3260 papers • 126 benchmarks • 313 datasets
Classifying patients after 24h regarding their admission diagnosis, using the APACHE group II and IV labels.
(Image credit: Papersgraph)
These leaderboards are used to track progress in patient-phenotyping-7
Use these libraries to find patient-phenotyping-7 models and implementations
No subtasks available.
This is the first public benchmark on a multi-centre critical care dataset, comparing the performance of clinical gold standard with the authors' predictive model and investigating the impact of numerical variables as well as handling of categorical variables on each of the defined tasks.
This work uses the newly-described non-linear embedding technique called uniform manifold approximation and projection (UMAP) to identify clusters in the embedded data and uses the adjusted Rand index to establish stability in the discovery of these clusters, describing the emergent properties of discovered clusters.
A deep learning approach for clustering time-series data, where each cluster comprises patients who share similar future outcomes of interest (e.g., adverse events, the onset of comorbidities).
A new unsupervised machine learning technique, denominated as Trace-based clustering, and a 5-step methodology in order to support clinicians when identifying patient phenotypes are proposed, showing that the proposed methodology allows physicians to identify consistent patient phenotype.
Adding a benchmark result helps the community track progress.