Tufts Evidence-based Practice Center and Center for Clinical Evidence Synthesis, Tufts Medical Center, Boston, Massachusetts, USA.
Med Decis Making. 2009 Sep-Oct;29(5):E22-9. doi: 10.1177/0272989X09345022. Epub 2009 Sep 4.
The clinical utility of medical tests is measured by whether the information they provide affects patient-relevant outcomes. To a large extent, effects of medical tests are indirect in nature. In principle, a test result affects patient outcomes mainly by influencing treatment choices. This indirectness in the link between testing and its downstream effects poses practical challenges to comparing alternate test-and-treat strategies in clinical trials. Keeping in mind the broader audience of researchers who perform comparative effectiveness reviews and technology assessments, the authors summarize the rationale for and pitfalls of decision modeling in the comparative evaluation of medical tests by virtue of specific examples. Modeling facilitates the interpretation of test performance measures by connecting the link between testing and patient outcomes, accounting for uncertainties and explicating assumptions, and allowing the systematic study of tradeoffs and uncertainty. The authors discuss challenges encountered when modeling test-and-treat strategies, including but not limited to scarcity of data on important parameters, transferring estimates of test performance across studies, choosing modeling outcomes, and obtaining summary estimates for test performance data.
医学检验的临床实用性取决于其提供的信息是否影响患者相关结局。在很大程度上,医学检验的效果本质上是间接的。原则上,检验结果主要通过影响治疗选择来影响患者结局。检验与其下游效果之间的这种间接关系给临床试验中比较替代检验和治疗策略带来了实际挑战。考虑到进行比较有效性评价和技术评估的研究人员的更广泛受众,作者通过具体示例总结了决策模型在医学检验比较评价中的基本原理和缺陷。建模通过连接检验与患者结局之间的联系,解释不确定性并阐明假设,从而有助于解释检验性能指标,并允许系统地研究权衡和不确定性,为检验性能的解释提供了便利。作者讨论了在建模检验和治疗策略时遇到的挑战,包括但不限于重要参数数据的缺乏、检验性能估计在研究之间的转移、选择建模结果,以及获得检验性能数据的汇总估计。