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cc by-nc-nd (c) Juvé Udina, et. al., 2019
Please use this identifier to cite or link to this item: https://hdl.handle.net/2445/172448

Predicting patient acuity according to their main problem

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Aim: To assess the ability of the patient main problem to predict acuity in adults admitted to hospital wards and step-down units. Background: Acuity refers to the categorization of patients based on their required nursing intensity. The relationship between acuity and nurses' clinical judgment on the patient problems, including their prioritization, is an underexplored issue. Method: Cross-sectional, multi-centre study in a sample of 200,000 adults. Multivariate analysis of main problems potentially associated with acuity levels higher than acute was performed. Distribution of patients and outcome differences among acuity clusters were evaluated. Results: The main problems identified are strongly associated with patient acuity. The model exhibits remarkable ability to predict acuity (AUC, 0.814; 95% CI, 0.81-0.816). Most patients (64.8%) match higher than acute categories. Significant differences in terms of mortality, hospital readmission and other outcomes are observed (p < .005). Conclusion: The patient main problem predicts acuity. Most inpatients require more intensive than acute nursing care and their outcomes are adversely affected. Implications for nursing management: Prospective measurement of acuity, considering nurses' clinical judgments on the patient main problem, is feasible and may contribute to support nurse management workforce planning and staffing decision-making, and to optimize patients, nurses and organizational outcomes.

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JUVÉ UDINA, Eulàlia, et al. Predicting patient acuity according to their main problem. Journal of Nursing Management. 2019. Vol. 27, num. 8, pags. 1845-1858. ISSN 0966-0429. [consulted: 17 of June of 2026]. Available at: https://hdl.handle.net/2445/172448

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