Takahashi Yukino, Sugino Takaaki, Onogi Shinya, Nakajima Yoshikazu, Masuda Kohji
Department of Biomedical Engineering, Tokyo University of Agriculture and Technology, Tokyo, Japan.
Department of Biomedical Informatics, Laboratory for Biomaterials and Bioengineering, Institute of Integrated Research, Institute of Science Tokyo, Tokyo, Japan.
Med Biol Eng Comput. 2025 Feb 13. doi: 10.1007/s11517-025-03320-2.
Accurate three-dimensional (3D) segmentation of hepatic vascular networks is crucial for supporting ultrasound-mediated theranostics for liver diseases. Despite advancements in deep learning techniques, accurate segmentation remains challenging due to ultrasound image quality issues, including intensity and contrast fluctuations. This study introduces intensity transformation-based data augmentation methods to improve deep convolutional neural network-based segmentation of hepatic vascular networks. We employed a 3D U-Net, which leverages spatial contextual information, as the baseline. To address intensity and contrast fluctuations and improve 3D U-Net performance, we implemented data augmentation using high-contrast intensity transformation with S-shaped tone curves and low-contrast intensity transformation with Gamma and inverse S-shaped tone curves. We conducted validation experiments on 78 ultrasound volumes to evaluate the effect of both geometric and intensity transformation-based data augmentations. We found that high-contrast intensity transformation-based data augmentation decreased segmentation accuracy, while low-contrast intensity transformation-based data augmentation significantly improved Recall and Dice. Additionally, combining geometric and low-contrast intensity transformation-based data augmentations, through an OR operation on their results, further enhanced segmentation accuracy, achieving improvements of 9.7% in Recall and 3.3% in Dice. This study demonstrated the effectiveness of low-contrast intensity transformation-based data augmentation in improving volumetric segmentation of hepatic vascular networks from ultrasound volumes.
肝血管网络的精确三维(3D)分割对于支持肝脏疾病的超声介导诊疗至关重要。尽管深度学习技术取得了进展,但由于超声图像质量问题,包括强度和对比度波动,精确分割仍然具有挑战性。本研究引入基于强度变换的数据增强方法,以改进基于深度卷积神经网络的肝血管网络分割。我们采用利用空间上下文信息的3D U-Net作为基线。为了解决强度和对比度波动问题并提高3D U-Net性能,我们使用具有S形色调曲线的高对比度强度变换和具有伽马及反S形色调曲线的低对比度强度变换来实施数据增强。我们对78个超声容积进行了验证实验,以评估基于几何变换和强度变换的数据增强的效果。我们发现基于高对比度强度变换的数据增强降低了分割精度,而基于低对比度强度变换的数据增强显著提高了召回率和骰子系数。此外,通过对基于几何变换和低对比度强度变换的数据增强的结果进行“或”运算,进一步提高了分割精度,召回率提高了9.7%,骰子系数提高了3.3%。本研究证明了基于低对比度强度变换的数据增强在改善超声容积中肝血管网络的容积分割方面的有效性。