PIVETed-Granite: Computational Phenotypes through Constrained Tensor Factorization (1808.02602v1)
Abstract: It has been recently shown that sparse, nonnegative tensor factorization of multi-modal electronic health record data is a promising approach to high-throughput computational phenotyping. However, such approaches typically do not leverage available domain knowledge while extracting the phenotypes; hence, some of the suggested phenotypes may not map well to clinical concepts or may be very similar to other suggested phenotypes. To address these issues, we present a novel, automatic approach called PIVETed-Granite that mines existing biomedical literature (PubMed) to obtain cannot-link constraints that are then used as side-information during a tensor-factorization based computational phenotyping process. The resulting improvements are clearly observed in experiments using a large dataset from VUMC to identify phenotypes for hypertensive patients.
- Jette Henderson (6 papers)
- Bradley A. Malin (27 papers)
- Joyce C. Ho (32 papers)
- Joydeep Ghosh (74 papers)