Displaying results 1 - 8 of 9
-
A Temporal Method for Outbreak Detection Using a Bayesian Network
Content Type: Abstract
Non-temporal Bayesian network outbreak detection methods only look at data from the most recent day. For example, PANDA-CDCA (PC) only looks at data from the last 24 hours to determine how likely an outbreak is occurring. PC… read more… data from the most recent day. For example, PANDA-CDCA (PC) only looks at data from the last 24 hours to determine how likely an outbreak is occurring. PC is a Bayesian network disease outbreak detection system … al. obtained such results when evaluating the ability of PC to detect a laboratory validated outbreak of influenza. … -
Modeling Clinician Detection Time of a Disease Outbreak Due to Inhalational Anthrax
Content Type: Abstract
We developed a probabilistic model of how clinicians are expected to detect a disease outbreak due to an outdoor release of anthrax spores, when the clinicians only have access to traditional clinical information (e.g., no computer-based alerts). We… read more… how clinicians are expected to detect a disease outbreak due to an outdoor release of anthrax spores, when the … Modeling_Clinician_Detection_Time_Of_A_Disease_Outbreak_Due_To_Inhalational_Anthrax.pdf 2 views Submitted by elamb … Modeling Clinician Detection Time of a Disease Outbreak Due to Inhalational Anthrax Christina Adamou, Gregory F. … -
A Multivariate Bayesian Scan Statistic
Content Type: Abstract
This paper develops a new method for multivariate spatial cluster detection, the ìmultivariate Bayesian scan statisticî (MBSS). MBSS combines information from multiple data streams in a Bayesian framework, enabling faster and more accurate… read more… a wa- ter-borne illness can be predicted based on water dis- tribution information. To compute the data likeli- hood … will allow us to discriminate between clusters that are due to outbreaks and those due to other irrelevant causes. … Communications in Sta- tistics: Theory and Methods, 1997, 26(6): 1481-1496. [3] Neill DB, Detection of spatial and … -
A Bayesian Scan Statistic for Spatial Cluster Detection
Content Type: Abstract
This paper develops a new Bayesian method for cluster detection, the ìBayesian spatial scan statistic,î and compares this method to the standard (frequen-tist) scan statistic approach on the task of prospective disease surveillance.… computable as a function of the aggregate count (i.e. number of disease cases) and aggregate baseline (i.e. … points are mapped to a uni- form grid, and searching over all rectangular regions on the grid) for the Bayesian … Communications in Sta- tistics: Theory and Methods, 1997, 26(6): 1481-1496. [2] Neill DB, Moore AW, Rapid detection of … -
An Outbreak Detection Algorithm that Efficiently Performs Complete Bayesian Model Averaging Over All Possible Spatial Distributions of Disease
Content Type: Abstract
Many disease-outbreak detection algorithms, such as control chart methods, use frequentist statistical techniques. We describe a Bayesian algorithm that uses data D consisting of current day counts of some event (e.g., emergency department (ED)… read more… performs complete Bayesian Model Averaging (BMA) over all possible spatial distributions of disease, yet runs in … fficiently_Performs_Complete_Bayesian_Model_Averaging_Over_All_Possible_Spatial_Distributions_Of_Disease.pdf 5 views … Performs Complete Bayesian Model Averaging Over All Possible Spatial Distributions of Disease Yanna Shen1,2, … -
A Generalization of the AMOC Curve
Content Type: Abstract
The Activity Monitoring Operating Characteristic (AMOC) curve is a useful and popular method for assessing the performance of algorithms that detect outbreaks of disease [1]. As it is typically applied in biosurveillance, the AMOC curve plots the… read more… type of outbreak of some disease D (e.g., an outbreak due to outdoor, airborne release of anthrax spores). The … provide a promising new approach for analyzing outbreak de- tection algorithms. REFERENCES [1] Fawcett T, Provost F. … Proceed- ings of International Conference on Knowledge Dis- covery and Data Mining (1999) 53-62. [2] Cooper GF, … -
A Bayesian Algorithm for Detecting CDC Category A Outbreak Diseases from Emergency Department Chief Complaints
Content Type: Abstract
This paper describes a Bayesian algorithm for diagnosing the CDC Category A diseases, namely, anthrax, smallpox, tularemia, botulism and hemorrhagic fever, using emergency department chief complaints. The algorithm was evaluated on real data and on… read more… Bayesian algo- rithms, has been reported to diagnose all of the CDC Category A diseases [2]. This paper describes … for the detection of anthrax in a simu- lated outbreak due to a windborne-release of anthrax spores. The false … In future work, we plan to evaluate its ability to de- tect the other CDC Category A diseases. We also plan … -
Chief Complaint Preprocessing Evaluated on Statistical and Non-Statistical Classifiers
Content Type: Abstract
To determine whether preprocessing chief complaints before automatically classifying them into syndromic categories improves classification performance.… (85%) in preprocessing chief complaints. However, CCP did not exhibit an overall improvement in clas- sification …

