Integration of Urinary Peptidome and Fecal Microbiome to Explore Patient Clustering in Chronic Kidney Disease.
Emmanouil MavrogeorgisSophie ValkenburgJustyna SiwyAgnieszka LatosinskaGriet GlorieuxHarald MischakJoachim JankowskiPublished in: Proteomes (2024)
Millions of people worldwide currently suffer from chronic kidney disease (CKD), requiring kidney replacement therapy at the end stage. Endeavors to better understand CKD pathophysiology from an omics perspective have revealed major molecular players in several sample sources. Focusing on non-invasive sources, gut microbial communities appear to be disturbed in CKD, while numerous human urinary peptides are also dysregulated. Nevertheless, studies often focus on isolated omics techniques, thus potentially missing the complementary pathophysiological information that multidisciplinary approaches could provide. To this end, human urinary peptidome was analyzed and integrated with clinical and fecal microbiome (16S sequencing) data collected from 110 Non-CKD or CKD individuals (Early, Moderate, or Advanced CKD stage) that were not undergoing dialysis. Participants were visualized in a three-dimensional space using different combinations of clinical and molecular data. The most impactful clinical variables to discriminate patient groups in the reduced dataspace were, among others, serum urea, haemoglobin, total blood protein, urinary albumin, urinary erythrocytes, blood pressure, cholesterol measures, body mass index, Bristol stool score, and smoking; relevant variables were also microbial taxa, including Roseburi a, Butyricicoccus , Flavonifractor , Burkholderiales , Holdemania , Synergistaceae , Enterorhabdus , and Senegalimassilia ; urinary peptidome fragments were predominantly derived from proteins of collagen origin; among the non-collagen parental proteins were FXYD2, MGP, FGA, APOA1, and CD99. The urinary peptidome appeared to capture substantial variation in the CKD context. Integrating clinical and molecular data contributed to an improved cohort separation compared to clinical data alone, indicating, once again, the added value of this combined information in clinical practice.
Keyphrases
- chronic kidney disease
- end stage renal disease
- body mass index
- blood pressure
- single cell
- endothelial cells
- big data
- replacement therapy
- machine learning
- peritoneal dialysis
- healthcare
- rna seq
- high intensity
- type diabetes
- microbial community
- case report
- adipose tissue
- physical activity
- smoking cessation
- data analysis
- pluripotent stem cells
- african american