Application of Time-Series Analysis and Expert Judgment in Modeling and Forecasting Blood Donation Trends in Zimbabwe.

IF 1.9 Q3 HEALTH CARE SCIENCES & SERVICES
MDM Policy and Practice Pub Date : 2024-01-18 eCollection Date: 2024-01-01 DOI:10.1177/23814683231222483
Coster Chideme, Delson Chikobvu
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引用次数: 0

Abstract

Background. Blood cannot be artificially manufactured, and there is currently no substitute for human blood. The supply of blood in transfusion facilities requires constant and timely collection of blood from donors. Modeling and forecasting trends in blood collections are critical for determining both the current and future capacity requirements and appropriate models of adequate blood provision. Objectives. The objective of this study is to determine blood collection or donation patterns and develop time-series models that can be updated and refined in predicting future blood donations in Zimbabwe when given the historical data. Materials and Methods. Monthly blood donation data for the period 2009 to 2019 were collected retrospectively from the National Blood Service Zimbabwe database. Time-series models (i.e., the Seasonal Autoregressive Integrated Moving Average [SARIMA] and Error, Trend and Seasonal [ETS]) models were applied and compared. The models were chosen because of their ability to handle the seasonality and other time-series components evident in the blood donation data. Expert opinions and experience were used in selecting the models and in making inferences in the analysis. Results. Time-series plots of blood donations showed seasonal patterns, with significant drops in blood donations in months associated with Zimbabwe's school holidays (April, August, and December) and public holidays. During these holidays, there is a reduced number of school donors, while at about the same time, there is increasing blood demand as a result of road accidents. Model identification procedures established the SARIMA(1,1,2)(0,1,1)12 model as the appropriate model for forecasting total blood donation in Zimbabwe. The results and forecasts show an upward trend in blood donations. According to the accuracy measures used, the SARIMA model outperforms the ETS model. Conclusions. Expert knowledge in the blood donation process, coupled with statistical models, can help explain trends exhibited in blood donation data in Zimbabwe. These findings help the blood authorities plan for blood donor campaign drives. The findings are key indicators of where to allocate more resources toward blood donation and when to collect more blood units. The increasing blood donation projections ensure a stable blood bank inventory in the near future.

Highlights: A SARIMA model can be used to predict the flow of blood donations in Zimbabwe.The seasonal blood donation pattern peaks in the months of March, June/July, and September.The donations troughs are in the months of April, August, December, and January. These are the months coinciding with school holidays in Zimbabwe.Both the SARIMA and ETS models provided similar forecasts, but measures of fit and expert knowledge gave a slight preference to the SARIMA(1,1,2)(0,1,1)12 model in predicting the flow of blood donations in Zimbabwe.These model results are useful for guiding allocation of blood donation resources and blood donation drive timing.

时间序列分析和专家判断在津巴布韦献血趋势建模和预测中的应用。
背景。血液无法人工制造,目前也没有人类血液的替代品。输血设施的血液供应需要持续、及时地从献血者那里采集血液。对采血趋势进行建模和预测,对于确定当前和未来的能力需求以及适当的血液供应模式至关重要。目标。本研究的目的是确定采血或献血模式,并建立时间序列模型,以便在获得历史数据的情况下更新和完善模型,预测津巴布韦未来的献血情况。材料和方法。从津巴布韦国家血液服务数据库中回顾性收集了 2009 年至 2019 年期间的每月献血数据。应用并比较了时间序列模型(即季节自回归综合移动平均模型 [SARIMA] 和误差、趋势和季节模型 [ETS])。之所以选择这些模型,是因为它们能够处理献血数据中明显的季节性和其他时间序列成分。在选择模型和进行分析推断时参考了专家的意见和经验。分析结果献血量的时间序列图显示出季节性规律,在与津巴布韦学校假期(4 月、8 月和 12 月)和公共假期相关的月份,献血量明显下降。在这些节假日期间,学校献血者人数减少,而与此同时,由于道路交通事故,血液需求增加。模型识别程序确定 SARIMA(1,1,2)(0,1,1)12 模型是预测津巴布韦献血总量的合适模型。结果和预测显示献血量呈上升趋势。根据所使用的准确度衡量标准,SARIMA 模型优于 ETS 模型。结论献血过程中的专家知识与统计模型相结合,有助于解释津巴布韦献血数据的发展趋势。这些发现有助于血液管理机构规划献血活动。这些发现是重要的指标,表明应在哪些方面为献血分配更多的资源,以及何时采集更多的血液单位。不断增加的献血预测确保了血库库存在不久的将来保持稳定:SARIMA模型可用于预测津巴布韦的献血流量。季节性献血模式的高峰期在3月、6月/7月和9月,低谷期在4月、8月、12月和1月。SARIMA模型和ETS模型提供了相似的预测结果,但在预测津巴布韦的献血流量时,SARIMA(1,1,2)(0,1,1)12模型的拟合度和专家知识略胜一筹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
MDM Policy and Practice
MDM Policy and Practice Medicine-Health Policy
CiteScore
2.50
自引率
0.00%
发文量
28
审稿时长
15 weeks
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