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Comparing natural language processing representations of coded disease sequences for prediction in electronic health records
11
Zitationen
9
Autoren
2024
Jahr
Abstract
Patient representations produced by sequence-based NLP algorithms from sequences of disease codes demonstrate improved predictive content for patient outcomes compared with representations generated by co-occurrence-based algorithms. This suggests transformer models may be useful for generating multi-purpose representations, even without fine-tuning.
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