An international comparison of haemoglobin deferral prediction models for blood banking

Author:

Vinkenoog Marieke12ORCID,Toivonen Jarkko3ORCID,Brits Tinus4,de Clippel Dorien5,Compernolle Veerle56,Karki Surendra7ORCID,Welvaert Marijke7,Meulenbeld Amber1,van den Hurk Katja1,van Rosmalen Joost89ORCID,Lesaffre Emmanuel10,Arvas Mikko3ORCID,Janssen Mart1ORCID

Affiliation:

1. Donor Medicine Research Sanquin Research Amsterdam The Netherlands

2. Leiden Institute of Advanced Computer Science Leiden University Leiden The Netherlands

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

4. Business Intelligence South African National Blood Service Johannesburg South Africa

5. Dienst voor het Bloed Belgian Red Cross Ugent Ghent Belgium

6. Faculty of Medicine and Health Sciences Ghent University Ghent Belgium

7. Research and Development Australian Red Cross Lifeblood Sydney Australia

8. Department of Biostatistics Erasmus MC Rotterdam The Netherlands

9. Department of Epidemiology Erasmus MC Rotterdam The Netherlands

10. L‐Biostat KU Leuven Leuven Belgium

Abstract

AbstractBackground and ObjectivesBlood banks use a haemoglobin (Hb) threshold before blood donation to minimize donors' risk of anaemia. Hb prediction models may guide decisions on which donors to invite, and should ideally also be generally applicable, thus in different countries and settings. In this paper, we compare the outcome of various prediction models in different settings and highlight differences and similarities.Materials and MethodsDonation data of repeat donors from the past 5 years of Australia, Belgium, Finland, the Netherlands and South Africa were used to fit five identical prediction models: logistic regression, random forest, support vector machine, linear mixed model and dynamic linear mixed model. Only donors with five or more donation attempts were included to ensure having informative data from all donors. Analyses were performed for men and women separately and outcomes compared.ResultsWithin countries and overall, different models perform similarly well. However, there are substantial differences in model performance between countries, and there is a positive association between the deferral rate in a country and the ability to predict donor deferral. Nonetheless, the importance of predictor variables across countries is similar and is highest for the previous Hb level.ConclusionThe limited impact of model architecture and country indicates that all models show similar relationships between the predictor variables and donor deferral. Donor deferral is found to be better predictable in countries with high deferral rates. Therefore, such countries may benefit more from deferral prediction models than those with low deferral rates.

Funder

Australian Government

Punainen Risti Veripalvelu

Stichting Sanquin Bloedvoorziening

Publisher

Wiley

Subject

Hematology,General Medicine

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