A robust autonomous method for blood demand forecasting.

autonomous systems blood supply chain management demand forecasting robust methods time series

Journal

Transfusion
ISSN: 1537-2995
Titre abrégé: Transfusion
Pays: United States
ID NLM: 0417360

Informations de publication

Date de publication:
06 2022
Historique:
revised: 14 03 2022
received: 16 08 2021
accepted: 16 03 2022
pubmed: 7 4 2022
medline: 14 6 2022
entrez: 6 4 2022
Statut: ppublish

Résumé

Blood supply chain management requires estimates about the demand of blood products. The more accurate these estimates are, the less wastage and fewer shortages occur. While the current literature demonstrates tangible benefits from statistical forecasting approaches, it highlights issues that discourage their use in blood supply chain optimization: there is no single approach that works everywhere, and there are no guarantees that any favorable method performance continues into the future. We design a novel autonomous forecasting system to solve the aforementioned issues. We show how possible changes in blood demand could affect prediction performance using partly synthetic demand data. We use these data then to investigate the performances of different method selection heuristics. Finally, the performances of the heuristics and single method approaches were compared using historical demand data from Finland and the Netherlands. The development code is publicly accessible. We find that a shift in the demand signal behavior from stochastic to seasonal would affect the relative performances of the methods. Our autonomous system outperforms all examined individual methods when forecasting the synthetic demand series, exhibiting meaningful robustness. When forecasting with real data, the most accurate methods in Finland and in the Netherlands are the autonomous system and the method average, respectively. Optimal use of method selection heuristics, as with our autonomous system, may overcome the need to constantly supervise forecasts in anticipation of changes in demand while being sufficiently accurate in the absence of such changes.

Sections du résumé

BACKGROUND
Blood supply chain management requires estimates about the demand of blood products. The more accurate these estimates are, the less wastage and fewer shortages occur. While the current literature demonstrates tangible benefits from statistical forecasting approaches, it highlights issues that discourage their use in blood supply chain optimization: there is no single approach that works everywhere, and there are no guarantees that any favorable method performance continues into the future.
STUDY DESIGN AND METHODS
We design a novel autonomous forecasting system to solve the aforementioned issues. We show how possible changes in blood demand could affect prediction performance using partly synthetic demand data. We use these data then to investigate the performances of different method selection heuristics. Finally, the performances of the heuristics and single method approaches were compared using historical demand data from Finland and the Netherlands. The development code is publicly accessible.
RESULTS
We find that a shift in the demand signal behavior from stochastic to seasonal would affect the relative performances of the methods. Our autonomous system outperforms all examined individual methods when forecasting the synthetic demand series, exhibiting meaningful robustness. When forecasting with real data, the most accurate methods in Finland and in the Netherlands are the autonomous system and the method average, respectively.
DISCUSSION
Optimal use of method selection heuristics, as with our autonomous system, may overcome the need to constantly supervise forecasts in anticipation of changes in demand while being sufficiently accurate in the absence of such changes.

Identifiants

pubmed: 35383944
doi: 10.1111/trf.16870
pmc: PMC9325496
doi:

Types de publication

Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

1261-1268

Informations de copyright

© 2022 Finnish Red Cross Blood Service. Transfusion published by Wiley Periodicals LLC on behalf of AABB.

Références

Transfusion. 2022 Jun;62(6):1261-1268
pubmed: 35383944
Transfusion. 2004 May;44(5):739-46
pubmed: 15104656
J Healthc Eng. 2019 Sep 17;2019:6123745
pubmed: 31636879
Medicine (Baltimore). 2020 Jul 17;99(29):e21208
pubmed: 32702888
Proc Natl Acad Sci U S A. 2017 Oct 24;114(43):11368-11373
pubmed: 29073058
Comput Biol Med. 2019 Oct;113:103415
pubmed: 31536834

Auteurs

Esa V Turkulainen (EV)

Research and Development, Finnish Red Cross Blood Service, Helsinki, Finland.

Merel L Wemelsfelder (ML)

Transfusion Technology Assessment Group, Donor Medicine Department, Sanquin Research, Amsterdam, the Netherlands.

Mart P Janssen (MP)

Transfusion Technology Assessment Group, Donor Medicine Department, Sanquin Research, Amsterdam, the Netherlands.

Mikko Arvas (M)

Research and Development, Finnish Red Cross Blood Service, Helsinki, Finland.

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