Real-time Automatic M-mode Echocardiography Measurement with Panel Attention from Local-to-Global Pixels
Ching-Hsun Tseng, Shao-Ju Chien, Po-Shen Wang, Shin-Jye Lee, Wei-Huan, Hu, Bin Pu, and Xiao-jun Zeng

TL;DR
This paper introduces RAMEM, a real-time system for automatic M-mode echocardiography measurement, featuring a new dataset, an efficient attention mechanism, and an automatic labeling algorithm, significantly improving accuracy and speed.
Contribution
The paper presents a novel dataset, MEIS, and a panel attention mechanism, along with an automatic measurement algorithm, advancing real-time M-mode echocardiography analysis.
Findings
RAMEM outperforms existing RIS backbones in benchmarks.
The MEIS dataset enables consistent and automated analysis.
The system achieves real-time performance with high accuracy.
Abstract
Motion mode (M-mode) recording is an essential part of echocardiography to measure cardiac dimension and function. However, the current diagnosis cannot build an automatic scheme, as there are three fundamental obstructs: Firstly, there is no open dataset available to build the automation for ensuring constant results and bridging M-mode echocardiography with real-time instance segmentation (RIS); Secondly, the examination is involving the time-consuming manual labelling upon M-mode echocardiograms; Thirdly, as objects in echocardiograms occupy a significant portion of pixels, the limited receptive field in existing backbones (e.g., ResNet) composed from multiple convolution layers are inefficient to cover the period of a valve movement. Existing non-local attentions (NL) compromise being unable real-time with a high computation overhead or losing information from a simplified version…
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Taxonomy
TopicsCardiac Imaging and Diagnostics · Cardiac Valve Diseases and Treatments · Cardiovascular Function and Risk Factors
MethodsConvolution
