Deep Learning-based Segmentation of Pleural Effusion From Ultrasound Using Coordinate Convolutions

Germain Morilhat, Naomi Kifle, Sandy FinesilverSmith, B. Ruijsink, V. Vergani, Habtamu Tegegne Desita, Z. Desita, E. Puyol-Antón, A. Carass, A. King
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引用次数: 1

Abstract

In many low-to-middle income (LMIC) countries, ultrasound is used for assessment of pleural effusion. Typically, the extent of the effusion is manually measured by a sonographer, leading to significant intra-/inter-observer variability. In this work, we investigate the use of deep learning (DL) to automate the process of pleural effusion segmentation from ultrasound images. On two datasets acquired in a LMIC setting, we achieve median Dice Similarity Coefficients (DSCs) of 0.82 and 0.74 respectively using the nnU-net DL model. We also investigate the use of coordinate convolutions in the DL model and find that this results in a statistically significant improvement in the median DSC on the first dataset to 0.85, with no significant change on the second dataset. This work showcases, for the first time, the potential of DL in automating the process of effusion assessment from ultrasound in LMIC settings where there is often a lack of experienced radiologists to perform such tasks.
基于坐标卷积的超声胸膜积液深度学习分割
在许多中低收入国家,超声被用于评估胸腔积液。通常情况下,积液的程度是由超声医师手动测量的,这导致了观察者内部/之间的显著差异。在这项工作中,我们研究了使用深度学习(DL)从超声图像中自动分割胸腔积液的过程。在LMIC设置中获得的两个数据集上,我们使用nnU-net DL模型分别获得了0.82和0.74的中位数骰子相似系数(dsc)。我们还研究了在DL模型中使用坐标卷积,并发现这导致第一个数据集的DSC中位数在统计上显着提高到0.85,而在第二个数据集上没有显着变化。这项工作首次展示了深度学习在LMIC环境中自动化超声积液评估过程中的潜力,在LMIC环境中,通常缺乏经验丰富的放射科医生来执行此类任务。
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