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Natural Language Processing and Electronic Medical Records

Kenneth H. Webb, MD, MPH
JAMA. 2011;306(21):2325-2326. doi:10.1001/jama.2011.1780.
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To the Editor: As was shown in the study by Dr Murff and colleagues, natural language processing may augment the value of electronic medical records by helping hospitals identify adverse events after surgery.1 When compared with a gold standard of Veterans Affairs Surgical Quality Improvement Program nurse review, the authors demonstrated that natural language processing was more sensitive and only slightly less specific in detecting postsurgical complications when compared with the more widely used patient safety indicators based on diagnostic codes. The value of natural language processing, the authors noted, is that it may improve a hospital's ability to detect postsurgical complications, particularly while the patient is still in the hospital.

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December 7, 2011
Harvey J. Murff, MD, MPH; Fern FitzHenry, RN, PhD; Theodore Speroff, PhD
JAMA. 2011;306(21):2325-2326. doi:10.1001/jama.2011.1781.
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