TY - JOUR
T1 - Automatic lumen and anatomical layers segmentation in IVOCT images using meta learning
AU - Shi, Peiwen
AU - Xin, Jingmin
AU - Du, Shaoyi
AU - Wu, Jiayi
AU - Deng, Yangyang
AU - Cai, Zhuotong
AU - Zheng, Nanning
N1 - Publisher Copyright:
© 2023 Wiley-VCH GmbH.
PY - 2023/9
Y1 - 2023/9
N2 - Automated analysis of the vessel structure in intravascular optical coherence tomography (IVOCT) images is critical to assess the health status of vessels and monitor coronary artery disease progression. However, deep learning-based methods usually require well-annotated large datasets, which are difficult to obtain in the field of medical image analysis. Hence, an automatic layers segmentation method based on meta-learning was proposed, which can simultaneously extract the surfaces of the lumen, intima, media, and adventitia using a handful of annotated samples. Specifically, we leverage a bi-level gradient strategy to train a meta-learner for capturing the shared meta-knowledge among different anatomical layers and quickly adapting to unknown anatomical layers. Then, a Claw-type network and a contrast consistency loss were designed to better learn the meta-knowledge according to the characteristic of annotation of the lumen and anatomical layers. Experimental results on the two cardiovascular IVOCT datasets show that the proposed method achieved state-of-art performance. (Figure presented.).
AB - Automated analysis of the vessel structure in intravascular optical coherence tomography (IVOCT) images is critical to assess the health status of vessels and monitor coronary artery disease progression. However, deep learning-based methods usually require well-annotated large datasets, which are difficult to obtain in the field of medical image analysis. Hence, an automatic layers segmentation method based on meta-learning was proposed, which can simultaneously extract the surfaces of the lumen, intima, media, and adventitia using a handful of annotated samples. Specifically, we leverage a bi-level gradient strategy to train a meta-learner for capturing the shared meta-knowledge among different anatomical layers and quickly adapting to unknown anatomical layers. Then, a Claw-type network and a contrast consistency loss were designed to better learn the meta-knowledge according to the characteristic of annotation of the lumen and anatomical layers. Experimental results on the two cardiovascular IVOCT datasets show that the proposed method achieved state-of-art performance. (Figure presented.).
KW - anatomical layers
KW - few-shot segmentation
KW - lumen
KW - meta-learning
KW - optical coherence tomography
UR - https://www.scopus.com/pages/publications/85161878268
U2 - 10.1002/jbio.202300059
DO - 10.1002/jbio.202300059
M3 - 文章
C2 - 37289201
AN - SCOPUS:85161878268
SN - 1864-063X
VL - 16
JO - Journal of Biophotonics
JF - Journal of Biophotonics
IS - 9
M1 - e202300059
ER -