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采用改进的基于区域的快速卷积神经网络(Faster R-CNN)架构在腹部超声检查中实现肝脏肿瘤自动检测。

Automated liver tumor detection in abdominal ultrasonography with a modified faster region-based convolutional neural networks (Faster R-CNN) architecture.

作者信息

Karako Kenji, Mihara Yuichiro, Arita Junichi, Ichida Akihiko, Bae Sung Kwan, Kawaguchi Yoshikuni, Ishizawa Takeaki, Akamatsu Nobuhisa, Kaneko Junichi, Hasegawa Kiyoshi, Chen Yu

机构信息

Department of Human and Engineered Environmental Studies, Graduate School of Frontier Sciences, The University of Tokyo, Chiba, Japan.

Artificial Organ and Transplantation Surgery Division, Department of Surgery, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.

出版信息

Hepatobiliary Surg Nutr. 2022 Oct;11(5):675-683. doi: 10.21037/hbsn-21-43.

Abstract

BACKGROUND

Although diagnostic ultrasound can non-invasively capture the image of abdominal viscera, diagnosis of the continuous ultrasound liver images to detect a liver tumor effectively and to determine whether the detected is benign or malignant is nontrivial. In order to minimize the gaps in diagnostic accuracy depending on doctor's proficiency, we built an automated system to support the ultrasonography of liver tumors by employing deep learning technologies.

METHODS

We constructed a neural network model for the automated detection of tumor tissues and blood vessels from the sequential liver ultrasound images. Faster region-based convolutional neural networks (Faster R-CNN) is employed as a base model for the object detection, which can output the detection results in 4 frames per second and enable the system to be particularly suitable for the real time ultrasonography. Moreover, we proposed a new neural network architecture feeding both the current and previous images into Faster R-CNN. For training the models, intraoperative ultrasound images obtained from one hepatocellular carcinoma (HCC) patient were used. The obtained image was a multifaceted observation of the liver and includes one HCC and some blood vessels. We labeled 91 images with the help of a liver specialist. We compared the tumor detection performance of the plain Faster R-CNN model with that of the proposed model.

RESULTS

We find that both the models performed well in detecting HCC and blood vessels, after training with 400 epochs using Adam. However, the mean precision of our model reaches 0.549, which is 0.019 better than that of the plain Faster R-CNN, and the mean sensitivity of our model about HCC reaches 0.623±0.385 for 30 scenes of sequential liver ultrasound images, which is also 0.146 better than that of the plain Faster R-CNN model.

CONCLUSIONS

The comparison between the proposed model and the plain Faster R-CNN model shows that we achieved better accuracy in tumor detection, in terms of the mean precision as well as the mean sensitivity, with the proposed model.

摘要

背景

尽管诊断性超声能够无创获取腹部脏器图像,但有效诊断连续的肝脏超声图像以检测肝肿瘤并确定其良恶性并非易事。为了尽量减少因医生技术水平差异导致的诊断准确性差距,我们利用深度学习技术构建了一个支持肝脏肿瘤超声检查的自动化系统。

方法

我们构建了一个神经网络模型,用于从连续的肝脏超声图像中自动检测肿瘤组织和血管。基于区域的快速卷积神经网络(Faster R-CNN)被用作目标检测的基础模型,该模型每秒可输出4帧检测结果,使系统特别适用于实时超声检查。此外,我们提出了一种新的神经网络架构,将当前图像和先前图像都输入到Faster R-CNN中。为了训练模型,使用了从一名肝细胞癌(HCC)患者获得的术中超声图像。所获得的图像对肝脏进行了多方面观察,包括一个HCC和一些血管。我们在一位肝脏专家的帮助下对91幅图像进行了标注。我们将普通Faster R-CNN模型与所提出模型的肿瘤检测性能进行了比较。

结果

我们发现,在使用Adam算法训练400个轮次后,两个模型在检测HCC和血管方面都表现良好。然而,我们模型的平均精度达到0.549,比普通Faster R-CNN模型高0.019,并且对于30个连续肝脏超声图像场景,我们模型对HCC的平均灵敏度达到0.623±0.385,也比普通Faster R-CNN模型高0.146。

结论

所提出模型与普通Faster R-CNN模型的比较表明,在所提出的模型中,我们在肿瘤检测方面,无论是平均精度还是平均灵敏度,都取得了更高的准确性。

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