Leverage Weakly Annotation to Pixel-wise Annotation via Zero-shot Segment Anything Model for Molecular-empowered Learning.

Xueyuan Li, Ruining Deng, Yucheng Tang, Shunxing Bao, Haichun Yang, Yuankai Huo
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引用次数: 0

Abstract

Precise identification of multiple cell classes in high-resolution Giga-pixel whole slide imaging (WSI) is critical for various clinical scenarios. Building an AI model for this purpose typically requires pixel-level annotations, which are often unscalable and must be done by skilled domain experts (e.g., pathologists). However, these annotations can be prone to errors, especially when distinguishing between intricate cell types (e.g., podocytes and mesangial cells) using only visual inspection. Interestingly, a recent study showed that lay annotators, when using extra immunofluorescence (IF) images for reference (referred to as molecular-empowered learning), can sometimes outperform domain experts in labeling. Despite this, the resource-intensive task of manual delineation remains a necessity during the annotation process. In this paper, we explore the potential of bypassing pixel-level delineation by employing the recent segment anything model (SAM) on weak box annotation in a zero-shot learning approach. Specifically, we harness SAM's ability to produce pixel-level annotations from box annotations and utilize these SAM-generated labels to train a segmentation model. Our findings show that the proposed SAM-assisted molecular-empowered learning (SAM-L) can diminish the labeling efforts for lay annotators by only requiring weak box annotations. This is achieved without compromising annotation accuracy or the performance of the deep learning-based segmentation. This research represents a significant advancement in democratizing the annotation process for training pathological image segmentation, relying solely on non-expert annotators.

利用弱标注到像素级标注,通过零镜头片段任何模型进行分子授权学习。
在高分辨率千兆像素全切片成像(WSI)中精确识别多种细胞类别对各种临床情况至关重要。为此目的构建人工智能模型通常需要像素级注释,这通常是不可扩展的,必须由熟练的领域专家(例如病理学家)完成。然而,这些注释可能容易出错,特别是在区分复杂的细胞类型(例如,足细胞和系膜细胞)时,仅使用视觉检查。有趣的是,最近的一项研究表明,外行注释者在使用额外的免疫荧光(IF)图像作为参考(称为分子授权学习)时,有时可以在标记方面胜过领域专家。尽管如此,手工描述的资源密集型任务在注释过程中仍然是必要的。在本文中,我们探索了在零射击学习方法中使用弱盒注释上的最新分段任意模型(SAM)来绕过像素级描述的可能性。具体来说,我们利用SAM的能力从框注释生成像素级注释,并利用SAM生成的这些标签来训练分割模型。我们的研究结果表明,所提出的sam辅助分子授权学习(SAM-L)可以减少外行注释者的标记工作,只需要弱框注释。这是在不影响标注准确性或基于深度学习的分割性能的情况下实现的。这项研究代表了民主化的注释过程,以训练病理图像分割,完全依赖于非专家注释者的显著进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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