Precision medicine is an approach for disease treatment that defines treatment strategies based on the individual characteristics of the patients. Motivated by an open problem in cancer genomics, we develop a novel model that flexibly clusters patients with similar predictive characteristics and similar treatment responses; this approach identifies, via predictive inference, which one among a set of treatments is better suited for a new patient. The proposed method is fully model-based, avoiding uncertainty underestimation attained when treatment assignment is performed by adopting heuristic clustering procedures, and belongs to the class of product partition models with covariates, here extended to include the cohesion induced by the Norma...
In this text, the methodology developed by Tian et al. is verified by the author via a number of num...
Predicting clinical response to anticancer drugs remains a major challenge in cancer treatment. Emer...
We propose a new methodology to select and rank covariates associated to avariable of interest in...
Precision medicine has emerged from the awareness that many human diseases are intrinsically heterog...
Colorectal cancer is the second leading cause of cancer related deaths in the United States, with mo...
In 2015 President Barack Obama announced the launch of the Precision Medicine Initiative, spurring a...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
International audienceWe propose a new methodology for selecting and ranking covariates associated w...
Logical models of cancer pathways are typically built by mining the literature for relevant experime...
Copyright © 2015 Junsheng Ma et al. This is an open access article distributed under the Creative Co...
All people are unique and so are their diseases. Our genomes, disease histories, behavior, and lifes...
Surrogate endpoint (SE) for overall survival in cancer patients is essential to improving the effici...
BACKGROUND: Cancer patients with advanced disease routinely exhaust available clinical regimens and ...
Cancer has been a perennial challenge to clinicians and researchers for more than a century. The exi...
In modern biomedical research, an emerging challenge is data heterogeneity. Ignoring such heterogene...
In this text, the methodology developed by Tian et al. is verified by the author via a number of num...
Predicting clinical response to anticancer drugs remains a major challenge in cancer treatment. Emer...
We propose a new methodology to select and rank covariates associated to avariable of interest in...
Precision medicine has emerged from the awareness that many human diseases are intrinsically heterog...
Colorectal cancer is the second leading cause of cancer related deaths in the United States, with mo...
In 2015 President Barack Obama announced the launch of the Precision Medicine Initiative, spurring a...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
International audienceWe propose a new methodology for selecting and ranking covariates associated w...
Logical models of cancer pathways are typically built by mining the literature for relevant experime...
Copyright © 2015 Junsheng Ma et al. This is an open access article distributed under the Creative Co...
All people are unique and so are their diseases. Our genomes, disease histories, behavior, and lifes...
Surrogate endpoint (SE) for overall survival in cancer patients is essential to improving the effici...
BACKGROUND: Cancer patients with advanced disease routinely exhaust available clinical regimens and ...
Cancer has been a perennial challenge to clinicians and researchers for more than a century. The exi...
In modern biomedical research, an emerging challenge is data heterogeneity. Ignoring such heterogene...
In this text, the methodology developed by Tian et al. is verified by the author via a number of num...
Predicting clinical response to anticancer drugs remains a major challenge in cancer treatment. Emer...
We propose a new methodology to select and rank covariates associated to avariable of interest in...