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An Aneurysm Localization Algorithm Based on Faster R-CNN Network for Cerebral Small Vessels

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Published:22 May 2023Publication History

ABSTRACT

The use of artificial intelligence algorithm to determine whether the lesion has cerebral aneurysm, especially small aneurysms, is still not completely solved. In this paper, the Faster R-CNN network was used as the localization network, and the model was trained by adjusting the network parameters, and the appropriate feature extraction network and classification network were selected to finally solve the localization problem of small aneurysms. Compared with most 3D methods, this method had the characteristics of shorter training cycle and faster image recognition. The experimental results show that the algorithm has a high accuracy in discriminating whether the lesion has cerebral aneurysm, but the false positive phenomenon may occur in the identification of single image localization. Finally, the paper discusses the experimental results and puts forward some conjecture ideas to solve the problem.

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  • Published in

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    ICCPR '22: Proceedings of the 2022 11th International Conference on Computing and Pattern Recognition
    November 2022
    683 pages
    ISBN:9781450397056
    DOI:10.1145/3581807

    Copyright © 2022 ACM

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    Publication History

    • Published: 22 May 2023

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