Data donation of individual shopping data to help predict the occurrence of disease: A pilot study linking individual loyalty card and health survey data to investigate COVID-19

Elizabeth Dolan, James Goulding, Anya Skatova
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 Objectives & ApproachObjectivesCollect and link individual health data to individual shopping data to investigate COVID-19. Assess the feasibility of scaling-up this method, and use the collected data to investigate using loyalty card data in machine learning (ML) models for disease.
 MethodsBased on recommendations on the public’s preferences for data donation a new protocol was designed for collecting, linking and analysing shopping and health data. Participants were requested to use the Tesco Clubcard website data portability function to share their loyalty card data and complete an online health survey. An exploratory data analysis was conducted on the linked dataset. Participants were recruited online (18/01/2022 to 04/02/2022) with a recruitment target of 200.
 Relevance to Digital FootprintsThe collection and analysis of individual transactional sales data for health research.
 Results197 participants shared their Tesco Clubcard and health survey data. Tesco Clubcard data contained 893,414 transactions of 65,310 uniquely named items purchased from 2015 to 2022. Average transactions per participant were 4,653 (SD 5256) and average timeframe recorded was five years 6 months and 30 days (SD 836 days). A total of 6,993 medication sales were recorded accounting for 1% of sales, 81% (159/197) of participants bought medications and the average was 44 (STD 68) medications per individual. Most participants (196/197) shared their health status in the survey, and 94% (81/86) of those on medication shared the medication names. Participants reported donating their data to do good (79%, 155/197), help the NHS (77%, 152/197), be socially responsible (74%, 144/197) and because data was secure and anonymised (78%, 153/197).
 Conclusions & ImplicationsUsing this new protocol which enables convenient data sharing with transparent data safeguards, the public were willing to share both their shopping and health data for research into COVID-19. To apply robust ML analysis, particularly to explore self-medication at an individual level, recruitment must be significantly scaled to collect data from enough individuals with high sales and regular shopping frequency, or new ML techniques developed to address sparseness in loyalty card data of key purchasing events related to health. The study suggests public readiness to share shopping data for health research, but investment is needed for large-scale data collection and AI application.","PeriodicalId":132937,"journal":{"name":"International Journal for Population Data Science","volume":"121 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-09-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal for Population Data Science","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.23889/ijpds.v8i3.2273","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

Introduction & BackgroundPrevious studies have found shopping data could increase the predictive accuracy of disease surveillance systems and illuminate behavioural responses in the self-management of symptoms of disease. Yet, accessing individual sales datasets for linkage to health datasets is challenging, and the recruitment of appropriate sample sizes for medical research has been limited. Objectives & ApproachObjectivesCollect and link individual health data to individual shopping data to investigate COVID-19. Assess the feasibility of scaling-up this method, and use the collected data to investigate using loyalty card data in machine learning (ML) models for disease. MethodsBased on recommendations on the public’s preferences for data donation a new protocol was designed for collecting, linking and analysing shopping and health data. Participants were requested to use the Tesco Clubcard website data portability function to share their loyalty card data and complete an online health survey. An exploratory data analysis was conducted on the linked dataset. Participants were recruited online (18/01/2022 to 04/02/2022) with a recruitment target of 200. Relevance to Digital FootprintsThe collection and analysis of individual transactional sales data for health research. Results197 participants shared their Tesco Clubcard and health survey data. Tesco Clubcard data contained 893,414 transactions of 65,310 uniquely named items purchased from 2015 to 2022. Average transactions per participant were 4,653 (SD 5256) and average timeframe recorded was five years 6 months and 30 days (SD 836 days). A total of 6,993 medication sales were recorded accounting for 1% of sales, 81% (159/197) of participants bought medications and the average was 44 (STD 68) medications per individual. Most participants (196/197) shared their health status in the survey, and 94% (81/86) of those on medication shared the medication names. Participants reported donating their data to do good (79%, 155/197), help the NHS (77%, 152/197), be socially responsible (74%, 144/197) and because data was secure and anonymised (78%, 153/197). Conclusions & ImplicationsUsing this new protocol which enables convenient data sharing with transparent data safeguards, the public were willing to share both their shopping and health data for research into COVID-19. To apply robust ML analysis, particularly to explore self-medication at an individual level, recruitment must be significantly scaled to collect data from enough individuals with high sales and regular shopping frequency, or new ML techniques developed to address sparseness in loyalty card data of key purchasing events related to health. The study suggests public readiness to share shopping data for health research, but investment is needed for large-scale data collection and AI application.
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个人购物数据的数据捐赠,以帮助预测疾病的发生:将个人会员卡和健康调查数据结合起来调查COVID-19的试点研究
介绍,之前的研究发现,购物数据可以提高疾病监测系统的预测准确性,并阐明疾病症状自我管理中的行为反应。然而,访问个人销售数据集以链接到健康数据集是具有挑战性的,并且为医学研究招募适当的样本量受到限制。 目标,方法目的收集个人健康数据并将其与个人购物数据联系起来调查COVID-19。评估扩大该方法的可行性,并使用收集到的数据来研究在疾病的机器学习(ML)模型中使用会员卡数据。 方法根据关于公众对数据捐赠的偏好的建议,设计了一项新的协议,用于收集、链接和分析购物和健康数据。参与者被要求使用乐购会员卡网站的数据可移植性功能来分享他们的会员卡数据,并完成一项在线健康调查。对关联数据集进行探索性数据分析。参与者在线招募(2022年1月18日至2022年2月4日),招募目标为200人。 与数字足迹相关的个人交易销售数据的收集和分析,用于健康研究。 197名参与者分享了他们的乐购会员卡和健康调查数据。从2015年到2022年,乐购会员卡的数据包含了893414笔交易,购买了65310件唯一命名的商品。每个参与者的平均交易为4,653次(SD 5256),记录的平均时间框架为5年6个月30天(SD 836天)。共记录药品销售6,993次,占销售额的1%,81%(159/197)的参与者购买了药品,平均每人44次(STD 68)。大多数参与者(196/197)在调查中分享了他们的健康状况,94%(81/86)的服药者分享了药物名称。参与者报告说,他们捐赠自己的数据是为了做好事(79%,155/197),帮助NHS(77%, 152/197),对社会负责(74%,144/197),因为数据是安全和匿名的(78%,153/197)。结论,利用这一新的协议,公众愿意分享他们的购物和健康数据,以用于研究COVID-19,该协议可以在透明的数据保护下方便地共享数据。为了应用强大的机器学习分析,特别是探索个人层面的自我药疗,必须大幅扩大招聘规模,从足够多的高销售额和定期购物频率的个人收集数据,或者开发新的机器学习技术,以解决与健康相关的关键采购事件的会员卡数据稀疏问题。该研究表明,公众已经准备好为健康研究分享购物数据,但需要大规模数据收集和人工智能应用的投资。
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