scholarly journals NATURAL LANGUAGE PROCESSING IMPROVES PHENOTYPIC ACCURACY IN AN ELECTRONIC MEDICAL RECORD COHORT OF TYPE 2 DIABETES AND CARDIOVASCULAR DISEASE

2014 ◽  
Vol 63 (12) ◽  
pp. A1359 ◽  
Author(s):  
Vishesh Kumar ◽  
Katherine Liao ◽  
Su-Chun Cheng ◽  
Sheng Yu ◽  
Uri Kartoun ◽  
...  
2021 ◽  
Vol 27 ◽  
pp. 107602962110131
Author(s):  
Bela Woller ◽  
Austin Daw ◽  
Valerie Aston ◽  
Jim Lloyd ◽  
Greg Snow ◽  
...  

Real-time identification of venous thromboembolism (VTE), defined as deep vein thrombosis (DVT) and pulmonary embolism (PE), can inform a healthcare organization’s understanding of these events and be used to improve care. In a former publication, we reported the performance of an electronic medical record (EMR) interrogation tool that employs natural language processing (NLP) of imaging studies for the diagnosis of venous thromboembolism. Because we transitioned from the legacy electronic medical record to the Cerner product, iCentra, we now report the operating characteristics of the NLP EMR interrogation tool in the new EMR environment. Two hundred randomly selected patient encounters for which the imaging report assessed by NLP that revealed VTE was present were reviewed. These included one hundred imaging studies for which PE was identified. These included computed tomography pulmonary angiography—CTPA, ventilation perfusion—V/Q scan, and CT angiography of the chest/ abdomen/pelvis. One hundred randomly selected comprehensive ultrasound (CUS) that identified DVT were also obtained. For comparison, one hundred patient encounters in which PE was suspected and imaging was negative for PE (CTPA or V/Q) and 100 cases of suspected DVT with negative CUS as reported by NLP were also selected. Manual chart review of the 400 charts was performed and we report the sensitivity, specificity, positive and negative predictive values of NLP compared with manual chart review. NLP and manual review agreed on the presence of PE in 99 of 100 cases, the presence of DVT in 96 of 100 cases, the absence of PE in 99 of 100 cases and the absence of DVT in all 100 cases. When compared with manual chart review, NLP interrogation of CUS, CTPA, CT angiography of the chest, and V/Q scan yielded a sensitivity = 93.3%, specificity = 99.6%, positive predictive value = 97.1%, and negative predictive value = 99%.


2011 ◽  
Vol 32 (1) ◽  
pp. 188-197 ◽  
Author(s):  
Joshua C. Denny ◽  
Neesha N. Choma ◽  
Josh F. Peterson ◽  
Randolph A. Miller ◽  
Lisa Bastarache ◽  
...  

2020 ◽  
Author(s):  
Anita D. Misra-Hebert ◽  
Alex Milinovich ◽  
Alex Zajichek ◽  
Xinge Ji ◽  
Todd D. Hobbs ◽  
...  

Objective: To determine if natural language processing (NLP) improves detection of non-severe hypoglycemia (NSH) in patients with type 2 diabetes and no NSH documentation by diagnosis codes, and to measure if NLP detection improves the prediction of future severe hypoglycemia (SH). <p>Research Design and Methods: From 2005-2017, we identified NSH events by diagnosis codes and NLP. We then built an SH prediction model. </p> <p>Results: There were 204,517 patients with type 2 diabetes and no diagnosis codes for NSH. Evidence of of NSH was found in 7035 (3.4%) using NLP. We reviewed 1200 of the NLP-detected NSH notes and confirmed 93% to have NSH. The SH prediction model (C-statistic 0.806) showed increased risk with NSH (Hazard Ratio=4.44, p<0.001). However the model with NLP did not improve SH prediction compared to diagnosis code-only NSH. </p> <p>Conclusions: Detection of NSH improved with NLP in patients with type 2 diabetes without improving SH prediction. </p>


2020 ◽  
Author(s):  
Anita D. Misra-Hebert ◽  
Alex Milinovich ◽  
Alex Zajichek ◽  
Xinge Ji ◽  
Todd D. Hobbs ◽  
...  

Objective: To determine if natural language processing (NLP) improves detection of non-severe hypoglycemia (NSH) in patients with type 2 diabetes and no NSH documentation by diagnosis codes, and to measure if NLP detection improves the prediction of future severe hypoglycemia (SH). <p>Research Design and Methods: From 2005-2017, we identified NSH events by diagnosis codes and NLP. We then built an SH prediction model. </p> <p>Results: There were 204,517 patients with type 2 diabetes and no diagnosis codes for NSH. Evidence of of NSH was found in 7035 (3.4%) using NLP. We reviewed 1200 of the NLP-detected NSH notes and confirmed 93% to have NSH. The SH prediction model (C-statistic 0.806) showed increased risk with NSH (Hazard Ratio=4.44, p<0.001). However the model with NLP did not improve SH prediction compared to diagnosis code-only NSH. </p> <p>Conclusions: Detection of NSH improved with NLP in patients with type 2 diabetes without improving SH prediction. </p>


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