Triggered by the COVID-19 crisis, Israel's Ministry of Health (MoH) held a virtual Datathon based on deidentified governmental data. Organized by a multidisciplinary committee, Israel's research community was invited to offer insights to COVID-19 policy challenges. The Datathon was designed to (1) develop operationalizable data-driven models to address COVID-19 health-policy challenges and (2) build a community of researchers from academia, industry, and government and rebuild their trust in the government. Three specific challenges were defined based on their relevance (significance, data availability, and potential to anonymize the data): immunization policies, special needs of the young population, and populations whose rate of compliance with COVID-19 testing is low. The MoH team extracted diverse, reliable, up-to-date, and deidentified governmental datasets for each challenge. Secure remote-access research environments with relevant data science tools were set on Amazon Web. The MoH screened the applicants and accepted around 80 participants, teaming them to balance areas of expertise as well as represent all sectors of the community. One week following the event, anonymous surveys for participants and mentors were distributed to assess overall usefulness and points for improvement. The 48-hour Datathon and pre-event sessions included 18 multidisciplinary teams, mentored by 20 data scientists, 6 epidemiologists, 5 presentation mentors, and 12 judges. The insights developed by the 3 winning teams are currently considered by the MoH as potential data science methods relevant for national policies. The most positive results were increased trust in the MoH and greater readiness to work with the government on these or future projects. Detailed feedback offered concrete lessons for improving the structure and organization of future government-led datathons.
翻译:由于COVID-19危机,以色列卫生部(MoH)在政府数据标识化的关联性(标志性、数据可用性和潜力)基础上,在政府数据识别数据确定的基础上,举办了虚拟数据会议,由一个多学科委员会组织,邀请以色列研究界向COVID-19政策挑战提供真知灼见,该数据会议旨在(1) 开发可操作的数据驱动模型,以应对COVID-19卫生政策挑战,(2) 建立学术界、工业和政府研究人员群体,并重建他们对政府的信任。确定了三项具体挑战(标志性、数据提供和潜在潜力) :免疫政策、青年人口和遵守COVID-19测试率低的人口的特殊需要。该数据小组为每个挑战绘制了多样、可靠、最新和明确的政府数据集。在亚马逊网络上设置了安全的远程获取研究环境,并接纳了大约80名参与者,将他们汇集到专门知识领域,并代表了社会各部门。 为期一周的活动后,为参与者和导师MoVID-19测试速度低的人群进行了匿名调查,为参与者和导师们进行了18次总体数据发布。