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Automated Performance Assessment in Transoesophageal Echocardiography with Convolutional Neural Networks

机译:经卷积神经网络进行食管超声心动图的自动性能评估

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Transoesophageal echocardiography (TEE) is a valuable diagnostic and monitoring imaging modality. Proper image acquisition is essential for diagnosis, yet current assessment techniques are solely based on manual expert review. This paper presents a supervised deep learning framework for automatically evaluating and grading the quality of TEE images. To obtain the necessary dataset, 38 participants of varied experience performed TEE exams with a high-fidelity virtual reality (VR) platform. Two Convolutional Neural Network (CNN) architectures, AlexNet and VGG, structured to perform regression, were finetuned and validated on manually graded images from three evaluators. Two different scoring strategies, a criteria-based percentage and an overall general impression, were used. The developed CNN models estimate the average score with a root mean square accuracy ranging between 84% - 93%, indicating the ability to replicate expert valuation. Proposed strategies for automated TEE assessment can have a significant impact on the training process of new TEE operators, providing direct feedback and facilitating the development of the necessary dexterous skills.
机译:经食道超声心动图(TEE)是一种有价值的诊断和监测影像学方法。正确的图像采集对于诊断至关重要,但是当前的评估技术仅基于手动专家审查。本文提出了一种有监督的深度学习框架,用于自动评估和分级TEE图像的质量。为了获得必要的数据集,具有不同经验的38名参与者使用高保真虚拟现实(VR)平台进行了TEE考试。对两个卷积神经网络(CNN)体系结构AlexNet和VGG进行了回归构造,并对其进行了微调,并在来自三个评估者的手动分级图像上进行了验证。使用了两种不同的评分策略,即基于标准的百分比和总体印象。已开发的CNN模型估计均值的均方根准确度在84%-93%之间,表明具有复制专家估值的能力。拟议的TEE自动评估策略可能会对新TEE操作员的培训过程产生重大影响,提供直接反馈并促进必要的灵巧技能的发展。

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