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使用自然语言处理和否定检测从心电图印象中识别QT间期延长。

Identifying QT prolongation from ECG impressions using natural language processing and negation detection.

作者信息

Denny Joshua C, Peterson Josh F

机构信息

Department of Biomedical Informatics, Vanderbilt University Medical Center, Nashville, TN 37232, USA.

出版信息

Stud Health Technol Inform. 2007;129(Pt 2):1283-8.

Abstract

Electrocardiogram (ECG) impressions provide significant information for decision support and clinical research. We investigated the presence of QT prolongation, an important risk factor for sudden cardiac death, compared to the automated calculation of corrected QT (QTc) by ECG machines. We integrated a negation tagging algorithm into the KnowledgeMap concept identifier (KMCI), then applied it to impressions from 44,080 ECGs to identify Unified Medical Language System concepts. We compared the instances of QT prolongation identified by KMCI to the calculated QTc. The algorithm for negation detection had a recall of 0.973 and precision of 0.982 over 10,490 concepts. A concept query for QT prolongation matched 2,364 ECGs with precision of 1.00. The positive predictive value of the common QTc cutoffs was 6-21%. ECGs not identified by KMCI as prolonged but with QTc>450ms revealed potential causes of miscalculated QTc intervals in 96% of the cases; no definite concept query false negatives were detected. We conclude that a natural language processing system can effectively identify QT prolongation and other cardiac diagnoses from ECG impressions for potential decision support and clinical research.

摘要

心电图(ECG)诊断结果为决策支持和临床研究提供了重要信息。我们调查了QT间期延长的情况,这是心源性猝死的一个重要危险因素,并与心电图机器自动计算的校正QT(QTc)进行了比较。我们将否定标记算法集成到知识图谱概念标识符(KMCI)中,然后将其应用于44080份心电图的诊断结果,以识别统一医学语言系统概念。我们将KMCI识别出的QT间期延长实例与计算出的QTc进行了比较。在10490个概念上,否定检测算法的召回率为0.973,精确率为0.982。针对QT间期延长的概念查询匹配了2364份心电图,精确率为1.00。常见QTc临界值的阳性预测值为6%-21%。KMCI未识别为延长但QTc>450ms的心电图在96%的病例中揭示了QTc间期计算错误的潜在原因;未检测到明确的概念查询假阴性。我们得出结论,自然语言处理系统可以有效地从心电图诊断结果中识别QT间期延长和其他心脏诊断,以提供潜在的决策支持和临床研究。

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