Deep learning classification of focal liver lesions with contrast-enhanced ultrasound from arterial phase recordings

Namjoon Kim, Won Jae Lee, Hyuk-Jae Lee
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引用次数: 2

Abstract

Contrast-enhanced ultrasound (CEUS) has been known as a safe, robust, and cost-effective image modality to diagnose an early sign of hepatocellular carcinoma (HCC). The enhancement patterns on CEUS are composed of arterial, portal venous, and late phases, where the hepatic arterial phase provides information on the degree and pattern of vascularity, and the portal venous and late phases provide important information on the differentiation between benign and malignant liver lesions. The enhancement patterns of HCC on CEUS are hyper-enhanced in the arterial phase. Therefore, we propose learning-based frameworks to differentiate between hepatocellular carcinoma (HCC) and focal nodular hyperplasia (FNH) during the arterial phase. We design artificial neural networks to learn the change of characteristics over time for the differentiation of HCC from FNH. We had gathered CEUS videos during the arterial phase for 4 years in Samsung Medical Center (SMC) and picked out only small hepatic lesions under 3 centimeters. From these datasets, the proposed novel 3D-CNN and CNN-LSTM networks show accuracy rates of 100% and 98% for 10-fold and 5-fold cross-validations. In the end, the proposed models are proved to be feasible for accurate automatic classification between HCC and FNH in livers.
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动脉期超声造影记录下肝局灶性病变的深度学习分类
对比增强超声(CEUS)被认为是一种安全、可靠、经济的诊断肝细胞癌(HCC)早期征象的成像方式。超声造影的增强模式由动脉期、门静脉期和晚期期组成,其中肝动脉期提供了血管分布程度和模式的信息,而门静脉期和晚期期提供了区分肝脏良恶性病变的重要信息。超声造影显示HCC在动脉期呈超强化。因此,我们提出基于学习的框架来区分动脉期肝细胞癌(HCC)和局灶性结节增生(FNH)。我们设计了人工神经网络来学习HCC与FNH分化的特征随时间的变化。我们在三星首尔医院(SMC)收集了4年的动脉期超声影像,只发现了3厘米以下的小肝脏病变。从这些数据集中,提出的新型3D-CNN和CNN-LSTM网络在10次和5次交叉验证中显示出100%和98%的准确率。最后,该模型被证明是可行的,可用于肝脏中HCC和FNH的准确自动分类。
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