Machine Learning and Deep Learning Methods for Fast and Accurate Assessment of Transthoracic Echocardiogram Image Quality

Life Pub Date : 2024-06-13 DOI:10.3390/life14060761
Wojciech Nazar, Krzysztof Nazar, Ludmiła Daniłowicz-Szymanowicz
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Abstract

High-quality echocardiogram images are the cornerstone of accurate and reliable measurements of the heart. Therefore, this study aimed to develop, validate and compare machine learning and deep learning algorithms for accurate and automated assessment of transthoracic echocardiogram image quality. In total, 4090 single-frame two-dimensional transthoracic echocardiogram images were used from apical 4-chamber, apical 2-chamber and parasternal long-axis views sampled from 3530 adult patients. The data were extracted from CAMUS and Unity Imaging open-source datasets. For every raw image, additional grayscale block histograms were developed. For block histogram datasets, six classic machine learning algorithms were tested. Moreover, convolutional neural networks based on the pre-trained EfficientNetB4 architecture were developed for raw image datasets. Classic machine learning algorithms predicted image quality with 0.74 to 0.92 accuracy (AUC 0.81 to 0.96), whereas convolutional neural networks achieved between 0.74 and 0.89 prediction accuracy (AUC 0.79 to 0.95). Both approaches are accurate methods of echocardiogram image quality assessment. Moreover, this study is a proof of concept of a novel method of training classic machine learning algorithms on block histograms calculated from raw images. Automated echocardiogram image quality assessment methods may provide additional relevant information to the echocardiographer in daily clinical practice and improve reliability in clinical decision making.
用于快速准确评估经胸超声心动图图像质量的机器学习和深度学习方法
高质量的超声心动图图像是准确可靠地测量心脏的基石。因此,本研究旨在开发、验证和比较机器学习和深度学习算法,以准确、自动地评估经胸超声心动图图像质量。本研究共使用了 4090 张单帧二维经胸超声心动图图像,分别来自心尖四腔、心尖两腔和胸骨旁长轴切面,样本来自 3530 名成年患者。数据提取自 CAMUS 和 Unity Imaging 开源数据集。对于每张原始图像,都绘制了额外的灰度块直方图。针对块直方图数据集,测试了六种经典的机器学习算法。此外,还为原始图像数据集开发了基于预训练 EfficientNetB4 架构的卷积神经网络。经典机器学习算法预测图像质量的准确率在 0.74 到 0.92 之间(AUC 0.81 到 0.96),而卷积神经网络的预测准确率在 0.74 到 0.89 之间(AUC 0.79 到 0.95)。这两种方法都是准确的超声心动图图像质量评估方法。此外,这项研究还证明了一种新方法的概念,即在原始图像计算出的区块直方图上训练经典的机器学习算法。自动超声心动图图像质量评估方法可为超声心动图医师在日常临床实践中提供更多相关信息,提高临床决策的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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