Study Results
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Basic Information
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UNKNOWN
100 participants
OBSERVATIONAL
2021-11-12
2024-09-01
Brief Summary
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Detailed Description
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Given the differing aetiologies, investigation, and management of embolic and non-embolic stroke, early differentiation facilitates clinical decision making, and allows focussed investigation and management for patients. Radiological features of stroke can support this process as the location, size, and pattern of the infarction, can indicate the likely aetiology and stroke sub-type. However, at present there are no criteria by which this is assessed, relying on a qualitative and thus subjective, opinion of the treating clinician or radiologist. Inaccurate diagnosis has been reported in up to one third of lacunar strokes relying on clinical and CT findings alone \[13\]. The majority of false positive findings were due to cardioembolic or large artery stroke, potentially resulting in missed opportunity to identify and treat AF \[13\]. Diffusion weighted imaging can improve the diagnosis of lacunar infarction but its use is limited by cost and availability \[13-15\]. In a recent study of 133 patients with ESUS, 22.6% were found to have AF after three months of cardiac monitoring, and an 8-point risk score could predict this with reasonable accuracy (area under the curve=0.70) \[16\]. However this accuracy falls considerably where the aetiology of stroke remains undetermined \[16\]. The true proportion of AF that goes undetected remains unknown, and earlier detection through predictive modelling could potentially reduce investigation and treatment delays.
Therefore, improving the processes by which embolic stroke, particularly AF, may help guide clinical decision making. This would allow better tailoring of investigations to patients, removing unnecessary tests that could have potential economic benefits to the NHS, and reducing investigation burden to patients. The development of stroke models that can integrate clinical information from patients, and scan findings, may be able to provide improved diagnostic accuracy for stroke-sub type classification and facilitate timely, and more targeted investigation and treatment. In particular, models capable of differentiating between different types of embolism may be particularly valuable and prompt extended monitoring for patients who are most likely to have an AF source.
This study proposes a Monte Carlo method developed by JH and EC to simulate strokes \[17-20\]. This method has recently been adapted using an in silico cerebral vasculature \[21\] and tested against stroke images from the Anatomical Tracings of Lesions After Stroke (ATLAS) database (unpublished work). The advantage of using a computationally generated vasculature over imaging is that there is no lower bound on vessel size and we are able to include vessels in our model down to the capillary bed. Within the simulations, we can estimate lesion volume as well as incorporate the differing metabolic demands of grey and white matter. Recently, we have been able to reproduce stroke images in the anterior, middle, and posterior (ACA, MCA, PCA respectively) circulations using images from the ATLAS dataset. However, the majority of lesions in ATLAS were chronic in nature and this does not provide information on how this model would perform at the "front door" where treatment decisions could be made in a more timely fashion.
Therefore, this project seeks to develop an acute stroke scan database to validate these recently developed simulations against and to determine the accuracy at predicting the source of embolic stroke in the acute setting. Given the growing application of AI techniques to clinical medicine, we will compare the ability of this recently developed stroke simulation model to AI techniques to predict the source of embolic stroke. We will compare the ability of the models to clinical or radiological opinion. Finally, we will test the combined ability of the two techniques to determine the source of embolic stroke. Specifically, we will evaluate the following sources: lacunar, cardioembolic, large vessel atherosclerotic emboli, and watershed.
Conditions
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Study Design
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OTHER
RETROSPECTIVE
Interventions
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Stroke simulation and machine learning
Using simulation and machine learning approaches to classify the source of embolic stroke.
Eligibility Criteria
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Inclusion Criteria
* Adults aged over 18 years
* Patients receiving a magnetic resonance imaging (MRI) scan
Exclusion Criteria
* No acute stroke diagnosis or identifiable lesion on MRI
* Patients with a computed tomography scan only
18 Years
ALL
No
Sponsors
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Open University
OTHER
University of Leicester
OTHER
Responsible Party
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Locations
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University of Leicester
Leicester, Leicestershire, United Kingdom
Countries
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Other Identifiers
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0839
Identifier Type: -
Identifier Source: org_study_id
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