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Abstract #1953

Intracranial Large Vessel Severe Stenosis and Occlusion Detection Based on Vision Transformer Fusion Model from Multi-parametric MRI

Mengzhou Sun1, Xiaoyun Liang2, Jing Zhang2, Di Wu3, and Wenzhen Zhu3
1Institute of Research and Clinical Innovations, Neusoft Medical Systems Co., Ltd, BeiJing, China, 2Institute of Research and Clinical Innovations, Neusoft Medical Systems Co., Ltd, Shanghai, China, 3Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, WuHan, China

Synopsis

Keywords: Diagnosis/Prediction, Stroke

Motivation: Traditionally, large vessel severe stenosis and occlusion (LVSSO) detection based on CTA needs contrast agent exposure. It is important to develop a LVSSO detection approach using contrast agent-free MR images that can achieve results comparable to clinical doctors.

Goal(s): To develop a new fusion algorithm that can achieve the accuracy comparable to clinical diagnostic levels.

Approach: A new fusion algorithm model based on vision transformer was developed. A total of 380 patients were enrolled in the current study.

Results: The proposed model achieved an AUC of 0.963 and an accuracy of 94.7%.

Impact: The proposed model achieved satisfactory accuracy for LVSSO detection, i.e. 94.7%, indicating that the performance of the proposed model has reached the clinical diagnosis level.

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