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首页> 外文期刊>Scientific reports. >BASIS: High-performance bioinformatics platform for processing of large-scale mass spectrometry imaging data in chemically augmented histology
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BASIS: High-performance bioinformatics platform for processing of large-scale mass spectrometry imaging data in chemically augmented histology

机译:BASIS:高性能生物信息学平台,用于处理化学增强组织学中的大规模质谱成像数据

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Mass Spectrometry Imaging (MSI) holds significant promise in augmenting digital histopathologic analysis by generating highly robust big data about the metabolic, lipidomic and proteomic molecular content of the samples. In the process, a vast quantity of unrefined data, that can amount to several hundred gigabytes per tissue section, is produced. Managing, analysing and interpreting this data is a significant challenge and represents a major barrier to the translational application of MSI. Existing data analysis solutions for MSI rely on a set of heterogeneous bioinformatics packages that are not scalable for the reproducible processing of large-scale (hundreds to thousands) biological sample sets. Here, we present a computational platform (pyBASIS) capable of optimized and scalable processing of MSI data for improved information recovery and comparative analysis across tissue specimens using machine learning and related pattern recognition approaches. The proposed solution also provides a means of seamlessly integrating experimental laboratory data with downstream bioinformatics interpretation/analyses, resulting in a truly integrated system for translational MSI.
机译:质谱成像(MSI)通过生成有关样品代谢,脂质组和蛋白质组学分子含量的高度可靠的大数据,在增强数字组织病理学分析方面具有广阔的前景。在此过程中,会产生大量未精炼的数据,每个组织切片可能总计数百GB。管理,分析和解释此数据是一项重大挑战,并且是MSI翻译应用程序的主要障碍。用于MSI的现有数据分析解决方案依赖于一组异构生物信息学程序包,这些程序包不可扩展用于大规模(数百至数千)生物样品集的可再现处理。在这里,我们介绍了一个计算平台(pyBASIS),该平台能够使用机器学习和相关模式识别方法对MSI数据进行优化和可扩展的处理,以改善组织样本之间的信息恢复和比较分析。提出的解决方案还提供了一种将实验实验室数据与下游生物信息学解释/分析无缝集成的方法,从而为翻译MSI提供了真正的集成系统。

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