4.7 Review

Human body-fluid proteome: quantitative profiling and computational prediction

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 22, Issue 1, Pages 315-333

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbz160

Keywords

body-fluid proteome; protein prediction; clinical application; biomarker discovery

Funding

  1. National Natural Science Foundation of China [61572227, 61772227, 61702214]
  2. Development Project of Jilin Province of China [20180414012GH, 20190201273JC, 20190201293JC]
  3. Jilin Provincial Key Laboratory of Big Date Intelligent Computing [20180622002JC]

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Recent research on body-fluid proteomes has resulted in the discovery of novel disease biomarkers and therapeutic drugs, with over 15,000 different proteins detected in major human body fluids. Challenges remain in effectively handling the variety of protein modifications in these fluids. Computational efforts using statistical and machine-learning approaches have shown promise in identifying biomarker proteins in specific human diseases.
Empowered by the advancement of high-throughput bio technologies, recent research on body-fluid proteomes has led to the discoveries of numerous novel disease biomarkers and therapeutic drugs. In the meantime, a tremendous progress in disclosing the body-fluid proteomes was made, resulting in a collection of over 15 000 different proteins detected in major human body fluids. However, common challenges remain with current proteomics technologies about how to effectively handle the large variety of protein modifications in those f luids. To this end, computational effort utilizing statistical and machine-learning approaches has shown early successes in identifying biomarker proteins in specific human diseases. In this article, we first summarized the experimental progresses using a combination of conventional and high-throughput technologies, along with the major discoveries, and focused on current research status of 16 types of body-fluid proteins. Next, the emerging computational work on protein prediction based on support vector machine, ranking algorithm, and protein-protein interaction network were also surveyed, followed by algorithm and application discussion. At last, we discuss additional critical concerns about these topics and close the review by providing future perspectives especially toward the realization of clinical disease biomarker discovery.

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