ScribSD+: Scribble-supervised medical image segmentation based on simultaneous multi-scale knowledge distillation and class-wise contrastive regularization

IF 5.4 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Yijie Qu , Tao Lu , Shaoting Zhang , Guotai Wang
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引用次数: 0

Abstract

Despite that deep learning has achieved state-of-the-art performance for automatic medical image segmentation, it often requires a large amount of pixel-level manual annotations for training. Obtaining these high-quality annotations is time-consuming and requires specialized knowledge, which hinders the widespread application that relies on such annotations to train a model with good segmentation performance. Using scribble annotations can substantially reduce the annotation cost, but often leads to poor segmentation performance due to insufficient supervision. In this work, we propose a novel framework named as ScribSD+ that is based on multi-scale knowledge distillation and class-wise contrastive regularization for learning from scribble annotations. For a student network supervised by scribbles and the teacher based on Exponential Moving Average (EMA), we first introduce multi-scale prediction-level Knowledge Distillation (KD) that leverages soft predictions of the teacher network to supervise the student at multiple scales, and then propose class-wise contrastive regularization which encourages feature similarity within the same class and dissimilarity across different classes, thereby effectively improving the segmentation performance of the student network. Experimental results on the ACDC dataset for heart structure segmentation and a fetal MRI dataset for placenta and fetal brain segmentation demonstrate that our method significantly improves the student’s performance and outperforms five state-of-the-art scribble-supervised learning methods. Consequently, the method has a potential for reducing the annotation cost in developing deep learning models for clinical diagnosis.

ScribSD+:基于同步多尺度知识提炼和类别对比正则化的 Scribble 监督医学图像分割
尽管深度学习在自动医学图像分割方面取得了最先进的性能,但它往往需要大量像素级的人工注释来进行训练。获取这些高质量注释不仅耗时,而且需要专业知识,这就阻碍了依赖这些注释来训练具有良好分割性能的模型的广泛应用。使用涂鸦注释可以大大降低注释成本,但由于监督不足,往往会导致分割性能不佳。在这项工作中,我们提出了一个名为 ScribSD+ 的新框架,该框架基于多尺度知识提炼和分类对比正则化,用于从涂鸦注释中学习。对于由涂鸦和基于指数移动平均(EMA)的教师监督的学生网络,我们首先引入了多尺度预测级知识蒸馏(KD),利用教师网络的软预测在多个尺度上监督学生,然后提出了类对比正则化,鼓励同类内的特征相似性和不同类间的特征相似性,从而有效提高了学生网络的分割性能。在 ACDC 数据集(用于心脏结构分割)和胎儿 MRI 数据集(用于胎盘和胎儿大脑分割)上的实验结果表明,我们的方法显著提高了学生网络的性能,并优于五种最先进的涂鸦监督学习方法。因此,在开发用于临床诊断的深度学习模型时,该方法有望降低标注成本。
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来源期刊
CiteScore
10.70
自引率
3.50%
发文量
71
审稿时长
26 days
期刊介绍: The purpose of the journal Computerized Medical Imaging and Graphics is to act as a source for the exchange of research results concerning algorithmic advances, development, and application of digital imaging in disease detection, diagnosis, intervention, prevention, precision medicine, and population health. Included in the journal will be articles on novel computerized imaging or visualization techniques, including artificial intelligence and machine learning, augmented reality for surgical planning and guidance, big biomedical data visualization, computer-aided diagnosis, computerized-robotic surgery, image-guided therapy, imaging scanning and reconstruction, mobile and tele-imaging, radiomics, and imaging integration and modeling with other information relevant to digital health. The types of biomedical imaging include: magnetic resonance, computed tomography, ultrasound, nuclear medicine, X-ray, microwave, optical and multi-photon microscopy, video and sensory imaging, and the convergence of biomedical images with other non-imaging datasets.
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