Title
Evaluating the Impact of Incorrect Diabetes Coding on the Performance of Multivariable Prediction Models.
Abstract
The use of electronic health records for risk prediction models requires a sufficient quality of input data to ensure patient safety. The aim of our study was to evaluate the influence of incorrect administrative diabetes coding on the performance of a risk prediction model for delirium, as diabetes is known to be one of the most relevant variables for delirium prediction. We used four data sets varying in their correctness and completeness of diabetes coding as input for different machine learning algorithms. Although there was a higher prevalence of diabetes in delirium patients, the model performance parameters did not vary between the data sets. Hence, there was no significant impact of incorrect diabetes coding on the performance for our model predicting delirium.
Year
Venue
Keywords
2018
ICIMTH
ICD coding,delirium,electronic health records,predictive modelling
Field
DocType
Volume
Diabetes mellitus,Multivariable calculus,Computer science,Coding (social sciences),Artificial intelligence,Predictive modelling,Machine learning
Conference
251
Citations 
PageRank 
References 
0
0.34
0
Authors
4
Name
Order
Citations
PageRank
Stefanie Jauk100.68
Diether Kramer212.41
Stefan Schulz31092127.03
W Leodolter474.64