| Literature DB >> 28933387 |
Rosa Ragone1, Fabio Sallustio2,3,4, Sara Piccinonna5, Monica Rutigliano6, Galleggiante Vanessa7, Silvano Palazzo8, Giuseppe Lucarelli9, Pasquale Ditonno10, Michele Battaglia11, Francesco Paolo Fanizzi12,13, Francesco Paolo Schena14,15,16.
Abstract
Renal cell carcinoma (RCC) is a heterogeneous cancer often showing late symptoms. Until now, some candidate protein markers have been proposed for its diagnosis. Metabolomics approaches have been applied, predominantly using Mass Spectrometry (MS), while Nuclear Magnetic Resonance (NMR)-based studies remain limited. There is no study about RCC integrating NMR-based metabolomics with transcriptomics. In this work, ¹H-NMR spectroscopy combined with multivariate statistics was applied on urine samples, collected from 40 patients with clear cell RCC (ccRCC) before nephrectomy and 29 healthy controls; nine out of 40 patients also provided samples one-month after nephrectomy. We observed increases of creatine, alanine, lactate and pyruvate, and decreases of hippurate, citrate, and betaine in all ccRCC patients. A network analysis connected most of these metabolites with glomerular injury, renal inflammation and renal necrosis/cell death. Interestingly, intersecting metabolites with transcriptomic data from CD133+/CD24+ tumoral renal stem cells isolated from ccRCC patients, we found that both genes and metabolites differentially regulated in ccRCC patients belonged to HIF-α signaling, methionine and choline degradation, and acetyl-CoA biosynthesis. Moreover, when comparing urinary metabolome of ccRCC patients after nephrectomy, some processes, such as the glomerular injury, renal hypertrophy, renal necrosis/cell death and renal proliferation, were no more represented.Entities:
Keywords: NMR-based metabolomics; RCC; transcriptomics; tumoral renal stem cells; urine
Year: 2016 PMID: 28933387 PMCID: PMC5456302 DOI: 10.3390/diseases4010007
Source DB: PubMed Journal: Diseases ISSN: 2079-9721
Characteristics (number, sex, age, histological classification) of patients and healthy controls, whose urine samples were provided. ccRCC-BN = patients with ccRCC before nephrectomy, RCC-AN = ccRCC patients after nephrectomy, HC = healthy controls.
| ccRCC-BN | ccRCC-AN | HC | |
|---|---|---|---|
| Number | 40 | 9 | 29 |
| Male/Female | 27/13 | 7/2 | 21/8 |
| Age (years) | 62.35 ± 11.65 | 64.11 ± 10.91 | 56 ± 5.81 |
| Histological classification | 18/40 G1 | 6/9 G1 | |
| 11/40 G2 | 3/9 G2 | ||
| 11/40 G3 | 0/9 G3 |
Figure 1Principal Component Analysis (PCA) applied on all urine samples. It showed no clusters relating to sex (F = female, M = male) or age (years).
Parameters describing the three Orthogonal Partial Least Squares-Discriminant Analysis (OPLS-DA) models obtained using SIMCA software: R2X(cum) (cumulative R2X, X variance explained by the current components), R2(cum) (cumulative R2, goodness of fit), and Q2(cum) (cumulative Q2, Q2 up to the specified component, where Q2 is the fraction of Y variation predicted by the X model in a component, according to cross-validation), specificity, sensitivity, accuracy, and Cohen’s K calculated in cross-validation.
| OPLS-DA | ccRCC-BN | ccRCC-AN | ccRCC-BN | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Component | R2X(cum) | R2(cum) | Q2(cum) | R2X(cum) | R2(cum) | Q2(cum) | R2X(cum) | R2(cum) | Q2(cum) |
| Model | 0.474 | 0.765 | 0.615 | 0.429 | 0.874 | 0.685 | 0.256 | 0.699 | −0.267 |
| Predictive | 0.077 | 0.765 | 0.615 | 0.106 | 0.874 | 0.685 | 0.102 | 0.699 | −0.267 |
| P1 | 0.077 | 0.765 | 0.615 | 0.106 | 0.874 | 0.685 | 0.102 | 0.699 | −0.267 |
| Orthogonal in X | 0.397 | 0 | 0.323 | 0 | 0.155 | 0 | |||
| O1 | 0.305 | 0 | 0.234 | 0 | 0.155 | 0 | |||
| O2 | 0.397 | 0 | 0.323 | 0 | |||||
| Specificity | 0.893 | 0.964 | 0.778 | ||||||
| Sensitivity | 0.939 | 0.9 | 0.444 | ||||||
| Accuracy | 0.918 | 0.947 | 0.611 | ||||||
| Cohen’s K in cross-validation | 0.835 | 0.864 | 0.222 | ||||||
Figure 2Results of OPLS-DA applied on the three groups of urine samples, compared two-by-two. On the left there are the score plots, reporting the predictive component on X-axis (t1) and the first orthogonal component on Y-axis (to1); on the right there are the loading plots, reporting the variables (buckets of 0.04 ppm) on X-axis and the corresponding loading vector values of the predictive component (pq1 normalized to unit length) on Y-axis.
Urinary metabolites considered for the pathway analysis and positions in the 1H-NMR spectrum of the corresponding selected peaks.
| Metabolites | ppm |
|---|---|
| Trigonelline | 9.13 |
| Hippurate | 7.84 |
| 7.40 | |
| Sucrose | 5.25 |
| Glucose | 4.65 |
| Creatinine | 4.06 |
| Creatine | 3.93 |
| Glycine | 3.58 |
| Carnitine | 3.23 |
| Betaine | 3.28 |
| Citrate | 2.55 |
| Pyruvate | 2.35 |
| Alanine | 1.49 |
| Lactate | 1.34 |
| 3-hydroxybutyrate | 1.20 |
| 3-hydroxyisobutyrate | 1.37 |
Figure 3Pathways most differentially modulated in ccRCC patients generated from urinary metabolites obtained through variable size bucketing.
Figure 4Biological processes most differentially modulated in ccRCC patients generated from urinary metabolites obtained through variable size bucketing.
Figure 5Pathway comparative analysis performed intersecting urinary metabolite dataset with the gene expression dataset from CD133+/CD24+ cancer renal stem cells of ccRCC patients.
Figure 6Comparative analysis of biological functions (A) and biological processes (B) generated from urinary metabolites modulated in ccRCC patients before and after nephrectomy and from gene differentially expressed in CD133+/CD24+ stem cells of ccRCC. Dark-blue bars represent ccRCC-BN urinary metabolite dataset, blue bars represent urinary metabolite dataset of ccRCC-AN and light-blue represent RCC CD133+/CD24+ stem cell gene expression dataset.