The use of predictive modelling to determine the likelihood of donor return during the COVID‐19 pandemic

Author:

Gammon Richard R.1ORCID,Hindawi Salwa2ORCID,Al‐Riyami Arwa Z.3,Ang Ai Leen4,Bazin Renee5,Bloch Evan M.6,Counts Kelley7,de Angelis Vincenzo8,Goel Ruchika69,Grubovic Rastvorceva Rada M.1011,Pati Ilaria8ORCID,Lee Cheuk‐Kwong12,La Raja Massimo8,Mengoli Carlo8,Oreh Adaeze13ORCID,Patidar Gopal Kumar14ORCID,Rahimi‐Levene Naomi15,Ravula Usharee16,Rexer Karl717,So‐Osman Cynthia1819ORCID,Thachil Jecko20,Nevessignsky Michel Toungouz21,Vermeulen Marion2223

Affiliation:

1. OneBlood, Scientific, Medical, Technical Direction Orlando Florida USA

2. Department of Hematology King Abdulaziz University Jeddah Saudi Arabia

3. Department of Hematology Sultan Qaboos University Hospital Muscat Oman

4. Blood Services Group, Health Sciences Authority Singapore

5. Héma‐Québec, Medical Affairs and Innovation Québec Canada

6. Department of Pathology, Transfusion Medicine Division Johns Hopkins University School of Medicine Baltimore Maryland USA

7. OneBlood, Information Technology Administration Saint Petersburg Florida USA

8. National Blood Centre Italian National Institute of Health Rome Italy

9. Department of Biology University of Illinois Springfield Illinois USA

10. Institute for Transfusion Medicine of RNM Skopje Republic of North Macedonia

11. Faculty of Medical Sciences University Goce Delcev Stip Republic of North Macedonia

12. Hong Kong Red Cross Blood Transfusion Service, HKSAR Hong Kong China

13. National Planning Commission Abuja Nigeria

14. Department of Transfusion Medicine All India Institute of Medical Sciences New Delhi India

15. Blood Bank, Shamir Medical Center Zerifin Israel

16. Department of Transfusion Medicine ACS Medical College and Hospital Chennai India

17. Rexer Analytics Winchester Massachusetts USA

18. Department of Transfusion medicine Sanquin Blood Supply Foundation Amsterdam The Netherlands

19. Department of Haematology Erasmus Medical Center Rotterdam The Netherlands

20. North Manchester General Hospital, Gastroenterology Manchester UK

21. Belgian Red Cross, French Speaking Service Suarlée Belgium

22. South African Army College Pretoria South Africa

23. University of the Free State Afromontane Research Unit Phuthaditjhaba South Africa

Abstract

AbstractArtificial intelligence (AI) uses sophisticated algorithms to “learn” from large volumes of data. This could be used to optimise recruitment of blood donors through predictive modelling of future blood supply, based on previous donation and transfusion demand. We sought to assess utilisation of predictive modelling and AI blood establishments (BE) and conducted predictive modelling to illustrate its use. A BE survey of data modelling and AI was disseminated to the International Society of Blood transfusion members. Additional anonymzed data were obtained from Italy, Singapore and the United States (US) to build predictive models for each region, using January 2018 through August 2019 data to determine likelihood of donation within a prescribed number of months. Donations were from March 2020 to June 2021. Ninety ISBT members responded to the survey. Predictive modelling was used by 33 (36.7%) respondents and 12 (13.3%) reported AI use. Forty‐four (48.9%) indicated their institutions do not utilise predictive modelling nor AI to predict transfusion demand or optimise donor recruitment. In the predictive modelling case study involving three sites, the most important variable for predicting donor return was number of previous donations for Italy and the US, and donation frequency for Singapore. Donation rates declined in each region during COVID‐19. Throughout the observation period the predictive model was able to consistently identify those individuals who were most likely to return to donate blood. The majority of BE do not use predictive modelling and AI. The effectiveness of predictive model in determining likelihood of donor return was validated; implementation of this method could prove useful for BE operations.

Publisher

Wiley

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