2017 IEEE International Conference on Bioinformatics and Biomedicine (BIBM) 2017
DOI: 10.1109/bibm.2017.8218004
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A compartmental network model for the spread of whooping cough

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Cited by 12 publications
(12 citation statements)
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“…Model accuracy was validated using standard methods, 65,[78][79][80][81][82] cross-validation to each other, and varied national, state, and county empirical data sets from January to July 2020 ( Figure 2). As shown, in all cases model results closely emulate historical data, with accuracy on par with or exceeding norms and results reported elsewhere [83][84][85][86][87][88][89] and with ≤ 1 change dynamic point generally providing good fits, both suggesting good prospective short-term prediction capability. While no model is perfect, for the cases of Dougherty (Georgia) and Suffolk (Massachusetts) countieseach exhibiting different epidemic patterns, magnitudes, and timingsour models sufficiently emulate community-based transmission to help inform policy-making decisions.…”
Section: B Parameter Estimation and Calibrationsupporting
confidence: 77%
“…Model accuracy was validated using standard methods, 65,[78][79][80][81][82] cross-validation to each other, and varied national, state, and county empirical data sets from January to July 2020 ( Figure 2). As shown, in all cases model results closely emulate historical data, with accuracy on par with or exceeding norms and results reported elsewhere [83][84][85][86][87][88][89] and with ≤ 1 change dynamic point generally providing good fits, both suggesting good prospective short-term prediction capability. While no model is perfect, for the cases of Dougherty (Georgia) and Suffolk (Massachusetts) countieseach exhibiting different epidemic patterns, magnitudes, and timingsour models sufficiently emulate community-based transmission to help inform policy-making decisions.…”
Section: B Parameter Estimation and Calibrationsupporting
confidence: 77%
“…Model accuracy was validated using standard methods [65,[78][79][80][81][82], cross-validation, and varied state and county empirical data (January to July 2020) exhibiting different epidemic patterns, magnitudes, and timings (Multimedia Appendix 2). Model results closely emulate historical data across multiple settings, with accuracy on par with or exceeding norms reported elsewhere [83][84][85][86][87][88][89] and with ≤1 change points generally providing good fits, suggesting good prospective short-term prediction capability. 1) used in the community and campus models were estimated using a combination of published and grey literature, expert opinion, and search-based optimization.…”
Section: Parameter Estimation and Model Calibrationsupporting
confidence: 64%
“…Whooping cough or pertussis is a highly epidemic bacterium that lives in the mouth, nose, throat and it's life-threatening especially in infants. The widespread disease can easily disperse through coughing and sneezing of an infected individual [15]. Influenza is one of the most common contagious illnesses caused by influenza viruses.…”
Section: Resultsmentioning
confidence: 99%