Fine grained automatic left ventricle segmentation via ROI based Tri-Convolutional neural networks.

IF 1.8 4区 医学 Q4 ENGINEERING, BIOMEDICAL Technology and Health Care Pub Date : 2024-01-01 DOI:10.3233/THC-240062
Gayathri K, Uma Maheswari N, Venkatesh R, Ganesh Prabu B
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Abstract

Background: The left ventricle segmentation (LVS) is crucial to the assessment of cardiac function. Globally, cardiovascular disease accounts for the majority of deaths, posing a significant health threat. In recent years, LVS has gained important attention due to its ability to measure vital parameters such as myocardial mass, end-diastolic volume, and ejection fraction. Medical professionals realize that manually segmenting data to evaluate these processes takes a lot of time, effort when diagnosing heart diseases. Yet, manually segmenting these images is labour-intensive and may reduce diagnostic accuracy.

Objective/methods: This paper, propose a combination of different deep neural networks for semantic segmentation of the left ventricle based on Tri-Convolutional Networks (Tri-ConvNets) to obtain highly accurate segmentation. CMRI images are initially pre-processed to remove noise artefacts and enhance image quality, then ROI-based extraction is done in three stages to accurately identify the LV. The extracted features are given as input to three different deep learning structures for segmenting the LV in an efficient way. The contour edges are processed in the standard ConvNet, the contour points are processed using Fully ConvNet and finally the noise free images are converted into patches to perform pixel-wise operations in ConvNets.

Results/conclusions: The proposed Tri-ConvNets model achieves the Jaccard indices of 0.9491 ± 0.0188 for the sunny brook dataset and 0.9497 ± 0.0237 for the York dataset, and the dice index of 0.9419 ± 0.0178 for the ACDC dataset and 0.9414 ± 0.0247 for LVSC dataset respectively. The experimental results also reveal that the proposed Tri-ConvNets model is faster and requires minimal resources compared to state-of-the-art models.

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通过基于 ROI 的三卷积神经网络进行细粒度自动左心室分割。
背景:左心室分割(LVS)对评估心脏功能至关重要。在全球范围内,心血管疾病占死亡人数的大多数,对健康构成重大威胁。近年来,由于 LVS 能够测量心肌质量、舒张末期容积和射血分数等重要参数,因此备受关注。医学专家意识到,在诊断心脏疾病时,手动分割数据以评估这些过程需要花费大量的时间和精力。然而,人工分割这些图像耗费大量人力,而且可能会降低诊断的准确性:本文提出了一种基于三卷积网络(Tri-ConvNets)的左心室语义分割深度神经网络组合,以获得高精度的分割。首先对 CMRI 图像进行预处理,以去除噪声伪影并提高图像质量,然后分三个阶段进行基于 ROI 的提取,以准确识别左心室。提取的特征作为三种不同深度学习结构的输入,以高效的方式分割左心室。轮廓边缘在标准 ConvNet 中进行处理,轮廓点使用完全 ConvNet 进行处理,最后将无噪声图像转换为补丁,以便在 ConvNets 中执行像素级操作:所提出的 Tri-ConvNets 模型在阳光小溪数据集和约克数据集上的 Jaccard 指数分别为 0.9491 ± 0.0188 和 0.9497 ± 0.0237,在 ACDC 数据集和 LVSC 数据集上的骰子指数分别为 0.9419 ± 0.0178 和 0.9414 ± 0.0247。实验结果还表明,与最先进的模型相比,所提出的 Tri-ConvNets 模型速度更快,所需的资源也最少。
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来源期刊
Technology and Health Care
Technology and Health Care HEALTH CARE SCIENCES & SERVICES-ENGINEERING, BIOMEDICAL
CiteScore
2.10
自引率
6.20%
发文量
282
审稿时长
>12 weeks
期刊介绍: Technology and Health Care is intended to serve as a forum for the presentation of original articles and technical notes, observing rigorous scientific standards. Furthermore, upon invitation, reviews, tutorials, discussion papers and minisymposia are featured. The main focus of THC is related to the overlapping areas of engineering and medicine. The following types of contributions are considered: 1.Original articles: New concepts, procedures and devices associated with the use of technology in medical research and clinical practice are presented to a readership with a widespread background in engineering and/or medicine. In particular, the clinical benefit deriving from the application of engineering methods and devices in clinical medicine should be demonstrated. Typically, full length original contributions have a length of 4000 words, thereby taking duly into account figures and tables. 2.Technical Notes and Short Communications: Technical Notes relate to novel technical developments with relevance for clinical medicine. In Short Communications, clinical applications are shortly described. 3.Both Technical Notes and Short Communications typically have a length of 1500 words. Reviews and Tutorials (upon invitation only): Tutorial and educational articles for persons with a primarily medical background on principles of engineering with particular significance for biomedical applications and vice versa are presented. The Editorial Board is responsible for the selection of topics. 4.Minisymposia (upon invitation only): Under the leadership of a Special Editor, controversial or important issues relating to health care are highlighted and discussed by various authors. 5.Letters to the Editors: Discussions or short statements (not indexed).
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