基于视觉提示的增量学习,实现多重免疫荧光显微图像的语义分割

IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Neuroinformatics Pub Date : 2024-04-01 Epub Date: 2024-02-23 DOI:10.1007/s12021-024-09651-z
Ryan Faulkenberry, Saurabh Prasad, Dragan Maric, Badrinath Roysam
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引用次数: 0

摘要

深度学习方法是最先进的医学图像语义分割方法,但与许多深度学习应用不同,医学分割的特点是注释训练数据量小。因此,主流的深度学习方法侧重于在具有大量训练集的领域中的性能,而医学影像领域的研究人员则必须以创造性的方式应用新方法,以满足医学数据集更为严格的要求。我们提出了一个框架,利用人类专家提供的极少量标记,对大鼠大脑切片的高分辨率多重(多通道)免疫荧光图像的多类分割进行增量微调。我们的框架从改进的 Swin-UNet 架构开始,该架构分别处理多重图像中的每个生物标记,并学习初始 "全局 "分割(预训练)。随后,利用人类专家为每个区域及其周围环境提供的非常有限的额外标记数据,对每个类别进行增量学习和完善。这种增量学习利用多类权重作为初始化,并利用额外的标签来引导网络,针对图像中的每个区域进行优化。通过这种方式,专家可以识别多类分割中的错误,并通过向模型提供从该区域手工挑选的附加注释来快速纠正错误。除了提高标注速度和减少标注量之外,我们还展示了我们提出的方法在很大程度上优于传统的多类分割方法。
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Visual Prompting Based Incremental Learning for Semantic Segmentation of Multiplex Immuno-Flourescence Microscopy Imagery.

Deep learning approaches are state-of-the-art for semantic segmentation of medical images, but unlike many deep learning applications, medical segmentation is characterized by small amounts of annotated training data. Thus, while mainstream deep learning approaches focus on performance in domains with large training sets, researchers in the medical imaging field must apply new methods in creative ways to meet the more constrained requirements of medical datasets. We propose a framework for incrementally fine-tuning a multi-class segmentation of a high-resolution multiplex (multi-channel) immuno-flourescence image of a rat brain section, using a minimal amount of labelling from a human expert. Our framework begins with a modified Swin-UNet architecture that treats each biomarker in the multiplex image separately and learns an initial "global" segmentation (pre-training). This is followed by incremental learning and refinement of each class using a very limited amount of additional labeled data provided by a human expert for each region and its surroundings. This incremental learning utilizes the multi-class weights as an initialization and uses the additional labels to steer the network and optimize it for each region in the image. In this way, an expert can identify errors in the multi-class segmentation and rapidly correct them by supplying the model with additional annotations hand-picked from the region. In addition to increasing the speed of annotation and reducing the amount of labelling, we show that our proposed method outperforms a traditional multi-class segmentation by a large margin.

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来源期刊
Neuroinformatics
Neuroinformatics 医学-计算机:跨学科应用
CiteScore
6.00
自引率
6.70%
发文量
54
审稿时长
3 months
期刊介绍: Neuroinformatics publishes original articles and reviews with an emphasis on data structure and software tools related to analysis, modeling, integration, and sharing in all areas of neuroscience research. The editors particularly invite contributions on: (1) Theory and methodology, including discussions on ontologies, modeling approaches, database design, and meta-analyses; (2) Descriptions of developed databases and software tools, and of the methods for their distribution; (3) Relevant experimental results, such as reports accompanie by the release of massive data sets; (4) Computational simulations of models integrating and organizing complex data; and (5) Neuroengineering approaches, including hardware, robotics, and information theory studies.
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