iProX in 2021: connecting proteomics data sharing with big data

Tao Chen(Beijing Proteome Research Center), Jie Ma(Beijing Proteome Research Center), Yi Liu(Beijing Proteome Research Center), Zhiguang Chen(Sun Yat-sen University), Nong Xiao(Sun Yat-sen University), Yutong Lu(Sun Yat-sen University), Yinjin Fu(Sun Yat-sen University), Chunyuan Yang(Beijing Proteome Research Center), Mansheng Li(Beijing Proteome Research Center), Songfeng Wu(Beijing Proteome Research Center), Xue Wang(Beijing Proteome Research Center), Dongsheng Li(Beijing Proteome Research Center), Fuchu He(Beijing Proteome Research Center), Henning Hermjakob(European Bioinformatics Institute), Yunping Zhu(Anhui Medical University)
Nucleic Acids Research
October 22, 2021
Cited by 1,066Open Access
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Abstract

The rapid development of proteomics studies has resulted in large volumes of experimental data. The emergence of big data platform provides the opportunity to handle these large amounts of data. The integrated proteome resource, iProX (https://www.iprox.cn), which was initiated in 2017, has been greatly improved with an up-to-date big data platform implemented in 2021. Here, we describe the main iProX developments since its first publication in Nucleic Acids Research in 2019. First, a hyper-converged architecture with high scalability supports the submission process. A hadoop cluster can store large amounts of proteomics datasets, and a distributed, RESTful-styled Elastic Search engine can query millions of records within one second. Also, several new features, including the Universal Spectrum Identifier (USI) mechanism proposed by ProteomeXchange, RESTful Web Service API, and a high-efficiency reanalysis pipeline, have been added to iProX for better open data sharing. By the end of August 2021, 1526 datasets had been submitted to iProX, reaching a total data volume of 92.42TB. With the implementation of the big data platform, iProX can support PB-level data storage, hundreds of billions of spectra records, and second-level latency service capabilities that meet the requirements of the fast growing field of proteomics.


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