Learning to Select the Best Forecasting Tasks for Clinical Outcome Prediction
About
We propose to meta-learn an a self-supervised patient trajectory forecast learning rule by meta-training on a meta-objective that directly optimizes the utility of the patient representation over the subsequent clinical outcome prediction. This meta-objective directly targets the usefulness of a representation generated from unlabeled clinical measurement forecast for later supervised tasks. The meta-learned can then be directly used in target risk prediction, and the limited available samples can be used for further fine-tuning the model performance. The effectiveness of our approach is tested on a real open source patient EHR dataset MIMIC-III. We are able to demonstrate that our attention-based patient state representation approach can achieve much better performance for predicting target risk with low resources comparing with both direct supervised learning and pretraining with all-observation trajectory forecast.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Protein Function Prediction | PPI 40 tasks (test) | Mean AUC70.2 | 13 | |
| Protein Function Prediction | Protein Function Prediction 10 held-out tasks (test) | AUC0.693 | 11 | |
| Multitask protein function prediction | PPI Full FT Access | AUC70.2 | 5 | |
| Multitask protein function prediction | PPI Task Generalization | AUC0.693 | 5 | |
| Multitask protein function prediction | PPI Full FT Access (test) | AUC70.2 | 5 | |
| Multitask protein function prediction | PPI Partial FT Access - Unseen tasks (test) | AUC0.693 | 5 | |
| Multitask protein function prediction | PPI Partial FT Access - 50% data (test) | AUC0.71 | 5 |