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IQVIA Accelerates Clinical Trial Data Processing for Rapid Healthcare Innovations
技术
- 分析与建模 - 预测分析
适用行业
- 医疗保健和医院
- 运输
适用功能
- 物流运输
用例
- 运动预测
- 时间敏感网络
服务
- 云规划/设计/实施服务
- 系统集成
挑战
在任何一天,IQVIA 都会管理由政府机构、制药公司和学术机构开展的多达 70 项不同临床研究的患者数据。在 SAS 等传统工具和流程下,将这些数据从 250 个独特的供应商仓库复制到单个系统需要几天的时间,而将数据标准化为符合 FDA 要求的格式则需要 1 到 2 个月的时间。由于临床试验生成的数据速度越来越快,并且变得越来越无法识别和非结构化,IQVIA 面临着更严重的延迟风险,这将阻碍客户的进展。
关于客户
IQVIA 是利用数据、技术、高级分析和专业知识帮助客户推动医疗保健和人类健康向前发展的全球领导者。
解决方案
IQVIA 现在在一个集中式数据平台上运行,其中包括用于数据集成的 Streamsets 和用于数据工程的 Designer Cloud。这个新的分析堆栈使 IQVIA 能够将交付时间从 1 到 2 个月大幅缩短到 1 到 2 天。 Designer Cloud 直观的数据转换方法使 IQVIA 能够通过擅长发现模式和数据质量问题的领域专家来扩展其工作量,而不是依赖内部开发人员。尽管患者数据变得越来越大、越来越复杂,IQVIA 的预测准确性仍提高了 4 倍。随着患者数据不断采用新形式,IQVIA 可以对其 Designer Cloud 配方进行简单调整,同时保持相同的交付速度。
运营影响
数量效益
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