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即时护理肺部超声检测 COVID-19。

Detection of COVID-19 in Point of Care Lung Ultrasound.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1527-1530. doi: 10.1109/EMBC48229.2022.9871235.

Abstract

The coronavirus disease 2019 (COVID-19) evolved into a global pandemic, responsible for a significant number of infections and deaths. In this scenario, point-of-care ultrasound (POCUS) has emerged as a viable and safe imaging modality. Computer vision (CV) solutions have been proposed to aid clinicians in POCUS image interpretation, namely detection/segmentation of structures and image/patient classification but relevant challenges still remain. As such, the aim of this study is to develop CV algorithms, using Deep Learning techniques, to create tools that can aid doctors in the diagnosis of viral and bacterial pneumonia (VP and BP) through POCUS exams. To do so, convolutional neural networks were designed to perform in classification tasks. The architectures chosen to build these models were the VGG16, ResNet50, DenseNet169 e MobileNetV2. Patients images were divided in three classes: healthy (HE), BP and VP (which includes COVID-19). Through a comparative study, which was based on several performance metrics, the model based on the DenseNet169 architecture was designated as the best performing model, achieving 78% average accuracy value of the five iterations of 5- Fold Cross-Validation. Given that the currently available POCUS datasets for COVID-19 are still limited, the training of the models was negatively affected by such and the models were not tested in an independent dataset. Furthermore, it was also not possible to perform lesion detection tasks. Nonetheless, in order to provide explainability and understanding of the models, Gradient-weighted Class Activation Mapping (GradCAM) were used as a tool to highlight the most relevant classification regions. Clinical relevance - Reveals the potential of POCUS to support COVID-19 screening. The results are very promising although the dataset is limite.

摘要

新型冠状病毒病 2019(COVID-19)已演变成一种全球性大流行病,导致大量感染和死亡。在这种情况下,即时护理超声(POCUS)已成为一种可行且安全的成像方式。已经提出了计算机视觉(CV)解决方案来帮助临床医生进行 POCUS 图像解释,即结构的检测/分割以及图像/患者分类,但仍存在相关挑战。因此,本研究的目的是开发使用深度学习技术的 CV 算法,以创建可通过 POCUS 检查帮助医生诊断病毒性和细菌性肺炎(VP 和 BP)的工具。为此,设计了卷积神经网络来执行分类任务。选择的架构来构建这些模型是 VGG16、ResNet50、DenseNet169 和 MobileNetV2。患者图像分为三类:健康(HE)、BP 和 VP(包括 COVID-19)。通过基于多个性能指标的比较研究,基于 DenseNet169 架构的模型被指定为性能最佳的模型,在五次 5 折交叉验证的五个迭代中平均准确率达到 78%。鉴于目前 COVID-19 的可用 POCUS 数据集仍然有限,模型的训练受到了影响,并且这些模型没有在独立的数据集中进行测试。此外,也无法执行病变检测任务。尽管如此,为了提供模型的可解释性和理解,使用梯度加权类激活映射(GradCAM)作为工具来突出最相关的分类区域。临床相关性-揭示了 POCUS 支持 COVID-19 筛查的潜力。尽管数据集有限,但结果非常有希望。

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