Liverpool Clinical Trials Centre, University of Liverpool, Liverpool, UK.
Edinburgh Clinical Trials Unit, University of Edinburgh, Edinburgh, UK.
Clin Trials. 2024 Feb;21(1):85-94. doi: 10.1177/17407745231204036. Epub 2023 Nov 13.
The contribution of the statistician to the design and analysis of a clinical trial is acknowledged as essential. Ability to reconstruct the statistical contribution to a trial requires rigorous and transparent documentation as evidenced by the reproducibility of results. The process of validating statistical programmes is a key requirement. While guidance relating to software development and life cycle methodologies details steps for validation by information systems developers, there is no guidance applicable to programmes written by statisticians. We aimed to develop a risk-based approach to the validation of statistical programming that would support scientific integrity and efficient resource use within clinical trials units.
The project was embedded within the Information Systems Operational Group and the Statistics Operational Group of the UK Clinical Research Collaboration Registered Clinical Trials Unit network. Members were asked to share materials relevant to validation of statistical programming. A review of the published literature, regulatory guidance and knowledge of relevant working groups was undertaken. Surveys targeting the Information Systems Operational Group and Statistics Operational Group were developed to determine current practices across the Registered Clinical Trials Unit network. A risk-based approach was drafted and used as a basis for a workshop with representation from statisticians, information systems developers and quality assurance managers (n = 15). The approach was subsequently modified and presented at a second, larger scale workshop (n = 47) to gain a wider perspective, with discussion of content and implications for delivery. The approach was revised based on the discussions and suggestions made. The workshop was attended by a member of the Medicines for Healthcare products Regulatory Agency Inspectorate who also provided comments on the revised draft.
Types of statistical programming were identified and categorised into six areas: generation of randomisation lists; programmes to explore/understand the data; data cleaning, including complex checks; derivations including data transformations; data monitoring; or interim and final analysis. The risk-based approach considers each category of statistical programme against the impact of an error and its likelihood, whether the programming can be fully prespecified, the need for repeated use and the need for reproducibility. Approaches to the validation of programming within each category are proposed.
We have developed a risk-based approach to the validation of statistical programming. It endeavours to facilitate the implementation of targeted quality assurance measures while making efficient use of limited resources.
统计学家对临床试验的设计和分析的贡献被认为是至关重要的。为了重现结果,需要严格和透明的文档记录来证明对试验的统计贡献。验证统计程序的过程是一个关键要求。虽然与软件开发和生命周期方法相关的指南详细说明了信息系统开发人员验证的步骤,但没有适用于统计学家编写的程序的指南。我们旨在开发一种基于风险的统计编程验证方法,以支持临床试验单位的科学诚信和高效资源利用。
该项目嵌入在英国临床研究合作注册临床试验单位网络的信息系统运营组和统计学运营组中。要求成员分享与统计编程验证相关的材料。对已发表的文献、监管指南和相关工作组的知识进行了审查。针对信息系统运营组和统计学运营组进行了调查,以确定注册临床试验单位网络中的当前实践。制定了基于风险的方法,并作为具有统计学家、信息系统开发人员和质量保证经理代表(n=15)的研讨会的基础。该方法随后进行了修改,并在第二次、更大规模的研讨会上进行了介绍(n=47),以获得更广泛的视角,讨论内容和交付影响。根据讨论和建议对该方法进行了修订。药品和保健产品监管机构检查部门的一名成员出席了研讨会,并对修订草案提出了意见。
确定了统计编程的类型,并将其分为六个领域:随机分组列表的生成;探索/理解数据的程序;数据清理,包括复杂检查;推导,包括数据转换;数据监测;或中期和最终分析。基于风险的方法根据错误的影响及其可能性、编程是否可以完全预先指定、重复使用的必要性和可重复性来考虑每个统计程序类别。提出了针对每个类别中编程验证的方法。
我们已经开发了一种基于风险的统计编程验证方法。它努力在有效利用有限资源的同时,促进有针对性的质量保证措施的实施。