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SIproc: An open-source biomedical data processing platform for large hyperspectral images

机译:SIproc:用于大型高光谱图像的开源生物医学数据处理平台

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摘要

There has recently been significant interest within the vibrational spectroscopy community to apply quantitative spectroscopic imaging techniques to histology and clinical diagnosis. However, many of the proposed methods require collecting spectroscopic images that have a similar region size and resolution to corresponding histological images. Since spectroscopic images contain significantly more spectral samples than traditional histology, the resulting data sets can approach hundreds of gigabytes to terabytes in size. This makes them difficult to store and process, and the tools available to researchers for handling large spectroscopic data sets are limited.Fundamental mathematical tools, such as MATLAB, Octave, and SciPy, are extremely powerful but require data to be stored in a fraction of the available system memory. These memory limitations become impractical for even modestly sizes histological images, which can be hundreds of gigabytes in size. In this paper, we propose an open-source toolkit designed to perform out-of-core processing of hyperspectral images. By taking advantage of graphical processing unit (GPU) computing combined with adaptive data streaming, our software alleviates common workstation memory limitations while achieving better performance than existing applications.
机译:最近,振动光谱学界对将定量光谱成像技术应用于组织学和临床诊断非常感兴趣。然而,许多提出的方法需要收集光谱图像,该光谱图像具有与相应的组织学图像相似的区域大小和分辨率。由于光谱图像包含的光谱样本比传统组织学明显多,因此生成的数据集大小可能接近数百GB到TB。这使得它们难以存储和处理,并且研究人员可用于处理大型光谱数据集的工具也受到限制。基本的数学工具(例如MATLAB,Octave和SciPy)功能强大,但需要将数据存储在很小的范围内可用的系统内存。对于适度大小的组织学图像(大小可能为数百GB),这些内存限制变得不切实际。在本文中,我们提出了一种开放源代码工具包,旨在执行高光谱图像的核外处理。通过利用图形处理单元(GPU)与自适应数据流相结合的优势,我们的软件减轻了常见的工作站内存限制,同时实现了比现有应用程序更好的性能。

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