Our objective is the development of cost-saving methods for the patient blood management in Galeazzi Orthopedic Institute, a large Italian hospital. The methods have been developed in relation to the known costs of the hospital, both in terms of unused blood bags and drugs. Observational data about 4593 patients have been retrieved, with anagraphical and pre-operational clinical features. Model's performances have been compared to an existing baseline in terms of both accuracy measures (F1, recall, AUC) and saved costs per patient. The proposed methods recorded an enhancement of performances for the adopted measures, demonstrating a possible useful application of machine-learning-based methods for the patient blood management task.

Brinati, D., Seveso, A., Perazzo, P., Banfi, G., Cabitza, F. (2020). Evaluation of cost-saving machine learning methods for patient blood management. In Proceedings of the 12th IADIS International Conference e-Health 2020, EH 2020 - Part of the 14th Multi Conference on Computer Science and Information Systems, MCCSIS 2020 (pp.183-189). IADIS.

Evaluation of cost-saving machine learning methods for patient blood management

Seveso A.;Banfi G.;Cabitza F.
2020

Abstract

Our objective is the development of cost-saving methods for the patient blood management in Galeazzi Orthopedic Institute, a large Italian hospital. The methods have been developed in relation to the known costs of the hospital, both in terms of unused blood bags and drugs. Observational data about 4593 patients have been retrieved, with anagraphical and pre-operational clinical features. Model's performances have been compared to an existing baseline in terms of both accuracy measures (F1, recall, AUC) and saved costs per patient. The proposed methods recorded an enhancement of performances for the adopted measures, demonstrating a possible useful application of machine-learning-based methods for the patient blood management task.
paper
Machine Learning; Operation Costs; Patient Blood Management; Sensitivity Analysis;
English
12th IADIS International Conference e-Health 2020, EH 2020, Part of the 14th Multi Conference on Computer Science and Information Systems, MCCSIS 2020 - 21 July 2020 through 23 July 2020
2020
Proceedings of the 12th IADIS International Conference e-Health 2020, EH 2020 - Part of the 14th Multi Conference on Computer Science and Information Systems, MCCSIS 2020
9789898704184
2020
183
189
none
Brinati, D., Seveso, A., Perazzo, P., Banfi, G., Cabitza, F. (2020). Evaluation of cost-saving machine learning methods for patient blood management. In Proceedings of the 12th IADIS International Conference e-Health 2020, EH 2020 - Part of the 14th Multi Conference on Computer Science and Information Systems, MCCSIS 2020 (pp.183-189). IADIS.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/510299
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