Abstract
Early prediction of in-hospital mortality can improve patient outcome. Current prediction models for in-hospital mortality focus mainly on specific pathologies. Structured pathology data is hospital-wide readily available and is primarily used for e.g. financing purposes. We aim to build a predictive model at admission using the International Classification of Diseases (ICD) codes as predictors and investigate the effect of the self-evident DNR ("Do Not Resuscitate") diagnosis codes and palliative care codes. We compare the models using ICD-10-CM codes with Risk of Mortality (RoM) and Charlson Comorbidity Index (CCI) as predictors using the Random Forests modeling approach. We use the Present on Admission flag to distinguish which diagnoses are present on admission. The study is performed in a single center (Ghent University Hospital) with the inclusion of 36 368 patients, all discharged in 2017. Our model at admission using ICD-10-CM codes (AUCROC = 0.9477) outperforms the model using RoM (AUCROC = 0.8797 and CCI (AUCROC = 0.7435). We confirmed that DNR and palliative care codes have a strong impact on the model resulting in a decrease of 7% for the ICD model (AUCROC = 0.8791) at admission. We therefore conclude that a model with a sufficient predictive performance can be derived from structured pathology data, and if real-time available, can serve as a prerequisite to develop a practical clinical decision support system for physicians.
Highlights
Introduction1.1 Reuse of readily available hospital-wide data
1.1 Reuse of readily available hospital-wide dataLarge amounts of data are registered in well-defined formats in hospitals
The excluded patients were all admissions in the psychiatry department except for three with incomplete records. 1063 patients had a DNR or palliative care code at admission; after excluding these, 33 608 patients remained in the cohort that was modeled
Summary
1.1 Reuse of readily available hospital-wide data. Large amounts of data are registered in well-defined formats in hospitals. These datasets contain administrative data—such as age, billing data, specialism, and so on—and structured pathology data using the International Classification of Diseases (ICD) codes. Such datasets exhibit much information that should be useful for secondary goals, this information is currently unused for predicting in-hospital mortality. Added value could be generated from existing hospital databases without the need for much additional effort or time being spent on noncare activities on the part of caregivers.
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