2025 Volume 8 Issue 2 Pages 568-579
Introduction: Utilizing a nationwide inpatient database in Japan, we aimed to develop a novel comorbidity score for pediatric patients to predict in-hospital mortality-the Children Comorbidity Score (CCS) -based on the International Classification of Diseases, 10th Revision (ICD-10) codes.
Methods: We retrospectively analyzed pediatric patients hospitalized between 2010 and 2017 using the Japanese Diagnosis Procedure Combination database. Eighty percent of the data was used as a training set, where we applied Lasso regression to a model with 56 candidate comorbidity categories to predict in-hospital mortality. We employed the 1-standard-error rule in Lasso regression to derive a parsimonious model and forced the entry of 12 categories of pediatric Complex Chronic Conditions (CCC). Thus, we developed the CCS, an integer-based comorbidity score using the selected variables with nonzero coefficients. The remaining 20% of the data was used as the test set, where we evaluated the CCS's predictive performance using C-statistics, calibration, and decision curve analysis, comparing it with two other scores: a CCC-based score using ICD-10 codes and the Charlson Comorbidity Index (CCI).
Results: Among 1,968,960 pediatric patients, we observed 6,492 (0.33%) in-hospital mortalities. The developed integer-based CCS, utilizing 10 comorbidity categories via variable selection by Lasso regression, had better discrimination ability (C-statistics, 0.720 [95% confidence intervals (CI), 0.707-0.734]) than the CCC (0.649 [0.636-0.662]) and CCI (0.544 [0.533-0.555]). The superior discrimination of the CCS was consistent across all age categories, sexes, and body mass index categories. The CCS showed good calibration, with a calibration slope of 1.027 (95% CI, 0.981-1.073). Decision curve analysis indicated that the CCS provided the highest net benefit compared to either of the reference models.
Conclusions: The ICD-10-based CCS outperformed conventional comorbidity scores in predicting in-hospital mortality and would be useful in comorbidity assessment among pediatric inpatients.