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Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries

X-ray angiography is commonly used in the diagnosis and treatment of coronary artery disease with the advantage of visualization of the inside of blood vessels in real-time. However, it has several disadvantages that occur in the acquisition process, which causes inconvenience and difficulty. Here,...

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Autores principales: Park, Taeyong, Khang, Seungwoo, Jeong, Heeryeol, Koo, Kyoyeong, Lee, Jeongjin, Shin, Juneseuk, Kang, Ho Chul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9028428/
https://www.ncbi.nlm.nih.gov/pubmed/35453826
http://dx.doi.org/10.3390/diagnostics12040778
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author Park, Taeyong
Khang, Seungwoo
Jeong, Heeryeol
Koo, Kyoyeong
Lee, Jeongjin
Shin, Juneseuk
Kang, Ho Chul
author_facet Park, Taeyong
Khang, Seungwoo
Jeong, Heeryeol
Koo, Kyoyeong
Lee, Jeongjin
Shin, Juneseuk
Kang, Ho Chul
author_sort Park, Taeyong
collection PubMed
description X-ray angiography is commonly used in the diagnosis and treatment of coronary artery disease with the advantage of visualization of the inside of blood vessels in real-time. However, it has several disadvantages that occur in the acquisition process, which causes inconvenience and difficulty. Here, we propose a novel segmentation and nonrigid registration method to provide useful real-time assistive images and information. A convolutional neural network is used for the segmentation of coronary arteries in 2D X-ray angiography acquired from various angles in real-time. To compensate for errors that occur during the 2D X-ray angiography acquisition process, 3D CT angiography is used to analyze the topological structure. A novel energy function-based 3D deformation and optimization is utilized to implement real-time registration. We evaluated the proposed method for 50 series from 38 patients by comparing the ground truth. The proposed segmentation method showed that Precision, Recall, and F1 score were 0.7563, 0.6922, and 0.7176 for all vessels, 0.8542, 0.6003, and 0.7035 for markers, and 0.8897, 0.6389, and 0.7386 for bifurcation points, respectively. In the nonrigid registration method, the average distance of 0.8705, 1.06, and 1. 5706 mm for all vessels, markers, and bifurcation points was achieved. The overall process execution time was 0.179 s.
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spelling pubmed-90284282022-04-23 Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries Park, Taeyong Khang, Seungwoo Jeong, Heeryeol Koo, Kyoyeong Lee, Jeongjin Shin, Juneseuk Kang, Ho Chul Diagnostics (Basel) Article X-ray angiography is commonly used in the diagnosis and treatment of coronary artery disease with the advantage of visualization of the inside of blood vessels in real-time. However, it has several disadvantages that occur in the acquisition process, which causes inconvenience and difficulty. Here, we propose a novel segmentation and nonrigid registration method to provide useful real-time assistive images and information. A convolutional neural network is used for the segmentation of coronary arteries in 2D X-ray angiography acquired from various angles in real-time. To compensate for errors that occur during the 2D X-ray angiography acquisition process, 3D CT angiography is used to analyze the topological structure. A novel energy function-based 3D deformation and optimization is utilized to implement real-time registration. We evaluated the proposed method for 50 series from 38 patients by comparing the ground truth. The proposed segmentation method showed that Precision, Recall, and F1 score were 0.7563, 0.6922, and 0.7176 for all vessels, 0.8542, 0.6003, and 0.7035 for markers, and 0.8897, 0.6389, and 0.7386 for bifurcation points, respectively. In the nonrigid registration method, the average distance of 0.8705, 1.06, and 1. 5706 mm for all vessels, markers, and bifurcation points was achieved. The overall process execution time was 0.179 s. MDPI 2022-03-22 /pmc/articles/PMC9028428/ /pubmed/35453826 http://dx.doi.org/10.3390/diagnostics12040778 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Park, Taeyong
Khang, Seungwoo
Jeong, Heeryeol
Koo, Kyoyeong
Lee, Jeongjin
Shin, Juneseuk
Kang, Ho Chul
Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title_full Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title_fullStr Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title_full_unstemmed Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title_short Deep Learning Segmentation in 2D X-ray Images and Non-Rigid Registration in Multi-Modality Images of Coronary Arteries
title_sort deep learning segmentation in 2d x-ray images and non-rigid registration in multi-modality images of coronary arteries
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9028428/
https://www.ncbi.nlm.nih.gov/pubmed/35453826
http://dx.doi.org/10.3390/diagnostics12040778
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