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Published in: BMC Public Health 1/2024

Open Access 01-12-2024 | Research

Blood donation projections using hierarchical time series forecasting: the case of Zimbabwe’s national blood bank

Authors: Coster Chideme, Delson Chikobvu, Tendai Makoni

Published in: BMC Public Health | Issue 1/2024

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Abstract

Background

The discrepancy between blood supply and demand requires accurate forecasts of the blood supply at any blood bank. Accurate blood donation forecasting gives blood managers empirical evidence in blood inventory management. The study aims to model and predict blood donations in Zimbabwe using hierarchical time series. The modelling technique allows one to identify, say, a declining donor category, and in that way, the method offers feasible and targeted solutions for blood managers to work on.

Methods

The monthly blood donation data covering the period 2007 to 2018, collected from the National Blood Service Zimbabwe (NBSZ) was used. The data was disaggregated by gender and blood groups types within each gender category. The model validation involved utilising actual blood donation data from 2019 and 2020. The model's performance was evaluated through the Mean Absolute Percentage Error (MAPE), uncovering expected and notable discrepancies during the Covid-19 pandemic period only.

Results

Blood group O had the highest monthly yield mean of 1507.85 and 1230.03 blood units for male and female donors, respectively. The top-down forecasting proportions (TDFP) under ARIMA, with a MAPE value of 11.30, was selected as the best approach and the model was then used to forecast future blood donations. The blood donation predictions for 2019 had a MAPE value of 14.80, suggesting alignment with previous years' donations. However, starting in April 2020, the Covid-19 pandemic disrupted blood collection, leading to a significant decrease in blood donation and hence a decrease in model accuracy.

Conclusions

The gradual decrease in future blood donations exhibited by the predictions calls for blood authorities in Zimbabwe to develop interventions that encourage blood donor retention and regular donations. The impact of the Covid-19 pandemic distorted the blood donation patterns such that the developed model did not capture the significant drop in blood donations during the pandemic period. Other shocks such as, a surge in global pandemics and other disasters, will inevitably affect the blood donation system. Thus, forecasting future blood collections with a high degree of accuracy requires robust mathematical models which factor in, the impact of various shocks to the system, on short notice.
Literature
3.
go back to reference An M-W, Reich NG, Crawford SO, Brookmeyer R, Louis TA, Nelson KE. A Stochastic Simulator of a Blood Product Donation Environment with Demand Spikes and Supply Shocks. PLoS ONE. 2011;6(7):e21752.CrossRefPubMedPubMedCentral An M-W, Reich NG, Crawford SO, Brookmeyer R, Louis TA, Nelson KE. A Stochastic Simulator of a Blood Product Donation Environment with Demand Spikes and Supply Shocks. PLoS ONE. 2011;6(7):e21752.CrossRefPubMedPubMedCentral
4.
go back to reference Mansur A, Vanany I, Indah AN. Blood Supply Chain Challenges: Evidence from Indonesia. 2019. Mansur A, Vanany I, Indah AN. Blood Supply Chain Challenges: Evidence from Indonesia. 2019.
6.
go back to reference Najafi M, Ahmadi A, Zolfagharinia H. Blood inventory management in hospitals: Considering supply and demand uncertainty and blood transhipment possibility. Oper Res Health Care. 2017;15:43–56.CrossRef Najafi M, Ahmadi A, Zolfagharinia H. Blood inventory management in hospitals: Considering supply and demand uncertainty and blood transhipment possibility. Oper Res Health Care. 2017;15:43–56.CrossRef
7.
go back to reference Pierskalla WP. Supply chain management of blood banks. In Operations research and health care (pp. 103–145). 2005. Springer, Boston, MA. Pierskalla WP. Supply chain management of blood banks. In Operations research and health care (pp. 103–145). 2005. Springer, Boston, MA.
8.
go back to reference Fortsch SM, Khapalova EA. Operations Research for Health Care Reducing uncertainty in demand for blood. Oper Res Health Care. 2016;9:16–28.CrossRef Fortsch SM, Khapalova EA. Operations Research for Health Care Reducing uncertainty in demand for blood. Oper Res Health Care. 2016;9:16–28.CrossRef
10.
go back to reference Alajrami E, Abu-Nasser BS, Khalil AJ, Musleh MM, Barhoom AM, Naser SA. Blood donation prediction using artificial neural network. Int J Acad Eng Res. 2019;3(10):1–7. Alajrami E, Abu-Nasser BS, Khalil AJ, Musleh MM, Barhoom AM, Naser SA. Blood donation prediction using artificial neural network. Int J Acad Eng Res. 2019;3(10):1–7.
11.
go back to reference Bischoff F, Koch MC, Rodrigues PP. Predicting Blood Donations in a Tertiary Care Centre Using Time Series Forecasting. Studies in health technology and informatics vol. 258; 2019, 135–139. Bischoff F, Koch MC, Rodrigues PP. Predicting Blood Donations in a Tertiary Care Centre Using Time Series Forecasting. Studies in health technology and informatics vol. 258; 2019, 135–139.
14.
go back to reference Hyndman RJ, Ahmed RA, Athanasopoulos G, Shang HL. Optimal combination forecasts for hierarchical time series. Computational Statistics and Data Analysis, 2011, 2579 – 2589 Hyndman RJ, Ahmed RA, Athanasopoulos G, Shang HL. Optimal combination forecasts for hierarchical time series. Computational Statistics and Data Analysis, 2011, 2579 – 2589
16.
go back to reference Athanasopoulos G, Ahmed RA, Hyndman RJ. Hierarchical forecasts for Australian domestic tourism. Int J Forecast. 2009;25(1):146–66.CrossRef Athanasopoulos G, Ahmed RA, Hyndman RJ. Hierarchical forecasts for Australian domestic tourism. Int J Forecast. 2009;25(1):146–66.CrossRef
23.
go back to reference Motamedi M, Li N, Down D, Heddle N. Demand Forecasting for Platelet Usage: from Univariate Time Series to Multivariate Models; 2021. Motamedi M, Li N, Down D, Heddle N. Demand Forecasting for Platelet Usage: from Univariate Time Series to Multivariate Models; 2021.
24.
go back to reference Dangerfield BJ, Morris JS. Top-down or bottom-up: Aggregate versus disaggregate extrapolations. Int J Forecast. 1992;8(2):233–41.CrossRef Dangerfield BJ, Morris JS. Top-down or bottom-up: Aggregate versus disaggregate extrapolations. Int J Forecast. 1992;8(2):233–41.CrossRef
25.
go back to reference Gross CW, Sohl JE. Disaggregation methods to expedite product line forecasting. J Forecast. 1990;9(3):233–54.CrossRef Gross CW, Sohl JE. Disaggregation methods to expedite product line forecasting. J Forecast. 1990;9(3):233–54.CrossRef
26.
go back to reference Morgan L. Forecasting in Hierarchical models. 2015. Morgan L. Forecasting in Hierarchical models. 2015.
27.
go back to reference Pennings CL, van Dalen J. Integrated hierarchical forecasting. Eur J Oper Res. 2017;263(2):412–8.CrossRef Pennings CL, van Dalen J. Integrated hierarchical forecasting. Eur J Oper Res. 2017;263(2):412–8.CrossRef
31.
go back to reference Ashoori M, Alisade S, Hosseiny Eivary HS, Hosseiny Eivary SS. A model to predict the sequential behaviour of healthy blood donors using data mining; J Research Health, Early View 10 Jan 2015. Ashoori M, Alisade S, Hosseiny Eivary HS, Hosseiny Eivary SS. A model to predict the sequential behaviour of healthy blood donors using data mining; J Research Health, Early View 10 Jan 2015.
36.
go back to reference Weidmann C, Müller-Steinhardt M, Schneider S, Weck E, Klüter H. Characteristics of Lapsed German Whole Blood Donors and Barriers to Return Four Years after the Initial Donation. Transfus Med Hemother. 2012 Feb;39(1):9–15. https://doi.org/10.1159/000335602. Epub 2011 Dec 23. PMID: 22896761; PMCID: PMC3388618. Weidmann C, Müller-Steinhardt M, Schneider S, Weck E, Klüter H. Characteristics of Lapsed German Whole Blood Donors and Barriers to Return Four Years after the Initial Donation. Transfus Med Hemother. 2012 Feb;39(1):9–15. https://​doi.​org/​10.​1159/​000335602. Epub 2011 Dec 23. PMID: 22896761; PMCID: PMC3388618.
Metadata
Title
Blood donation projections using hierarchical time series forecasting: the case of Zimbabwe’s national blood bank
Authors
Coster Chideme
Delson Chikobvu
Tendai Makoni
Publication date
01-12-2024
Publisher
BioMed Central
Published in
BMC Public Health / Issue 1/2024
Electronic ISSN: 1471-2458
DOI
https://doi.org/10.1186/s12889-024-18185-7

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