MarkTechPost@AI 2024年11月27日
CelloType: A Transformer-Based AI Framework for Multitask Cell Segmentation and Classification in Spatial Omics
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CelloType是一种基于Transformer的深度学习框架,用于同时进行细胞分割和分类,解决空间组学数据分析中的关键挑战。它采用多任务学习方法,结合Swin Transformer、DINO和MaskDINO模块,实现了比传统方法更准确、高效的细胞分割和分类。CelloType在多种数据集上表现出色,包括多重荧光和空间转录组学图像,并能够处理多尺度分割,对细胞和非细胞结构进行精确注释,为自动化组织注释提供了新的工具。

🤔 **基于Transformer的创新架构:** CelloType利用Swin Transformer提取多尺度图像特征,并结合DINO和MaskDINO模块进行目标检测、实例分割和分类,实现了对细胞和非细胞结构的精确识别与分类。

🧬 **多任务学习提升效率:** 与传统方法将细胞分割和分类视为独立步骤不同,CelloType采用多任务学习框架,将两个任务整合在一起,通过统一的损失函数进行优化,显著提升了模型的整体性能和效率。

📊 **在多种数据集上表现出色:** CelloType在多种空间组学数据集中展现了优异的性能,包括多重荧光和空间转录组学图像,能够准确识别和分割不同类型的细胞,并对细胞结构进行精确注释。

🔬 **支持多尺度分割:** CelloType能够进行多尺度分割,不仅可以识别单个细胞,还可以识别组织中的其他结构,如细胞外基质等,为更全面地理解组织结构提供了可能。

💡 **未来发展方向:** CelloType的未来发展方向包括引入小样本学习和对比学习,以解决训练数据不足和空间转录组学数据分析中的挑战,进一步提升模型的泛化能力和适用性。

Cell segmentation and classification are vital tasks in spatial omics data analysis, which provides unprecedented insights into cellular structures and tissue functions. Recent advancements in spatial omics technologies have enabled high-resolution analysis of intact tissues, supporting initiatives like the Human Tumor Atlas Network and the Human Biomolecular Atlas Program in mapping spatial organizations in healthy and diseased states. Traditional workflows treat segmentation and classification as separate steps, relying on CNN-based methods like Mesmer, Cellpose, and CELESTA. However, these approaches often need more computational efficiency, consistent performance across tissue types, and a lack of confidence assessment in segmentation, necessitating advanced computational solutions.

Although CNNs have improved biomedical image segmentation and classification, their limitations hinder semantic information integration within tissue images. Transformer-based models, such as DETR, DINO, and MaskDINO, outperform CNNs in object detection and segmentation tasks, showing promise for biomedical imaging. Yet, their application to cell and nuclear segmentation in multiplexed tissue images still needs to be explored. Multiplexed images pose unique challenges with their higher dimensionality and overlapping structures. While MaskDINO has demonstrated robust performance on natural RGB images, its adaptation for spatial omics data analysis could bridge a critical gap, enabling more accurate and efficient segmentation and classification.

CelloType, developed by researchers from the University of Pennsylvania and the University of Iowa, is an advanced model designed to simultaneously perform cell segmentation and classification for image-based spatial omics data. Unlike conventional two-step approaches, it employs a multitask learning framework to enhance accuracy in both tasks using transformer-based architectures. The model integrates DINO and MaskDINO modules for object detection, instance segmentation, and classification, optimized through a unified loss function. CelloType also supports multiscale segmentation, enabling precise annotation of cellular and noncellular structures in tissue analysis, demonstrating superior performance on diverse datasets, including multiplexed fluorescence and spatial transcriptomic images.

CelloType comprises three key modules: (1) a Swin Transformer-based feature extraction module that generates multiscale image features for use in DINO and MaskDINO; (2) a DINO module for object detection and classification, utilizing positional and content queries, anchor box refinement, and denoising training; and (3) a MaskDINO module for instance segmentation, enhancing detection via a mask prediction branch. Training incorporates a composite loss function balancing classification, bounding box, and mask predictions. Implemented with Detectron2, CelloType leverages COCO-pretrained weights, Adam optimizer, and systematic evaluation for accuracy, supporting segmentation tasks across datasets like Xenium and MERFISH using multi-modal spatial signals.

CelloType is a deep learning framework designed for multiscale segmentation and classification of biomedical microscopy images, such as molecular, histological, and bright-field images. It uses Swin Transformer to extract multiscale features, DINO for object detection and bounding box prediction, and MaskDINO for refined segmentation. CelloType demonstrated superior performance over methods like Mesmer and Cellpose across diverse datasets, achieving higher precision, especially with its confidence-scoring variant, CelloType_C. It effectively handled segmentation tasks on multiplexed, diverse microscopy and spatial transcriptomics datasets. Additionally, it excels in simultaneous segmentation and classification, outperforming other methods on colorectal cancer CODEX data with high precision and adaptability.

In conclusion, CelloType is an end-to-end model for cell segmentation and classification in spatial omics data, combining these tasks through multitasking learning to enhance overall performance. Advanced transformer-based techniques, including Swin Transformers and the DINO module, improve object detection, segmentation, and classification accuracy. Unlike traditional methods, CelloType integrates these processes, achieving superior results on multiplexed fluorescence and spatial transcriptomic images. It also supports multiscale segmentation of cellular and non-cellular structures, demonstrating its utility for automated tissue annotation. Future improvements, including few-shot and contrastive learning, aim to address limitations in training data and challenges with spatial transcriptomics analysis.


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空间组学 细胞分割 细胞分类 Transformer CelloType
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