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LiLA: lipid lung-based ATLAS built through a comprehensive workflow designed for an accurate lipid annotation
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|作者:
Belén Fernández Requena
Sajid Nadeem
Vineel P. Reddy
Vanessa Naidoo
Joel N. Glasgow
Adrie J. C. Steyn
Coral Barbas
Carolina Gonzalez-Riano
机构:
[1] Universidad San Pablo-CEU,Centro de Metabolómica y Bioanálisis (CEMBIO), Facultad de Farmacia
[2] CEU Universities,Department of Microbiology
[3] Urbanización Montepríncipe,Centers for AIDS Research and Free Radical Biology
[4] University of Alabama at Birmingham,undefined
[5] Africa Health Research Institute,undefined
[6] University of Alabama at Birmingham,undefined
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Accurate lipid annotation is crucial for understanding the role of lipids in health and disease and identifying therapeutic targets. However, annotating the wide variety of lipid species in biological samples remains challenging in untargeted lipidomic studies. In this work, we present a lipid annotation workflow based on LC-MS and MS/MS strategies, the combination of four bioinformatic tools, and a decision tree to support the accurate annotation and semi-quantification of the lipid species present in lung tissue from control mice. The proposed workflow allowed us to generate a lipid lung-based ATLAS (LiLA), which was then employed to unveil the lipidomic signatures of the Mycobacterium tuberculosis infection at two different time points for a deeper understanding of the disease progression. This workflow, combined with manual inspection strategies of MS/MS data, can enhance the annotation process for lipidomic studies and guide the generation of sample-specific lipidome maps. LiLA serves as a freely available data resource that can be employed in future studies to address lipidomic alterations in mice lung tissue.
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