| Literature DB >> 32004349 |
Dan I Lubman1,2,3, Sharon Matthews1,2, Cherie Heilbronn1,2, Jessica J Killian1,2, Rowan P Ogeil1,2,3, Belinda Lloyd1,2, Katrina Witt1,2,3, Rose Crossin1,2,3, Karen Smith4,5,6, Emma Bosley7, Rosemary Carney8, Alex Wilson9, Matthew Eastham10, Toby Keene11, Carol Shipp11, Debbie Scott1,2,3.
Abstract
Although harmful consumption of alcohol and other drugs (both illicit and pharmaceutical) significantly contribute to global burden of disease, not all harms are captured within existing morbidity data sources. Indeed, harms occurring in the community may be missed or under-reported. This paper describes the National Ambulance Surveillance System, a unique Australian system for monitoring and mapping acute harms related to alcohol and other drug consumption. Data are sourced from paramedic electronic patient care records provided by ambulance services from across Australia. Coding occurs in a purpose-built system, by a team of specialised research assistants. Alcohol, and specific illicit and pharmaceutical drugs, rather than broad drug classes, are manually coded and the dataset is reviewed and cleaned prior to analysis. The National Ambulance Surveillance System is an ongoing, dynamic surveillance system of alcohol and other drug-related harms across Australia. The data includes more than 140 output variables per attendance, including individual substances, demographics, temporal, geospatial, and clinical data (e.g., Glasgow Coma Scale score, naloxone provision and response, outcome of attendance). The National Ambulance Surveillance System is an internationally unique population-level surveillance system of acute harms arising from alcohol and other drug consumption. Dissemination of National Ambulance Surveillance System data has been used to inform and evaluate policy approaches and potential points of intervention, as well as guide workforce development needs and clinical practice at the local and national level. This methodology could be replicated in other countries.Entities:
Mesh:
Substances:
Year: 2020 PMID: 32004349 PMCID: PMC6994147 DOI: 10.1371/journal.pone.0228316
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Summary of coded data availability by jurisdiction.
| Jurisdiction | Population as at 30 June 2017 | Data collection start date | Number of attendances 2016–17 financial year | Number of AOD-related attendances 2016 calendar year (4 snapshot months) |
|---|---|---|---|---|
| Australian Capital Territory | 411,667 | March 2013 | 42,098 | 1,130 |
| New South Wales | 7,861,674 | January 2013 | 774,137 | 13,806 |
| Northern Territory | 247,491 | January 2015 | 33,760 | 2,883 |
| Queensland | 4,929,152 | January 2013 | 767,296 | 20,780 |
| Tasmania | 522,152 | March 2013 | 68,792 | 1,400 |
| Victoria | 6,321,648 | November 1998 | 497,814 | 16,541 |
NB. All dates and numbers are correct as at 30 June 2018.
* Numbers include emergency and urgent incidents, in the Australian financial year (1 July to 30 June)
** Snapshot months: March, June, September, December in 2016 calendar year. Calendar year was used instead of financial year as 2017 data for Queensland is unavailable.
*** This includes cases completed on VACIS®, which is over 90% of all attendances
**** Regional Victoria data available from May 2011. Three months of missing data from October to December 2014 inclusive, due to paramedic industrial action
Fig 1National Ambulance Surveillance System data collection and coding process.
Processes in orange occur at the jurisdictional ambulance services, with processes in blue occurring at Turning Point.
National Ambulance Surveillance System output variables, including scene patient and clincal details, alcohol, individual illicit drugs and pharmaceutical medication drug classes*.
| Case details | Patient details | Scene details | Physical condition | Illicit drugs | Pharmaceutical medications | Other substances | Intent of AOD poisoning |
|---|---|---|---|---|---|---|---|
| Case number | Gender | Public / private | Patient outcome | Methamphetamine | Opioid analgesics | Alcohol involved | Unintentional |
| Case date | Age | Indoor / outdoor | Pulse rate | Crystal methamphetamine | Other analgesics | Alcohol intoxication | Intentional |
| Case time | Residential postcode | Event postcode | Blood pressure | Cannabis | Benzodiazepines | Inhalant | Undetermined intent |
| Transport to hospital | Homelessness | Event coordinates | Respiratory rate | Synthetic cannabinoids | Anti-depressants | Other substance | |
| Reason for not transporting | Unemployment | Police co-attendance | Skin temperature | Emerging psychoactive substances | Anti-psychotics | ||
| Previous incarceration | Others on scene | Skin moisture | Cocaine | Anti-convulsants | |||
| Culturally and linguistically diverse | Minors on scene | Skin colour | 3,4-methylenedioxy-methamphetamine (MDMA) | Opioid pharmacotherapy treatments | |||
| Refugee background | GCS eye response | Gamma hydroxybutyrate (GHB) | Pharmaceutical stimulants | ||||
| GCS verbal response | Heroin | Peer administered naloxone | |||||
| GCS motor response | Ketamine | Other medication | |||||
| Naloxone administration | Lysergic acid diethylamide (LSD) | ||||||
| Naloxone dose | Mushrooms | ||||||
| Naloxone response | Other illicit drugs |
*Individual pharmaceutical drugs presented in S1 Table
Identification of relevant cases through the NASS process, Victoria, 2016–2017 financial year*.
| Process step | Number of ambulance attendances | Inclusion rate from preceding step |
|---|---|---|
| 1 –Ambulance data collection | 497,814 | N/A |
| 2 –Provided to Turning Point after filtering | 128,641 | 25.8% |
| 3 –Proceeded to coding after initial data processing | 128,641 | 100.0% |
| 4 –Case ascertainment (deemed to be AOD-related) | 50,685 | 39.4% |
| 5 –Available for analysis after data export | 49,647 | 98.0% |
*Australian financial year, from 1 July 2016 to 30 June 2017
Fig 2Opioid-related ambulance attendances by jurisdiction, March, June, September and December 2016.
Australian Capital Territory, Northern Territory and Tasmania not presented due to small numbers.
Fig 3The number of opioid-related ambulance attendances in one local government area in metropolitan Melbourne.
Ambulance attendances are shown within 250 metre squares, based on GPS data. The map source information is provided by OpenStreetMaps contributors.