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Developing a prediction model of children asthma risk using population‐based family history health records
BackgroundIdentifying children at high risk of developing asthma can facilitate prevention and early management strategies. We developed a prediction model of children's asthma risk using objectively collected population‐based children and parental histories of comorbidities.MethodsWe conducted...
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Published in: | Pediatric allergy and immunology 2023-10, Vol.34 (10), p.e14032-e14032 |
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Main Authors: | , , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | BackgroundIdentifying children at high risk of developing asthma can facilitate prevention and early management strategies. We developed a prediction model of children's asthma risk using objectively collected population‐based children and parental histories of comorbidities.MethodsWe conducted a retrospective population‐based cohort study using administrative data from Manitoba, Canada, and included children born from 1974 to 2000 with linkages to ≥1 parent. We identified asthma and prior comorbid condition diagnoses from hospital and outpatient records. We used two machine‐learning models: least absolute shrinkage and selection operator (LASSO) logistic regression (LR) and random forest (RF) to identify important predictors. The predictors in the base model included children's demographics, allergic conditions, respiratory infections, and parental asthma. Subsequent models included additional multiple comorbidities for children and parents.ResultsThe cohort included 195,666 children: 51.3% were males and 17.7% had asthma diagnosis. The base LR model achieved a low predictive performance with sensitivity of 0.47, 95% confidence interval (0.45–0.48), and specificity of 0.67 (0.66–0.67) using a predicted probability threshold of 0.20. Sensitivity significantly improved when children's comorbidities were included using LASSO LR: 0.71 (0.69–0.72). Predictive performance further improved by including parental comorbidities (sensitivity = 0.72 [0.70–0.73], specificity = 0.69 [0.69–0.70]). We observed similar results for the RF models. Children's menstrual disorders and mood and anxiety disorders, parental lipid metabolism disorders and asthma were among the most important variables that predicted asthma risk.ConclusionIncluding children and parental comorbidities to children's asthma prediction models improves their accuracy. |
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ISSN: | 0905-6157 1399-3038 |
DOI: | 10.1111/pai.14032 |