SOmicsFusion:空间代谢组学与生物医学成像之间的多模态核心定位与融合

Ang Guo , Zhiyu Chen , Yinzhong Ma , Yueguang Lv , Huanhuan Yan , Fang Li , Yao Xing , Qian Luo , Hairong Zheng
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引用次数: 0

摘要

我们介绍的 SOmicsFusion 是一种用于将空间全息图像与传统生物医学成像模式 "融合 "的软件工具箱,在描述同一主题时可充分利用它们的内在对应性和互补性。通过用空间分辨分子剖析技术增强放射学和组织学图像,这种融合技术可提供病理条件下生化扰动的全景特征,从而促进我们对脑部疾病和癌症等疾病的了解。SOmicsFusion 的基石是一种核心配准工具,它利用创新的两阶段机器学习管道来解决长期存在的挑战,即对来自完全不同模式的数据进行空间配准,为随后的融合分析做好准备,而融合分析通常需要数据集之间精确的像素对应关系。具体来说,该管道利用原始降维算法进行表征域对齐,然后利用基于深度学习的方法进行空间域对齐。SOmicsFusion 使用质谱成像(MSI)介导的空间代谢组学和其他四种模式进行了演示:磁共振成像(MRI)、显微镜、脑图谱和空间转录组学。与现有管道相比,SOmicsFusion 可将核心定位误差减少 38-69%,从而提高了分子分布与解剖学和病理学特征相关联的精确度,最终得出统计学上更可靠的研究结果。此外,SOmicsFusion 还集成了各种下游分析工具,包括叠加可视化、空间相关性/共表达分析、平刨和自动解剖注释。这些工具有助于提取单个模式无法获得的生物学见解。例如,MSI 和体内 MRI 数据集之间的核心注册和相关性揭示了代谢物的空间异质性源于脑缺血再灌注损伤发展过程中的时间异质性。
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SOmicsFusion: Multimodal coregistration and fusion between spatial metabolomics and biomedical imaging

We present SOmicsFusion, a software toolbox for ’fusing’ spatial omics with classical biomedical imaging modalities, capitalizing on their inherent correspondences and complementarity when characterizing the same subject. By augmenting radiological and histological images with spatially resolved molecular profiling, this fusion offers a panoramic characterization of the biochemical perturbations underlying pathological conditions, thereby advancing our understanding of diseases like brain disorders and cancers. The cornerstone of SOmicsFusion is a coregistration tool that leverages an innovative two-stage machine learning pipeline to tackle the longstanding challenge of spatially aligning data from fundamentally different modalities, priming them for subsequent fusion analysis that often requires precise pixel-wise correspondence between the datasets. Specifically, the pipeline utilizes an original dimension reduction algorithm for representational domain alignment, followed by a Deep Learning-based method for spatial domain alignment. SOmicsFusion is demonstrated using mass spectrometry imaging (MSI)-mediated spatial metabolomics and four other modalities: magnetic resonance imaging (MRI), microscopy, brain atlas, and spatial transcriptomics. By reducing coregistration errors by 38–69% compared to existing pipelines, SOmicsFusion enhances the precision of associating molecule distribution with anatomy and pathology features, ultimately leading to more statistically robust findings. Furthermore, SOmicsFusion incorporates various downstream analysis tools, including overlay visualization, spatial correlation/co-expression analysis, pansharpening, and automated anatomy annotation. These tools facilitate the extraction of biological insights that would be unattainable through individual modalities alone. For instance, the coregistration and correlation between MSI and in vivo MRI datasets unveil that the spatial heterogeneity in metabolites stems from the temporal heterogeneity in the development of cerebral ischemia-reperfusion injury.

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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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