Introduction Or Background: Ambulance services have historically found their targets particularly challenging. This article explores some areas of this multifaceted problem.

Sources Of Data: Research articles, government publications and published audit data.

Areas Of Agreement: Demand is increasing in many areas of healthcare, but whilst hospitals saw a 7% increase in demand in recent times, ambulance services saw nearly double that. The services ambulance trusts provide have evolved from that of a transport service to that of a mobile health provider, and they have become victims of their own success.

Areas Of Controversy: Ambulance targets have never evolved to match evolving care. Ambulance personnel strive to avoid hospital attendance where appropriate, but this can be difficult for a 24-hour service, when not all referral pathways have 24-hour referral systems.

Growing Points: We discuss why demand might be growing disproportionately for ambulance services, and challenge the appropriateness of the targets themselves.

Areas Timely For Developing Research: Possible formats for revised ambulance targets are discussed.

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http://dx.doi.org/10.1093/bmb/ldw047DOI Listing

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