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Principles for effective data systems. November 2010 Ian Hughes. Background. Overview. Background Use of data Characteristics of good road crash data systems Data requirements for road safety management Key sources of data Minimum data elements Need for use of recognised definitions
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Principles for effectivedata systems November 2010 Ian Hughes
Overview • Background • Use of data • Characteristics of good road crash data systems • Data requirements for road safety management • Key sources of data • Minimum data elements • Need for use of recognised definitions • Examples of additional variables commonly collected • Transport-related data elements • Conclusion
Background • The collection, analysis, interpretation and application of good data is essential for effective road safety management • Data collection systems are generally not well developed in low and middle income countries globally
Use of data • Use of reliable and detailed data as part of a road safety strategy
Use of data • Reliable and accurate data can be used to build political will by: • Documenting the scale of the problem • Demonstrating effectiveness of interventions • Providing information on reductions in socio-economic costs
Characteristics of good road crash data systems • Road crash data is collected by police, health workers and insurance companies • As a minimum a road crash data system should: • Capture crashes resulting in death and serious injuries • Provide adequate detail on vehicle, road user, road/environment • Include crash location details • Provide reliable output in timely manner
Characteristics of good road crash data systems • Summary road crash data is useful for: • describing the magnitude of the problem • monitoring programmes and policies • More detailed information required for evidence-based intervention and management
Data requirements for road safety management • A comprehensive road safety data system should include: • Final outcomes – deaths and serious injuries to road users and crash characteristics • Exposure measures – e.g. demographic data, number of licensed drivers, traffic volume data, infrastructure factors • Intermediate outcomes – e.g. mean traffic speeds, seatbelt and helmet wearing rates, drink-driving, vehicle and infrastructure ratings • Socio-economic costs • Outputs – including enforcement efforts
Key sources of data • Police: • Number of road traffic incidents, fatalities and injuries • Road users involved • Age and sex of casualties • Vehicles involved • Police assessment of causes of crashes • Use of safety equipment (e.g. helmets) • Location and sites of crashes • Prosecutions
Key sources of data • Health settings: • Fatal and non-fatal injuries • Age and sex of casualties • Costs of treatment • Alcohol or drug use
Key sources of data • Vital registration: • Fatal injuries • Age and sex of casualties • Type of road users involved • Insurance companies: • Fatal and non-fatal injuries • Damage to vehicles • Costs of claims
Key sources of data • Other private and public institutions, including transport companies: • Number of fatal and non-fatal injuries occurring among employees • Damage and losses • Insurance claims • Legal issues • Operational data
Key sources of data • Government departments and specialized agencies collecting data for national planning and development: • Population estimates • Income and expenditure data • Health indicators • Exposure data • Pollution data • Energy consumption • Literacy levels
Key sources of data • Special interest groups: • Number of road traffic incidents, fatal and non-fatal injuries • The type of road users involved • Age and sex of casualties • Vehicles involved • Causes • Location and sites of crashes • Social and psychological impacts • Risk factors • Interventions