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      Natural language processing of clinical notes for identification of critical limb ischemia

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          Abstract

          Background

          Critical limb ischemia (CLI) is a complication of advanced peripheral artery disease (PAD) with diagnosis based on the presence of clinical signs and symptoms. However, automated identification of cases from electronic health records (EHRs) is challenging due to absence of a single definitive International Classification of Diseases (ICD-9 or ICD-10) code for CLI.

          Methods and results

          In this study, we extend a previously validated natural language processing (NLP) algorithm for PAD identification to develop and validate a subphenotyping NLP algorithm (CLI-NLP) for identification of CLI cases from clinical notes. We compared performance of the CLI-NLP algorithm with CLI-related ICD-9 billing codes. The gold standard for validation was human abstraction of clinical notes from EHRs. Compared to billing codes the CLI-NLP algorithm had higher positive predictive value (PPV) (CLI-NLP 96%, billing codes 67%, p < 0.001), specificity (CLI-NLP 98%, billing codes 74%, p < 0.001) and F1-score (CLI-NLP 90%, billing codes 76%, p < 0.001). The sensitivity of these two methods was similar (CLI-NLP 84%; billing codes 88%; p < 0.12).

          Conclusions

          The CLI-NLP algorithm for identification of CLI from narrative clinical notes in an EHR had excellent PPV and has potential for translation to patient care as it will enable automated identification of CLI cases for quality projects, clinical decision support tools and support a learning healthcare system.

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          Most cited references42

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          Inter-Society Consensus for the Management of Peripheral Arterial Disease (TASC II).

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            Measuring diagnoses: ICD code accuracy.

            To examine potential sources of errors at each step of the described inpatient International Classification of Diseases (ICD) coding process. The use of disease codes from the ICD has expanded from classifying morbidity and mortality information for statistical purposes to diverse sets of applications in research, health care policy, and health care finance. By describing a brief history of ICD coding, detailing the process for assigning codes, identifying where errors can be introduced into the process, and reviewing methods for examining code accuracy, we help code users more systematically evaluate code accuracy for their particular applications. We summarize the inpatient ICD diagnostic coding process from patient admission to diagnostic code assignment. We examine potential sources of errors at each step and offer code users a tool for systematically evaluating code accuracy. Main error sources along the "patient trajectory" include amount and quality of information at admission, communication among patients and providers, the clinician's knowledge and experience with the illness, and the clinician's attention to detail. Main error sources along the "paper trail" include variance in the electronic and written records, coder training and experience, facility quality-control efforts, and unintentional and intentional coder errors, such as misspecification, unbundling, and upcoding. By clearly specifying the code assignment process and heightening their awareness of potential error sources, code users can better evaluate the applicability and limitations of codes for their particular situations. ICD codes can then be used in the most appropriate ways.
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              Clinical information extraction applications: A literature review

              With the rapid adoption of electronic health records (EHRs), it is desirable to harvest information and knowledge from EHRs to support automated systems at the point of care and to enable secondary use of EHRs for clinical and translational research. One critical component used to facilitate the secondary use of EHR data is the information extraction (IE) task, which automatically extracts and encodes clinical information from text.
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                Author and article information

                Journal
                9711057
                20677
                Int J Med Inform
                Int J Med Inform
                International journal of medical informatics
                1386-5056
                1872-8243
                8 January 2018
                28 December 2017
                March 2018
                01 March 2019
                : 111
                : 83-89
                Affiliations
                [a ]Department of Health Sciences Research, Mayo Clinic and Mayo Foundation, Rochester, MN, United States
                [b ]Department of Cardiovascular Diseases, Mayo Clinic and Mayo Foundation, Rochester, MN, United States
                [c ]Division of Primary Care Medicine, Knowledge Delivery Center and Center for Innovation, Mayo Clinic and Mayo Foundation, Rochester, MN, United States
                Author notes
                [* ]Corresponding author at: (A.M. Arruda-Olson), Cardiovascular Diseases, Mayo Clinic, 200 First Street SW, Rochester, MN 55905, United States. ArrudaOlson.Adelaide@ 123456mayo.edu
                Article
                NIHMS932399
                10.1016/j.ijmedinf.2017.12.024
                5808583
                29425639
                8d090a3e-87ef-4d3e-9143-0e4c817ae099

                This is an open access article under the CC BY-NC-ND license ( http://creativecommons.org/licenses/BY-NC-ND/4.0/).

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                Categories
                Article

                natural language processing,electronic health records,peripheral artery disease,critical limb ischemia,subphenotyping

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