Miles, Jamie ORCID: https://orcid.org/0000-0002-1080-768X (2022) Predicting an avoidable conveyance to the Emergency Department for ambulance patients on scene. PhD thesis, University of Sheffield.
Abstract
One of the main problems currently facing the delivery of safe and effective emergency care is excess demand, which causes congestion at different time points in a patient’s journey. The modern case-mix of prehospital patients is broad and complex, diverging from the traditional ‘time critical accident and emergency’ patients. It now includes many low-acuity patients and those with social care and mental health needs. In the ambulance service, transport decisions are the hardest to make and paramedics decide to take more patients to the ED than would have a clinical benefit. As such, this thesis asks the following research questions:
In adult patients attending the ED by ambulance, can prehospital information predict an avoidable attendance?
Can the model derived from the primary outcome be spatially transported?
A linked dataset of 101,522 ambulance service and ED data from the whole of Yorkshire between July 2019 and February 2020 was used as the sample for this study. A machine learning method known as XGBoost was applied to the data in a novel way called Internal-External Cross Validation (IECV) to build the model. The results showed great discrimination with a C-statistic of 0.81 (95%CI 0.79-0.83) and excellent calibration with an O:E ratio was 0.995 (95% CI 0.97 – 1.03), with the most important variables being a patient’s mobility, their physiological observations and clinical impression with psychiatric problems, allergic reactions, cardiac chest pain, head injury, non-traumatic back pain, and minor cuts and bruising being the most important.
This thesis has successfully developed a decision-support model that can be transformed into a tool that could help paramedics make better transport decisions on scene, known as the SINEPOST model. It is accurate, and spatially validated across multiple geographies including rural, urban, and coastal. It is a fair algorithm that does not discriminate new patients based on their age, gender, ethnicity, or decile of deprivation. It can be embedded into an electronic Patient Care Record system and automatically calculate the probability that a patient will have an avoidable attendance at the ED, if they were transported.
Metadata
Supervisors: | Suzanne, Mason and Richard, Jacques and Janette, Turner |
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Keywords: | ambulance; emergency; machine learning; artificial intelligence; ambulance service; emergency department; linked data |
Awarding institution: | University of Sheffield |
Academic Units: | The University of Sheffield > Faculty of Medicine, Dentistry and Health (Sheffield) > School of Health and Related Research (Sheffield) |
Identification Number/EthosID: | uk.bl.ethos.861162 |
Depositing User: | Dr Jamie Miles |
Date Deposited: | 05 Sep 2022 15:06 |
Last Modified: | 01 Oct 2023 09:53 |
Open Archives Initiative ID (OAI ID): | oai:etheses.whiterose.ac.uk:31350 |
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