| Literature DB >> 18094752 |
David M Mutch1, M Ramzi Temanni, Corneliu Henegar, Florence Combes, Véronique Pelloux, Claus Holst, Thorkild I A Sørensen, Arne Astrup, J Alfredo Martinez, Wim H M Saris, Nathalie Viguerie, Dominique Langin, Jean-Daniel Zucker, Karine Clément.
Abstract
BACKGROUND: The ability to identify obese individuals who will successfully lose weight in response to dietary intervention will revolutionize disease management. Therefore, we asked whether it is possible to identify subjects who will lose weight during dietary intervention using only a single gene expression snapshot. METHODOLOGY/PRINCIPALEntities:
Mesh:
Year: 2007 PMID: 18094752 PMCID: PMC2147074 DOI: 10.1371/journal.pone.0001344
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Weight loss curves during the 10 week hypocaloric diet.
The two groups were defined as responders (i.e. subjects losing between 8–12 kgs) and non-responders (i.e. subjects losing less than 4 kgs). Weight was measured in at least 43 subjects at each weekly time point. Error bars represent the 95% confidence intervals (equal to 1.96 * standard deviation).
Baseline characteristics of responders (8–12 kgs weight loss) and non-responders (<4 kgs weight loss) at T0.
| Group | Non-responders | Responders |
| Number of Subjects | 26 | 27 |
| Age | 34.0±10.0 | 37.7±8.5 |
| Weight (kg) | 100.9±15.6 | 96.4±14.3 |
| BMI (kg.m−2) | 37.8±5.9 | 35.6±5.1 |
| FFM (kg) | 54.5±5.9 | 54.4±4.4 |
| FM (kg) | 46.4±12.0 | 42.0±11.3 |
| WHR | 0.85±0.07 | 0.85±0.06 |
| Triglycerides (µmol/L) | 980±370 | 958±328 |
| Free fatty acids (µmol/L) | 552±161 | 509±111 |
| Free glycerol (µmol/L) | 130±108 | 108±65 |
| Total cholesterol (mmol/L) | 5.07±0.86 | 5.05±0.97 |
| HDL-C (mmol/L) | 1.24±0.37 | 1.27±0.28 |
| LDL-C (mmol/L) | 3.39±0.87 | 3.35±0.93 |
| VLDL-C (mmol/L) | 0.27±0.07 | 0.29±0.09 |
| Insulin (µU/ml) | 11.1±5.8 | 9.0±6.0 |
| Leptin (ng/ml) | 37.4±12.7 | 32.4±9.7 |
| Cortisol (nmol/L) | 221±119 | 227±117 |
| Glucose (mmol/L) | 5.11±0.39 | 5.23±0.33 |
Values are means±standard deviation. Values indicated are from the fasted state. FFM, fat free mass; FM, fat mass.
Figure 2Distribution of the mean gene expression levels in responders and non-responders, computed from microarray measurements normalized with respect to the standard Gaussian distribution.
Each spot represents the mean expression for a single gene. Dotted lines indicate the 95% confidence interval of the means (equal to 1.96 * standard deviation).
Validation of 8 predictors by real-time RT- PCR in comparison to microarray results.
| Transcript Name | FC by Microarray (FDR = 8%) | FC by real-time RT-PCR |
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| TMEM132A | 1.2 | 2.6 | 0.008 |
| QPRT | 1.3 | 2.1 | 0.015 |
| CLDN5 | 1.4 | 2.3 | 0.015 |
| PTGDS | 1.6 | 1.9 | 0.035 |
| ESAM | 1.2 | 2.2 | 0.126 |
| FMOD | 1.4 | 2.3 | 0.159 |
| FAM69B | 1.3 | 2.1 | 0.176 |
| IFI27 | 1.4 | 1.4 | 0.182 |
Of the 8 genes examined by real-time RT-PCR (normalized to 18S rRNA), all of them were in directional concordance with microarray results; however, only 4 of them were statistically significant (p<0.05). FC (fold change) measurements represent non-responder vs. responder, where a positive FC indicates the transcript is more highly expressed in non-responders. FDR, false discovery rate.
Figure 3A. Differentiating populations by PLS-DA.
Global gene expression analysis in sub-cutaneous tissue reveals a separation trend between dietary responders (black squares) and non-responders (red circles); however, there is a significant overlap between the two populations (R2 = 0.547 and Q2 = −0.096). B. ALL patients (black squares) can be clearly separated from AML patients (red circles), apart from a single patient (identified by the green circle) (R2 = 0.795 and Q2 = 0.622). R2 explains the cumulative variation of the first two components and Q2 indicates the variation explained by the model according to cross validation. Only a Q2>0.5 indicates a good model.
Prediction accuracies using ten times 10-fold cross validation with different gene subsets.
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| All Genes | 45.9%±5.7 | 52.9%±11.3 | 61.1%±8.1 | 52.6%±8.2 |
| Fisher Analysis using a Training Set | 49.3%±11.3 | 53.4%±7.6 | 53.0%±6.6 | 54.2%±5.4 |
| Student's T-Test Analysis using a Training Set | 45.7%±10.5 | 51.6%±5.7 | 47.9%±13.9 | 56.6%±6.1 |
| SAM Analysis with an FDR = 8% | 70.2%±5.7 | 74.9%±8.1 | 73.7%±4.5 | 80.9%±2.2 |
| Fisher Analysis | 67.8%±11.2 | 69.8%±4.6 | 54.9%±6.3 | 70.6%±4.0 |
| Student's T-Test Analysis | 77.8%±7.9 | 71.0%±4.9 | 74.0%±4.9 | 78.8%±2.8 |
| Combined SAM, Fisher, & Student's T-Test | 73.0%±7.1 | 68.5%±5.3 | 66.5%±4.0 | 69.2%±3.2 |
| Golub Cancer Data | 98.6%±0.0 | 96.9%±2.2 | 92.0%±2.9 | 89.0%±4.1 |
SVM, support vector machine; RF, random forest; KNN, K-nearest neighbour, DLDA, diagonal linear discriminant analysis; SAM, significance analysis of microarrays; FDR, false discovery rate. Values represent mean±standard deviation corresponding to the 95% confidence interval.