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Prospective observational multi-center study with the aim to organise and simplify the care pathway through a pragmatic approach to acute stroke imaging powered by cutting edge advances in image processing and artificial intelligence.
Full description
Thrombectomy in acute ischemic stroke is highly effective and cost-effective. As of today, too few patients have access to thrombectomy. There is an urgent need to improve the diagnostics so that all eligible stroke patients have their occlusion detected fast enough and are offered thrombectomy when indicated. Machine learning based imaging techniques have recently been shown to provide improved diagnostic with automated methods for detection of vessel occlusion and ischemic lesions by use of artificial intelligence. We will perform a prospective interventional study in acute ischemic stroke patients with the aim to organize and simplify the care pathway through a pragmatic approach to acute stroke imaging powered by cutting edge advances in image processing and artificial intelligence. By using multiphase CT angiography and software at two primary stroke centres the utility of automatically evaluation of images will be compared to standard care. All images will in parallell be assessed by neuroradiologists at the comprehensive stroke centre.
The main objective is to organize and simplify the care pathway to acute stroke imaging powered by cutting edge advances in image processing and artificial intelligence.
The secondary objectives are to assess: 1) the diagnostic accuracy of mCTA in detection of vessel occlusion in ischemic stroke using AI-based analysis tools compared gold standard of MRI, 2) the percentage of eligible patients who receive EVT using AI-based analysis compared to standard care diagnostics 3) time from onset to recanalization, and 4) functional outcome in acute ischemic stroke patients treated with EVT who had their initial radiological diagnosis using AI-based image analysis tools compared to stroke patients diagnosed by standard care.
Hypotheses: Novel AI-based image analysis tools applied to already available standard CT based imaging techniques can a) improve acute stroke diagnostics and b) increase the number of patients treated by EVT.
The main aim of the project is to organise and simplify the care pathway through a pragmatic approach to acute stroke imaging powered by cutting edge advances in image processing and artificial intelligence.
Secondary aims:
Endpoints:
Primary Endpoints:
Secondary endpoints:
The present study is part of a prospective observational study of the thrombectomy service with collaboration between stroke units and radiological departments at primary and comprehensive stroke centres - the Oslo Acute Revascularization Stroke Study (OSCAR) (REK 2015/1844, EudraCT number 2018-004691-36). Data has already been collected since January 2017 in patients treated with EVT at Oslo University Hospital and by nearly 1100 patients treated with EVT have been included. The database contains detailed information on logistics, transport, clinical, radiological data, and treatment including rehabilitation from baseline to 3-month follow-up is registered prospectively.
The study will start with a 12-month period with registration before the implementation of the AI software. Data from this period and from the OSCAR study will be compared to the data collected after the implementation of the AI software. We will start the study at Drammen Hospital and will consecutively implement it at the other hospitals in Vestre Viken Hospital Trust and Østfold Hospital Trust. Data will be registered for at least 18 months after the implementation of the AI software. The length of the inclusion phase will be adjusted according to the inclusion rate.
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• Patients not available for follow-up assessments (e.g. non-resident).
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Data sourced from clinicaltrials.gov
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