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Development and Validation of a Model to Predict Severe Hospital-Acquired Acute Kidney Injury in Non-Critically Ill Patients
- Source :
- Scientia, Journal of Clinical Medicine, Vol 10, Iss 3959, p 3959 (2021), Journal of Clinical Medicine, Volume 10, Issue 17
- Publication Year :
- 2021
- Publisher :
- MDPI, 2021.
-
Abstract
- Lesión renal aguda; Registros electrónicos de datos de salud; Adquirido en el hospital Lesió renal aguda; Registres electrònics de dades de salut; Adquirit a l'Hospital Acute kidney injury; Electronic health data records; Hospital-acquired Background. The current models developed to predict hospital-acquired AKI (HA-AKI) in non-critically ill fail to identify the patients at risk of severe HA-AKI stage 3. Objective. To develop and externally validate a model to predict the individual probability of developing HA-AKI stage 3 through the integration of electronic health databases. Methods. Study set: 165,893 non-critically ill hospitalized patients. Using stepwise logistic regression analyses, including demography, chronic comorbidities, and exposure to risk factors prior to AKI detection, we developed a multivariate model to predict HA-AKI stage 3. This model was then externally validated in 43,569 non-critical patients admitted to the validation center. Results. The incidence of HA-AKI stage 3 in the study set was 0.6%. Among chronic comorbidities, the highest odds ratios were conferred by ischemic heart disease, ischemic cerebrovascular disease, chronic congestive heart failure, chronic obstructive pulmonary disease, chronic kidney disease and liver disease. Among acute complications, the highest odd ratios were associated with acute respiratory failure, major surgery and exposure to nephrotoxic drugs. The model showed an AUC of 0.906 (95% CI 0.904 to 0.908), a sensitivity of 89.1 (95% CI 87.0–91.0) and a specificity of 80.5 (95% CI 80.2–80.7) to predict HA-AKI stage 3, but tended to overestimate the risk at low-risk categories with an adequate goodness-of-fit for all risk categories (Chi2: 16.4, p: 0.034). In the validation set, incidence of HA-AKI stage 3 was 0.62%. The model showed an AUC of 0.861 (95% CI 0.859–0.863), a sensitivity of 83.0 (95% CI 80.5–85.3) and a specificity of 76.5 (95% CI 76.2–76.8) to predict HA-AKI stage 3 with an adequate goodness of fit for all risk categories (Chi2: 15.42, p: 0.052). Conclusions. Our study provides a model that can be used in clinical practice to obtain an accurate dynamic assessment of the individual risk of HA-AKI stage 3 along the hospital stay period in non-critically ill patients. This research received no external funding.
- Subjects :
- medicine.medical_specialty
enfermedades urogenitales masculinas::enfermedades urológicas::enfermedades renales::insuficiencia renal::lesión renal aguda [ENFERMEDADES]
Otros calificadores::/diagnóstico [Otros calificadores]
Disease
electronic health data records
risk score
Article
Riscos per a la salut - Avaluació
Internal medicine
Ronyons - Malalties - Diagnòstic
medicine
Other subheadings::/diagnosis [Other subheadings]
hospital-acquired
Stage (cooking)
Framingham Risk Score
business.industry
Incidence (epidemiology)
Acute kidney injury
Ronyons - Malalties - Prognosi
General Medicine
Odds ratio
Stepwise regression
medicine.disease
Male Urogenital Diseases::Urologic Diseases::Kidney Diseases::Renal Insufficiency::Acute Kidney Injury [DISEASES]
técnicas de investigación::métodos epidemiológicos::estadística como asunto::probabilidad::riesgo::evaluación de riesgos [TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS]
acute kidney injury
Medicine
Investigative Techniques::Epidemiologic Methods::Statistics as Topic::Probability::Risk::Risk Assessment [ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT]
business
Kidney disease
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Scientia, Journal of Clinical Medicine, Vol 10, Iss 3959, p 3959 (2021), Journal of Clinical Medicine, Volume 10, Issue 17
- Accession number :
- edsair.doi.dedup.....9afa5995f3d81ca1d39a8169e47f9412