首页> 外文期刊>Journal of cardiovascular translational research >Text Mining of the Electronic Health Record: An Information Extraction Approach for Automated Identification and Subphenotyping of HFpEF Patients for Clinical Trials
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Text Mining of the Electronic Health Record: An Information Extraction Approach for Automated Identification and Subphenotyping of HFpEF Patients for Clinical Trials

机译:电子健康纪录的文本挖掘:临床试验患者自动鉴定及副分类的信息提取方法

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摘要

Abstract Precision medicine requires clinical trials that are able to efficiently enroll subtypes of patients in whom targeted therapies can be tested. To reduce the large amount of time spent screening, identifying, and recruiting patients with specific subtypes of heterogeneous clinical syndromes (such as heart failure with preserved ejection fraction [HFpEF]), we need prescreening systems that are able to automate data extraction and decision-making tasks. However, a major obstacle is the vast amount of unstructured free-form text in medical records. Here we describe an information extraction-based approach that automatically converts unstructured text into structured data, which is cross-referenced against eligibility criteria using a rule-based system to determine which patients qualify for a major HFpEF clinical trial (PARAGON). We show that we can achieve a sensitivity and positive predictive value of 0.95 and 0.86, respectively. Our open-source algorithm could be used to efficiently identify and subphenotype patients with HFpEF and other disorders.
机译:摘要精密医学需要能够有效地注册患者患者患者的临床试验。为了减少花费大量时间,鉴定和募集具有特定临床综合征的特定亚型的患者(例如用保存的喷射级分[HFPEF]的心力衰竭),我们需要能够自动化数据提取和决策的预先筛选系统 - 做任务。然而,主要障碍是医疗记录中大量的非结构化自由形式文本。在这里,我们描述了一种基于信息的提取方法,它自动将非结构化文本转换为结构数据,这是使用基于规则的系统对资格标准的交叉引用,以确定哪些患者有资格获得主要的HFPEF临床试验(Paragon)。我们表明我们可以分别达到0.95和0.86的灵敏度和阳性预测值。我们的开源算法可用于有效识别HFPEF和其他疾病的患者。

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