Rue Tessa, Thompson Hilaire J, Rivara Frederick P, Mackenzie Ellen J, Jurkovich Gregory J
Department of Biostatistics, University of Washington, Seattle, USA.
J Nurs Scholarsh. 2008;40(4):373-8. doi: 10.1111/j.1547-5069.2008.00252.x.
To provide guidance for managing the problem of missing data in clinical studies of trauma in order to decrease bias and increase the validity of findings for subsequent use.
A thoughtful approach to missing data is an essential component of analysis to promote the clear interpretation of study findings.
Integrative review of relevant biostatistics, medical and nursing literature, and case exemplars of missing data analyses using multiple linear regression based upon data from the National Study on the Costs and Outcomes of Trauma (NSCOT) was used as an example.
In studies of traumatically injured people, multiple imputed values are often superior to complete case analyses that might have significant bias. Multiple imputation can improve accuracy of the assessment and might also improve precision of estimates. Sensitivity analyses which implements repeated analyses using various scenarios may also be useful in providing information supportive of further inquiry. This stepwise approach of missing data could also be valid in studies with similar types or patterns of missing data.
In interpreting and applying findings of studies with missing data, clinicians need to ensure that researchers have used appropriate methods for handling this issue. If suitable methods were not employed, nurse clinicians need to be aware that the findings may be biased.
为管理创伤临床研究中的数据缺失问题提供指导,以减少偏倚并提高后续研究结果的有效性。
对数据缺失进行周全的处理方法是分析的重要组成部分,有助于清晰解读研究结果。
综合回顾相关生物统计学、医学和护理文献,并以基于国家创伤成本与结果研究(NSCOT)数据的多重线性回归进行数据缺失分析的案例为例。
在创伤患者研究中,多重插补值通常优于可能存在显著偏倚的完全病例分析。多重插补可提高评估的准确性,还可能提高估计的精度。使用各种场景进行重复分析的敏感性分析,也可能有助于提供支持进一步探究的信息。这种数据缺失的逐步处理方法在具有相似类型或模式的数据缺失的研究中也可能有效。
在解读和应用存在数据缺失的研究结果时,临床医生需要确保研究人员使用了适当的方法来处理这个问题。如果未采用合适的方法,护士临床医生需要意识到研究结果可能存在偏倚。