Development of a risk prediction model to predict the risk of hospitalization due to exacerbated asthma among adult asthma patients in a lower middle-income country

Author:

Punyadasa Dhanusha Harshinie,Kumarapeli Vindya,Senaratne Wijith

Abstract

Abstract Background Asthma patients experience higher rates of hospitalizations due to exacerbations leaving a considerable clinical and economic burden on the healthcare system. The use of a simple, risk prediction tool offers a low-cost mechanism to identify these high-risk asthma patients for specialized care. The study aimed to develop and validate a risk prediction model to identify high-risk asthma patients for hospitalization due to exacerbations. Methods Hospital-based, case-control study was carried out among 466 asthma patients aged ≥ 20 years recruited from four tertiary care hospitals in a district of Sri Lanka to identify risk factors for asthma-related hospitalizations. Patients (n = 116) hospitalized due to an exacerbation with respiratory rate > 30/min, pulse rate > 120 bpm, O2 saturation (on air) < 90% on admission, selected consecutively from medical wards; controls (n = 350;1:3 ratio) randomly selected from asthma/medical clinics. Data was collected via a pre-tested Interviewer-Administered Questionnaire (IAQ). Logistic Regression (LR) analyses were performed to develop the model with consensus from an expert panel. A second case-control study was carried out to assess the criterion validity of the new model recruiting 158 cases and 101 controls from the same hospitals. Data was collected using an IAQ based on the newly developed risk prediction model. Results The developed model consisted of ten predictors with an Area Under the Curve (AUC) of 0.83 (95% CI: 0.78 to 0.88, P < 0.001), sensitivity 69.0%, specificity 86.1%, positive predictive value (PPV) 88.6%, negative predictive value (NPV) 63.9%. Positive and negative likelihood ratios were 4.9 and 0.3, respectively. Conclusions The newly developed model was proven valid to identify adult asthma patients who are at risk of hospitalization due to exacerbations. It is recommended as a simple, low-cost tool for identifying and prioritizing high-risk asthma patients for specialized care.

Publisher

Springer Science and Business Media LLC

Subject

Pulmonary and Respiratory Medicine

Reference31 articles.

1. Global Asthma Network. The Global asthma report 2018. Auckland: Global Asthma Network; 2018. http://globalasthmareport.org/2018/resources/Global_Asthma_Report_2018.pdf. Accessed 23 Apr 2023.

2. Dharmage SC, Perret JL, Custovic A. Epidemiology of asthma in children and adults. Front Pediatr. 2019;7:246.

3. Medical Statistics Unit. Annual health bulletin 2019. Colombo; 2019. https://www.health.gov.lk/moh_final/english/public/elfinder/files/publications/AHB/2020/AHB%202019.pdf. Accessed 23 Apr 2023.

4. Song HJ, Blake KV, Wilson DL, et al. Medical costs and productivity loss due to mild, moderate, and severe asthma in the United States. J Asthma Allergy. 2020;13:545.

5. Lachman BS, Pengetnze Y. Improved asthma outcomes from use of predictive modeling as part of a system of care. J Allergy Clin Immunol. 2017;139(2):AB191.

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