کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
1225773 | 968251 | 2010 | 7 صفحه PDF | دانلود رایگان |
As an emerging field, MS-based proteomics still requires software tools for efficiently storing and accessing experimental data. In this work, we focus on the management of LC–MS data, which are typically made available in standard XML-based portable formats. The structures that are currently employed to manage these data can be highly inefficient, especially when dealing with high-throughput profile data. LC–MS datasets are usually accessed through 2D range queries. Optimizing this type of operation could dramatically reduce the complexity of data analysis. We propose a novel data structure for LC–MS datasets, called mzRTree, which embodies a scalable index based on the R-tree data structure. mzRTree can be efficiently created from the XML-based data formats and it is suitable for handling very large datasets. We experimentally show that, on all range queries, mzRTree outperforms other known structures used for LC–MS data, even on those queries these structures are optimized for. Besides, mzRTree is also more space efficient. As a result, mzRTree reduces data analysis computational costs for very large profile datasets.
We propose mzRTree, a spatial structure for storing and accessing LC–MS data which exhibits scalability, memory and creation efficiency, and faster range queries compared to other widely used data structures.Figure optionsDownload high-quality image (248 K)Download as PowerPoint slide
Journal: Journal of Proteomics - Volume 73, Issue 6, 18 April 2010, Pages 1176–1182