Identification of Predictors for Clinical Deterioration in Patients with COVID-19 via Electronic Nursing Records: Retrospective Observational Studyopen access
- Authors
- Sung, Sumi; Kim, Youlim; Kim, Su Hwan; Jung, Hyesil
- Issue Date
- Mar-2024
- Publisher
- Journal of medical Internet Research
- Keywords
- COVID-19; deterioration; documentation; EHR; EHRs; health record; health records; infectious; logistic regression; machine learning; nomenclature; nursing; nursing records; patient record; patient records; random forest; respiratory; SARS-CoV-2; SNOMED CT; standard; standardization; standardize; standardized; standards; term; terminologies; terminology; terms
- Citation
- Journal of Medical Internet Research, v.26, no.1
- Indexed
- SCIE
SCOPUS
- Journal Title
- Journal of Medical Internet Research
- Volume
- 26
- Number
- 1
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/71244
- DOI
- 10.2196/53343
- ISSN
- 1439-4456
1438-8871
- Abstract
- Background: Few studies have used standardized nursing records with Systematized Nomenclature of Medicine-Clinical Terms (SNOMED CT) to identify predictors of clinical deterioration Objective: This study aims to standardize the nursing documentation records of patients with COVID-19 using SNOMED CT and identify predictive factors of clinical deterioration in patients with COVID-19 via standardized nursing records. Methods: In this study, 57,558 nursing statements from 226 patients with COVID-19 were analyzed. Among these, 45,852 statements were from 207 patients in the stable (control) group and 11,706 from 19 patients in the exacerbated (case) group who were transferred to the intensive care unit within 7 days. The data were collected between December 2019 and June 2022. These nursing statements were standardized using the SNOMED CT International Edition released on November 30, 2022. The 260 unique nursing statements that accounted for the top 90% of 57,558 statements were selected as the mapping source and mapped into SNOMED CT concepts based on their meaning by 2 experts with more than 5 years of SNOMED CT mapping experience. To identify the main features of nursing statements associated with the exacerbation of patient condition, random forest algorithms were used, and optimal hyperparameters were selected for nursing problems or outcomes and nursing procedure-related statements. Additionally, logistic regression analysis was conducted to identify features that determine clinical deterioration in patients with COVID-19. Results: All nursing statements were semantically mapped to SNOMED CT concepts for clinical finding,situation with explicit context,and procedurehierarchies. The interrater reliability of the mapping results was 87.7%. The most important features calculated by random forest were oxygen saturation below reference range,dyspnea,tachypnea,and coughin clinical finding,and oxygen therapy,pulse oximetry monitoring,temperature taking,notification of physician,and education about isolation for infection controlin procedure.Among these, dyspneaand inadequate food dietin clinical findingincreased clinical deterioration risk (dyspnea: odds ratio [OR] 5.99, 95% CI 2.25-20.29; inadequate food diet: OR 10.0, 95% CI 2.71-40.84), and oxygen therapyand notification of physicianin procedurealso increased the risk of clinical deterioration in patients with COVID-19 (oxygen therapy: OR 1.89, 95% CI 1.25-3.05; notification of physician: OR 1.72, 95% CI 1.02-2.97). Conclusions: The study used SNOMED CT to express and standardize nursing statements. Further, it revealed the importance of standardized nursing records as predictive variables for clinical deterioration in patients. © Sumi Sung, Youlim Kim, Su Hwan Kim, Hyesil Jung.
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