| Literature DB >> 16026612 |
Jean Gaudart1, Belco Poudiougou, Stéphane Ranque, Ogobara Doumbo.
Abstract
BACKGROUND: In order to detect potential disease clusters where a putative source cannot be specified, classical procedures scan the geographical area with circular windows through a specified grid imposed to the map. However, the choice of the windows' shapes, sizes and centers is critical and different choices may not provide exactly the same results. The aim of our work was to use an Oblique Decision Tree model (ODT) which provides potential clusters without pre-specifying shapes, sizes or centers. For this purpose, we have developed an ODT-algorithm to find an oblique partition of the space defined by the geographic coordinates.Entities:
Mesh:
Year: 2005 PMID: 16026612 PMCID: PMC1198231 DOI: 10.1186/1471-2288-5-22
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Figure 1Construction of the critical angle . - the geographical space is represented by the plane with an orthogonal basis {, } and a fixed origin ; - is a direction perpendicular to the splitting direction ; - and are two point locations in the geographical space.
Figure 2Passage through the critical direction . - is a direction perpendicular to the splitting direction ; and are two point locations in the geographical space; - Change in the order of the projected coordinates on the and directions; - and are directions with intermediate angles, belonging respectively to sector 1 and sector 2; - , , , and are the projected coordinates of points and : > and <.
Figure 3Oblique Decision Tree for spatial partitioning. The geographical area is splited into 6 partitions. N: number of locations belonging to each partition; n: total number of children of each partition; R: infectious rate; θ: critical angle for each split; V: interclasses variance for each split.
Spatial pattern resulting from the ODT-model. The first line refers to the areas without any partition.
| Centroid's Coordinatesa | Pop.b | Risk of infection [CI95%] | Number of Locationsc | |
| No pattern | X = -8.266497256 | 1 461 | 32.44% [30.09–34.89] | 164 |
| P1 | X = -8.270634 | 30 | 26.67% [14.18–44.45] | 5 |
| P2 | X = -8.27019 | 153 | 60.13% [52.22–67.55] | 13 |
| P3 | X = -8.26849 | 26 | 50.0% [32.06–67.94] | 3 |
| P4 | X = -8,2659751 | 1 252 | 28.83% [26.39–31.4] | 143 |
a- The coordinates are for the centroid of each partition.
b- Pop. refers to the total number of children included in each partition.
c- The number of locations refers to the total number of households within each partition.
Figure 5The village of Bancoumana. - The circle S1 refers to the significative cluster provided by the Kulldorff's SaTScan. - The strait lines are the 3 splits resulting from the ODT-model, providing 4 partitions P1, P2, P3 and P4. - The bold grey line represents the Niger river. - Each location is represented by its own risk value. The scale of risks is discretized in 6 equal sized intervals.
Figure 4Empirical distribution of the explained variability rate R. The distribution was provided by Monte Carlo procedure (999 simulated sets and one observed set).
High risk of malaria spatial clusters in Bancoumana, Mali, march 2000.
| Cluster | |||||||
| Coordinatesa | Radius Km | Popb | Risk of infection [CI95%] | Cases Obs/exp | Locc | ||
| S1 | X = -8.27047 | 0.27 | 214 | 54.21% [47.51–60.75] | Obs:116 | 22 | 0.001 |
| S2 | X = -8.26701 | 0.00 | 7 | 85.71% [48.69–97.43] | Obs:6 | 1 | 0.998 |
| S3 | X = -8.26469 | 0.00 | 20 | 60.00% [38.66–78.12] | Obs:12 | 1 | 0.999 |
a- The coordinates are for the center of each circle.
b- Pop. refers to the total number of children into each cluster.
c- Loc. refers to the number of locations belonging to each cluster.
d- p-values refer to the Monte Carlo inference, after 999 replicates.