We develop an unsupervised probabilistic model for heterogeneous Electronic Health Record (EHR) data. Utilizing a mixture model formulation, our approach directly models sequences of arbitrary length, such as medications and laboratory results. This allows for subgrouping and incorporation of the dynamics underlying heterogeneous data types. The model consists of a layered set of latent variables that encode underlying structure in the data. These variables represent subject subgroups at the top layer, and unobserved states for sequences in the second layer. We train this model on episodic data from subjects receiving medical care in the Kaiser Permanente Northern California integrated healthcare delivery system. The resulting properties of...
The use of electronic health records (EHRs) is increasingly common in applied research, providing th...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
AbstractBackground and objectiveRisk stratification aims to provide physicians with the accurate ass...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
Recent development in electronic medical devices or systems has realized the effective collection an...
Recent development in electronic medical devices or systems has realized the effective collection an...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
Advances in sensor and instrumentation technology, together with cost reductions and capacity increa...
This paper addresses the problem of clustering data when the available data measurements are not mul...
Abstract—Dealing with real-life databases often implies handling sets of heterogeneous variables. We...
The use of electronic health records (EHRs) is increasingly common in applied research, providing th...
The use of electronic health records (EHRs) is increasingly common in applied research, providing th...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
AbstractBackground and objectiveRisk stratification aims to provide physicians with the accurate ass...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
AbstractWe present the Unsupervised Phenome Model (UPhenome), a probabilistic graphical model for la...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
The ongoing digitization of healthcare, which has been much accelerated by the widespread adoption o...
Recent development in electronic medical devices or systems has realized the effective collection an...
Recent development in electronic medical devices or systems has realized the effective collection an...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
Advances in sensor and instrumentation technology, together with cost reductions and capacity increa...
This paper addresses the problem of clustering data when the available data measurements are not mul...
Abstract—Dealing with real-life databases often implies handling sets of heterogeneous variables. We...
The use of electronic health records (EHRs) is increasingly common in applied research, providing th...
The use of electronic health records (EHRs) is increasingly common in applied research, providing th...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
AbstractBackground and objectiveRisk stratification aims to provide physicians with the accurate ass...