A data-driven 5-item subset (Q3, Q9, Q10, Q12, Q14) of QoR-15 achieves mean AUC-ROC 0.968 for predicting recovery severity, statistically comparable to the full form on one-third of items, with similar readmission tracking.
Remote patient monitoring using artificial intelligence: Current state, applications, and challenges.WIREs Data Mining and Knowledge Discovery
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AI-driven Optimisation of Quality of Recovery (QoR) in Remote Patient Monitoring
A data-driven 5-item subset (Q3, Q9, Q10, Q12, Q14) of QoR-15 achieves mean AUC-ROC 0.968 for predicting recovery severity, statistically comparable to the full form on one-third of items, with similar readmission tracking.