基于超声造影图像亮度变化曲线的肝细胞癌预测
作者:
作者单位:

1.1)佛山大学物理与光电工程学院,佛山 528225;2.2)中山大学肿瘤防治中心超声科,华南肿瘤学国家重点实验室,肿瘤医学省部共建协同创新中心,广州 510060

作者简介:

WANG Xue-Hua. Tel: 86-18718560259, E-mail: zhengwei@sysucc.org.cn王雪花 Tel:18718560259,E-mail:xhwang10000@163.com郑玮 Tel:13929534452,E-mail:zhengwei@sysucc.org.cn

通讯作者:

WANG Xue-Hua. Tel: 86-757-82716895, E-mail: xhwang10000@163.com

中图分类号:

R445.1;TP391.7

基金项目:

国家自然科学基金(62075042,62205060,82202179),广东省医学科技研究基金(A2020306)和广东省大学生科技创新培养专项基金(pdjh2024a387)资助。


Predicting Hepatocellular Carcinoma Using Brightness Change Curves Derived From Contrast-enhanced Ultrasound Images
Author:
Affiliation:

1.1)School of Physics and Optoelectronic Engineering, Foshan University, Foshan 528225, China;2.2)State Key Laboratory of Oncology in South China, Collaborative Innovation Center of Cancer Medicine, Department of Ultrasound, Sun Yat-sen University Cancer Center, Guangzhou 510060, China

Fund Project:

This work was supported by grants from The National Natural Science Foundation of China (62075042, 62205060, 82202179), Medical Scientific Research Fundation of Guangdong Province (A2020306), and Special Fund for Science and Technology Innovation Cultivation of Guangdong University Students (pdjh2024a387).

  • 摘要
  • |
  • 图/表
  • |
  • 访问统计
  • |
  • 参考文献
  • |
  • 相似文献
  • |
  • 引证文献
  • |
  • 资源附件
  • |
  • 文章评论
    摘要:

    目的 本研究旨在建立一种基于超声造影(CEUS)图像的亮度变化曲线来分类肝细胞癌(HCC)与非HCC恶性肿瘤的方法。方法 本研究回顾性地纳入131例HCC患者和30例非HCC恶性肿瘤患者。首先,采用YOLOX网络自动检测B超和超声造影图像中感兴趣的肿瘤区域;然后,开发一种定制算法从超声造影感兴趣区域提取肿瘤及邻近肝实质区域的亮度随时间变化的曲线;最后,构建基于深度学习的一维卷积神经网络(1D-ResNet、1D-ConvNeXt和1D-CNN)和传统的机器学习模型组,包括支持向量机、集成学习、k近邻和决策树等,来分析亮度变化曲线,并对HCC和非HCC恶性肿瘤进行分类。结果 各机器学习方法的受试者工作特征曲线下面积(AUC)值分别为0.70、0.56、0.63、0.72;1D-ResNet、1D-ConvNeXt和1D-CNN的AUC分别为0.72、0.82和0.84。结论 1D-CNN可以实现基于亮度变化曲线自动分类HCC和非HCC恶性肿瘤,其准确率高于传统的机器学习方法和其他一维深度学习模型。本文提供了一种简单、低成本的计算机辅助诊断方案来协助放射科医生进行临床诊断HCC。

    Abstract:

    Objective Primary liver cancer, predominantly hepatocellular carcinoma (HCC), is a significant global health issue, ranking as the sixth most diagnosed cancer and the third leading cause of cancer-related mortality. Accurate and early diagnosis of HCC is crucial for effective treatment, as HCC and non-HCC malignancies like intrahepatic cholangiocarcinoma (ICC) exhibit different prognoses and treatment responses. Traditional diagnostic methods, including liver biopsy and contrast-enhanced ultrasound (CEUS), face limitations in applicability and objectivity. The primary objective of this study was to develop an advanced, light-weighted classification network capable of distinguishing HCC from other non-HCC malignancies by leveraging the automatic analysis of brightness changes in CEUS images. The ultimate goal was to create a user-friendly and cost-efficient computer-aided diagnostic tool that could assist radiologists in making more accurate and efficient clinical decisions.Methods This retrospective study encompassed a total of 161 patients, comprising 131 diagnosed with HCC and 30 with non-HCC malignancies. To achieve accurate tumor detection, the YOLOX network was employed to identify the region of interest (ROI) on both B-mode ultrasound and CEUS images. A custom-developed algorithm was then utilized to extract brightness change curves from the tumor and adjacent liver parenchyma regions within the CEUS images. These curves provided critical data for the subsequent analysis and classification process. To analyze the extracted brightness change curves and classify the malignancies, we developed and compared several models. These included one-dimensional convolutional neural networks (1D-ResNet, 1D-ConvNeXt, and 1D-CNN), as well as traditional machine-learning methods such as support vector machine (SVM), ensemble learning (EL), k-nearest neighbor (KNN), and decision tree (DT). The diagnostic performance of each method in distinguishing HCC from non-HCC malignancies was rigorously evaluated using four key metrics: area under the receiver operating characteristic (AUC), accuracy (ACC), sensitivity (SE), and specificity (SP).Results The evaluation of the machine-learning methods revealed AUC values of 0.70 for SVM, 0.56 for ensemble learning, 0.63 for KNN, and 0.72 for the decision tree. These results indicated moderate to fair performance in classifying the malignancies based on the brightness change curves. In contrast, the deep learning models demonstrated significantly higher AUCs, with 1D-ResNet achieving an AUC of 0.72, 1D-ConvNeXt reaching 0.82, and 1D-CNN obtaining the highest AUC of 0.84. Moreover, under the five-fold cross-validation scheme, the 1D-CNN model outperformed other models in both accuracy and specificity. Specifically, it achieved accuracy improvements of 3.8% to 10.0% and specificity enhancements of 6.6% to 43.3% over competing approaches. The superior performance of the 1D-CNN model highlighted its potential as a powerful tool for accurate classification.Conclusion The 1D-CNN model proved to be the most effective in differentiating HCC from non-HCC malignancies, surpassing both traditional machine-learning methods and other deep learning models. This study successfully developed a user-friendly and cost-efficient computer-aided diagnostic solution that would significantly enhances radiologists’ diagnostic capabilities. By improving the accuracy and efficiency of clinical decision-making, this tool has the potential to positively impact patient care and outcomes. Future work may focus on further refining the model and exploring its integration with multimodal ultrasound data to maximize its accuracy and applicability.

    参考文献
    相似文献
    引证文献
引用本文

陈楹楹,江尚霖,黄良汇,曾亚光,王雪花,郑玮.基于超声造影图像亮度变化曲线的肝细胞癌预测[J].生物化学与生物物理进展,2025,52(8):2163-2172

复制
相关视频

分享
文章指标
  • 点击次数:
  • 下载次数:
  • HTML阅读次数:
  • 引用次数:
历史
  • 收稿日期:2024-12-11
  • 最后修改日期:2025-05-15
  • 录用日期:2025-04-27
  • 在线发布日期: 2025-08-26
  • 出版日期: 2025-08-28
文章二维码
123 1
关闭