library("tidyverse")
library("tibble")
library("msigdbr")
library("ggplot2")
library("TCGAbiolinks")
library("RNAseqQC")
library("DESeq2")
library("ensembldb")
library("purrr")
library("magrittr")
library("vsn")
library("matrixStats")
library("dplyr")
library("grex")
library("survminer")
library("survival")
Create a function for downloading TCGA gene expression data.
For more detailed documentation, refer to
2. Differential Gene Expression Analysis - TCGA.Rmd
.
GDC_DIR = "../data/public/GDCdata"
query_and_filter_samples <- function(project) {
query_tumor <- GDCquery(
project = project,
data.category = "Transcriptome Profiling",
data.type = "Gene Expression Quantification",
experimental.strategy = "RNA-Seq",
workflow.type = "STAR - Counts",
access = "open",
sample.type = "Primary Tumor"
)
tumor <- getResults(query_tumor)
query_normal <- GDCquery(
project = project,
data.category = "Transcriptome Profiling",
data.type = "Gene Expression Quantification",
experimental.strategy = "RNA-Seq",
workflow.type = "STAR - Counts",
access = "open",
sample.type = "Solid Tissue Normal"
)
normal <- getResults(query_normal)
submitter_ids <- inner_join(tumor, normal, by = "cases.submitter_id") %>%
dplyr::select(cases.submitter_id)
tumor <- tumor %>%
dplyr::filter(cases.submitter_id %in% submitter_ids$cases.submitter_id)
normal <- normal %>%
dplyr::filter(cases.submitter_id %in% submitter_ids$cases.submitter_id)
samples <- rbind(tumor, normal)
unique(samples$sample_type)
query_project <- GDCquery(
project = project,
data.category = "Transcriptome Profiling",
data.type = "Gene Expression Quantification",
experimental.strategy = "RNA-Seq",
workflow.type = "STAR - Counts",
access = "open",
sample.type = c("Solid Tissue Normal", "Primary Tumor"),
barcode = as.list(samples$sample.submitter_id)
)
# If this is your first time running this notebook (i.e., you have not yet downloaded the results of the query in the previous block),
# uncomment the code block below
# GDCdownload(
# query_coad,
# directory = GDC_DIR
# )
return(list(samples = samples, query_project = query_project))
}
Download the TCGA gene expression data for colorectal cancer (TCGA-COAD).
projects <- c("TCGA-COAD")
with_results_projects <- c()
samples <- list()
project_data <- list()
for (project in projects) {
result <- tryCatch(
{
result <- query_and_filter_samples(project)
samples[[project]] <- result$samples
project_data[[project]] <- result$query_project
with_results_projects <- c(with_results_projects, project)
},
error = function(e) {
}
)
}
Running the code block above should generate and populate a directory
named GDCdata
.
Construct the RNA-seq count matrix for each cancer type.
tcga_data <- list()
tcga_matrix <- list()
projects <- with_results_projects
for (project in projects) {
tcga_data[[project]] <- GDCprepare(
project_data[[project]],
directory = GDC_DIR,
summarizedExperiment = TRUE
)
}
for (project in projects) {
count_matrix <- assay(tcga_data[[project]], "unstranded")
# Remove duplicate entries
count_matrix_df <- data.frame(count_matrix)
count_matrix_df <- count_matrix_df[!duplicated(count_matrix_df), ]
count_matrix <- data.matrix(count_matrix_df)
rownames(count_matrix) <- cleanid(rownames(count_matrix))
count_matrix <- count_matrix[!(duplicated(rownames(count_matrix)) | duplicated(rownames(count_matrix), fromLast = TRUE)), ]
tcga_matrix[[project]] <- count_matrix
}
Format the samples
table so that it can be fed as input
to DESeq2.
for (project in projects) {
rownames(samples[[project]]) <- samples[[project]]$cases
samples[[project]] <- samples[[project]] %>%
dplyr::select(case = "cases.submitter_id", type = "sample_type")
samples[[project]]$type <- str_replace(samples[[project]]$type, "Solid Tissue Normal", "normal")
samples[[project]]$type <- str_replace(samples[[project]]$type, "Primary Tumor", "tumor")
}
DESeq2 requires the row names of samples
should be
identical to the column names of count_matrix
.
for (project in projects) {
colnames(tcga_matrix[[project]]) <- gsub(x = colnames(tcga_matrix[[project]]), pattern = "\\.", replacement = "-")
tcga_matrix[[project]] <- tcga_matrix[[project]][, rownames(samples[[project]])]
# Sanity check
print(all(colnames(tcga_matrix[[project]]) == rownames(samples[[project]])))
}
For more detailed documentation on obtaining the gene set, refer to
7. Differential Gene Expression Analysis - TCGA - Pan-cancer - Unique Genes.Rmd
.
RCDdb <- "../data/public/rcd-gene-list/unique-genes/necroptosis-ferroptosis-pyroptosis/"
Write utility functions for filtering the gene sets, performing differential gene expression analysis, plotting the results, and performing variance-stabilizing transformation.
filter_gene_set_and_perform_dgea <- function(genes) {
tcga_rcd <- list()
for (project in projects) {
rownames(genes) <- genes$gene_id
tcga_rcd[[project]] <- tcga_matrix[[project]][rownames(tcga_matrix[[project]]) %in% genes$gene_id, ]
tcga_rcd[[project]] <- tcga_rcd[[project]][, rownames(samples[[project]])]
}
dds_rcd <- list()
res_rcd <- list()
for (project in projects) {
print(project)
print("=============")
dds <- DESeqDataSetFromMatrix(
countData = tcga_rcd[[project]],
colData = samples[[project]],
design = ~type
)
dds <- filter_genes(dds, min_count = 10)
dds$type <- relevel(dds$type, ref = "normal")
dds_rcd[[project]] <- DESeq(dds)
res_rcd[[project]] <- results(dds_rcd[[project]])
}
deseq.bbl.data <- list()
for (project in projects) {
deseq.results <- res_rcd[[project]]
deseq.bbl.data[[project]] <- data.frame(
row.names = rownames(deseq.results),
baseMean = deseq.results$baseMean,
log2FoldChange = deseq.results$log2FoldChange,
lfcSE = deseq.results$lfcSE,
stat = deseq.results$stat,
pvalue = deseq.results$pvalue,
padj = deseq.results$padj,
cancer_type = project,
gene_symbol = genes[rownames(deseq.results), "gene"]
)
}
deseq.bbl.data.combined <- bind_rows(deseq.bbl.data)
deseq.bbl.data.combined <- dplyr::filter(deseq.bbl.data.combined, abs(log2FoldChange) >= 1.5 & padj < 0.05)
return(deseq.bbl.data.combined)
}
plot_dgea <- function(deseq.bbl.data.combined) {
sizes <- c("<10^-15" = 4, "10^-10" = 3, "10^-5" = 2, "0.05" = 1)
deseq.bbl.data.combined <- deseq.bbl.data.combined %>%
mutate(fdr_category = cut(padj,
breaks = c(-Inf, 1e-15, 1e-10, 1e-5, 0.05),
labels = c("<10^-15", "10^-10", "10^-5", "0.05"),
right = FALSE
))
top_genes <- deseq.bbl.data.combined %>%
group_by(cancer_type) %>%
mutate(rank = rank(-abs(log2FoldChange))) %>%
dplyr::filter(rank <= 10) %>%
ungroup()
ggplot(top_genes, aes(y = cancer_type, x = gene_symbol, size = fdr_category, fill = log2FoldChange)) +
geom_point(alpha = 0.5, shape = 21, color = "black") +
scale_size_manual(values = sizes) +
scale_fill_gradient2(low = "blue", mid = "white", high = "red", limits = c(min(deseq.bbl.data.combined$log2FoldChange), max(deseq.bbl.data.combined$log2FoldChange))) +
theme_minimal() +
theme(
axis.text.x = element_text(size = 9, angle = 90, hjust = 1)
) +
theme(legend.position = "bottom") +
theme(legend.position = "bottom") +
labs(size = "Adjusted p-value", fill = "log2 FC", y = "Cancer type", x = "Gene")
}
perform_vsd <- function(genes) {
tcga_rcd <- list()
for (project in projects) {
rownames(genes) <- genes$gene_id
tcga_rcd[[project]] <- tcga_matrix[[project]][rownames(tcga_matrix[[project]]) %in% genes$gene_id, ]
tcga_rcd[[project]] <- tcga_rcd[[project]][, rownames(samples[[project]])]
}
vsd_rcd <- list()
for (project in projects) {
print(project)
print("=============")
dds <- DESeqDataSetFromMatrix(
countData = tcga_rcd[[project]],
colData = samples[[project]],
design = ~type
)
dds <- filter_genes(dds, min_count = 10)
# Perform variance stabilization
dds <- estimateSizeFactors(dds)
nsub <- sum(rowMeans(counts(dds, normalized = TRUE)) > 10)
vsd <- vst(dds, nsub = nsub)
vsd_rcd[[project]] <- assay(vsd)
}
return(vsd_rcd)
}
Fetch the gene set of interest.
genes <- read.csv(paste0(RCDdb, "Necroptosis.csv"))
print(genes)
genes$gene_id <- cleanid(genes$gene_id)
genes <- distinct(genes, gene_id, .keep_all = TRUE)
genes <- subset(genes, gene_id != "")
genes
Filter the genes to include only those in the gene set of interest, and then perform differential gene expression analysis.
deseq.bbl.data.combined <- filter_gene_set_and_perform_dgea(genes)
[1] "TCGA-COAD"
[1] "============="
Warning: some variables in design formula are characters, converting to factorsestimating size factors
estimating dispersions
gene-wise dispersion estimates
mean-dispersion relationship
final dispersion estimates
fitting model and testing
-- replacing outliers and refitting for 1 genes
-- DESeq argument 'minReplicatesForReplace' = 7
-- original counts are preserved in counts(dds)
estimating dispersions
fitting model and testing
deseq.bbl.data.combined
Plot the results.
plot_dgea(deseq.bbl.data.combined)
Perform variance-stabilizing transformation for further downstream analysis (i.e., for survival analysis).
vsd <- perform_vsd(genes)
[1] "TCGA-COAD"
[1] "============="
Download clinical data from TCGA, and perform some preprocessing: -
The deceased
column should be FALSE
if the
patient is alive and TRUE
otherwise - The
overall_survival
column should reflect the follow-up time
if the patient is alive and the days to death otherwise
download_clinical_data <- function(project) {
clinical_data <- GDCquery_clinic(project)
clinical_data$deceased <- ifelse(clinical_data$vital_status == "Alive", FALSE, TRUE)
clinical_data$overall_survival <- ifelse(clinical_data$vital_status == "Alive",
clinical_data$days_to_last_follow_up,
clinical_data$days_to_death
)
return(clinical_data)
}
tcga_clinical <- list()
for (project in projects) {
tcga_clinical[[project]] <- download_clinical_data(project)
}
Write utility functions for performing survival analysis.
construct_gene_df <- function(gene_of_interest, project) {
gene_df <- vsd[[project]] %>%
as.data.frame() %>%
rownames_to_column(var = "gene_id") %>%
gather(key = "case_id", value = "counts", -gene_id) %>%
left_join(., genes, by = "gene_id") %>%
dplyr::filter(gene == gene_of_interest) %>%
dplyr::filter(case_id %in% rownames(samples[[project]] %>% dplyr::filter(type == "tumor")))
q1 <- quantile(gene_df$counts, probs = 0.25)
q3 <- quantile(gene_df$counts, probs = 0.75)
gene_df$strata <- ifelse(gene_df$counts >= q3, "HIGH", ifelse(gene_df$counts <= q1, "LOW", "MIDDLE"))
gene_df <- gene_df %>% dplyr::filter(strata %in% c("LOW", "HIGH"))
gene_df$case_id <- paste0(sapply(strsplit(as.character(gene_df$case_id), "-"), `[`, 1), '-',
sapply(strsplit(as.character(gene_df$case_id), "-"), `[`, 2), '-',
sapply(strsplit(as.character(gene_df$case_id), "-"), `[`, 3))
gene_df <- merge(gene_df, tcga_clinical[[project]], by.x = "case_id", by.y = "submitter_id")
return(gene_df)
}
compute_surival_fit <- function(gene_df) {
return (survfit(Surv(overall_survival, deceased) ~ strata, data = gene_df))
}
compute_cox <- function(gene_df) {
return (coxph(Surv(overall_survival, deceased) ~ strata, data=gene_df))
}
plot_survival <- function(fit) {
return(ggsurvplot(fit,
data = gene_df,
pval = T,
risk.table = T,
risk.table.height = 0.3
))
}
compute_survival_diff <- function(gene_df) {
return(survdiff(Surv(overall_survival, deceased) ~ strata, data = gene_df))
}
Perform survival analysis by testing for the difference in the Kaplan-Meier curves using the G-rho family of Harrington and Fleming tests: https://rdrr.io/cran/survival/man/survdiff.html
MLKL is the primary executor of necroptosis.
significant_projects <- c()
significant_genes <- c()
ctr <- 1
for (project in projects) {
for (gene in c("MLKL", genes$gene)) {
cat(project, gene, "\n\n")
cat(project, gene, "\n\n")
error <- tryCatch (
{
gene_df <- construct_gene_df(gene, project)
},
error = function(e) {
cat("\n\n============================\n\n")
e
}
)
if(inherits(error, "error")) next
if (nrow(gene_df) > 0) {
fit <- compute_surival_fit(gene_df)
tryCatch (
{
survival <- compute_survival_diff(gene_df)
cox <- compute_cox(gene_df)
print(ctr)
ctr <- ctr + 1
print(survival)
cat("\n")
print(cox)
print(plot_survival(fit))
if (pchisq(survival$chisq, length(survival$n)-1, lower.tail = FALSE) < 0.05) {
significant_projects <- c(significant_projects, project)
significant_genes <- c(significant_genes, gene)
}
},
error = function(e) {
}
)
}
cat("\n\n============================\n\n")
}
}
TCGA-COAD MLKL
TCGA-COAD MLKL
[1] 1
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 4.31 0.109 0.339
strata=LOW 2 2 2.69 0.175 0.339
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.5152 0.5974 0.8935 -0.577 0.564
Likelihood ratio test=0.35 on 1 df, p=0.5557
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD RBCK1
TCGA-COAD RBCK1
[1] 2
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 4.35 0.419 4.26
strata=LOW 2 2 0.65 2.804 4.26
Chisq= 4.3 on 1 degrees of freedom, p= 0.04
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.232e+01 4.923e+09 3.308e+04 0.001 0.999
Likelihood ratio test=4.61 on 1 df, p=0.03188
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD JAK2
TCGA-COAD JAK2
[1] 3
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.48 0.0941 0.26
strata=LOW 3 3 2.52 0.0928 0.26
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.5892 1.8026 1.1718 0.503 0.615
Likelihood ratio test=0.27 on 1 df, p=0.6001
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD ZBP1
TCGA-COAD ZBP1
[1] 4
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=9, 15 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 4.19 0.155 0.333
strata=LOW 4 4 4.81 0.135 0.333
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.4224 0.6555 0.7374 -0.573 0.567
Likelihood ratio test=0.34 on 1 df, p=0.5615
n= 9, number of events= 9
(15 observations deleted due to missingness)
============================
TCGA-COAD RNF31
TCGA-COAD RNF31
[1] 5
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 1.73 0.0410 0.0739
strata=LOW 3 3 3.27 0.0218 0.0739
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.2739 0.7604 1.0107 -0.271 0.786
Likelihood ratio test=0.07 on 1 df, p=0.7866
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD IFNB1
TCGA-COAD IFNB1
============================
TCGA-COAD TRAF5
TCGA-COAD TRAF5
[1] 6
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 1.03 3.788 5.28
strata=LOW 5 5 6.97 0.558 5.28
Chisq= 5.3 on 1 degrees of freedom, p= 0.02
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -2.2495 0.1055 1.1729 -1.918 0.0551
Likelihood ratio test=4.43 on 1 df, p=0.03535
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD BIRC2
TCGA-COAD BIRC2
[1] 7
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 0.983 1.051 1.59
strata=LOW 3 3 4.017 0.257 1.59
Chisq= 1.6 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.4388 0.2372 1.2359 -1.164 0.244
Likelihood ratio test=1.46 on 1 df, p=0.2262
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD TRAF2
TCGA-COAD TRAF2
[1] 8
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 5.467 0.393 5.63
strata=LOW 2 2 0.533 4.033 5.63
Chisq= 5.6 on 1 degrees of freedom, p= 0.02
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.195e+01 3.399e+09 2.380e+04 0.001 0.999
Likelihood ratio test=5.42 on 1 df, p=0.01995
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD BCL2
TCGA-COAD BCL2
[1] 9
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 5.15 0.00423 0.0191
strata=LOW 2 2 1.85 0.01176 0.0191
Chisq= 0 on 1 degrees of freedom, p= 0.9
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.1278 1.1363 0.9241 0.138 0.89
Likelihood ratio test=0.02 on 1 df, p=0.8905
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD STAT4
TCGA-COAD STAT4
[1] 10
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 1.98 0.521 0.899
strata=LOW 3 3 4.02 0.257 0.899
Chisq= 0.9 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.8606 0.4229 0.9325 -0.923 0.356
Likelihood ratio test=0.87 on 1 df, p=0.3496
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD BIRC3
TCGA-COAD BIRC3
[1] 11
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 4.3 0.0216 0.0544
strata=LOW 4 4 3.7 0.0251 0.0544
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.1798 1.1970 0.7718 0.233 0.816
Likelihood ratio test=0.05 on 1 df, p=0.8152
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD STAT1
TCGA-COAD STAT1
[1] 12
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 4 0.248 0.68
strata=LOW 4 4 3 0.330 0.68
Chisq= 0.7 on 1 degrees of freedom, p= 0.4
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.7106 2.0353 0.8786 0.809 0.419
Likelihood ratio test=0.69 on 1 df, p=0.405
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD STAT2
TCGA-COAD STAT2
[1] 13
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 6.05 0.181 0.947
strata=LOW 3 3 1.95 0.561 0.947
Chisq= 0.9 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.8766 2.4026 0.9275 0.945 0.345
Likelihood ratio test=0.92 on 1 df, p=0.338
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD TNFSF10
TCGA-COAD TNFSF10
[1] 14
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.67 0.167 0.615
strata=LOW 2 2 1.33 0.333 0.615
Chisq= 0.6 on 1 degrees of freedom, p= 0.4
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.9406 2.5616 1.2403 0.758 0.448
Likelihood ratio test=0.62 on 1 df, p=0.4325
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD TYK2
TCGA-COAD TYK2
[1] 15
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 3.417 0.0508 0.424
strata=LOW 1 1 0.583 0.2976 0.424
Chisq= 0.4 on 1 degrees of freedom, p= 0.5
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.8959 2.4495 1.4215 0.63 0.529
Likelihood ratio test=0.38 on 1 df, p=0.535
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD PPIA
TCGA-COAD PPIA
[1] 16
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 3.45 0.0575 0.142
strata=LOW 4 4 3.55 0.0558 0.142
Chisq= 0.1 on 1 degrees of freedom, p= 0.7
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.3150 1.3703 0.8385 0.376 0.707
Likelihood ratio test=0.14 on 1 df, p=0.7076
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD TNFRSF1A
TCGA-COAD TNFRSF1A
[1] 17
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 2.93 0.388 0.961
strata=LOW 2 2 3.07 0.371 0.961
Chisq= 1 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.0569 0.3475 1.1267 -0.938 0.348
Likelihood ratio test=1.05 on 1 df, p=0.3051
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD CAPN2
TCGA-COAD CAPN2
[1] 18
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 1.73 0.0410 0.0739
strata=LOW 3 3 3.27 0.0218 0.0739
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.2739 0.7604 1.0107 -0.271 0.786
Likelihood ratio test=0.07 on 1 df, p=0.7866
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD FAS
TCGA-COAD FAS
[1] 19
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 1.78 0.841 1.21
strata=LOW 5 5 6.22 0.240 1.21
Chisq= 1.2 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.8821 0.4139 0.8251 -1.069 0.285
Likelihood ratio test=1.11 on 1 df, p=0.2921
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD PGAM5
TCGA-COAD PGAM5
[1] 20
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 5.79 0.552 3.92
strata=LOW 3 3 1.21 2.638 3.92
Chisq= 3.9 on 1 degrees of freedom, p= 0.05
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.008 7.449 1.172 1.713 0.0867
Likelihood ratio test=3.53 on 1 df, p=0.06043
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD MLKL
TCGA-COAD MLKL
[1] 21
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 4.31 0.109 0.339
strata=LOW 2 2 2.69 0.175 0.339
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.5152 0.5974 0.8935 -0.577 0.564
Likelihood ratio test=0.35 on 1 df, p=0.5557
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD FADD
TCGA-COAD FADD
[1] 22
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=3, 21 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 0.833 0.0333 0.0588
strata=LOW 2 2 2.167 0.0128 0.0588
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.3466 0.7071 1.4355 -0.241 0.809
Likelihood ratio test=0.06 on 1 df, p=0.8096
n= 3, number of events= 3
(21 observations deleted due to missingness)
============================
TCGA-COAD TRPM7
TCGA-COAD TRPM7
[1] 23
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 1.28 0.0626 0.0979
strata=LOW 4 4 3.72 0.0216 0.0979
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.3695 1.4470 1.1865 0.311 0.755
Likelihood ratio test=0.1 on 1 df, p=0.7492
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD FASLG
TCGA-COAD FASLG
[1] 24
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 5 5 6.22 0.240 1.21
strata=LOW 3 3 1.78 0.841 1.21
Chisq= 1.2 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.8821 2.4159 0.8251 1.069 0.285
Likelihood ratio test=1.11 on 1 df, p=0.2921
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD TNFRSF10B
TCGA-COAD TNFRSF10B
[1] 25
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 1.73 0.0410 0.0739
strata=LOW 3 3 3.27 0.0218 0.0739
Chisq= 0.1 on 1 degrees of freedom, p= 0.8
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.2739 0.7604 1.0107 -0.271 0.786
Likelihood ratio test=0.07 on 1 df, p=0.7866
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD VPS4A
TCGA-COAD VPS4A
[1] 26
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 0.95 0.002632 0.00353
strata=LOW 5 5 5.05 0.000495 0.00353
Chisq= 0 on 1 degrees of freedom, p= 1
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.06936 0.93299 1.16790 -0.059 0.953
Likelihood ratio test=0 on 1 df, p=0.9529
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD TNFRSF10A
TCGA-COAD TNFRSF10A
[1] 27
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 2.67 0.661 1.5
strata=LOW 3 3 4.33 0.408 1.5
Chisq= 1.5 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.3134 0.2689 1.1415 -1.151 0.25
Likelihood ratio test=1.62 on 1 df, p=0.2028
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD GLUD1
TCGA-COAD GLUD1
[1] 28
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.07 0.00215 0.00375
strata=LOW 4 4 3.93 0.00113 0.00375
Chisq= 0 on 1 degrees of freedom, p= 1
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.05656 1.05819 0.92349 0.061 0.951
Likelihood ratio test=0 on 1 df, p=0.9511
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD EIF2AK2
TCGA-COAD EIF2AK2
============================
TCGA-COAD CYLD
TCGA-COAD CYLD
[1] 29
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 0.783 1.890 2.6
strata=LOW 4 4 5.217 0.284 2.6
Chisq= 2.6 on 1 degrees of freedom, p= 0.1
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.766 0.171 1.235 -1.43 0.153
Likelihood ratio test=2.2 on 1 df, p=0.1382
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD SPATA2
TCGA-COAD SPATA2
[1] 30
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=3, 21 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.667 0.167 2
strata=LOW 1 1 0.333 1.333 2
Chisq= 2 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.215e+01 4.171e+09 4.566e+04 0 1
Likelihood ratio test=2.2 on 1 df, p=0.1383
n= 3, number of events= 3
(21 observations deleted due to missingness)
============================
TCGA-COAD DNM1L
TCGA-COAD DNM1L
[1] 31
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 2.08 0.563 1.78
strata=LOW 3 3 1.92 0.612 1.78
Chisq= 1.8 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.085e+01 1.136e+09 2.490e+04 0.001 0.999
Likelihood ratio test=2.77 on 1 df, p=0.09589
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD CFLAR
TCGA-COAD CFLAR
[1] 32
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 0.25 2.25 3
strata=LOW 3 3 3.75 0.15 3
Chisq= 3 on 1 degrees of freedom, p= 0.08
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -2.208e+01 2.562e-10 3.607e+04 -0.001 1
Likelihood ratio test=2.77 on 1 df, p=0.09589
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD TICAM1
TCGA-COAD TICAM1
[1] 33
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 4.88 0.160 0.985
strata=LOW 2 2 1.12 0.699 0.985
Chisq= 1 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.9671 2.6303 1.0107 0.957 0.339
Likelihood ratio test=0.88 on 1 df, p=0.3471
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD HSP90AA1
TCGA-COAD HSP90AA1
[1] 34
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 4.52 0.509 2.56
strata=LOW 3 3 1.48 1.551 2.56
Chisq= 2.6 on 1 degrees of freedom, p= 0.1
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 1.688 5.408 1.172 1.44 0.15
Likelihood ratio test=2.47 on 1 df, p=0.1159
n= 6, number of events= 6
(19 observations deleted due to missingness)
============================
TCGA-COAD IL33
TCGA-COAD IL33
[1] 35
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 1.34 2.069 3.21
strata=LOW 5 5 6.66 0.415 3.21
Chisq= 3.2 on 1 degrees of freedom, p= 0.07
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.8587 0.1559 1.1753 -1.581 0.114
Likelihood ratio test=3 on 1 df, p=0.08308
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD IRF9
TCGA-COAD IRF9
============================
TCGA-COAD SHARPIN
TCGA-COAD SHARPIN
[1] 36
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 3.52 0.0759 0.297
strata=LOW 2 2 1.48 0.1800 0.297
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.5493 1.7321 1.0198 0.539 0.59
Likelihood ratio test=0.29 on 1 df, p=0.5922
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD IFNAR1
TCGA-COAD IFNAR1
[1] 37
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.33 0.0476 0.154
strata=LOW 2 2 1.67 0.0667 0.154
Chisq= 0.2 on 1 degrees of freedom, p= 0.7
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.4812 1.6180 1.2380 0.389 0.697
Likelihood ratio test=0.16 on 1 df, p=0.6913
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD XIAP
TCGA-COAD XIAP
[1] 38
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 3.57 0.090 0.265
strata=LOW 3 3 2.43 0.132 0.265
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.4730 1.6048 0.9269 0.51 0.61
Likelihood ratio test=0.27 on 1 df, p=0.6059
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD VDAC3
TCGA-COAD VDAC3
[1] 39
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 5.07 0.845 2.97
strata=LOW 5 5 2.93 1.463 2.97
Chisq= 3 on 1 degrees of freedom, p= 0.08
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 1.713 5.547 1.108 1.546 0.122
Likelihood ratio test=3.22 on 1 df, p=0.07281
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD CAMK2A
TCGA-COAD CAMK2A
[1] 40
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 0.983 1.051 1.59
strata=LOW 4 4 5.017 0.206 1.59
Chisq= 1.6 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -1.4388 0.2372 1.2359 -1.164 0.244
Likelihood ratio test=1.46 on 1 df, p=0.2262
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD VDAC1
TCGA-COAD VDAC1
[1] 41
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 1 1 2.28 0.721 2.01
strata=LOW 4 4 2.72 0.606 2.01
Chisq= 2 on 1 degrees of freedom, p= 0.2
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.077e+01 1.049e+09 2.244e+04 0.001 0.999
Likelihood ratio test=3.22 on 1 df, p=0.07279
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD RIPK3
TCGA-COAD RIPK3
[1] 42
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.69 0.175 0.339
strata=LOW 5 5 4.31 0.109 0.339
Chisq= 0.3 on 1 degrees of freedom, p= 0.6
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.5152 1.6740 0.8935 0.577 0.564
Likelihood ratio test=0.35 on 1 df, p=0.5557
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD CAPN1
TCGA-COAD CAPN1
[1] 43
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 4.02 0.257 0.899
strata=LOW 3 3 1.98 0.521 0.899
Chisq= 0.9 on 1 degrees of freedom, p= 0.3
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.8606 2.3646 0.9325 0.923 0.356
Likelihood ratio test=0.87 on 1 df, p=0.3496
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD USP21
TCGA-COAD USP21
[1] 44
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 5.59 0.451 2.82
strata=LOW 3 3 1.41 1.786 2.82
Chisq= 2.8 on 1 degrees of freedom, p= 0.09
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 1.744 5.719 1.166 1.496 0.135
Likelihood ratio test=2.68 on 1 df, p=0.1015
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD AIFM1
TCGA-COAD AIFM1
[1] 45
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 3.45 0.0575 0.142
strata=LOW 4 4 3.55 0.0558 0.142
Chisq= 0.1 on 1 degrees of freedom, p= 0.7
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.3150 1.3703 0.8385 0.376 0.707
Likelihood ratio test=0.14 on 1 df, p=0.7076
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD TRADD
TCGA-COAD TRADD
[1] 46
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 4.55 0.0665 0.871
strata=LOW 1 1 0.45 0.6722 0.871
Chisq= 0.9 on 1 degrees of freedom, p= 0.4
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 1.242 3.464 1.418 0.876 0.381
Likelihood ratio test=0.72 on 1 df, p=0.395
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD OPTN
TCGA-COAD OPTN
[1] 47
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=4, 20 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 1.33 0.333 0.615
strata=LOW 2 2 2.67 0.167 0.615
Chisq= 0.6 on 1 degrees of freedom, p= 0.4
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -0.9406 0.3904 1.2403 -0.758 0.448
Likelihood ratio test=0.62 on 1 df, p=0.4325
n= 4, number of events= 4
(20 observations deleted due to missingness)
============================
TCGA-COAD PPID
TCGA-COAD PPID
[1] 48
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 4.55 0.0665 0.871
strata=LOW 1 1 0.45 0.6722 0.871
Chisq= 0.9 on 1 degrees of freedom, p= 0.4
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 1.242 3.464 1.418 0.876 0.381
Likelihood ratio test=0.72 on 1 df, p=0.395
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD RIPK1
TCGA-COAD RIPK1
============================
TCGA-COAD TLR3
TCGA-COAD TLR3
[1] 49
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 0.65 2.804 4.26
strata=LOW 3 3 4.35 0.419 4.26
Chisq= 4.3 on 1 degrees of freedom, p= 0.04
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -2.232e+01 2.031e-10 3.308e+04 -0.001 0.999
Likelihood ratio test=4.61 on 1 df, p=0.03188
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD FAF1
TCGA-COAD FAF1
[1] 50
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 4.45 0.0464 0.135
strata=LOW 4 4 3.55 0.0583 0.135
Chisq= 0.1 on 1 degrees of freedom, p= 0.7
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.2873 1.3329 0.7856 0.366 0.715
Likelihood ratio test=0.13 on 1 df, p=0.7165
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD JAK1
TCGA-COAD JAK1
[1] 51
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 2.74 0.198 0.466
strata=LOW 5 5 4.26 0.127 0.466
Chisq= 0.5 on 1 degrees of freedom, p= 0.5
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 0.7485 2.1137 1.1196 0.668 0.504
Likelihood ratio test=0.52 on 1 df, p=0.4724
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
Display the results only for genes where a significant difference in survival has been reported.
significant_genes
[1] "RBCK1" "TRAF5" "TRAF2" "PGAM5" "TLR3"
num_significant_genes <- length(significant_genes)
if (num_significant_genes > 0) {
for (i in 1 : num_significant_genes) {
project <- significant_projects[[i]]
gene <- significant_genes[[i]]
cat(project, gene, "\n\n")
gene_df <- construct_gene_df(gene, project)
fit <- compute_surival_fit(gene_df)
survival <- compute_survival_diff(gene_df)
cox <- compute_cox(gene_df)
print(survival)
cat("\n")
print(cox)
print(plot_survival(fit))
cat("\n\n============================\n\n")
}
}
TCGA-COAD RBCK1
Warning: Loglik converged before variable 1 ; coefficient may be infinite.
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 4.35 0.419 4.26
strata=LOW 2 2 0.65 2.804 4.26
Chisq= 4.3 on 1 degrees of freedom, p= 0.04
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.232e+01 4.923e+09 3.308e+04 0.001 0.999
Likelihood ratio test=4.61 on 1 df, p=0.03188
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
TCGA-COAD TRAF5
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=8, 16 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 3 3 1.03 3.788 5.28
strata=LOW 5 5 6.97 0.558 5.28
Chisq= 5.3 on 1 degrees of freedom, p= 0.02
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -2.2495 0.1055 1.1729 -1.918 0.0551
Likelihood ratio test=4.43 on 1 df, p=0.03535
n= 8, number of events= 8
(16 observations deleted due to missingness)
============================
TCGA-COAD TRAF2
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=6, 18 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 5.467 0.393 5.63
strata=LOW 2 2 0.533 4.033 5.63
Chisq= 5.6 on 1 degrees of freedom, p= 0.02
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.195e+01 3.399e+09 2.380e+04 0.001 0.999
Likelihood ratio test=5.42 on 1 df, p=0.01995
n= 6, number of events= 6
(18 observations deleted due to missingness)
============================
TCGA-COAD PGAM5
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=7, 17 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 4 4 5.79 0.552 3.92
strata=LOW 3 3 1.21 2.638 3.92
Chisq= 3.9 on 1 degrees of freedom, p= 0.05
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW 2.008 7.449 1.172 1.713 0.0867
Likelihood ratio test=3.53 on 1 df, p=0.06043
n= 7, number of events= 7
(17 observations deleted due to missingness)
============================
TCGA-COAD TLR3
Call:
survdiff(formula = Surv(overall_survival, deceased) ~ strata,
data = gene_df)
n=5, 19 observations deleted due to missingness.
N Observed Expected (O-E)^2/E (O-E)^2/V
strata=HIGH 2 2 0.65 2.804 4.26
strata=LOW 3 3 4.35 0.419 4.26
Chisq= 4.3 on 1 degrees of freedom, p= 0.04
Call:
coxph(formula = Surv(overall_survival, deceased) ~ strata, data = gene_df)
coef exp(coef) se(coef) z p
strataLOW -2.232e+01 2.031e-10 3.308e+04 -0.001 0.999
Likelihood ratio test=4.61 on 1 df, p=0.03188
n= 5, number of events= 5
(19 observations deleted due to missingness)
============================
De La Salle University, Manila, Philippines, gonzales.markedward@gmail.com↩︎
De La Salle University, Manila, Philippines, anish.shrestha@dlsu.edu.ph↩︎