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Article Dans Une Revue Information sciences, Information Sciences Année : 2021

LIG-Doctor: efficient patient trajectory prediction using Bidirectional Minimal Gated-Recurrent Networks

Résumé

The interest for patient trajectory prediction, a sort of computer-aided medicine, has steadily increased with the pace of artificial intelligence innovation. Notwithstanding, the design of effective systems able to predict clinical outcomes based on the history of a patient is far from trivial. Works so far are based on neural architectures with low performance, especially when using low-cardinality datasets; alternatively, complex inference approaches are hard to reproduce and/or extrapolate as they are designed for very specific circumstances. We introduce LIG-Doctor, an artificial neural network architecture based on two Minimal Gated Recurrent Unit networks functioning in a bidirectional parallel manner, benefiting from temporal events both forward and backward. In comparison to state-of-the-art works, consistent improvements were achieved in prognosis prediction, as assessed with metrics Recall@k, Precision@k, F1-score, and AUC-ROC. Besides the detailed delineation of our architecture, a sequence of experiments is reported with insights that progressively guided design decisions to inspire future works on similar problems. Our results shall contribute to the improvement of computer-aided medicine and, more generally, to processes related to the design of neural network architectures.
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Dates et versions

hal-03018704 , version 1 (23-11-2020)

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Jose F Rodrigues-Jr, Marco A Gutierrez, Gabriel Spadon, Bruno Brandoli, Sihem Amer-Yahia. LIG-Doctor: efficient patient trajectory prediction using Bidirectional Minimal Gated-Recurrent Networks. Information sciences, Information Sciences, 2021, ⟨10.1016/j.ins.2020.09.024⟩. ⟨hal-03018704⟩
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