Correlation between aggregated molecular cancer subtypes and selected clinical features
Glioblastoma Multiforme (Primary solid tumor)
15 July 2014  |  analyses__2014_07_15
Maintainer Information
Citation Information
Maintained by TCGA GDAC Team (Broad Institute/MD Anderson Cancer Center/Harvard Medical School)
Cite as Broad Institute TCGA Genome Data Analysis Center (2014): Correlation between aggregated molecular cancer subtypes and selected clinical features. Broad Institute of MIT and Harvard. doi:10.7908/C1N58K4J
Overview
Introduction

This pipeline computes the correlation between cancer subtypes identified by different molecular patterns and selected clinical features.

Summary

Testing the association between subtypes identified by 10 different clustering approaches and 8 clinical features across 581 patients, 3 significant findings detected with P value < 0.05 and Q value < 0.25.

  • CNMF clustering analysis on array-based mRNA expression data identified 4 subtypes that do not correlate to any clinical features.

  • Consensus hierarchical clustering analysis on array-based mRNA expression data identified 4 subtypes that correlate to 'Time to Death' and 'AGE'.

  • CNMF clustering analysis on array-based miR expression data identified 4 subtypes that do not correlate to any clinical features.

  • Consensus hierarchical clustering analysis on array-based miR expression data identified 3 subtypes that do not correlate to any clinical features.

  • 3 subtypes identified in current cancer cohort by 'Copy Number Ratio CNMF subtypes'. These subtypes correlate to 'AGE'.

  • 3 subtypes identified in current cancer cohort by 'METHLYATION CNMF'. These subtypes do not correlate to any clinical features.

  • CNMF clustering analysis on RPPA data identified 4 subtypes that do not correlate to any clinical features.

  • Consensus hierarchical clustering analysis on RPPA data identified 3 subtypes that do not correlate to any clinical features.

  • CNMF clustering analysis on sequencing-based mRNA expression data identified 3 subtypes that do not correlate to any clinical features.

  • Consensus hierarchical clustering analysis on sequencing-based mRNA expression data identified 3 subtypes that do not correlate to any clinical features.

Results
Overview of the results

Table 1.  Get Full Table Overview of the association between subtypes identified by 10 different clustering approaches and 8 clinical features. Shown in the table are P values (Q values). Thresholded by P value < 0.05 and Q value < 0.25, 3 significant findings detected.

Clinical
Features
Time
to
Death
AGE GENDER KARNOFSKY
PERFORMANCE
SCORE
HISTOLOGICAL
TYPE
RADIATIONS
RADIATION
REGIMENINDICATION
RACE ETHNICITY
Statistical Tests logrank test Kruskal-Wallis (anova) Fisher's exact test Kruskal-Wallis (anova) Fisher's exact test Fisher's exact test Fisher's exact test Fisher's exact test
mRNA CNMF subtypes 0.0583
(1.00)
0.0788
(1.00)
0.401
(1.00)
0.6
(1.00)
0.00481
(0.361)
0.0692
(1.00)
0.833
(1.00)
0.124
(1.00)
mRNA cHierClus subtypes 0.000563
(0.0445)
0.00252
(0.196)
0.093
(1.00)
0.509
(1.00)
0.0291
(1.00)
0.0135
(0.986)
0.589
(1.00)
0.683
(1.00)
miR CNMF subtypes 0.00681
(0.504)
0.38
(1.00)
0.65
(1.00)
0.882
(1.00)
0.361
(1.00)
0.417
(1.00)
0.204
(1.00)
0.857
(1.00)
miR cHierClus subtypes 0.312
(1.00)
0.127
(1.00)
0.152
(1.00)
0.571
(1.00)
0.284
(1.00)
0.977
(1.00)
0.192
(1.00)
0.674
(1.00)
Copy Number Ratio CNMF subtypes 0.00337
(0.26)
6.04e-06
(0.000484)
0.268
(1.00)
0.206
(1.00)
0.196
(1.00)
0.0981
(1.00)
0.111
(1.00)
0.268
(1.00)
METHLYATION CNMF 0.38
(1.00)
0.105
(1.00)
0.313
(1.00)
0.684
(1.00)
0.691
(1.00)
0.847
(1.00)
0.221
(1.00)
0.609
(1.00)
RPPA CNMF subtypes 0.327
(1.00)
0.599
(1.00)
0.231
(1.00)
0.459
(1.00)
0.505
(1.00)
0.305
(1.00)
0.704
(1.00)
1
(1.00)
RPPA cHierClus subtypes 0.00439
(0.334)
0.28
(1.00)
0.543
(1.00)
0.0413
(1.00)
1
(1.00)
0.243
(1.00)
0.758
(1.00)
1
(1.00)
RNAseq CNMF subtypes 0.175
(1.00)
0.0964
(1.00)
0.0696
(1.00)
0.67
(1.00)
0.791
(1.00)
0.834
(1.00)
0.792
(1.00)
0.79
(1.00)
RNAseq cHierClus subtypes 0.0268
(1.00)
0.0784
(1.00)
0.145
(1.00)
0.485
(1.00)
0.602
(1.00)
0.581
(1.00)
0.579
(1.00)
0.735
(1.00)
Clustering Approach #1: 'mRNA CNMF subtypes'

Table S1.  Description of clustering approach #1: 'mRNA CNMF subtypes'

Cluster Labels 1 2 3 4
Number of samples 154 97 156 118
'mRNA CNMF subtypes' versus 'Time to Death'

P value = 0.0583 (logrank test), Q value = 1

Table S2.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 525 445 0.1 - 127.6 (10.4)
subtype1 154 138 0.1 - 127.6 (9.2)
subtype2 97 79 0.2 - 108.8 (10.7)
subtype3 156 129 0.1 - 92.7 (11.5)
subtype4 118 99 0.2 - 91.8 (9.8)

Figure S1.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

'mRNA CNMF subtypes' versus 'AGE'

P value = 0.0788 (Kruskal-Wallis (anova)), Q value = 1

Table S3.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 525 57.7 (14.6)
subtype1 154 58.4 (12.4)
subtype2 97 54.2 (17.4)
subtype3 156 60.0 (13.3)
subtype4 118 56.5 (15.7)

Figure S2.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #2: 'AGE'

'mRNA CNMF subtypes' versus 'GENDER'

P value = 0.401 (Fisher's exact test), Q value = 1

Table S4.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 205 320
subtype1 59 95
subtype2 41 56
subtype3 66 90
subtype4 39 79

Figure S3.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #3: 'GENDER'

'mRNA CNMF subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.6 (Kruskal-Wallis (anova)), Q value = 1

Table S5.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 392 77.2 (14.4)
subtype1 114 78.0 (15.5)
subtype2 75 76.5 (11.0)
subtype3 119 76.5 (15.2)
subtype4 84 77.9 (14.5)

Figure S4.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'mRNA CNMF subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.00481 (Fisher's exact test), Q value = 0.36

Table S6.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 6 20 499
subtype1 1 8 145
subtype2 0 7 90
subtype3 0 4 152
subtype4 5 1 112

Figure S5.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'mRNA CNMF subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.0692 (Fisher's exact test), Q value = 1

Table S7.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 360 165
subtype1 106 48
subtype2 68 29
subtype3 116 40
subtype4 70 48

Figure S6.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'mRNA CNMF subtypes' versus 'RACE'

P value = 0.833 (Fisher's exact test), Q value = 1

Table S8.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 13 31 462
subtype1 4 12 135
subtype2 2 7 84
subtype3 5 7 139
subtype4 2 5 104

Figure S7.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #7: 'RACE'

'mRNA CNMF subtypes' versus 'ETHNICITY'

P value = 0.124 (Fisher's exact test), Q value = 1

Table S9.  Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 12 438
subtype1 3 131
subtype2 5 68
subtype3 3 135
subtype4 1 104

Figure S8.  Get High-res Image Clustering Approach #1: 'mRNA CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #2: 'mRNA cHierClus subtypes'

Table S10.  Description of clustering approach #2: 'mRNA cHierClus subtypes'

Cluster Labels 1 2 3 4
Number of samples 153 107 103 162
'mRNA cHierClus subtypes' versus 'Time to Death'

P value = 0.000563 (logrank test), Q value = 0.044

Table S11.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 525 445 0.1 - 127.6 (10.4)
subtype1 153 137 0.1 - 91.0 (10.6)
subtype2 107 80 0.2 - 108.8 (10.9)
subtype3 103 87 0.1 - 92.7 (11.3)
subtype4 162 141 0.1 - 127.6 (8.9)

Figure S9.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

'mRNA cHierClus subtypes' versus 'AGE'

P value = 0.00252 (Kruskal-Wallis (anova)), Q value = 0.2

Table S12.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 525 57.7 (14.6)
subtype1 153 56.9 (13.6)
subtype2 107 52.9 (17.9)
subtype3 103 60.6 (12.1)
subtype4 162 59.8 (13.7)

Figure S10.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #2: 'AGE'

'mRNA cHierClus subtypes' versus 'GENDER'

P value = 0.093 (Fisher's exact test), Q value = 1

Table S13.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 205 320
subtype1 51 102
subtype2 44 63
subtype3 50 53
subtype4 60 102

Figure S11.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

'mRNA cHierClus subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.509 (Kruskal-Wallis (anova)), Q value = 1

Table S14.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 392 77.2 (14.4)
subtype1 117 78.5 (14.9)
subtype2 83 77.6 (11.4)
subtype3 81 75.4 (15.5)
subtype4 111 76.9 (14.9)

Figure S12.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'mRNA cHierClus subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.0291 (Fisher's exact test), Q value = 1

Table S15.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 6 20 499
subtype1 0 11 142
subtype2 1 3 103
subtype3 0 3 100
subtype4 5 3 154

Figure S13.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'mRNA cHierClus subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.0135 (Fisher's exact test), Q value = 0.99

Table S16.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 360 165
subtype1 114 39
subtype2 78 29
subtype3 73 30
subtype4 95 67

Figure S14.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'mRNA cHierClus subtypes' versus 'RACE'

P value = 0.589 (Fisher's exact test), Q value = 1

Table S17.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 13 31 462
subtype1 4 13 130
subtype2 4 6 95
subtype3 3 4 93
subtype4 2 8 144

Figure S15.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #7: 'RACE'

'mRNA cHierClus subtypes' versus 'ETHNICITY'

P value = 0.683 (Fisher's exact test), Q value = 1

Table S18.  Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 12 438
subtype1 5 124
subtype2 1 91
subtype3 2 90
subtype4 4 133

Figure S16.  Get High-res Image Clustering Approach #2: 'mRNA cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #3: 'miR CNMF subtypes'

Table S19.  Description of clustering approach #3: 'miR CNMF subtypes'

Cluster Labels 1 2 3 4
Number of samples 165 182 90 124
'miR CNMF subtypes' versus 'Time to Death'

P value = 0.00681 (logrank test), Q value = 0.5

Table S20.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 561 461 0.1 - 127.6 (10.3)
subtype1 165 140 0.1 - 91.0 (10.3)
subtype2 182 146 0.1 - 127.6 (10.4)
subtype3 90 72 0.1 - 53.8 (8.4)
subtype4 124 103 0.1 - 92.7 (11.7)

Figure S17.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

'miR CNMF subtypes' versus 'AGE'

P value = 0.38 (Kruskal-Wallis (anova)), Q value = 1

Table S21.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 561 57.9 (14.3)
subtype1 165 59.8 (11.6)
subtype2 182 55.7 (16.6)
subtype3 90 58.5 (14.6)
subtype4 124 58.1 (13.6)

Figure S18.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #2: 'AGE'

'miR CNMF subtypes' versus 'GENDER'

P value = 0.65 (Fisher's exact test), Q value = 1

Table S22.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 218 343
subtype1 63 102
subtype2 76 106
subtype3 36 54
subtype4 43 81

Figure S19.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #3: 'GENDER'

'miR CNMF subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.882 (Kruskal-Wallis (anova)), Q value = 1

Table S23.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 424 77.5 (14.5)
subtype1 127 76.6 (15.3)
subtype2 131 77.3 (14.6)
subtype3 73 78.2 (13.6)
subtype4 93 78.4 (14.2)

Figure S20.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'miR CNMF subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.361 (Fisher's exact test), Q value = 1

Table S24.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 9 20 532
subtype1 2 4 159
subtype2 1 8 173
subtype3 3 5 82
subtype4 3 3 118

Figure S21.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'miR CNMF subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.417 (Fisher's exact test), Q value = 1

Table S25.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 389 172
subtype1 118 47
subtype2 131 51
subtype3 57 33
subtype4 83 41

Figure S22.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'miR CNMF subtypes' versus 'RACE'

P value = 0.204 (Fisher's exact test), Q value = 1

Table S26.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 13 30 493
subtype1 3 13 140
subtype2 7 9 157
subtype3 1 1 85
subtype4 2 7 111

Figure S23.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #7: 'RACE'

'miR CNMF subtypes' versus 'ETHNICITY'

P value = 0.857 (Fisher's exact test), Q value = 1

Table S27.  Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 12 459
subtype1 5 134
subtype2 4 153
subtype3 1 71
subtype4 2 101

Figure S24.  Get High-res Image Clustering Approach #3: 'miR CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #4: 'miR cHierClus subtypes'

Table S28.  Description of clustering approach #4: 'miR cHierClus subtypes'

Cluster Labels 1 2 3
Number of samples 302 129 130
'miR cHierClus subtypes' versus 'Time to Death'

P value = 0.312 (logrank test), Q value = 1

Table S29.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 561 461 0.1 - 127.6 (10.3)
subtype1 302 248 0.1 - 108.8 (10.4)
subtype2 129 106 0.1 - 92.7 (9.6)
subtype3 130 107 0.1 - 127.6 (9.9)

Figure S25.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

'miR cHierClus subtypes' versus 'AGE'

P value = 0.127 (Kruskal-Wallis (anova)), Q value = 1

Table S30.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 561 57.9 (14.3)
subtype1 302 56.5 (15.9)
subtype2 129 59.0 (11.5)
subtype3 130 60.0 (12.5)

Figure S26.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #2: 'AGE'

'miR cHierClus subtypes' versus 'GENDER'

P value = 0.152 (Fisher's exact test), Q value = 1

Table S31.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 218 343
subtype1 110 192
subtype2 48 81
subtype3 60 70

Figure S27.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

'miR cHierClus subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.571 (Kruskal-Wallis (anova)), Q value = 1

Table S32.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 424 77.5 (14.5)
subtype1 225 78.4 (13.6)
subtype2 100 76.9 (15.4)
subtype3 99 76.0 (15.6)

Figure S28.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'miR cHierClus subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.284 (Fisher's exact test), Q value = 1

Table S33.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 9 20 532
subtype1 6 13 283
subtype2 3 2 124
subtype3 0 5 125

Figure S29.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'miR cHierClus subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.977 (Fisher's exact test), Q value = 1

Table S34.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 389 172
subtype1 208 94
subtype2 90 39
subtype3 91 39

Figure S30.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'miR cHierClus subtypes' versus 'RACE'

P value = 0.192 (Fisher's exact test), Q value = 1

Table S35.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 13 30 493
subtype1 7 10 272
subtype2 3 11 113
subtype3 3 9 108

Figure S31.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #7: 'RACE'

'miR cHierClus subtypes' versus 'ETHNICITY'

P value = 0.674 (Fisher's exact test), Q value = 1

Table S36.  Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 12 459
subtype1 6 249
subtype2 2 109
subtype3 4 101

Figure S32.  Get High-res Image Clustering Approach #4: 'miR cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #5: 'Copy Number Ratio CNMF subtypes'

Table S37.  Description of clustering approach #5: 'Copy Number Ratio CNMF subtypes'

Cluster Labels 1 2 3
Number of samples 158 208 194
'Copy Number Ratio CNMF subtypes' versus 'Time to Death'

P value = 0.00337 (logrank test), Q value = 0.26

Table S38.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 560 462 0.1 - 127.6 (10.1)
subtype1 158 135 0.1 - 92.7 (9.0)
subtype2 208 172 0.1 - 77.7 (10.8)
subtype3 194 155 0.2 - 127.6 (10.6)

Figure S33.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

'Copy Number Ratio CNMF subtypes' versus 'AGE'

P value = 6.04e-06 (Kruskal-Wallis (anova)), Q value = 0.00048

Table S39.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 560 57.9 (14.5)
subtype1 158 61.1 (13.7)
subtype2 208 59.9 (10.8)
subtype3 194 53.1 (17.1)

Figure S34.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #2: 'AGE'

'Copy Number Ratio CNMF subtypes' versus 'GENDER'

P value = 0.268 (Fisher's exact test), Q value = 1

Table S40.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 220 340
subtype1 70 88
subtype2 75 133
subtype3 75 119

Figure S35.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #3: 'GENDER'

'Copy Number Ratio CNMF subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.206 (Kruskal-Wallis (anova)), Q value = 1

Table S41.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 416 77.5 (14.7)
subtype1 112 76.0 (14.7)
subtype2 163 77.6 (15.4)
subtype3 141 78.6 (13.9)

Figure S36.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'Copy Number Ratio CNMF subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.196 (Fisher's exact test), Q value = 1

Table S42.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 17 18 525
subtype1 3 4 151
subtype2 4 5 199
subtype3 10 9 175

Figure S37.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'Copy Number Ratio CNMF subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.0981 (Fisher's exact test), Q value = 1

Table S43.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 382 178
subtype1 97 61
subtype2 147 61
subtype3 138 56

Figure S38.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'Copy Number Ratio CNMF subtypes' versus 'RACE'

P value = 0.111 (Fisher's exact test), Q value = 1

Table S44.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 13 39 485
subtype1 1 13 137
subtype2 3 12 185
subtype3 9 14 163

Figure S39.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #7: 'RACE'

'Copy Number Ratio CNMF subtypes' versus 'ETHNICITY'

P value = 0.268 (Fisher's exact test), Q value = 1

Table S45.  Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 12 462
subtype1 1 131
subtype2 5 168
subtype3 6 163

Figure S40.  Get High-res Image Clustering Approach #5: 'Copy Number Ratio CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #6: 'METHLYATION CNMF'

Table S46.  Description of clustering approach #6: 'METHLYATION CNMF'

Cluster Labels 1 2 3
Number of samples 37 46 31
'METHLYATION CNMF' versus 'Time to Death'

P value = 0.38 (logrank test), Q value = 1

Table S47.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 114 72 0.2 - 58.8 (7.4)
subtype1 37 24 0.8 - 58.8 (5.4)
subtype2 46 33 0.2 - 47.9 (8.1)
subtype3 31 15 1.2 - 50.5 (7.5)

Figure S41.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #1: 'Time to Death'

'METHLYATION CNMF' versus 'AGE'

P value = 0.105 (Kruskal-Wallis (anova)), Q value = 1

Table S48.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 114 60.9 (12.2)
subtype1 37 60.7 (13.6)
subtype2 46 63.7 (8.5)
subtype3 31 56.9 (14.3)

Figure S42.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #2: 'AGE'

'METHLYATION CNMF' versus 'GENDER'

P value = 0.313 (Fisher's exact test), Q value = 1

Table S49.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 49 65
subtype1 14 23
subtype2 18 28
subtype3 17 14

Figure S43.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #3: 'GENDER'

'METHLYATION CNMF' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.684 (Kruskal-Wallis (anova)), Q value = 1

Table S50.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 83 76.7 (15.3)
subtype1 25 77.2 (17.4)
subtype2 34 75.6 (15.6)
subtype3 24 77.9 (12.8)

Figure S44.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'METHLYATION CNMF' versus 'HISTOLOGICAL.TYPE'

P value = 0.691 (Fisher's exact test), Q value = 1

Table S51.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 8 1 105
subtype1 4 0 33
subtype2 2 1 43
subtype3 2 0 29

Figure S45.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'METHLYATION CNMF' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.847 (Fisher's exact test), Q value = 1

Table S52.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 78 36
subtype1 26 11
subtype2 30 16
subtype3 22 9

Figure S46.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'METHLYATION CNMF' versus 'RACE'

P value = 0.221 (Fisher's exact test), Q value = 1

Table S53.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #7: 'RACE'

nPatients BLACK OR AFRICAN AMERICAN WHITE
ALL 12 95
subtype1 7 29
subtype2 3 40
subtype3 2 26

Figure S47.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #7: 'RACE'

'METHLYATION CNMF' versus 'ETHNICITY'

P value = 0.609 (Fisher's exact test), Q value = 1

Table S54.  Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 1 73
subtype1 1 24
subtype2 0 29
subtype3 0 20

Figure S48.  Get High-res Image Clustering Approach #6: 'METHLYATION CNMF' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #7: 'RPPA CNMF subtypes'

Table S55.  Description of clustering approach #7: 'RPPA CNMF subtypes'

Cluster Labels 1 2 3 4
Number of samples 57 61 44 49
'RPPA CNMF subtypes' versus 'Time to Death'

P value = 0.327 (logrank test), Q value = 1

Table S56.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 211 159 0.1 - 108.8 (8.2)
subtype1 57 47 0.1 - 53.2 (8.7)
subtype2 61 44 0.2 - 108.8 (7.7)
subtype3 44 31 0.1 - 46.2 (9.3)
subtype4 49 37 0.2 - 47.9 (6.2)

Figure S49.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

'RPPA CNMF subtypes' versus 'AGE'

P value = 0.599 (Kruskal-Wallis (anova)), Q value = 1

Table S57.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 211 59.9 (14.1)
subtype1 57 59.2 (13.6)
subtype2 61 57.2 (16.8)
subtype3 44 61.5 (12.2)
subtype4 49 62.5 (12.0)

Figure S50.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #2: 'AGE'

'RPPA CNMF subtypes' versus 'GENDER'

P value = 0.231 (Fisher's exact test), Q value = 1

Table S58.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 85 126
subtype1 17 40
subtype2 26 35
subtype3 18 26
subtype4 24 25

Figure S51.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #3: 'GENDER'

'RPPA CNMF subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.459 (Kruskal-Wallis (anova)), Q value = 1

Table S59.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 169 75.7 (15.3)
subtype1 46 75.0 (15.9)
subtype2 51 76.7 (16.5)
subtype3 32 78.8 (11.3)
subtype4 40 72.8 (15.8)

Figure S52.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'RPPA CNMF subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.505 (Fisher's exact test), Q value = 1

Table S60.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 1 3 207
subtype1 0 2 55
subtype2 1 0 60
subtype3 0 0 44
subtype4 0 1 48

Figure S53.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'RPPA CNMF subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.305 (Fisher's exact test), Q value = 1

Table S61.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 156 55
subtype1 42 15
subtype2 44 17
subtype3 37 7
subtype4 33 16

Figure S54.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'RPPA CNMF subtypes' versus 'RACE'

P value = 0.704 (Fisher's exact test), Q value = 1

Table S62.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 4 11 180
subtype1 1 4 50
subtype2 2 1 52
subtype3 1 3 38
subtype4 0 3 40

Figure S55.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #7: 'RACE'

'RPPA CNMF subtypes' versus 'ETHNICITY'

P value = 1 (Fisher's exact test), Q value = 1

Table S63.  Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 2 177
subtype1 1 48
subtype2 1 52
subtype3 0 39
subtype4 0 38

Figure S56.  Get High-res Image Clustering Approach #7: 'RPPA CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #8: 'RPPA cHierClus subtypes'

Table S64.  Description of clustering approach #8: 'RPPA cHierClus subtypes'

Cluster Labels 1 2 3
Number of samples 72 82 57
'RPPA cHierClus subtypes' versus 'Time to Death'

P value = 0.00439 (logrank test), Q value = 0.33

Table S65.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 211 159 0.1 - 108.8 (8.2)
subtype1 72 58 0.2 - 53.2 (6.9)
subtype2 82 57 0.1 - 108.8 (7.9)
subtype3 57 44 0.1 - 47.9 (9.4)

Figure S57.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

'RPPA cHierClus subtypes' versus 'AGE'

P value = 0.28 (Kruskal-Wallis (anova)), Q value = 1

Table S66.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 211 59.9 (14.1)
subtype1 72 60.9 (13.9)
subtype2 82 57.5 (15.4)
subtype3 57 62.0 (11.8)

Figure S58.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #2: 'AGE'

'RPPA cHierClus subtypes' versus 'GENDER'

P value = 0.543 (Fisher's exact test), Q value = 1

Table S67.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 85 126
subtype1 27 45
subtype2 37 45
subtype3 21 36

Figure S59.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

'RPPA cHierClus subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.0413 (Kruskal-Wallis (anova)), Q value = 1

Table S68.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 169 75.7 (15.3)
subtype1 56 71.2 (17.3)
subtype2 69 77.5 (13.8)
subtype3 44 78.4 (14.0)

Figure S60.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'RPPA cHierClus subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 1 (Fisher's exact test), Q value = 1

Table S69.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 1 3 207
subtype1 0 1 71
subtype2 1 1 80
subtype3 0 1 56

Figure S61.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'RPPA cHierClus subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.243 (Fisher's exact test), Q value = 1

Table S70.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 156 55
subtype1 48 24
subtype2 63 19
subtype3 45 12

Figure S62.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'RPPA cHierClus subtypes' versus 'RACE'

P value = 0.758 (Fisher's exact test), Q value = 1

Table S71.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 4 11 180
subtype1 1 4 59
subtype2 1 3 73
subtype3 2 4 48

Figure S63.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #7: 'RACE'

'RPPA cHierClus subtypes' versus 'ETHNICITY'

P value = 1 (Fisher's exact test), Q value = 1

Table S72.  Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 2 177
subtype1 1 56
subtype2 1 72
subtype3 0 49

Figure S64.  Get High-res Image Clustering Approach #8: 'RPPA cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #9: 'RNAseq CNMF subtypes'

Table S73.  Description of clustering approach #9: 'RNAseq CNMF subtypes'

Cluster Labels 1 2 3
Number of samples 47 70 35
'RNAseq CNMF subtypes' versus 'Time to Death'

P value = 0.175 (logrank test), Q value = 1

Table S74.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 152 117 0.2 - 54.0 (9.1)
subtype1 47 33 0.2 - 54.0 (8.9)
subtype2 70 55 0.9 - 47.9 (10.1)
subtype3 35 29 0.2 - 31.3 (6.0)

Figure S65.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #1: 'Time to Death'

'RNAseq CNMF subtypes' versus 'AGE'

P value = 0.0964 (Kruskal-Wallis (anova)), Q value = 1

Table S75.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 152 59.7 (13.5)
subtype1 47 55.6 (16.6)
subtype2 70 62.0 (10.6)
subtype3 35 60.9 (13.3)

Figure S66.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #2: 'AGE'

'RNAseq CNMF subtypes' versus 'GENDER'

P value = 0.0696 (Fisher's exact test), Q value = 1

Table S76.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 53 99
subtype1 14 33
subtype2 31 39
subtype3 8 27

Figure S67.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #3: 'GENDER'

'RNAseq CNMF subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.67 (Kruskal-Wallis (anova)), Q value = 1

Table S77.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 113 75.8 (14.4)
subtype1 36 74.2 (15.2)
subtype2 51 75.7 (14.2)
subtype3 26 78.1 (13.9)

Figure S68.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'RNAseq CNMF subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.791 (Fisher's exact test), Q value = 1

Table S78.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 1 1 150
subtype1 1 0 46
subtype2 0 1 69
subtype3 0 0 35

Figure S69.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'RNAseq CNMF subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.834 (Fisher's exact test), Q value = 1

Table S79.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 102 50
subtype1 32 15
subtype2 48 22
subtype3 22 13

Figure S70.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'RNAseq CNMF subtypes' versus 'RACE'

P value = 0.792 (Fisher's exact test), Q value = 1

Table S80.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 5 10 136
subtype1 2 3 42
subtype2 1 5 63
subtype3 2 2 31

Figure S71.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #7: 'RACE'

'RNAseq CNMF subtypes' versus 'ETHNICITY'

P value = 0.79 (Fisher's exact test), Q value = 1

Table S81.  Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 3 125
subtype1 1 44
subtype2 2 51
subtype3 0 30

Figure S72.  Get High-res Image Clustering Approach #9: 'RNAseq CNMF subtypes' versus Clinical Feature #8: 'ETHNICITY'

Clustering Approach #10: 'RNAseq cHierClus subtypes'

Table S82.  Description of clustering approach #10: 'RNAseq cHierClus subtypes'

Cluster Labels 1 2 3
Number of samples 32 96 24
'RNAseq cHierClus subtypes' versus 'Time to Death'

P value = 0.0268 (logrank test), Q value = 1

Table S83.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

nPatients nDeath Duration Range (Median), Month
ALL 152 117 0.2 - 54.0 (9.1)
subtype1 32 22 0.2 - 54.0 (11.7)
subtype2 96 75 0.4 - 47.9 (9.1)
subtype3 24 20 0.2 - 30.6 (5.7)

Figure S73.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #1: 'Time to Death'

'RNAseq cHierClus subtypes' versus 'AGE'

P value = 0.0784 (Kruskal-Wallis (anova)), Q value = 1

Table S84.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #2: 'AGE'

nPatients Mean (Std.Dev)
ALL 152 59.7 (13.5)
subtype1 32 54.2 (18.3)
subtype2 96 61.6 (11.4)
subtype3 24 59.6 (12.5)

Figure S74.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #2: 'AGE'

'RNAseq cHierClus subtypes' versus 'GENDER'

P value = 0.145 (Fisher's exact test), Q value = 1

Table S85.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

nPatients FEMALE MALE
ALL 53 99
subtype1 9 23
subtype2 39 57
subtype3 5 19

Figure S75.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #3: 'GENDER'

'RNAseq cHierClus subtypes' versus 'KARNOFSKY.PERFORMANCE.SCORE'

P value = 0.485 (Kruskal-Wallis (anova)), Q value = 1

Table S86.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

nPatients Mean (Std.Dev)
ALL 113 75.8 (14.4)
subtype1 24 77.1 (11.6)
subtype2 73 74.5 (14.7)
subtype3 16 79.4 (16.5)

Figure S76.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #4: 'KARNOFSKY.PERFORMANCE.SCORE'

'RNAseq cHierClus subtypes' versus 'HISTOLOGICAL.TYPE'

P value = 0.602 (Fisher's exact test), Q value = 1

Table S87.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

nPatients GLIOBLASTOMA MULTIFORME (GBM) TREATED PRIMARY GBM UNTREATED PRIMARY (DE NOVO) GBM
ALL 1 1 150
subtype1 1 0 31
subtype2 0 1 95
subtype3 0 0 24

Figure S77.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #5: 'HISTOLOGICAL.TYPE'

'RNAseq cHierClus subtypes' versus 'RADIATIONS.RADIATION.REGIMENINDICATION'

P value = 0.581 (Fisher's exact test), Q value = 1

Table S88.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

nPatients NO YES
ALL 102 50
subtype1 24 8
subtype2 62 34
subtype3 16 8

Figure S78.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #6: 'RADIATIONS.RADIATION.REGIMENINDICATION'

'RNAseq cHierClus subtypes' versus 'RACE'

P value = 0.579 (Fisher's exact test), Q value = 1

Table S89.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #7: 'RACE'

nPatients ASIAN BLACK OR AFRICAN AMERICAN WHITE
ALL 5 10 136
subtype1 2 1 29
subtype2 2 8 85
subtype3 1 1 22

Figure S79.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #7: 'RACE'

'RNAseq cHierClus subtypes' versus 'ETHNICITY'

P value = 0.735 (Fisher's exact test), Q value = 1

Table S90.  Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

nPatients HISPANIC OR LATINO NOT HISPANIC OR LATINO
ALL 3 125
subtype1 0 30
subtype2 3 75
subtype3 0 20

Figure S80.  Get High-res Image Clustering Approach #10: 'RNAseq cHierClus subtypes' versus Clinical Feature #8: 'ETHNICITY'

Methods & Data
Input
  • Cluster data file = GBM-TP.mergedcluster.txt

  • Clinical data file = GBM-TP.merged_data.txt

  • Number of patients = 581

  • Number of clustering approaches = 10

  • Number of selected clinical features = 8

  • Exclude small clusters that include fewer than K patients, K = 3

Clustering approaches
CNMF clustering

consensus non-negative matrix factorization clustering approach (Brunet et al. 2004)

Consensus hierarchical clustering

Resampling-based clustering method (Monti et al. 2003)

Survival analysis

For survival clinical features, the Kaplan-Meier survival curves of tumors with and without gene mutations were plotted and the statistical significance P values were estimated by logrank test (Bland and Altman 2004) using the 'survdiff' function in R

Fisher's exact test

For binary clinical features, two-tailed Fisher's exact tests (Fisher 1922) were used to estimate the P values using the 'fisher.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

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.

References
[1] Brunet et al., Metagenes and molecular pattern discovery using matrix factorization, PNAS 101(12):4164-9 (2004)
[3] Bland and Altman, Statistics notes: The logrank test, BMJ 328(7447):1073 (2004)
[4] Fisher, R.A., On the interpretation of chi-square from contingency tables, and the calculation of P, Journal of the Royal Statistical Society 85(1):87-94 (1922)
[5] 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)