Correlation between mRNAseq expression and clinical features
Acute Myeloid Leukemia (Primary blood derived cancer - Peripheral blood)
23 May 2013  |  analyses__2013_05_23
Maintainer Information
Citation Information
Maintained by Juok Cho (Broad Institute)
Cite as Broad Institute TCGA Genome Data Analysis Center (2013): Correlation between mRNAseq expression and clinical features. Broad Institute of MIT and Harvard. doi:10.7908/C1862DGM

This pipeline uses various statistical tests to identify mRNAs whose expression levels correlated to selected clinical features.


Testing the association between 17276 genes and 3 clinical features across 173 samples, statistically thresholded by Q value < 0.05, 3 clinical features related to at least one genes.

  • 8 genes correlated to 'Time to Death'.

    • MYB|4602 ,  PWWP2A|114825 ,  CLINT1|9685 ,  IL2RA|3559 ,  ADSS|159 ,  ...

  • 12 genes correlated to 'AGE'.

    • GBP2|2634 ,  PI4K2A|55361 ,  FBXO32|114907 ,  C7ORF58|79974 ,  SLC22A16|85413 ,  ...

  • 17 genes correlated to 'GENDER'.

    • PRKY|5616 ,  XIST|7503 ,  TSIX|9383 ,  ZFY|7544 ,  UTY|7404 ,  ...

Overview of the results

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 Q value < 0.05.

Clinical feature Statistical test Significant genes Associated with                 Associated with
Time to Death Cox regression test N=8 shorter survival N=2 longer survival N=6
AGE Spearman correlation test N=12 older N=10 younger N=2
GENDER t test N=17 male N=4 female N=13
Clinical variable #1: 'Time to Death'

8 genes related to 'Time to Death'.

Table S1.  Basic characteristics of clinical feature: 'Time to Death'

Time to Death Duration (Months) 0.9-94.1 (median=12)
  censored N = 57
  death N = 92
  Significant markers N = 8
  associated with shorter survival 2
  associated with longer survival 6
List of 8 genes significantly associated with 'Time to Death' by Cox regression test

Table S2.  Get Full Table List of 8 genes significantly associated with 'Time to Death' by Cox regression test

HazardRatio Wald_P Q C_index
MYB|4602 0.53 5.867e-07 0.01 0.34
PWWP2A|114825 0.37 8.601e-07 0.015 0.337
CLINT1|9685 0.31 1.159e-06 0.02 0.363
IL2RA|3559 1.24 1.602e-06 0.028 0.644
ADSS|159 0.29 1.994e-06 0.034 0.332
C10ORF128|170371 1.27 2.079e-06 0.036 0.654
C2ORF67|151050 0.54 2.341e-06 0.04 0.329
GMCL1|64395 0.42 2.758e-06 0.048 0.385

Figure S1.  Get High-res Image As an example, this figure shows the association of MYB|4602 to 'Time to Death'. four curves present the cumulative survival rates of 4 quartile subsets of patients. P value = 5.87e-07 with univariate Cox regression analysis using continuous log-2 expression values.

Clinical variable #2: 'AGE'

12 genes related to 'AGE'.

Table S3.  Basic characteristics of clinical feature: 'AGE'

AGE Mean (SD) 55.26 (16)
  Significant markers N = 12
  pos. correlated 10
  neg. correlated 2
List of top 10 genes significantly correlated to 'AGE' by Spearman correlation test

Table S4.  Get Full Table List of top 10 genes significantly correlated to 'AGE' by Spearman correlation test

SpearmanCorr corrP Q
GBP2|2634 0.4101 2.097e-08 0.000362
PI4K2A|55361 0.4064 2.889e-08 0.000499
FBXO32|114907 0.3685 6.076e-07 0.0105
C7ORF58|79974 0.3723 6.221e-07 0.0107
SLC22A16|85413 -0.3627 9.392e-07 0.0162
HK2|3099 -0.3621 9.824e-07 0.017
PPARD|5467 0.358 1.325e-06 0.0229
STK16|8576 0.355 1.643e-06 0.0284
TMEM117|84216 0.3703 1.679e-06 0.029
KLRF1|51348 0.3506 2.251e-06 0.0389

Figure S2.  Get High-res Image As an example, this figure shows the association of GBP2|2634 to 'AGE'. P value = 2.1e-08 with Spearman correlation analysis. The straight line presents the best linear regression.

Clinical variable #3: 'GENDER'

17 genes related to 'GENDER'.

Table S5.  Basic characteristics of clinical feature: 'GENDER'

  MALE 93
  Significant markers N = 17
  Higher in MALE 4
  Higher in FEMALE 13
List of top 10 genes differentially expressed by 'GENDER'

Table S6.  Get Full Table List of top 10 genes differentially expressed by 'GENDER'

T(pos if higher in 'MALE') ttestP Q AUC
PRKY|5616 52.08 2.604e-93 4.5e-89 1
XIST|7503 -44.33 3.364e-82 5.81e-78 0.9995
TSIX|9383 -33.18 2.43e-66 4.19e-62 0.9998
ZFY|7544 56.47 1.64e-49 2.83e-45 1
UTY|7404 68.34 1.127e-29 1.95e-25 1
PRKX|5613 -12.96 3.466e-27 5.98e-23 0.9194
KDM5C|8242 -10.21 7.258e-19 1.25e-14 0.8719
NCRNA00183|554203 -9.4 7.232e-17 1.25e-12 0.8442
ZFX|7543 -9.25 2.677e-16 4.62e-12 0.8653
ZRSR2|8233 -9.07 1.408e-15 2.43e-11 0.8535

Figure S3.  Get High-res Image As an example, this figure shows the association of PRKY|5616 to 'GENDER'. P value = 2.6e-93 with T-test analysis.

Methods & Data
  • Expresson data file = LAML-TB.uncv2.mRNAseq_RSEM_normalized_log2.txt

  • Clinical data file = LAML-TB.clin.merged.picked.txt

  • Number of patients = 173

  • Number of genes = 17276

  • Number of clinical features = 3

Survival analysis

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

Correlation analysis

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

Student's t-test analysis

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

Q value calculation

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.

Download Results

This is an experimental feature. The full results of the analysis summarized in this report can be downloaded from the TCGA Data Coordination Center.

[1] Andersen and Gill, Cox's regression model for counting processes, a large sample study, Annals of Statistics 10(4):1100-1120 (1982)
[2] Spearman, C, The proof and measurement of association between two things, Amer. J. Psychol 15:72-101 (1904)
[3] Lehmann and Romano, Testing Statistical Hypotheses (3E ed.), New York: Springer. ISBN 0387988645 (2005)
[4] Benjamini and Hochberg, Controlling the false discovery rate: a practical and powerful approach to multiple testing, Journal of the Royal Statistical Society Series B 59:289-300 (1995)