| Literature DB >> 35788654 |
Bin Tan1, Saige Xin1, Yanshi Hu1, Cong Feng1, Ming Chen1,2,3.
Abstract
Lymphoma is a heterogeneous disease caused by malignant proliferation of lymphocytes, resulting in significant mortality worldwide. While more and more lymphoma biomarkers have been identified with the advent and development of precision medicine, there are currently no databases dedicated to systematically gathering these scattered treasures. Therefore, we developed a lymphoma biomarker database (LBD) to curate experimentally validated lymphoma biomarkers in this study. LBD consists of 793 biomarkers extracted from 978 articles covering diverse subtypes of lymphomas, including 715 single and 78 combined biomarkers. These biomarkers can be categorized into molecular, cellular, image, histopathological, physiological and other biomarkers with various functions such as prognosis, diagnosis and treatment. As a manually curated database that provides comprehensive information about lymphoma biomarkers, LBD is helpful for personalized diagnosis and treatment of lymphoma. Database URL http://bis.zju.edu.cn/LBD.Entities:
Mesh:
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Year: 2022 PMID: 35788654 PMCID: PMC9254641 DOI: 10.1093/database/baac051
Source DB: PubMed Journal: Database (Oxford) ISSN: 1758-0463 Impact factor: 4.462
Figure 1.Schematic workflow of LBD construction.
Figure 2.An overview of the web interface of LBD. (A) LBD homepage. (B) Browse the page of non-Hodgkin lymphoma biomarkers. (C) Keyword search page. (D) Advanced search page. (E) Detailed page of IL-18.
Figure 3.Statistics of lymphoma biomarkers. (A) Biomarker distribution by biomarker types. (B) Biomarker distribution by biomarker applications. (C) Biomarker distribution by sample types. (D) Tendency for the number of articles published in the last 10 years. (E) Top 11 countries with the largest number of articles of lymphoma biomarkers.
Figure 4.GO and KEGG enrichment analysis of protein biomarkers in LBD. (A) Enriched GO and KEGG pathways. (B) Protein–protein interaction network components identified by the MCODE algorithm. Nodes represent protein biomarkers in LBD. Edges represent the relationships between different proteins. The size of the node represents the node degree.
Enrichment analysis of MCODE networks
| MCODE | Pathway ID | Description | −Log10( |
|---|---|---|---|
| MCODE1 | hsa05200 | Pathways in cancer | 16.6 |
| MCODE1 | hsa04151 | PI3K-Akt signaling pathway | 15.0 |
| MCODE1 | hsa05169 | Epstein–Barr virus infection | 13.6 |
| MCODE2 | GO:2001233 | Regulation of apoptotic signaling pathway | 8.6 |
| MCODE2 | hsa05163 | Human cytomegalovirus infection | 8.2 |
| MCODE2 | GO:0030162 | Regulation of proteolysis | 7.9 |
| MCODE3 | GO:0007204 | Positive regulation of cytosolic calcium ion concentration | 10.2 |
| MCODE3 | GO:0051480 | Regulation of cytosolic calcium ion concentration | 9.9 |
| MCODE3 | GO:0006874 | Cellular calcium ion homeostasis | 9.3 |