We describe a statistical method for the characterization of genomic aberrations in single nucleotide polymorphism microarray data acquired from cancer genomes. Our approach allows us to model the joint effect of polyploidy, normal DNA contamination and intra-tumour heterogeneity within a single unified Bayesian framework. We demonstrate the efficacy of our method on numerous datasets including laboratory generated mixtures of normal-cancer cell lines and real primary tumours
Abstract Background Single nucleotide polymorphisms (SNPs) are the most common genetic variations in...
Single nucleotide polymorphism (SNP) arrays are powerful tools to delineate genomic aberrations in c...
We describe a bioinformatic tool, Tumor Aberration Prediction Suite (TAPS), for the identification o...
We describe a statistical method for the characterization of genomic aberrations in single nucleotid...
We describe a statistical method for the characterization of genomic aberrations in single nucleotid...
Genetic heterogeneity in a mixed sample of tumor and normal DNA can confound characterization of the...
Detection of DNA aberrations in a tumor sample is often complicated by the contamination of DNA from...
35 pagesInternational audienceIn this chapter, we focus on statistical questions raised by the ident...
Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, and rece...
<div><p>Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, ...
Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, and rece...
We have developed a versatile statistical analysis algorithm for the detection of genomic aberration...
SNP-microarrays are able to measure simultaneously both copy number and genotype at several single n...
Abstract Copy number aberration is a common form of genomic instability in cancer. Gene expression i...
International audienceThe study of genomic DNA alterations (recurrent regions of alteration, pattern...
Abstract Background Single nucleotide polymorphisms (SNPs) are the most common genetic variations in...
Single nucleotide polymorphism (SNP) arrays are powerful tools to delineate genomic aberrations in c...
We describe a bioinformatic tool, Tumor Aberration Prediction Suite (TAPS), for the identification o...
We describe a statistical method for the characterization of genomic aberrations in single nucleotid...
We describe a statistical method for the characterization of genomic aberrations in single nucleotid...
Genetic heterogeneity in a mixed sample of tumor and normal DNA can confound characterization of the...
Detection of DNA aberrations in a tumor sample is often complicated by the contamination of DNA from...
35 pagesInternational audienceIn this chapter, we focus on statistical questions raised by the ident...
Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, and rece...
<div><p>Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, ...
Genomic copy number alteration and allelic imbalance are distinct features of cancer cells, and rece...
We have developed a versatile statistical analysis algorithm for the detection of genomic aberration...
SNP-microarrays are able to measure simultaneously both copy number and genotype at several single n...
Abstract Copy number aberration is a common form of genomic instability in cancer. Gene expression i...
International audienceThe study of genomic DNA alterations (recurrent regions of alteration, pattern...
Abstract Background Single nucleotide polymorphisms (SNPs) are the most common genetic variations in...
Single nucleotide polymorphism (SNP) arrays are powerful tools to delineate genomic aberrations in c...
We describe a bioinformatic tool, Tumor Aberration Prediction Suite (TAPS), for the identification o...