OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation
Objective: While the microvasculature annotation within Optical Coherence Tomography Angiography (OCTA) can be leveraged using deep-learning techniques, expensive annotation processes are required to create sufficient training data. One way to avoid the expensive annotation is to use a type of weak...
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sg-ntu-dr.10356-1707112023-09-26T07:16:06Z OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation Chinkamol, Amrest Kanjaras, Vetit Sawangjai, Phattarapong Zhao, Yitian Sudhawiyangkul, Thapanun Chantrapornchai, Chantana Guan, Cuntai Wilaiprasitporn, Theerawit School of Computer Science and Engineering Engineering::Computer science and engineering Vessel Segmentation Deep Neural Network Objective: While the microvasculature annotation within Optical Coherence Tomography Angiography (OCTA) can be leveraged using deep-learning techniques, expensive annotation processes are required to create sufficient training data. One way to avoid the expensive annotation is to use a type of weak annotation in which only the center of the vessel is annotated. However, retaining the final segmentation quality with roughly annotated data remains a challenge. Methods: Our proposed methods, called OCTAve, provide a new way of using weak-annotation for microvasculature segmentation. Since the centerline labels are similar to scribble annotations, we attempted to solve this problem by using the scribble-based weakly-supervised learning method. Even though the initial results look promising, we found that the method could be significantly improved by adding our novel self-supervised deep supervision method based on Kullback-Liebler divergence. Results: The study on large public datasets with different annotation styles (i.e., ROSE, OCTA-500) demonstrates that our proposed method gives better quantitative and qualitative results than the baseline methods and a naive approach, with a p-value less than 0.001 on dice’s coefficient and a lot fewer artifacts. Conclusion: The segmentation results are both qualitatively and quantitatively superior to baseline weakly-supervised methods when using scribble-based weakly-supervised learning augmented with self-supervised deep supervision, with an average drop in segmentation performance of less than 10%. Significance: This work gives a new perspective on how weakly-supervised learning can be used to reduce the cost of annotating microvasculature, which can make the annotating process easier and reduce the amount of work for domain experts. This work was supported in part by PTT Public Company Limited, and in part by the SCB Public Company Limited and National Research Council of Thailand under Grant N41A640131. 2023-09-26T07:16:05Z 2023-09-26T07:16:05Z 2023 Journal Article Chinkamol, A., Kanjaras, V., Sawangjai, P., Zhao, Y., Sudhawiyangkul, T., Chantrapornchai, C., Guan, C. & Wilaiprasitporn, T. (2023). OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation. IEEE Transactions On Biomedical Engineering, 70(6), 1931-1942. https://dx.doi.org/10.1109/TBME.2022.3232102 0018-9294 https://hdl.handle.net/10356/170711 10.1109/TBME.2022.3232102 37015675 2-s2.0-85146246320 6 70 1931 1942 en IEEE Transactions on Biomedical Engineering © 2022 IEEE. All rights reserved. |
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Engineering::Computer science and engineering Vessel Segmentation Deep Neural Network Chinkamol, Amrest Kanjaras, Vetit Sawangjai, Phattarapong Zhao, Yitian Sudhawiyangkul, Thapanun Chantrapornchai, Chantana Guan, Cuntai Wilaiprasitporn, Theerawit OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
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Objective: While the microvasculature annotation within Optical Coherence Tomography Angiography (OCTA) can be leveraged using deep-learning techniques, expensive annotation processes are required to create sufficient training data. One way to avoid the expensive annotation is to use a type of weak annotation in which only the center of the vessel is annotated. However, retaining the final segmentation quality with roughly annotated data remains a challenge. Methods: Our proposed methods, called OCTAve, provide a new way of using weak-annotation for microvasculature segmentation. Since the centerline labels are similar to scribble annotations, we attempted to solve this problem by using the scribble-based weakly-supervised learning method. Even though the initial results look promising, we found that the method could be significantly improved by adding our novel self-supervised deep supervision method based on Kullback-Liebler divergence. Results: The study on large public datasets with different annotation styles (i.e., ROSE, OCTA-500) demonstrates that our proposed method gives better quantitative and qualitative results than the baseline methods and a naive approach, with a p-value less than 0.001 on dice’s coefficient
and a lot fewer artifacts. Conclusion: The segmentation results are both qualitatively and quantitatively superior to baseline weakly-supervised methods when using scribble-based weakly-supervised learning augmented with self-supervised deep supervision, with an average drop in segmentation performance of less than 10%. Significance: This work gives a new perspective on how weakly-supervised learning can be used to reduce the cost of annotating microvasculature, which can make the annotating process easier and reduce the amount of work for domain experts. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Chinkamol, Amrest Kanjaras, Vetit Sawangjai, Phattarapong Zhao, Yitian Sudhawiyangkul, Thapanun Chantrapornchai, Chantana Guan, Cuntai Wilaiprasitporn, Theerawit |
format |
Article |
author |
Chinkamol, Amrest Kanjaras, Vetit Sawangjai, Phattarapong Zhao, Yitian Sudhawiyangkul, Thapanun Chantrapornchai, Chantana Guan, Cuntai Wilaiprasitporn, Theerawit |
author_sort |
Chinkamol, Amrest |
title |
OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
title_short |
OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
title_full |
OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
title_fullStr |
OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
title_full_unstemmed |
OCTAve: 2D en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
title_sort |
octave: 2d en face optical coherence tomography angiography vessel segmentation in weakly-supervised learning with locality augmentation |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/170711 |
_version_ |
1779156275134726144 |