4.7 Article

Serum metabolomic and lipidomic profiling identifies diagnostic biomarkers for seropositive and seronegative rheumatoid arthritis patients

Journal

JOURNAL OF TRANSLATIONAL MEDICINE
Volume 19, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12967-021-03169-7

Keywords

Rheumatoid arthritis; Seronegative; Metabolomic; Lipidomic

Funding

  1. National Natural Science Foundation of China [21904058, 21904057, 81774096]
  2. Open Projects of the Discipline of Chinese Medicine of Nanjing University of Chinese Medicine - Subject of Academic Priority Discipline of Jiangsu Higher Education Institutions [ZYX03KF031]
  3. Young Elite Scientists Sponsorship Program by CAST [QNRC2-B04]

Ask authors/readers for more resources

A panel of 26 serum markers from omics profiles was selected to build a machine-learning-based prediction model for diagnosing seronegative RA patients, achieving 90.2% accuracy in the validation set. Co-occurrence network analysis revealed significant associations between inflammation and immune activity markers, and abnormal metabolism of energy, lipids, and amino acids.
Background Diagnosing seronegative rheumatoid arthritis (RA) can be challenging due to complex diagnostic criteria. We sought to discover diagnostic biomarkers for seronegative RA cases by studying metabolomic and lipidomic changes in RA patient serum. Methods We performed comprehensive metabolomic and lipidomic profiling in serum of 225 RA patients and 100 normal controls. These samples were divided into a discovery set (n = 243) and a validation set (n = 82). A machine-learning-based multivariate classification model was constructed using distinctive metabolites and lipids signals. Results Twenty-six metabolites and lipids were identified from the discovery cohort to construct a RA diagnosis model. The model was subsequently tested on a validation set and achieved accuracy of 90.2%, with sensitivity of 89.7% and specificity of 90.6%. Both seropositive and seronegative patients were identified using this model. A co-occurrence network using serum omics profiles was built and parsed into six modules, showing significant association between the inflammation and immune activity markers and aberrant metabolism of energy metabolism, lipids metabolism and amino acid metabolism. Acyl carnitines (20:3), aspartyl-phenylalanine, pipecolic acid, phosphatidylethanolamine PE (18:1) and lysophosphatidylethanolamine LPE (20:3) were positively correlated with the RA disease activity, while histidine and phosphatidic acid PA (28:0) were negatively correlated with the RA disease activity. Conclusions A panel of 26 serum markers were selected from omics profiles to build a machine-learning-based prediction model that could aid in diagnosing seronegative RA patients. Potential markers were also identified in stratifying RA cases based on disease activity.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available