CelloType:用于组织图像分割和分类的统一模型。

IF 36.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Nature Methods Pub Date : 2024-11-22 DOI:10.1038/s41592-024-02513-1
Minxing Pang, Tarun Kanti Roy, Xiaodong Wu, Kai Tan
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引用次数: 0

摘要

细胞分割和分类是空间 omics 数据分析的关键任务。这里我们介绍 CelloType,它是一种端到端模型,专为基于图像的空间 omics 数据的细胞分割和分类而设计。与传统的先分割后分类的两阶段方法不同,CelloType 采用多任务学习策略,将这些任务整合在一起,同时提高了这两项任务的性能。CelloType 利用基于变换器的深度学习技术提高了对象检测、分割和分类的准确性。在各种复用荧光和空间转录组图像上,它的表现优于现有的分割方法。在细胞类型分类方面,CelloType 超越了由最先进的单项任务方法和高性能实例分割模型组成的模型。利用多重组织图像,我们进一步证明了 CelloType 在组织中细胞和非细胞元素的多尺度分割和分类方面的实用性。CelloType 增强的准确性和多任务学习能力有助于对快速增长的空间 omics 数据进行自动注释。
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CelloType: a unified model for segmentation and classification of tissue images.

Cell segmentation and classification are critical tasks in spatial omics data analysis. Here we introduce CelloType, an end-to-end model designed for cell segmentation and classification for image-based spatial omics data. Unlike the traditional two-stage approach of segmentation followed by classification, CelloType adopts a multitask learning strategy that integrates these tasks, simultaneously enhancing the performance of both. CelloType leverages transformer-based deep learning techniques for improved accuracy in object detection, segmentation and classification. It outperforms existing segmentation methods on a variety of multiplexed fluorescence and spatial transcriptomic images. In terms of cell type classification, CelloType surpasses a model composed of state-of-the-art methods for individual tasks and a high-performance instance segmentation model. Using multiplexed tissue images, we further demonstrate the utility of CelloType for multiscale segmentation and classification of both cellular and noncellular elements in a tissue. The enhanced accuracy and multitask learning ability of CelloType facilitate automated annotation of rapidly growing spatial omics data.

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来源期刊
Nature Methods
Nature Methods 生物-生化研究方法
CiteScore
58.70
自引率
1.70%
发文量
326
审稿时长
1 months
期刊介绍: Nature Methods is a monthly journal that focuses on publishing innovative methods and substantial enhancements to fundamental life sciences research techniques. Geared towards a diverse, interdisciplinary readership of researchers in academia and industry engaged in laboratory work, the journal offers new tools for research and emphasizes the immediate practical significance of the featured work. It publishes primary research papers and reviews recent technical and methodological advancements, with a particular interest in primary methods papers relevant to the biological and biomedical sciences. This includes methods rooted in chemistry with practical applications for studying biological problems.
期刊最新文献
CelloType: a unified model for segmentation and classification of tissue images. Super-resolution imaging of fast morphological dynamics of neurons in behaving animals. Accurate RNA 3D structure prediction using a language model-based deep learning approach. Large language modeling and deep learning shed light on RNA structure prediction. A benchmarked, high-efficiency prime editing platform for multiplexed dropout screening.
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