A machine learning framework for interpretable predictions in patient pathways: The case of predicting ICU admission for patients with symptoms of sepsis
| Year of publication: |
2024
|
|---|---|
| Authors: | Zilker, Sandra ; Weinzierl, Sven ; Kraus, Mathias ; Zschech, Patrick ; Matzner, Martin |
| Published in: |
Health Care Management Science. - New York, NY : Springer US, ISSN 1572-9389. - Vol. 27.2024, 2, p. 136-167
|
| Publisher: |
New York, NY : Springer US |
| Subject: | Patient pathway | Process prediction | Sepsis | Interpretability | Interpretable machine learning | Interpretation plots | Deep learning |
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