed an unusual problem domain for clinical narrative classification; using notational, unstructured, clinician entered information in a community care setting. It performed well compared with other approaches and domains. It has potential applications in real-time surveillance of disease, and in assisted problem list coding for clinicians. Conclusions Our system identified ILI presentation with sufficient accuracy for use at a population level in the wider research study. The peak coding of 9.2?% illustrated the need for automated coding of unstructured narrative in our study.
机译:背景我们设计并验证了一个基于规则的专家系统,该系统可从常规记录的一般实践临床叙述中识别流感样疾病(ILI),以帮助开展一项针对2009年新西兰流感大流行的影响的大型回顾性研究。方法使用常规临床叙述中的模式匹配试探法评估规则。该系统使用来自623次临床试验的数据进行了培训,并使用临床专家作为针对901条记录的互斥集的黄金标准进行了验证。结果我们根据临床专家分类测得的ILI发生率为12.4%,其特异性为98.2%,敏感性为90.2%。在任何月份中,通过临床编码对ILI进行的高峰问题列表识别占所有检测到的ILI表现的9.2%。我们的系统针对临床叙事分类解决了一个不寻常的问题域;使用符号化,非结构化,临床医生在社区护理环境中输入的信息。与其他方法和领域相比,它表现良好。它在疾病的实时监控和临床医生辅助问题清单编码中具有潜在的应用。结论我们的系统确定了ILI演示文稿,该演示文稿具有足够的准确性,可以在更广泛的研究研究中的人群水平使用。 9.2%的峰值编码说明了在我们的研究中需要对非结构化叙事进行自动编码。

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