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

Author:

K Gayathri1,N Uma Maheswari1,R Venkatesh2,B Ganesh Prabu3

Affiliation:

1. Department of Computer Science and Engineering, PSNA College of Engineering and Technology, Dindigul, Tamil Nadu, India

2. Department of Information Technology, PSNA College of Engineering and Technology, Dindigul, Tamil Nadu, India

3. Department of Electrical and Electronics Engineering, University College of Engineering Dindigul, Tamil Nadu, India

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.

Publisher

IOS Press

Reference29 articles.

1. Anxiety and depression in heart failure: An updated review;Rashid;Current Problems in Cardiology.,2023

2. Efficient brain tumor detection and classification using magnetic resonance imaging;Sundarasekar;Biomedical Physics & Engineering Express.,2021

3. Yolo-Vehicle: Realtime Vehicle Licence Plate Detection and Character Recognition Using Yolov7 Network;Mabel Rose;International Journal of Data Science and Artificial Intelligence,2024

4. Real time violence detection framework for football stadium comprising of big data analysis and deep learning through bidirectional LSTM;Fenil;Computer Networks.,2019

5. Exercise interventions in patients with implantable cardioverter-defibrillators and cardiac resynchronization therapy: A systematic review and meta-analysis;Steinhaus;Journal of Cardiopulmonary Rehabilitation and Prevention.,2019

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