Length of stay prediction for hospital management using domain adaptation

Author:

Momo Lyse Naomi WambaORCID,Moorosi Nyalleng,Nsoesie Elaine O.,Rademakers FrankORCID,De Moor Bart

Funder

FWO

KU Leuven

Publisher

Elsevier BV

Reference52 articles.

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3. Application of data mining techniques to predict the length of stay of hospitalized patients with diabetes;Alahmar,2018

4. Dynamic prediction of icu mortality risk using domain adaptation;Alves,2018

5. Predictive factors for longer length of stay in an emergency department: a prospective multicentre study evaluating the impact of age, patient’s clinical acuity and complexity, and care pathways;Casalino;Emerg. Med. J.,2014

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