Differencing the Risk of Reiterative Spatial Incidence of COVID-19 Using Space–Time 3D Bins of Geocoded Daily Cases
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overview of the Study Area
2.2. The Main Source: Daily Microdata on Reported Cases
2.3. Research Methods
2.3.1. First Stage, from March to November 2020: 3D Bins and Emerging Hotspots Analysis
- The organisation of time intervals starts from three basic principles. The first are the temporal references used by health authorities, which frequently handle terms close to two weeks (for example, for confining close contacts and for estimating accumulated incidents of 14 or, where appropriate, 7 days to follow the trend). Secondly, we must consider the methodological restriction of the 3D bins creation tool that requires a minimum of ten time intervals and, finally, an adjusted number of intervals close to 10 as the excess of intervals in the tests performed created too many cube moments with no cases or very low counts. The effect of excessive time compartmentalisation tends to disconnect emerging countries from the general pattern of the pandemic wave. As a result of the three criteria described, the 4-week interval is suitable since it includes 2 periods of the usual reference time for the study of accumulated incidents (i.e., 14 days) and meets the condition for the method to be applied that establishes a minimum of 10 moments in time for the development of bins. As we mentioned before, exploratory analysis of slides based on 1 period (2 weeks instead of 4) produced too many bins (many of them with 0 cases) and the results were not adequate.
- The bin size is a metric based on expected distance (nearest neighbour analysis) from layer of points with COVID-19 cases and a weight field of location counts equivalent to number of positive cases in the same geographical coordinate. It is an objective size that improves the results for observed distance (bins too small and with 0 cases or only 1 case) and gives an objective parameter for reproducing this method at other times and elsewhere, with the nearest neighbour analysis needing to be calculated first. The size of the cubes based on the expected distance avoids distortions derived from cube sizes that are too small (which do not provide a spatial pattern with respect to the geocoded point layer) and also the possible cancellation or concealment of spatial differences if the cubes that are generated were too big. The tests carried out at both the municipal and regional levels support the value of the expected distance as a distance parameter of the bins of COVID-19.
2.3.2. Second Stage, from November 2020 to January 2021: Checking the Predictive Potential of Emerging Hotspots
- New cases outside the emerging hotspots modelled.
- New cases inside previous emerging hotspots, where there are two possible combinations: one corresponding to “no pattern detected” because statistical significance is not reached, and the other consisting of emerging hotspots with statistical significance.
3. Results
3.1. First Stage: 3D Bins and Emerging Hotspots in Cantabria from March to November 2020
- Two hundred and fifty-one bins (41.69%) are new hotspots, i.e., these are hotspots with statistical significance only in the final part of the period analysed (October–November). These bins contain 2190 cases (15.75% of the series analysed, 20.96% of cases in hotspots with statistical significance).
- One hundred and seventy-eight bins (29.57%) are oscillating hotspots. These are hotspots which are significant towards the end of the period (October–November) but show a previous trend in which they were significant cold spots. Less than 90% of the time intervals in these cases have shown significant hotspots. In Cantabria, this type is ranked second not only in number of bins but also in number of cases, with 3163 reported positive cases of COVID-19 (22.74% of the series analysed, 30.28% of cases in hotspots with statistical significance). This type is also where the lowest mean age of cases is detected (41.7 years).
- Ninety-eight bins (16.28%) are sporadic hotspots. This type corresponds to locations that switch from hotspot to non-hotspot status several times in the period considered. They show up as significant hotspots in less than 90% of the time intervals and never as significant cold spots. This type is striking in that in 16.28% of statistically significant cubes, it is the one with the most COVID-19 cases, with a total of 3988 cases (28.68% of the series analysed, 38.18% of cases in hotspots with statistical significance). Furthermore, possibly related to the large number of cases, it is in this hotspot pattern where most deaths are found when those in residential homes are excluded (42 deaths, equivalent to 31%).
- Seventy-five bins (12.46%) are consecutive hotspots. These are areas with significant hotspots in a single run without interruption in the final time intervals considered. These cubes were not significant hotspots before the last run. These hotspots are also the least common in terms of number of cases, accounting for 1105 cases (7.95% of the series analysed, 10.58% of cases in hotspots with statistical significance) in all.
3.2. Testing the Predictive Potential of the Emerging Initial Model: The Spread of the Pandemic Two Months Later
3.2.1. The Predictive Power of Analytics of Emerging Hotspots Is Confirmed
3.2.2. Emerging Patterns Detected Two Months Later
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Cases (COVID-19 Records) | First Stage (March 2020 to November 2020) | Second Stage (November 2020 to January 2021) |
---|---|---|
Cases initially reported | 15,168 | 6530 |
Total geocoded cases | 14,938 | 6200 |
Geocoded cases studied | 13,907 | 5766 |
Nearest Neighbour Results | Layer of Cases (Points) | Layer of Location Counts |
---|---|---|
Observed distance | 38.7 m | 126.5 m |
Expected distance | 408.2 m | 538.5 m |
Nearest neighbour ratio | 0.095 | 0.217 |
Z Score | −201.58 | −122.07 |
p value | <0.01 | <0.01 |
Emerging Pattern | Number of Bins | % Bins | Number of Cases | % Cases |
---|---|---|---|---|
No pattern detected | 812 | 57.43 | 3,461 | 24.89 |
Pattern detected: | ||||
New hotspots | 251 | 17.75 * 41.69 ** | 2190 | 15.75 * 20.96 ** |
Oscillating hotspots | 178 | 12.59 * 29.57 ** | 3163 | 22.74 * 30.28 ** |
Sporadic hotspots | 98 | 6.93 * 16.28 ** | 3988 | 28.68 * 38.18 ** |
Consecutive hotspots | 75 | 5.30 * 12.46 ** | 1105 | 7.95 * 10.58 ** |
Total pattern detected | 602 | 42,57 | 10,446 | 75.11 |
Total emerging | 1414 | 100.00 | 13,907 | 100.00 |
Emerging Pattern | Previous Pattern (Stage 1) | New Cases (Stage 2) | ||
---|---|---|---|---|
Area | % Area | COVID-19 Cases | % Cases | |
Outside previous emerging hotspot | − | − | 425 | 7.37 |
Total inside previous emerging hotspot | 410.79 * 158.61 ** | 100.00 | 5341 | 92.63 |
No pattern detected | 235.90 * 91.08 ** | 57.43 | 907 | 16.98 |
Pattern detected: | 174.89 * 67.53 ** | 42.57 | 4,434 | 83.02 |
New hotspots | 72.92 * 28.15 ** | 17.75 | 987 | 18.48 |
Oscillating hotspots | 51.71 * 19.97 ** | 12.59 | 1,355 | 25.37 |
Sporadic hotspots | 28.47 * 10.99 ** | 6.93 | 1,608 | 30.11 |
Consecutive hotspots | 21.79 * 8.41 ** | 5.30 | 484 | 9.06 |
Cross Emerging Patterns: Stage One–Stage Two * | Number of Bins | Average % Time Hot | Average % Time Cold | Number of Cases |
---|---|---|---|---|
Sporadic–Intensifying ** | 57 | 98.92 | 0.00 | 1433 |
No Pattern–No Pattern | 331 | 0.49 | 5.32 | 1013 |
New–No Pattern | 133 | 5.44 | 2.37 | 662 |
Oscillating–Sporadic | 58 | 51.19 | 0.00 | 632 |
Consecutive–Sporadic | 40 | 35.00 | 0.00 | 354 |
Oscillating–Intensifying ** | 20 | 92.69 | 0.00 | 326 |
Oscillating–Consecutive ** | 46 | 29.93 | 0.00 | 325 |
New–Consecutive ** | 31 | 23.82 | 0.00 | 298 |
Sporadic–Consecutive ** | 24 | 30.77 | 0.00 | 224 |
Not previous–No pattern | 96 | 0.32 | 2.32 | 168 |
Consecutive–Consecutive | 15 | 29.23 | 0.00 | 141 |
Oscillating–New | 10 | 7.69 | 2.31 | 36 |
No Pattern–Consecutive ** | 2 | 38.46 | 0.00 | 30 |
New–Sporadic ** | 2 | 42.31 | 0.00 | 21 |
Oscillating–Oscillating | 2 | 26.92 | 7.69 | 19 |
No Pattern–New ** | 3 | 7.69 | 0.00 | 13 |
No Pattern–Oscillating ** | 4 | 15.38 | 7.69 | 13 |
Oscillating–No Pattern | 6 | 0.00 | 20.51 | 10 |
New–Oscillating ** | 3 | 15.38 | 7.69 | 9 |
Not previous–Consecutive ** | 4 | 28.85 | 0.00 | 7 |
New–New ** | 2 | 7.69 | 7.69 | 6 |
Sporadic–Sporadic | 2 | 80.77 | 0.00 | 6 |
Consecutive–No Pattern | 1 | 15.38 | 0.00 | 5 |
Not previous–Oscillating ** | 2 | 15.38 | 7.69 | 4 |
Consecutive–New | 3 | 7.69 | 0.00 | 4 |
Consecutive–Oscillating | 1 | 23.08 | 7.69 | 4 |
Not previous–Sporadic | 2 | 30.77 | 0.00 | 3 |
Total | 900 | − | − | 5766 |
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De Cos, O.; Castillo, V.; Cantarero, D. Differencing the Risk of Reiterative Spatial Incidence of COVID-19 Using Space–Time 3D Bins of Geocoded Daily Cases. ISPRS Int. J. Geo-Inf. 2021, 10, 261. https://doi.org/10.3390/ijgi10040261
De Cos O, Castillo V, Cantarero D. Differencing the Risk of Reiterative Spatial Incidence of COVID-19 Using Space–Time 3D Bins of Geocoded Daily Cases. ISPRS International Journal of Geo-Information. 2021; 10(4):261. https://doi.org/10.3390/ijgi10040261
Chicago/Turabian StyleDe Cos, Olga, Valentín Castillo, and David Cantarero. 2021. "Differencing the Risk of Reiterative Spatial Incidence of COVID-19 Using Space–Time 3D Bins of Geocoded Daily Cases" ISPRS International Journal of Geo-Information 10, no. 4: 261. https://doi.org/10.3390/ijgi10040261
APA StyleDe Cos, O., Castillo, V., & Cantarero, D. (2021). Differencing the Risk of Reiterative Spatial Incidence of COVID-19 Using Space–Time 3D Bins of Geocoded Daily Cases. ISPRS International Journal of Geo-Information, 10(4), 261. https://doi.org/10.3390/ijgi10040261