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Full Motion Focus: Convolutional Module for Improved Left Ventricle Segmentation Over 4D MRI

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Author(s):
Lima, Daniel M. ; Graves, Catharine, V ; Gutierrez, Marco A. ; Brandoli, Bruno ; Rodrigues Jr, Jose F. ; Sclaroff, S ; Distante, C ; Leo, M ; Farinella, GM ; Tombari, F
Total Authors: 10
Document type: Journal article
Source: IMAGE ANALYSIS AND PROCESSING, ICIAP 2022, PT I; v. 13231, p. 13-pg., 2022-01-01.
Abstract

Magnetic Resonance Imaging (MRI) is a widely known medical imaging technique used to assess the heart function. Over Cardiac MRI (CMR) images, Deep Learning (DL) models perform several tasks with good efficacy, such as segmentation, estimation, and detection of diseases. Such models can produce even better results when their input is a Region of Interest (RoI), that is, a segment of the image with more analytical potential for diagnosis. Accordingly, we describe Full Motion Focus (FMF), an image processing technique sensitive to the heart motion in a 4D MRI sequence (video) whose principle is to combine static and dynamic image features with a Radial Basis Function (RBF) to highlight the RoI found in the motion field. We experimented FMF with the U-Net convolutional DL architecture over three CMR datasets in the task of Left Ventricle segmentation; we achieved a rate of detection (Recall score) of 99.7% concerning the RoIs, improved the U-Net segmentation (mean Dice score) by 1.7 (p < .001), and improved the overall training speed by 2.5 times (+150%). (AU)

FAPESP's process: 16/17078-0 - Mining, indexing and visualizing Big Data in clinical decision support systems (MIVisBD)
Grantee:Agma Juci Machado Traina
Support Opportunities: Research Projects - Thematic Grants
FAPESP's process: 18/11424-0 - Creation of a Data Warehouse infrastructure for health-based Visual Analytics
Grantee:Daniel Mário de Lima
Support Opportunities: Scholarships in Brazil - Technical Training Program - Technical Training