Gold Standard Evaluation of an Automatic HAIs Surveillance System

Biomed Res Int. 2019 Sep 23:2019:1049575. doi: 10.1155/2019/1049575. eCollection 2019.

Abstract

Hospital-acquired Infections (HAIs) surveillance, defined as the systematic collection of data related to a certain health event, is considered an essential dimension for a prevention HAI program to be effective. In recent years, new automated HAI surveillance methods have emerged with the wide adoption of electronic health records (EHR). Here we present the validation results against the gold standard of HAIs diagnosis of the InNoCBR system deployed in the Ourense University Hospital Complex (Spain). Acting as a totally autonomous system, InNoCBR achieves a HAI sensitivity of 70.83% and a specificity of 97.76%, with a positive predictive value of 77.24%. The kappa index for infection type classification is 0.67. Sensitivity varies depending on infection type, where bloodstream infection attains the best value (93.33%), whereas the respiratory infection could be improved the most (53.33%). Working as a semi-automatic system, InNoCBR reaches a high level of sensitivity (81.73%), specificity (99.47%), and a meritorious positive predictive value (94.33%).

MeSH terms

  • Cross Infection / diagnosis*
  • Cross Infection / epidemiology*
  • Data Collection / methods
  • Data Collection / standards*
  • Electronic Data Processing / methods
  • Electronic Data Processing / standards
  • Electronic Health Records / standards*
  • Health Information Systems
  • Hospitals, University
  • Humans
  • Models, Theoretical
  • Population Surveillance / methods*
  • Reference Standards
  • Sensitivity and Specificity
  • Spain