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Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression

The angle of progression (AoP) for assessing fetal head (FH) descent during labor is measured from the standard plane of transperineal ultrasound images as the angle between a line through the long axis of pubic symphysis (PS) and a second line from the right end of PS tangentially to the contour of...

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Detalles Bibliográficos
Autores principales: Lu, Yaosheng, Zhi, Dengjiang, Zhou, Minghong, Lai, Fan, Chen, Gaowen, Ou, Zhanhong, Zeng, Rongdan, Long, Shun, Qiu, Ruiyu, Zhou, Mengqiang, Jiang, Xiaosong, Wang, Huijin, Bai, Jieyun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9462992/
https://www.ncbi.nlm.nih.gov/pubmed/36092792
http://dx.doi.org/10.1155/2022/5192338
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author Lu, Yaosheng
Zhi, Dengjiang
Zhou, Minghong
Lai, Fan
Chen, Gaowen
Ou, Zhanhong
Zeng, Rongdan
Long, Shun
Qiu, Ruiyu
Zhou, Mengqiang
Jiang, Xiaosong
Wang, Huijin
Bai, Jieyun
author_facet Lu, Yaosheng
Zhi, Dengjiang
Zhou, Minghong
Lai, Fan
Chen, Gaowen
Ou, Zhanhong
Zeng, Rongdan
Long, Shun
Qiu, Ruiyu
Zhou, Mengqiang
Jiang, Xiaosong
Wang, Huijin
Bai, Jieyun
author_sort Lu, Yaosheng
collection PubMed
description The angle of progression (AoP) for assessing fetal head (FH) descent during labor is measured from the standard plane of transperineal ultrasound images as the angle between a line through the long axis of pubic symphysis (PS) and a second line from the right end of PS tangentially to the contour of the FH. This paper presents a multitask network with a shared feature encoder and three task-special decoders for standard plane recognition (Task1), image segmentation (Task2) of PS and FH, and endpoint detection (Task3) of PS. Based on the segmented FH and two endpoints of PS from standard plane images, we determined the right FH tangent point that passes through the right endpoint of PS and then computed the AoP using the above three points. In this paper, the efficient channel attention unit is introduced into the shared feature encoder for improving the robustness of layer region encoding, while an attention fusion module is used to promote cross-branch interaction between the encoder for Task2 and that for Task3, and a shape-constrained loss function is designed for enhancing the robustness to noise based on the convex shape-prior. We use Pearson's correlation coefficient and the Bland–Altman graph to assess the degree of agreement. The dataset includes 1964 images, where 919 images are nonstandard planes, and the other 1045 images are standard planes including PS and FH. We achieve a classification accuracy of 92.26%, and for the AoP calculation, an absolute mean (STD) value of the difference in AoP (∆AoP) is 3.898° (3.192°), the Pearson's correlation coefficient between manual and automated AoP was 0.964 and the Bland-Altman plot demonstrates they were statistically significant (P < 0.05). In conclusion, our approach can achieve a fully automatic measurement of AoP with good efficiency and may help labor progress in the future.
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spelling pubmed-94629922022-09-10 Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression Lu, Yaosheng Zhi, Dengjiang Zhou, Minghong Lai, Fan Chen, Gaowen Ou, Zhanhong Zeng, Rongdan Long, Shun Qiu, Ruiyu Zhou, Mengqiang Jiang, Xiaosong Wang, Huijin Bai, Jieyun Comput Math Methods Med Research Article The angle of progression (AoP) for assessing fetal head (FH) descent during labor is measured from the standard plane of transperineal ultrasound images as the angle between a line through the long axis of pubic symphysis (PS) and a second line from the right end of PS tangentially to the contour of the FH. This paper presents a multitask network with a shared feature encoder and three task-special decoders for standard plane recognition (Task1), image segmentation (Task2) of PS and FH, and endpoint detection (Task3) of PS. Based on the segmented FH and two endpoints of PS from standard plane images, we determined the right FH tangent point that passes through the right endpoint of PS and then computed the AoP using the above three points. In this paper, the efficient channel attention unit is introduced into the shared feature encoder for improving the robustness of layer region encoding, while an attention fusion module is used to promote cross-branch interaction between the encoder for Task2 and that for Task3, and a shape-constrained loss function is designed for enhancing the robustness to noise based on the convex shape-prior. We use Pearson's correlation coefficient and the Bland–Altman graph to assess the degree of agreement. The dataset includes 1964 images, where 919 images are nonstandard planes, and the other 1045 images are standard planes including PS and FH. We achieve a classification accuracy of 92.26%, and for the AoP calculation, an absolute mean (STD) value of the difference in AoP (∆AoP) is 3.898° (3.192°), the Pearson's correlation coefficient between manual and automated AoP was 0.964 and the Bland-Altman plot demonstrates they were statistically significant (P < 0.05). In conclusion, our approach can achieve a fully automatic measurement of AoP with good efficiency and may help labor progress in the future. Hindawi 2022-09-02 /pmc/articles/PMC9462992/ /pubmed/36092792 http://dx.doi.org/10.1155/2022/5192338 Text en Copyright © 2022 Yaosheng Lu et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Lu, Yaosheng
Zhi, Dengjiang
Zhou, Minghong
Lai, Fan
Chen, Gaowen
Ou, Zhanhong
Zeng, Rongdan
Long, Shun
Qiu, Ruiyu
Zhou, Mengqiang
Jiang, Xiaosong
Wang, Huijin
Bai, Jieyun
Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title_full Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title_fullStr Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title_full_unstemmed Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title_short Multitask Deep Neural Network for the Fully Automatic Measurement of the Angle of Progression
title_sort multitask deep neural network for the fully automatic measurement of the angle of progression
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9462992/
https://www.ncbi.nlm.nih.gov/pubmed/36092792
http://dx.doi.org/10.1155/2022/5192338
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