Validating and updating GRASP: An evidence-based framework for grading and assessment of clinical predictive tools

Mohamed Khalifa , Farah Magrabi , Blanca Gallego
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Abstract

Background

When selecting clinical predictive tools, clinicians are challenged with an overwhelming and ever-growing number, most of which have never been implemented or evaluated for effectiveness. The authors developed an evidence-based framework for grading and assessment of predictive tools (GRASP). The objective of this study is to refine, validate GRASP, and assess its reliability for consistent application.

Methods

A mixed-methods study was conducted, involving an initial web-based survey for feedback from a wide group of international experts in clinical prediction to refine the GRASP framework, followed by reliability testing with two independent researchers assessing eight predictive tools. The survey involved 81 experts who rated agreement with the framework's criteria on a five-point Likert scale and provided qualitative feedback. The reliability of the GRASP framework was evaluated through interrater reliability testing using Spearman's rank correlation coefficient.

Results

The survey yielded strong agreement of the experts with the framework's evaluation criteria, overall average score: 4.35/5, highlighting the importance of predictive performance, usability, potential effect, and post-implementation impact in grading clinical predictive tools. Qualitative feedback led to significant refinements, including detailed categorisation of evidence levels and clearer representation of evaluation criteria. Interrater reliability testing showed high agreement between researchers and authors (0.994) and among researchers (0.988), indicating strong consistency in tool grading.

Conclusion

The GRASP framework provides a high-level, evidence-based, and comprehensive, yet simple and feasible, approach to evaluate, compare, and select the best clinical predictive tools, with strong expert agreement and high interrater reliability. It assists clinicians in selecting effective tools by grading them on the level of validation of predictive performance before implementation, usability and potential effect during planning for implementation, and post-implementation impact on healthcare processes and clinical outcomes. Future studies should focus on the framework's application in clinical settings and its impact on decision-making and guideline development.
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验证和更新GRASP:临床预测工具分级和评估的循证框架
在选择临床预测工具时,临床医生面临着数量庞大且不断增长的挑战,其中大多数从未被实施或评估过有效性。作者开发了一个基于证据的预测工具分级和评估框架(GRASP)。本研究的目的是完善、验证GRASP,并评估其一致性应用的可靠性。方法进行了一项混合方法研究,包括一项初步的基于网络的调查,以收集临床预测方面的广泛国际专家的反馈,以完善GRASP框架,随后由两名独立研究人员评估八种预测工具进行可靠性测试。这项调查涉及81名专家,他们按照李克特五分制对框架标准的一致性进行评分,并提供定性反馈。通过采用Spearman等级相关系数的互信度检验来评估GRASP框架的信度。调查结果专家对框架的评估标准达成了强烈的一致,总体平均得分:4.35/5,突出了预测性能、可用性、潜在效果和实施后影响对临床预测工具评分的重要性。定性反馈导致了重大改进,包括证据水平的详细分类和评价标准的更清晰表述。研究者与作者之间(0.994)和研究者之间(0.988)的信度检验一致性较高,说明工具分级一致性较强。结论:GRASP框架为评估、比较和选择最佳临床预测工具提供了一种高水平、以证据为基础、全面、简单可行的方法,具有很强的专家一致性和较高的相互可靠性。它根据实施前的预测性能验证、实施计划期间的可用性和潜在效果以及实施后对医疗保健流程和临床结果的影响对工具进行分级,从而帮助临床医生选择有效的工具。未来的研究应关注该框架在临床环境中的应用及其对决策和指南制定的影响。
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5.90
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0.00%
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审稿时长
10 weeks
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