Generalized AMOC curves for evaluation and improvement of event surveillance

Jiang X, Neill DB, Cooper GF.  Generalized AMOC curves for evaluation and improvement of event surveillance.  In: Proceedings of the Annual Symposium of the American Medical Informatics Association (2009) 281-285. PMID: 20351865 PMC2815453.

We introduce Generalized Activity Monitoring Operating Characteristic (G-AMOC) curves, a new framework for evaluation of outbreak detection systems. G-AMOC curves provide a new approach to evaluating and improving the timeliness of disease outbreak detection by taking the user's response protocol into account and considering when the user will initiate an investigation in response to the system's alerts. The standard AMOC curve is a special case of G-AMOC curves that assumes a trivial response protocol (initiating a new and separate investigation in response to each alert signal). Practical application of a surveillance system is often improved, however, by using more elaborate response protocols, such as grouping alerts or ignoring isolated signals. We present results of experiments demonstrating that we can use G-AMOC curves as 1) a descriptive tool, to provide a more accurate comparison of systems than the standard AMOC curve, and 2) as a prescriptive tool, to choose appropriate response protocols for a detection system, and thus improve its performance.

Publication Year: 
2009
Publication Credits: 
Jiang X, Neill DB, Cooper GF.
AttachmentSize
PDF icon Jiang Neill.pdf224.1 KB
^