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Computational Phenotyping

Computational Phenotyping is the process of transforming the noisy, massive Electronic Health Record (EHR) data into meaningful medical concepts that can be used to predict the risk of disease for an individual, or the response to drug therapy.

Source: Privacy-Preserving Tensor Factorization for Collaborative Health Data Analysis

Papers

Showing 110 of 18 papers

TitleStatusHype
PMHLD: Patch Map Based Hybrid Learning DehazeNet for Single Image Haze RemovalCode1
Multitask learning and benchmarking with clinical time series dataCode1
Supervised Coupled Matrix-Tensor Factorization (SCMTF) for Computational Phenotyping of Patient Reported Outcomes in Ulcerative ColitisCode0
SHREC and PHEONA: Using Large Language Models to Advance Next-Generation Computational Phenotyping0
PHEONA: An Evaluation Framework for Large Language Model-based Approaches to Computational Phenotyping0
Unsupervised EHR-based Phenotyping via Matrix and Tensor Decompositions0
Communication Efficient Generalized Tensor Factorization for Decentralized Healthcare Networks0
Learning Inter-Modal Correspondence and Phenotypes from Multi-Modal Electronic Health RecordsCode0
Privacy-Preserving Tensor Factorization for Collaborative Health Data Analysis0
Analysis | OPEN | Published: 17 June 2019 Multitask learning and benchmarking with clinical time series dataCode0
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