| Literature DB >> 28985736 |
Michelle Torok1, Paul Konings2, Philip J Batterham3, Helen Christensen4.
Abstract
BACKGROUND: Rates of suicide appear to be increasing, indicating a critical need for more effective prevention initiatives. To increase the efficacy of future prevention initiatives, we examined the spatial distribution of suicide deaths and suicide attempts in New South Wales (NSW), Australia, to identify where high incidence 'suicide clusters' were occurring. Such clusters represent candidate regions where intervention is critically needed, and likely to have the greatest impact, thus providing an evidence-base for the targeted prioritisation of resources.Entities:
Keywords: Clusters; Epidemiology; GIS; Mapping; Prevention; Scan statistics; Spatial; Suicide
Mesh:
Year: 2017 PMID: 28985736 PMCID: PMC5639600 DOI: 10.1186/s12888-017-1504-y
Source DB: PubMed Journal: BMC Psychiatry ISSN: 1471-244X Impact factor: 3.630
Fig. 1Hot Spot analyses of statistically significant suicide and self-harm spatial clusters in New South Wales
Fig. 2SaTScan analyses of statistically significant suicide and self-harm spatial clusters in New South Wales
Fig. 3Top 100 statistically significant suicide clusters contained within 25 primary and secondary likely candidate Local Government Areas: mortality and intentional self-harm cases
Most likely spatial clusters of suicide in NSW for data aggregated from 2005 to 2013
| Local Government Area | ERP | Total geography area (km2) | Population density/km2 | SEIFA score | Non-fatal self-harm (N) | Non-fatal self-harm crude rate per 100,000 | Suicide mortality (N) | Mortality crude rate per 100,000 | Composite score |
|---|---|---|---|---|---|---|---|---|---|
| Primary clusters | |||||||||
| Sydney (C) | 174,185 | 25 | 8214.0 | 1051 | 2945 | 1691 | 246 | 141 | 165 |
| Newcastle (C) | 150,586 | 187 | 794.3 | 991 | 3436 | 2282 | 142 | 94 | 140 |
| Shoalhaven (C) | 93,857 | 4567 | 21.4 | 944 | 1760 | 1875 | 120 | 128 | 130 |
| Lake Macquarie (C) | 191,331 | 648 | 315.0 | 985 | 3271 | 1710 | 170 | 89 | 112 |
| Tweed (A) | 86,257 | 1321 | 69.9 | 949 | 1506 | 1746 | 102 | 118 | 97 |
| Penrith (C) | 180,521 | 405 | 442.0 | 989 | 3114 | 1725 | 148 | 82 | 89 |
| Albury (C) | 48,347 | 306 | 164.2 | 967 | 894 | 1849 | 63 | 130 | 66 |
| Wollongong (C) | 195,266 | 684 | 305.4 | 981 | 3092 | 1583 | 178 | 91 | 66 |
| Wyong (A) | 151,141 | 827 | 181.1 | 942 | 2155 | 1426 | 132 | 87 | 64 |
| Secondary likely clusters | |||||||||
| Byron (A) | 29,756 | 567 | 33.2 | 979 | 38 | 128 | 464 | 1559 | 54 |
| Blacktown (C) | 304,892 | 247 | 1254.0 | 974 | 218 | 72 | 3056 | 1002 | 53 |
| Coffs Harbour (C) | 69,285 | 1175 | 61.9 | 950 | 51 | 74 | 1340 | 1934 | 52 |
| Lismore (C) | 43,275 | 1290 | 33.2 | 946 | 50 | 116 | 737 | 1703 | 50 |
| Ballina (A) | 39,747 | 484 | 81.1 | 980 | 31 | 78 | 635 | 1598 | 44 |
| Campbelltown (C) | 147,717 | 312 | 509.4 | 943 | 117 | 79 | 2848 | 1928 | 44 |
| Gosford (C) | 164,192 | 940 | 172.8 | 1001 | 157 | 96 | 1862 | 1134 | 43 |
| Wagga Wagga (C) | 60,153 | 4826 | 13.1 | 987 | 56 | 93 | 1090 | 1812 | 41 |
| Bega Valley (A) | 32,274 | 6279 | 5.3 | 951 | 28 | 87 | 717 | 2222 | 38 |
| Cessnock (C) | 51,379 | 1966 | 25.4 | 922 | 56 | 109 | 729 | 1419 | 37 |
| Eurobodalla (A) | 36,137 | 3428 | 10.9 | 940 | 33 | 91 | 712 | 1970 | 37 |
| Maitland (C) | 68,192 | 392 | 172.1 | 986 | 58 | 85 | 892 | 1308 | 35 |
| Richmond Valley (A) | 22,263 | 3051 | 7.2 | 888 | 30 | 135 | 385 | 1729 | 34 |
| Port Stephens (A) | 65,537 | 979 | 66.2 | 970 | 43 | 66 | 963 | 1469 | 32 |
| Great Lakes (A) | 34,802 | 3376 | 10.2 | 920 | 26 | 75 | 518 | 1488 | 30 |
| Greater Taree (C) | 46,999 | 3730 | 12.5 | 906 | 37 | 79 | 748 | 1592 | 26 |
(A) Areas, (C) Cities, ERP Estimated Resident Population, Km Square Kilometer, SEIFA Socio-Economic Indexes for Area