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首页> 外文期刊>Journal of Clinical Oncology >Sequential testing approach as an efficient and easier alternative for the validation of new predictive technologies in the clinic.
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Sequential testing approach as an efficient and easier alternative for the validation of new predictive technologies in the clinic.

机译:顺序测试方法是在临床中验证新的预测技术的一种有效且简便的替代方法。

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摘要

PURPOSE: When clinicians contemplate the use of a new predictive technology in their practice, such as a nomogram, there is always a question of whether the new test is beneficial to their own clinical population. Unfortunately, traditional validation methods require a large number of subjects for validation testing and delay the decision-making process. We present an efficient and easy-to-use method based on the concept of sequential data analysis. PATIENTS AND METHODS: We illustrate with an example determining the validity of a technology for predicting Gleason score upgrading from biopsy to postprostatectomy (the Chun nomogram) in a clinical population different from the one used to initially validate the technology. Clinical data required by the Chun nomogram were available from 201 patients from the Cooperative Prostate Cancer Tissue Resource. RESULTS: Of 124 patients predicted by the Chun nomogram to have an upgrading event, 47 actually did. The positive predictive value (PPV) of the model was therefore 38% and significantly (P < .05) less than the value of 80% which we considered to be the smallest clinically useful PPV in this situation. Had the sequential methods introduced in this article been employed prospectively in this cohort, the same conclusion would have been reached using data from only the first 15 patients. CONCLUSION: In-clinic validation of predictive technologies will help the clinician adopt truly beneficial technologies and avoid the adoption of technologies which provide no significant benefit to their local patient population. For this task, sequential methods offer clear advantages.
机译:目的:当临床医生在实践中考虑使用一种新的预测技术(如列线图)时,总是存在一个问题,即新测试是否对他们自己的临床人群有益。不幸的是,传统的验证方法需要大量的主题进行验证测试,并延迟了决策过程。我们提出了一种基于顺序数据分析概念的高效且易于使用的方法。病人和方法:我们以一个例子说明如何确定一种技术的有效性,该技术可用于预测与最初用于验证该技术的临床人群不同的临床人群中,从活检到前列腺切除术的格里森评分提升(春诺姆图)。 Chun诺模图所需的临床数据可从合作前列腺癌组织资源的201位患者获得。结果:在Chun诺模图预测的124例患者中有升级事件,其中47例确实发生了。因此,模型的阳性预测值(PPV)为38%,显着(P <.05)小于80%的值,我们认为在这种情况下,该值是临床上最小的PPV。如果在此队列中前瞻性地采用了本文介绍的顺序方法,那么仅使用前15名患者的数据就可以得出相同的结论。结论:对预测技术的临床验证将有助于临床医生采用真正有益的技术,并避免采用对当地患者群体无明显益处的技术。对于此任务,顺序方法具有明显的优势。

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