The use of natural language processing of infusion notes to identify outpatient infusions (vol 24, pg 86, 2014)

PHARMACOEPIDEMIOLOGY AND DRUG SAFETY(2017)

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摘要
PurposeOutpatient infusions are commonly missing in Veterans Health Affairs (VHA) pharmacy dispensing data sets. Currently, Healthcare Common Procedure Coding System (HCPCS) codes are used to identify outpatient infusions, but concerns exist if they correctly capture all infusions and infusion-related data such as dose and date of administration. We developed natural language processing (NLP) software to extract infusion information from medical text infusion notes. The objective was to compare the sensitivity of three approaches to identify infliximab administration dates and infusion doses against a reference standard established from the Veterans Affairs rheumatoid arthritis (VARA) registry. MethodsWe compared the sensitivity and positive predictive value (PPV) of NLP to that of HCPCS codes in identifying the correct date and dose of infliximab infusions against a human extracted reference standard. ResultsThe sensitivity was 0.606 (0.585-0.627) for HCPCS alone, 0.858 (0.842-0.873) for NLP alone, and 0.923 (0.911-0.934) for the two methods combined, with a PPV of 0.735 (0.716-0.754), 0.976 (0.969-0.983), and 0.957 (0.948-0.965) for each method, respectively. The mean dose of infliximab was 433mg in the reference standard, 337mg from HCPCS, 434mg from NLP, and 426mg from the combined method. ConclusionsHCPCS codes alone are not sufficient to accurately identify infliximab infusion dates and doses in the VHA system. The use of NLP significantly improved the sensitivity and PPV for estimating infusion dates and doses, especially when combined with HCPCS codes. Copyright (c) 2014 John Wiley & Sons, Ltd.
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关键词
natural language processing,Healthcare Common Procedure Coding System,computerized medical records systems,pharmacoepidemiology
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