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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.

Yuan Xue, Nan Du, Anne Mottram, Martin Seneviratne, Andrew M. Dai• 2024

Related benchmarks

TaskDatasetResultRank
Protein Function PredictionPPI 40 tasks (test)
Mean AUC70.2
13
Protein Function PredictionProtein Function Prediction 10 held-out tasks (test)
AUC0.693
11
Multitask protein function predictionPPI Full FT Access
AUC70.2
5
Multitask protein function predictionPPI Task Generalization
AUC0.693
5
Multitask protein function predictionPPI Full FT Access (test)
AUC70.2
5
Multitask protein function predictionPPI Partial FT Access - Unseen tasks (test)
AUC0.693
5
Multitask protein function predictionPPI Partial FT Access - 50% data (test)
AUC0.71
5
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