AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for large-scale discovery of computational models of disease, or phenotypes. We tackle this challenge through the joint modeling of a large set of diseases and a large set of clinical observations. The observations are drawn directly from heterogeneous patient record data (notes, laboratory tests, medications, and diagnosis codes), and the diseases are modeled in an unsupervised fashion. We apply UPhenome to two qualitatively different mixtures of patients and diseases: records of extremely sick patients in the intensive care unit with constant monitoring, and records of outpatients regularly followed by care providers over multiple years. We demon...
The widespread adoption of Electronic Health Records (EHRs) means an unprecedented amount of patient...
Large amounts of rich, heterogeneous information nowadays routinely collected by health care provide...
Objective To facilitate patient disease subset and risk factor identification by constructing a pipe...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
AbstractPatient interactions with health care providers result in entries to electronic health recor...
With the recent tsunami of medical data from electronic health records (EHRs), there has been a rise...
The practice of medicine is predicated on discovering commonalities or distinguishing characteristic...
We develop an unsupervised probabilistic model for heterogeneous Electronic Health Record (EHR) data...
Objective To facilitate patient disease subset and risk factor identification by constructing a pipe...
Over the past decade, healthcare systems around the world have transitioned from paper to electronic...
PosterInternational audienceThe aim of this study is to develop a generative and probabilistic stati...
PosterInternational audienceThe aim of this study is to develop a generative and probabilistic stati...
Computer based analysis of Electronic Health Records (EHRs) has the potential to provide major novel...
Objective: To facilitate patient disease subset and risk factor identification by constructing a pip...
The widespread adoption of Electronic Health Records (EHRs) means an unprecedented amount of patient...
Large amounts of rich, heterogeneous information nowadays routinely collected by health care provide...
Objective To facilitate patient disease subset and risk factor identification by constructing a pipe...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
AbstractPatient interactions with health care providers result in entries to electronic health recor...
With the recent tsunami of medical data from electronic health records (EHRs), there has been a rise...
The practice of medicine is predicated on discovering commonalities or distinguishing characteristic...
We develop an unsupervised probabilistic model for heterogeneous Electronic Health Record (EHR) data...
Objective To facilitate patient disease subset and risk factor identification by constructing a pipe...
Over the past decade, healthcare systems around the world have transitioned from paper to electronic...
PosterInternational audienceThe aim of this study is to develop a generative and probabilistic stati...
PosterInternational audienceThe aim of this study is to develop a generative and probabilistic stati...
Computer based analysis of Electronic Health Records (EHRs) has the potential to provide major novel...
Objective: To facilitate patient disease subset and risk factor identification by constructing a pip...
The widespread adoption of Electronic Health Records (EHRs) means an unprecedented amount of patient...
Large amounts of rich, heterogeneous information nowadays routinely collected by health care provide...
Objective To facilitate patient disease subset and risk factor identification by constructing a pipe...