| Literature DB >> 25285329 |
Jesse Davis1, Vítor Santos Costa2, Peggy Peissig3, Michael Caldwell3, Elizabeth Berg4, David Page4.
Abstract
Learning from electronic medical records (EMR) is challenging due to their relational nature and the uncertain dependence between a patient's past and future health status. Statistical relational learning is a natural fit for analyzing EMRs but is less adept at handling their inherent latent structure, such as connections between related medications or diseases. One way to capture the latent structure is via a relational clustering of objects. We propose a novel approach that, instead of pre-clustering the objects, performs a demand-driven clustering during learning. We evaluate our algorithm on three real-world tasks where the goal is to use EMRs to predict whether a patient will have an adverse reaction to a medication. We find that our approach is more accurate than performing no clustering, pre-clustering, and using expert-constructed medical heterarchies.Entities:
Year: 2012 PMID: 25285329 PMCID: PMC4184435
Source DB: PubMed Journal: Proc Int Conf Mach Learn