基于解剖特征的深度卷积神经网络肺超声图像质量评价。

Surya M Ravishankar, Ryosuke Tsumura, John W Hardin, Beatrice Hoffmann, Ziming Zhang, Haichong K Zhang
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引用次数: 1

摘要

肺部超声(LUS)已被用于包括COVID-19在内的呼吸系统疾病的即时诊断,具有成本低、安全、无辐射和便携性等优点。LUS的扫描过程和评估高度依赖于操作者,LUS图像的外观随探针的位置、方向和接触力而变化。Karamalis等人引入了基于随机游走的超声置信度图的概念,通过估计图像数据的逐像素置信度来算法评估超声图像质量。然而,这些置信度图没有考虑图像的临床背景,如解剖特征的可见性和可诊断性。这项工作提出了一种深度卷积网络,可以检测LUS图像中的重要解剖特征,以量化其临床背景。这项工作引入了一种基于解剖特征的置信度(AFC)地图,基于可见的解剖特征量化LUS图像的临床背景。我们开发了两个U-net模型,每个模型对分析LUS图像至关重要的两个类中的一个进行分割,即1)明亮特征:胸膜和肋骨线和2)黑暗特征:肋骨阴影。每个模型都将LUS图像作为输入,并输出带有相应类置信值的分割区域。评估数据集包括从三个人类受试者的胸部前轴线以上的两个子区域的视频中提取的超声图像。特征分割模型对测试数据的模型输出的平均Dice得分为0.72。计算所有像素的非零置信值的平均值,并与图像质量分数进行比较。不同图像质量评分的置信度值不同。结果证明了使用AFC Map来量化LUS图像的临床背景的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Anatomical Feature-Based Lung Ultrasound Image Quality Assessment Using Deep Convolutional Neural Network.

Anatomical Feature-Based Lung Ultrasound Image Quality Assessment Using Deep Convolutional Neural Network.

Anatomical Feature-Based Lung Ultrasound Image Quality Assessment Using Deep Convolutional Neural Network.

Anatomical Feature-Based Lung Ultrasound Image Quality Assessment Using Deep Convolutional Neural Network.

Lung ultrasound (LUS) has been used for point-of-care diagnosis of respiratory diseases including COVID-19, with advantages such as low cost, safety, absence of radiation, and portability. The scanning procedure and assessment of LUS are highly operator-dependent, and the appearance of LUS images varies with the probe's position, orientation, and contact force. Karamalis et al. introduced the concept of ultrasound confidence maps based on random walks to assess the ultrasound image quality algorithmically by estimating the per-pixel confidence in the image data. However, these confidence maps do not consider the clinical context of an image, such as anatomical feature visibility and diagnosability. This work proposes a deep convolutional network that detects important anatomical features in an LUS image to quantify its clinical context. This work introduces an Anatomical Feature-based Confidence (AFC) Map, quantifying an LUS image's clinical context based on the visible anatomical features. We developed two U-net models, each segmenting one of the two classes crucial for analyzing an LUS image, namely 1) Bright Features: Pleural and Rib Lines and 2) Dark Features: Rib Shadows. Each model takes the LUS image as input and outputs the segmented regions with confidence values for the corresponding class. The evaluation dataset consists of ultrasound images extracted from videos of two sub-regions of the chest above the anterior axial line from three human subjects. The feature segmentation models achieved an average Dice score of 0.72 on the model's output for the testing data. The average of non-zero confidence values in all the pixels was calculated and compared against the image quality scores. The confidence values were different between different image quality scores. The results demonstrated the relevance of using an AFC Map to quantify the clinical context of an LUS image.

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