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Risk Prediction Model for Cerebrovascular Events in Carotid Artery Stenosis
Sponsor: Beijing Tiantan Hospital
Summary
Atherosclerotic carotid artery stenosis is a major cause of stroke, and early identification of high-risk patients combined with surgical intervention can significantly reduce stroke risk. Currently, stroke risk assessment in patients with carotid artery stenosis primarily relies on imaging indicators such as plaque morphology, composition, and degree of stenosis, with less emphasis on indicators directly related to inflammation, hemodynamics, and plaque instability. Certain circulating metabolites are closely linked to plaque progression and are direct risk factors for stroke. However, there is a lack of stroke risk prediction models for patients with carotid stenosis that incorporate these indicators, and the ability to identify high-risk patients needs improvement. This study proposes using deep learning technology to integrate multidimensional data from plaque imaging, fluid dynamics, circulating metabolomics, and proteomics to construct an accurate prediction model for cerebrovascular events in patients with carotid artery stenosis. Additionally, it aims to explore markers of plaque instability characteristics based on plaque pathology. The study is expected to provide a basis for identifying high-risk patients with carotid artery stenosis, thereby laying the foundation for reducing stroke risk and improving long-term patient outcomes.
Official title: Deep Learning-based Risk Prediction Model for Cerebrovascular Events in Patients With Carotid Artery Stenosis
Key Details
Gender
All
Age Range
Any - Any
Study Type
OBSERVATIONAL
Enrollment
300
Start Date
2024-04-15
Completion Date
2026-12-31
Last Updated
2024-06-13
Healthy Volunteers
No
Conditions
Interventions
Plasma
Plasma levels of metabolites and some proteins will be further determined
carotid high-resolution magnetic resonance imaging
Define plaque composition and morphological characteristics
Locations (1)
Beijing Tiantan hospital
Beijing, Beijing Municipality, China