基于SAS/AF的肿瘤临床试验有效性分析的可视化与自动输出
Chinese Journal of Health Statistics(2021)
Abstract
目的 探讨肿瘤临床试验中有效性统计分析的可视化.方法 该研究基于SAS图形模板语言(GTL)构建后端宏程序,利用SAS/AF模块构建前端用户界面并调用基于GTL的SAS宏程序,实现了肿瘤临床试验中常见有效性统计分析的可视化以及自动化输出.因为SAS是临床试验的推荐程序,因此SAS软件的可视化对于临床试验研究有较好的应用价值.结果 应用可视化系统自动输出肿瘤临床试验中常见的有效性分析的图形包括生存曲线、瀑布图、泳道图、森林图等.结论 结合SAS/AF模块以及基于GTL语言的SAS宏程序,可以构建低门槛、操作简便的定制化绘图程序,实现肿瘤临床试验中常见的有效性统计分析的可视化以及自动化输出,提高统计绘图工作的效率.
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