We built a novel Bayesian hierarchical survival model based on the somatic mutation profile of patients across 50 genes and 27 cancer types. The pan-cancer quality allows for the model to “borrow” information across cancer types, motivated by the assumption that similar mutation profiles may have similar (but not necessarily identical) effects on survival across different tissues of origin or tumor types. The effect of a mutation at each gene was allowed to vary by cancer type, whereas the mean effect of each gene was shared across cancers. Within this framework, we considered 4 parametric survival models (normal, log-normal, exponential, and Weibull), and we compared their performance via a cross-validation approach in which we fit each mo...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Abstract Background Group structures among genes encoded in functional relationships or biological p...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
MOTIVATION: Cancer cell genomes acquire several genetic alterations during somatic evolution from a ...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
We developed subclone multiplicity allocation and somatic heterogeneity (SMASH), a new statistical m...
Motivation Personalized medicine aims at combining genetic, clinical, and environmental data to imp...
Predicting cancer survival from molecular data is an important aspect of biomedical research because...
Abstract Background Breast cancer is the most common type of invasive cancer in woman. It accounts f...
<p>Identifying patient-specific prognostic biomarkers is of critical importance in developing person...
Abstract Background Over the past decades, approaches for diagnosing and treating cancer have seen s...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
MOTIVATION: Cancer is an evolutionary process characterized by accumulating mutations. However, the ...
We propose methods to integrate data across several genomic platforms using a hierarchical Bayesian ...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Abstract Background Group structures among genes encoded in functional relationships or biological p...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
MOTIVATION: Cancer cell genomes acquire several genetic alterations during somatic evolution from a ...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
We developed subclone multiplicity allocation and somatic heterogeneity (SMASH), a new statistical m...
Motivation Personalized medicine aims at combining genetic, clinical, and environmental data to imp...
Predicting cancer survival from molecular data is an important aspect of biomedical research because...
Abstract Background Breast cancer is the most common type of invasive cancer in woman. It accounts f...
<p>Identifying patient-specific prognostic biomarkers is of critical importance in developing person...
Abstract Background Over the past decades, approaches for diagnosing and treating cancer have seen s...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
MOTIVATION: Cancer is an evolutionary process characterized by accumulating mutations. However, the ...
We propose methods to integrate data across several genomic platforms using a hierarchical Bayesian ...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Somatic mutation accumulation is a major cause of abnormal cell growth. However, some mutations in c...
Abstract Background Group structures among genes encoded in functional relationships or biological p...