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h5. Batch vs clinical traits
Clinical traits: 36, number of batches: 13
Batch vs center:
{code:collapse=true}> table(batchID,two)
two
batchID A3 AK AS B0 B2 B4 B8 BP CJ CW CZ DV EU
0859 31 8 2 0 0 0 0 0 0 0 0 0 0
1186 4 6 0 0 5 0 6 5 9 0 0 0 0
1275 0 12 0 29 1 0 1 0 0 0 0 0 0
1284 0 0 0 0 0 0 0 50 0 0 0 0 0
1303 0 0 0 6 0 0 0 11 24 0 6 0 0
1323 18 7 0 0 4 0 3 5 9 0 0 0 0
1332 0 0 0 6 0 0 0 39 2 0 0 0 0
1418 6 0 0 27 0 0 6 8 0 0 0 0 0
1424 0 0 0 0 0 0 0 28 16 0 3 0 0
1500 0 1 0 15 0 2 1 1 0 0 24 0 0
1536 2 0 0 18 5 0 5 0 13 9 0 9 0
1551 0 0 0 0 0 0 3 0 0 0 0 0 0
1670 0 0 0 6 0 7 4 0 7 6 7 0 4{code}
Significant batch/trait correlations (complete table can be found [here|^BatchClinicalInfoCorrelationsKIRC.txt]):
{csv}KIRC_clinical_traits,DataType,NumberOfNAs,Test,Pvalue
white_cell_count_result,factor,82,Pearson's Chi-squared test,2.09E-13
serum_calcium_result,factor,160,Pearson's Chi-squared test,8.31E-13
tumor_stage,factor,21,Pearson's Chi-squared test,2.11E-11
tumor_grade,factor,5,Pearson's Chi-squared test,6.43E-09
vital_status,factor,0,Pearson's Chi-squared test,9.62E-09
days_to_form_completion,integer,0,Kruskal-Wallis rank sum test,1.16E-07
year_of_initial_pathologic_diagnosis,integer,0,Kruskal-Wallis rank sum test,1.38E-07
days_to_last_known_alive,integer,10,Kruskal-Wallis rank sum test,8.41E-07
days_to_last_followup,integer,4,Kruskal-Wallis rank sum test,1.94E-06
distant_metastasis_pathologic_spread,factor,11,Pearson's Chi-squared test,2.23E-06
primary_tumor_pathologic_spread,factor,0,Pearson's Chi-squared test,3.63E-06
person_neoplasm_cancer_status,factor,28,Pearson's Chi-squared test,4.26E-06
hemoglobin_result,factor,71,Pearson's Chi-squared test,2.66E-04
lymphnode_pathologic_spread,factor,2,Pearson's Chi-squared test,7.85E-04
lymphnodes_examined_prior_presentation,factor,43,Pearson's Chi-squared test,2.05E-03
gender,factor,0,Pearson's Chi-squared test,2.10E-02
age_at_initial_pathologic_diagnosis,integer,0,Kruskal-Wallis rank sum test,2.51E-02
days_to_birth,integer,8,Kruskal-Wallis rank sum test,2.87E-02
prior_diagnosis,factor,0,Pearson's Chi-squared test,4.75E-02{csv}
h5. Survival vs Batch
!KaplanMeierCurveKIRC.png|thumbnail! !SurvivalByBatchKIRC.png|thumbnail!
Summary can be found [here|^SurvivalBatchSummaryStatisticsKIRC.txt], batch is significantly correlated with survival:
Likelihood ratio test= 61.35 on 10 df, p=2.007e-09
Wald test = 64.35 on 10 df, p=5.39e-10
Score (logrank) test = 75.35 on 10 df, p=4.066e-12
h5. DNA methylation data analysis
27k dataset, downloaded on December 28, 2011. 219 samples. Technical variables available: batch, amount, concentration, day of shipment, month of shipment, year of shipment, plate row, plate column. Combine day, month and year in a single variable. Info about technical variables:
{code:collapse=true}> head(methNew)
batchID amount concentration plate_column plate_row dateCombined
2 0859 26.7 uL 0.14 ug/uL 1 A 17-3-2010
32 0859 26.7 uL 0.17 ug/uL 1 C 17-3-2010
59 0859 26.7 uL 0.15 ug/uL 1 D 17-3-2010
84 0859 26.7 uL 0.15 ug/uL 1 E 17-3-2010
> table(methNew$batchID)
0859 1186 1284 1303 1332
40 35 50 47 47
> table(methNew$amount)
26.7 uL
219
> table(methNew$concentration)
0.13 ug/uL 0.14 ug/uL 0.15 ug/uL 0.16 ug/uL 0.17 ug/uL
7 50 122 30 10
> table(methNew$plate_column)
1 2 3 4 5 6 7
39 40 40 40 35 23 2
> table(methNew$plate_row)
A B C D E F G H
30 28 28 27 27 27 27 25
> table(methNew$plate_column,methNew$plate_row)
A B C D E F G H
1 5 4 5 5 5 5 5 5
2 5 5 5 5 5 5 5 5
3 5 5 5 5 5 5 5 5
4 5 5 5 5 5 5 5 5
5 5 5 5 4 4 4 4 4
6 4 3 3 3 3 3 3 1
7 1 1 0 0 0 0 0 0
> table(methNew$dateCombined)
11-10-2010 17-3-2010 25-8-2010 27-9-2010 6-10-2010
47 40 35 50 47
> table(methNew$dateCombined,methNew$batchID)
0859 1186 1284 1303 1332
11-10-2010 0 0 0 0 47
17-3-2010 40 0 0 0 0
25-8-2010 0 35 0 0 0
27-9-2010 0 0 50 0 0
6-10-2010 0 0 0 47 0{code}
Exclude "amount" from calculations for the correlations of the first principal components of the data with the technical variables.
Created a matrix of M values, didn't split read and green. Relative variance, no normalization and the outliers:
!KIRC_Mval_noNorm_RelativeVariance.png|thumbnail! !KIRC_Mval_unnorm_PC1_outliers.png|thumbnail!
Based on the plot will look at the first 8 principal components:
{code:collapse=true}batchID concentration plate_column plate_row dateCombined
V1 2.024556e-22 0.5182919 0.22249235 0.9371285 2.024556e-22
V2 1.777673e-18 0.2878497 0.40175378 0.6195123 1.777673e-18
V3 3.196508e-01 0.3802798 0.27628233 0.5517096 3.196508e-01
V4 1.693859e-30 0.2449447 0.50367703 0.9672545 1.693859e-30
V5 2.435091e-03 0.1812444 0.08644977 0.5581507 2.435091e-03
V6 4.437547e-03 0.9473683 0.15938639 0.8458098 4.437547e-03
V7 1.271181e-03 0.3644802 0.79816984 0.7038321 1.271181e-03
V8 1.051940e-05 0.5905213 0.28713862 0.2173504 1.051940e-05{code}
Batch and dateCombined are highly correlated with the first principal components (V1 - V8 are the principal components after performing an SVD on unnormalized matrix)
Start by removing the batch. Relative variance and the outliers after removing the batch.
!KIRC_Mval_batchRemoved_RelativeVariance.png|thumbnail! !KIRC_Mval_batchRemoved_PC1_outliers.png|thumbnail!
Yikes.
Correlation with the first principal components:
{code:collapse=true}batchID concentration plate_column plate_row dateCombined
V1 0.9717423 0.8262431 0.18591881 0.8304766 0.9717423
V2 0.9976239 0.4612353 0.34203646 0.3816463 0.9976239
V3 0.9578584 0.9056604 0.12948457 0.1792408 0.9578584
V4 0.9043202 0.4152433 0.02150515 0.6264030 0.9043202
V5 0.9991262 0.8505841 0.19052765 0.6834312 0.9991262
V6 0.8956311 0.1123490 0.55257726 0.7618414 0.8956311
V7 0.9991696 0.7699433 0.84761783 0.2805982 0.9991696
V8 0.9939025 0.6395495 0.44489016 0.6334089 0.9939025{code}
Consider the data to be normalized.
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