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A patch-based super resolution algorithm for improving image resolution in clinical mass spectrometry

机译:基于补丁的超分辨率算法,可提高临床质谱中的图像分辨率

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摘要

Mass spectrometry imaging (MSI) and histology are complementary analytical tools. Integration of the two imaging modalities can enhance the spatial resolution of the MSI beyond its experimental limits. Patch-based super resolution (PBSR) is a method where high spatial resolution features from one image modality guide the reconstruction of a low resolution image from a second modality. The principle of PBSR lies in image redundancy and aims at finding similar pixels in the neighborhood of a central pixel that are then used to guide reconstruction of the central pixel. In this work, we employed PBSR to increase the resolution of MSI. We validated the proposed pipeline by using a phantom image (micro-dissected logo within a tissue) and mouse cerebellum samples. We compared the performance of the PBSR with other well-known methods: linear interpolation (LI) and image fusion (IF). Quantitative and qualitative assessment showed advantage over the former and comparability with the latter. Furthermore, we demonstrated the potential applicability of PBSR in a clinical setting by accurately integrating structural (i.e., histological) and molecular (i.e., MSI) information from a case study of a dog liver.
机译:质谱成像(MSI)和组织学是互补的分析工具。两种成像方式的集成可以增强MSI的空间分辨率,使其超出实验极限。基于补丁的超分辨率(PBSR)是一种方法,其中来自一个图像模态的高空间分辨率特征可指导从第二模态重建低分辨率图像。 PBSR的原理在于图像冗余,其目的是在中央像素附近找到相似的像素,然后将其用于指导中央像素的重建。在这项工作中,我们采用PBSR来提高MSI的分辨率。我们通过使用幻影图像(组织内的微解剖徽标)和小鼠小脑样本验证了提议的管道。我们将PBSR的性能与其他知名方法进行了比较:线性插值(LI)和图像融合(IF)。定量和定性评估显示出优于前者并与后者具有可比性。此外,我们通过准确整合狗肝病例研究中的结构(即组织学)和分子(即MSI)信息,证明了PBSR在临床环境中的潜在适用性。

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