Результаты исследований: Публикации в книгах, отчётах, сборниках, трудах конференций › статья в сборнике материалов конференции › научная › Рецензирование
Automatic Retinogeniculate Visual Pathway Identification Based on Data-driven Fiber Clustering and Anatomical Constrains. / Zeng, Qingrun; Zhang, Jiawei; Chen, Shengwei и др.
Chinese Control Conference, CCC. Institute of Electrical and Electronics Engineers (IEEE), 2023. стр. 8015-8020.Результаты исследований: Публикации в книгах, отчётах, сборниках, трудах конференций › статья в сборнике материалов конференции › научная › Рецензирование
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TY - GEN
T1 - Automatic Retinogeniculate Visual Pathway Identification Based on Data-driven Fiber Clustering and Anatomical Constrains
AU - Zeng, Qingrun
AU - Zhang, Jiawei
AU - Chen, Shengwei
AU - Xie, Lei
AU - Huang, Jiahao
AU - He, Jianzhong
AU - Pan, Yiang
AU - Yu, Jiangli
AU - Hu, Qiming
AU - Amelina, Evgeniya
AU - Amelin, Mihail
AU - Feng, Yuanjing
N1 - Публикация для корректировки.
PY - 2023
Y1 - 2023
N2 - The visual system relies heavily on the retinogeniculate visual pathway (RGVP). The identification of RGVP has been accomplished using tractography based on diffusion MRI. Yet, owing to its extremely curved course and complex anatomical setting, RGVP tractography still presents obstacles. The huge false-positive fibers produced by RGVP tractography, which necessitate the labor-intensive hand-drawing of ROIs for fiber filtering, are one of the main obstacles. In order to enable automatic RGVP detection in dMRI tractography, we have proposed a pipeline. First, we created an RGVP atlas based on tractography. Using high-resolution data from 50 cases, multi-fiber unscented Kalman filter tractography was implemented in this study. Then, using a common space created from the 50 tractography cases, we applied data-driven fiber clustering to put nearby fibers with comparable trajectory into one cluster. The RGVP annotation of tractography atlas was done by two qualified anatomists. Second, 50 testing data were used to identify subject-specific RGVP using the RGVP atlas. Also, we developed a deep learning model to assist in screening RGVP clusters and reduce the false positive fibers in subject-specific RGVP. In terms of identification rate, hausdorff distance, and visualization, experimental findings demonstrated that our automatic identification results have perfect colocalization with expert manual identification.
AB - The visual system relies heavily on the retinogeniculate visual pathway (RGVP). The identification of RGVP has been accomplished using tractography based on diffusion MRI. Yet, owing to its extremely curved course and complex anatomical setting, RGVP tractography still presents obstacles. The huge false-positive fibers produced by RGVP tractography, which necessitate the labor-intensive hand-drawing of ROIs for fiber filtering, are one of the main obstacles. In order to enable automatic RGVP detection in dMRI tractography, we have proposed a pipeline. First, we created an RGVP atlas based on tractography. Using high-resolution data from 50 cases, multi-fiber unscented Kalman filter tractography was implemented in this study. Then, using a common space created from the 50 tractography cases, we applied data-driven fiber clustering to put nearby fibers with comparable trajectory into one cluster. The RGVP annotation of tractography atlas was done by two qualified anatomists. Second, 50 testing data were used to identify subject-specific RGVP using the RGVP atlas. Also, we developed a deep learning model to assist in screening RGVP clusters and reduce the false positive fibers in subject-specific RGVP. In terms of identification rate, hausdorff distance, and visualization, experimental findings demonstrated that our automatic identification results have perfect colocalization with expert manual identification.
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85175560024&origin=inward&txGid=5cc169ad79e1d8f0994e89bd49bf8f9a
UR - https://www.mendeley.com/catalogue/d2f4d8f6-39d9-3fda-b9e1-7808118dd365/
U2 - 10.23919/ccc58697.2023.10239759
DO - 10.23919/ccc58697.2023.10239759
M3 - Conference contribution
SN - 9789887581543
SP - 8015
EP - 8020
BT - Chinese Control Conference, CCC
PB - Institute of Electrical and Electronics Engineers (IEEE)
ER -
ID: 59182769