| Literature DB >> 32784193 |
Mihir Mehta1, Juxihong Julaiti1, Paul Griffin2, Soundar Kumara1.
Abstract
BACKGROUND: The rapid spread of COVID-19 means that government and health services providers have little time to plan and design effective response policies. It is therefore important to quickly provide accurate predictions of how vulnerable geographic regions such as counties are to the spread of this virus.Entities:
Keywords: COVID-19; XGBoost; coronavirus; county-level vulnerability; machine learning; prediction model
Mesh:
Year: 2020 PMID: 32784193 PMCID: PMC7490002 DOI: 10.2196/19446
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Figure 1Variable importance for the classification and regression models.
Figure 2Predicted probability of there being a positive instance for each county in the United States.
XGBoost classification training and testing details.
| Data set and evaluation metrics | Mean value, % | Minimum value, % | Maximum value, % | Standard deviation, % | Number of days | |
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| Accuracy | 83 | 77 | 92 | 5 | 18 |
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| Area under the curve | 78 | 71 | 83 | 3 | 18 |
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| Accuracy | 94 | 82 | 100 | 5 | 18 |
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| Area under the curve | 91 | 80 | 100 | 6 | 18 |
Sensitivity of the three-stage model.
| Date | Number of 5% most vulnerable counties identified on a given date (with 0 confirmed cases) | Number of counties that reported cases after 5 days | Sensitivity, % |
| 14/3/2020 | 92 | 61 | 66.30 |
| 15/3/2020 | 119 | 90 | 75.63 |
| 16/3/2020 | 151 | 99 | 65.56 |
| 17/3/2020 | 199 | 144 | 72.36 |
| 18/3/2020 | 144 | 110 | 76.39 |
| 19/3/2020 | 176 | 115 | 65.34 |
| 20/3/2020 | 198 | 146 | 73.74 |
| 21/3/2020 | 166 | 125 | 75.30 |
| 22/3/2020 | 158 | 120 | 75.95 |
| 23/3/2020 | 84 | 66 | 78.57 |
| 24/3/2020 | 89 | 65 | 73.03 |
| 25/3/2020 | 336 | 208 | 61.90 |
| 26/3/2020 | 104 | 72 | 69.23 |
Specificity of the three-stage model.
| Date | Number of top 10% least vulnerable counties identified on a given date (0 confirmed cases) | Number of counties with 0 cases after 5 days | Specificity, % |
| 14/3/2020 | 276 | 274 | 99.28 |
| 15/3/2020 | 282 | 276 | 97.87 |
| 16/3/2020 | 46 | 44 | 95.65 |
| 17/3/2020 | 313 | 304 | 97.12 |
| 18/3/2020 | 297 | 281 | 94.61 |
| 19/3/2020 | 214 | 198 | 92.52 |
| 20/3/2020 | 295 | 266 | 90.17 |
| 21/3/2020 | 312 | 291 | 93.27 |
| 22/3/2020 | 15 | 14 | 93.33 |
| 23/3/2020 | 310 | 289 | 93.23 |
| 24/3/2020 | 303 | 270 | 89.11 |
| 25/3/2020 | 214 | 197 | 92.06 |
| 26/3/2020 | 231 | 218 | 94.37 |