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Biosensors and Bioelectronics 2021
2021-10-22 - 2021-10-23    
All Day
Biosensors and Bioelectronics 2021 conference explores new advances and recent updated technologies. It is your high eminence that you enhance your research work in this [...]
Petrochemistry and Chemical Engineering
2021-10-25 - 2021-10-26    
All Day
Petro chemistry 2021 directs towards addressing main issues as well as future strategies of global energy industry. This is going to be the largest and [...]
Cardiac Surgery and Medical Devices
2021-10-30 - 2021-10-31    
All Day
The main focus and theme of the conference is “Reconnoitring Challenges Concerning Prediction & Prevention of Heart Diseases”. CARDIAC SURGERY 2020 strives to bring renowned [...]
Events on 2021-10-22
Events on 2021-10-25
Events on 2021-10-30
Articles

Jul 14 : Epidemic surveillance using an EMR

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Abstract

BACKGROUNDS:

Electronic medical records (EMR) form a rich repository of information that could benefit public health. We asked how structured and free-text narrative EMR data should be combined to improve epidemic surveillance for acute respiratory infections (ARI).

METHODS:

Eight previously characterized ARI case detection algorithms (CDA) were applied to historical EMR entries to create authentic time series of daily ARI case counts (background). An epidemic model simulated influenza cases (injection). From the time of the injection, cluster-detection statistics were applied daily on paired background+injection (combined) and background-only time series. This cycle was then repeated with the injection shifted to each week of the evaluation year. We computed: a) the time from injection to the first statistical alarm uniquely found in the combined dataset (Detection Delay); b) how often alarms originated in the background-only dataset (false-alarm rate, or FAR); and c) the number of cases found within these false alarms (Caseload). For each CDA, we plotted the Detection Delay as a function of FAR or Caseload, over a broad range of alarm thresholds.

RESULTS:

CDAs that combined text analyses seeking ARI symptoms in clinical notes with provider-assigned diagnostic codes in order to maximize the precision rather than the sensitivity of case-detection lowered Detection Delay at any given FAR or Caseload.

CONCLUSION:

An empiric approach can guide the integration of EMR data into case-detection methods that improve both the timeliness and efficiency of epidemic detection.

Source