AUTHOR=Hu Yu , Zhou Xuyue , Chen Lihao , Li Rong , Jin Shuang , Liu Lingxi , Ju Mei , Luan Chao , Chen Hongying , Wang Ziwei , Huang Dan , Chen Kun , Zhang Jiaan TITLE=Landscape of circulating metabolic fingerprinting for keloid JOURNAL=Frontiers in Immunology VOLUME=13 YEAR=2022 URL=https://www.frontiersin.org/journals/immunology/articles/10.3389/fimmu.2022.1005366 DOI=10.3389/fimmu.2022.1005366 ISSN=1664-3224 ABSTRACT=Background

Keloids are a fibroproliferative disease characterized by unsatisfactory therapeutic effects and a high recurrence rate.

Objective

This study aimed to investigate keloid-related circulating metabolic signatures.

Methods

Untargeted metabolomic analysis was performed to compare the metabolic features of 15 keloid patients with those of paired healthy volunteers in the discovery cohort. The circulating metabolic signatures were selected using the least absolute shrinkage. Furthermore, the selection operators were quantified using multiple reaction monitoring-based target metabolite detection methods in the training and test cohorts.

Results

More than ten thousand metabolic features were consistently observed in all the plasma samples from the discovery cohort, and 30 significantly different metabolites were identified. Four differentially expressed metabolites including palmitoylcarnitine, sphingosine, phosphocholine, and phenylalanylisoleucine, were discovered to be related to keloid risk in the training and test cohorts. In addition, using linear and logistic regression models, the respective risk scores for keloids based on a 4-metabolite fingerprint classifier were established to distinguish keloids from healthy volunteers.

Conclusions

In summary, our findings show that the characteristics of circulating metabolic fingerprinting manifest phenotypic variation in keloid onset.