An Qin, Oda Hirohisa, Hayashi Yuichiro, Kitasaka Takayuki, Takimoto Aitaro, Hinoki Akinari, Uchida Hiroo, Suzuki Kojiro, Oda Masahiro, Mori Kensaku
Nagoya University, Graduate School of Informatics, Nagoya, Japan.
University of Shizuoka, School of Management and Information, Shizuoka, Japan.
J Med Imaging (Bellingham). 2025 Mar;12(2):024003. doi: 10.1117/1.JMI.12.2.024003. Epub 2025 Mar 31.
We present a semi-supervised method for intestine segmentation to assist clinicians in diagnosing intestinal diseases. Accurate segmentation is essential for planning treatments for conditions such as intestinal obstruction. Although fully supervised learning performs well with abundant labeled data, the complexity of the intestine's spatial structure makes labeling time-intensive, resulting in limited labeled data. We propose a 3D segmentation network with a bidirectional teaching strategy to enhance segmentation accuracy using this limited dataset.
The proposed semi-supervised method segments the intestine from computed tomography (CT) volumes using bidirectional teaching, where two backbones with different initial weights are trained simultaneously to generate pseudo-labels and employ unlabeled data, mitigating the challenge of limited labeled data. Intestine segmentation is further complicated by complex spatial features. To address this, we propose a lightweight multi-view symmetric network, which uses small-sized convolutional kernels instead of large ones to reduce parameters and capture multi-scale features from diverse perceptual fields, enhancing learning ability.
We evaluated the proposed method with 59 CT volumes and repeated all experiments five times. Experimental results showed that the average Dice of the proposed method was 80.45%, the average precision was 84.12%, and the average recall was 78.84%.
The proposed method can effectively utilize large-scale unlabeled data with pseudo-labels, which is crucial in reducing the effect of limited labeled data in medical image segmentation. Furthermore, we assign different weights to the pseudo-labels to improve their reliability. From the result, we can see that the method produced competitive performance compared with previous methods.
我们提出一种用于肠道分割的半监督方法,以协助临床医生诊断肠道疾病。准确的分割对于肠梗阻等疾病的治疗规划至关重要。尽管完全监督学习在有大量标注数据时表现良好,但肠道空间结构的复杂性使得标注工作耗时费力,导致标注数据有限。我们提出一种具有双向教学策略的3D分割网络,以利用这个有限的数据集提高分割精度。
所提出的半监督方法使用双向教学从计算机断层扫描(CT)体积中分割肠道,其中两个具有不同初始权重的主干同时进行训练以生成伪标签并使用未标注数据,从而缓解标注数据有限的挑战。复杂的空间特征使肠道分割进一步复杂化。为了解决这个问题,我们提出一种轻量级多视图对称网络,它使用小尺寸卷积核而非大尺寸卷积核来减少参数并从不同感知域捕获多尺度特征,从而增强学习能力。
我们使用59个CT体积评估了所提出的方法,并将所有实验重复了五次。实验结果表明,所提出方法的平均骰子系数为80.45%,平均精度为84.12%,平均召回率为78.84%。
所提出的方法可以有效地利用带有伪标签的大规模未标注数据,这对于减少医学图像分割中标注数据有限的影响至关重要。此外,我们为伪标签分配不同权重以提高其可靠性。从结果可以看出,该方法与先前方法相比具有竞争力。