Department of Information Engineering and Computer Science, University of Trento, Trento, Italy.
Dipartimento di Emergenza ed Urgenza, Humanitas Gavazzeni Bergamo, Bergamo, Italy.
Ultrasonics. 2023 Jul;132:106994. doi: 10.1016/j.ultras.2023.106994. Epub 2023 Mar 30.
Automated ultrasound imaging assessment of the effect of CoronaVirus disease 2019 (COVID-19) on lungs has been investigated in various studies using artificial intelligence-based (AI) methods. However, an extensive analysis of state-of-the-art Convolutional Neural Network-based (CNN) models for frame-level scoring, a comparative analysis of aggregation techniques for video-level scoring, together with a thorough evaluation of the capability of these methodologies to provide a clinically valuable prognostic-level score is yet missing within the literature. In addition to that, the impact on the analysis of the posterior probability assigned by the network to the predicted frames as well as the impact of temporal downsampling of LUS data are topics not yet extensively investigated. This paper takes on these challenges by providing a benchmark analysis of methods from frame to prognostic level. For frame-level scoring, state-of-the-art deep learning models are evaluated with additional analysis of best performing model in transfer-learning settings. A novel cross-correlation based aggregation technique is proposed for video and exam-level scoring. Results showed that ResNet-18, when trained from scratch, outperformed the existing methods with an F1-Score of 0.659. The proposed aggregation method resulted in 59.51%, 63.29%, and 84.90% agreement with clinicians at the video, exam, and prognostic levels, respectively; thus, demonstrating improved performances over the state of the art. It was also found that filtering frames based on the posterior probability shows higher impact on the LUS analysis in comparison to temporal downsampling. All of these analysis were conducted over the largest standardized and clinically validated LUS dataset from COVID-19 patients.
利用人工智能 (AI) 方法,已经有许多研究针对 2019 年冠状病毒病 (COVID-19) 对肺部的影响进行了自动超声成像评估。然而,在文献中仍然缺乏针对基于卷积神经网络 (CNN) 的最新模型进行逐帧评分的广泛分析、针对视频级评分的聚合技术的比较分析,以及这些方法提供具有临床价值的预后评分的能力的全面评估。此外,网络分配给预测帧的后验概率对分析的影响以及 LUS 数据的时间下采样的影响也是尚未广泛研究的课题。本文通过从逐帧到预后水平的方法提供基准分析来应对这些挑战。对于逐帧评分,评估了最先进的深度学习模型,并在迁移学习环境下对表现最佳的模型进行了额外分析。本文还提出了一种新的基于互相关的聚合技术,用于视频和检查级评分。结果表明,在从头开始训练时,ResNet-18 的 F1 分数为 0.659,优于现有的方法。所提出的聚合方法在视频、检查和预后水平上与临床医生的一致性分别为 59.51%、63.29%和 84.90%;因此,与现有技术相比,性能有所提高。还发现,与时间下采样相比,基于后验概率过滤帧对 LUS 分析的影响更大。所有这些分析都是在来自 COVID-19 患者的最大标准化和临床验证的 LUS 数据集上进行的。