Department of Electrical and Computer Engineering, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Artificial Intelligence Department, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Sensors (Basel). 2023 May 17;23(10):4850. doi: 10.3390/s23104850.
Liver ultrasound (US) plays a critical role in diagnosing liver diseases. However, it is often difficult for examiners to accurately identify the liver segments captured in US images due to patient variability and the complexity of US images. Our study aim is automatic, real-time recognition of standardized US scans coordinated with reference liver segments to guide examiners. We propose a novel deep hierarchical architecture for classifying liver US images into 11 standardized US scans, which has yet to be properly established due to excessive variability and complexity. We address this problem based on a hierarchical classification of 11 US scans with different features applied to individual hierarchies as well as a novel feature space proximity analysis for handling ambiguous US images. Experiments were performed using US image datasets obtained from a hospital setting. To evaluate the performance under patient variability, we separated the training and testing datasets into distinct patient groups. The experimental results show that the proposed method achieved an F1-score of more than 93%, which is more than sufficient for a tool to guide examiners. The superior performance of the proposed hierarchical architecture was demonstrated by comparing its performance with that of non-hierarchical architecture.
肝脏超声(US)在肝脏疾病的诊断中起着至关重要的作用。然而,由于患者的个体差异和 US 图像的复杂性,检查者往往难以准确识别 US 图像中捕获的肝段。我们的研究旨在实现与参考肝段相协调的标准化 US 扫描的自动、实时识别,以指导检查者。我们提出了一种新的深层层次结构,用于将肝脏 US 图像分类为 11 种标准化 US 扫描,由于存在过多的可变性和复杂性,这种分类尚未得到很好的建立。我们通过对具有不同特征的 11 种 US 扫描进行分层分类来解决这个问题,并应用于各个层次结构,以及一种新的特征空间接近度分析来处理模糊的 US 图像。实验使用从医院环境中获得的 US 图像数据集进行。为了评估在患者可变性下的性能,我们将训练和测试数据集分为不同的患者组。实验结果表明,所提出的方法的 F1 得分超过 93%,对于指导检查者的工具来说已经足够了。通过比较分层结构与非分层结构的性能,证明了所提出的分层结构的优越性能。