This pipeline uses various statistical tests to identify mRNAs whose log2 expression levels correlated to selected clinical features.
Testing the association between 18255 genes and 7 clinical features across 21 samples, statistically thresholded by P value < 0.05 and Q value < 0.3, 1 clinical feature related to at least one genes.
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2 genes correlated to 'AGE'.
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CGB7|94027 , ANXA8L1|728113
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No genes correlated to 'Time to Death', 'NEOPLASM.DISEASESTAGE', 'PATHOLOGY.T.STAGE', 'PATHOLOGY.N.STAGE', 'PATHOLOGY.M.STAGE', and 'GENDER'.
Complete statistical result table is provided in Supplement Table 1
Table 1. Get Full Table This table shows the clinical features, statistical methods used, and the number of genes that are significantly associated with each clinical feature at P value < 0.05 and Q value < 0.3.
| Clinical feature | Statistical test | Significant genes | Associated with | Associated with | ||
|---|---|---|---|---|---|---|
| Time to Death | Cox regression test | N=0 | ||||
| AGE | Spearman correlation test | N=2 | older | N=1 | younger | N=1 |
| NEOPLASM DISEASESTAGE | Kruskal-Wallis test | N=0 | ||||
| PATHOLOGY T STAGE | Spearman correlation test | N=0 | ||||
| PATHOLOGY N STAGE | Spearman correlation test | N=0 | ||||
| PATHOLOGY M STAGE | Kruskal-Wallis test | N=0 | ||||
| GENDER | Wilcoxon test | N=0 |
Table S1. Basic characteristics of clinical feature: 'Time to Death'
| Time to Death | Duration (Months) | 0.2-91.7 (median=17.3) |
| censored | N = 5 | |
| death | N = 16 | |
| Significant markers | N = 0 |
Table S2. Basic characteristics of clinical feature: 'AGE'
| AGE | Mean (SD) | 63.62 (7.5) |
| Significant markers | N = 2 | |
| pos. correlated | 1 | |
| neg. correlated | 1 |
Table S3. Get Full Table List of 2 genes significantly correlated to 'AGE' by Spearman correlation test
| SpearmanCorr | corrP | Q | |
|---|---|---|---|
| CGB7|94027 | 0.8674 | 7.378e-07 | 0.0135 |
| ANXA8L1|728113 | -0.8586 | 5.099e-06 | 0.0931 |
Table S4. Basic characteristics of clinical feature: 'NEOPLASM.DISEASESTAGE'
| NEOPLASM.DISEASESTAGE | Labels | N |
| STAGE I | 1 | |
| STAGE IB | 1 | |
| STAGE II | 6 | |
| STAGE III | 11 | |
| STAGE IV | 2 | |
| Significant markers | N = 0 |
Table S5. Basic characteristics of clinical feature: 'PATHOLOGY.T.STAGE'
| PATHOLOGY.T.STAGE | Mean (SD) | 2.29 (0.78) |
| N | ||
| 1 | 3 | |
| 2 | 10 | |
| 3 | 7 | |
| 4 | 1 | |
| Significant markers | N = 0 |
Table S6. Basic characteristics of clinical feature: 'PATHOLOGY.N.STAGE'
| PATHOLOGY.N.STAGE | Mean (SD) | 0.4 (0.68) |
| N | ||
| 0 | 14 | |
| 1 | 4 | |
| 2 | 2 | |
| Significant markers | N = 0 |
Table S7. Basic characteristics of clinical feature: 'PATHOLOGY.M.STAGE'
| PATHOLOGY.M.STAGE | Labels | N |
| M0 | 15 | |
| M1 | 1 | |
| MX | 5 | |
| Significant markers | N = 0 |
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Expresson data file = MESO-TP.uncv2.mRNAseq_RSEM_normalized_log2.txt
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Clinical data file = MESO-TP.merged_data.txt
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Number of patients = 21
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Number of genes = 18255
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Number of clinical features = 7
For survival clinical features, Wald's test in univariate Cox regression analysis with proportional hazards model (Andersen and Gill 1982) was used to estimate the P values using the 'coxph' function in R. Kaplan-Meier survival curves were plot using the four quartile subgroups of patients based on expression levels
For continuous numerical clinical features, Spearman's rank correlation coefficients (Spearman 1904) and two-tailed P values were estimated using 'cor.test' function in R
For multi-class clinical features (ordinal or nominal), one-way analysis of variance (Howell 2002) was applied to compare the log2-expression levels between different clinical classes using 'anova' function in R
For two-class clinical features, two-tailed Student's t test with unequal variance (Lehmann and Romano 2005) was applied to compare the log2-expression levels between the two clinical classes using 't.test' function in R
For multiple hypothesis correction, Q value is the False Discovery Rate (FDR) analogue of the P value (Benjamini and Hochberg 1995), defined as the minimum FDR at which the test may be called significant. We used the 'Benjamini and Hochberg' method of 'p.adjust' function in R to convert P values into Q values.
In addition to the links below, the full results of the analysis summarized in this report can also be downloaded programmatically using firehose_get, or interactively from either the Broad GDAC website or TCGA Data Coordination Center Portal.