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Improving patient prostate cancer risk assessment: Moving from static, globally-applied to dynamic, practice-specific risk calculators.改善患者前列腺癌风险评估:从静态的、全球通用的风险计算器转向动态的、针对具体临床实践的风险计算器。
J Biomed Inform. 2015 Aug;56:87-93. doi: 10.1016/j.jbi.2015.05.001. Epub 2015 May 16.

本文引用的文献

1
Prospective evaluation of operating characteristics of prostate cancer detection biomarkers.前列腺癌检测生物标志物的操作特性的前瞻性评估。
J Urol. 2011 Jan;185(1):104-10. doi: 10.1016/j.juro.2010.08.088. Epub 2010 Nov 12.
2
Estimating the diagnostic likelihood ratio of a continuous marker.估算连续型标志物的诊断似然比。
Biostatistics. 2011 Jan;12(1):87-101. doi: 10.1093/biostatistics/kxq045. Epub 2010 Jul 16.
3
A prospective, multicenter, National Cancer Institute Early Detection Research Network study of [-2]proPSA: improving prostate cancer detection and correlating with cancer aggressiveness.一项前瞻性、多中心、美国国家癌症研究所早期检测研究网络的 [-2]proPSA 研究:提高前列腺癌的检出率并与癌症侵袭性相关。
Cancer Epidemiol Biomarkers Prev. 2010 May;19(5):1193-200. doi: 10.1158/1055-9965.EPI-10-0007.
4
Missing covariate data in medical research: to impute is better than to ignore.医学研究中缺失的协变量数据:填补优于忽略。
J Clin Epidemiol. 2010 Jul;63(7):721-7. doi: 10.1016/j.jclinepi.2009.12.008. Epub 2010 Mar 24.
5
American Cancer Society guideline for the early detection of prostate cancer: update 2010.美国癌症协会前列腺癌早期检测指南:2010 年更新版。
CA Cancer J Clin. 2010 Mar-Apr;60(2):70-98. doi: 10.3322/caac.20066. Epub 2010 Mar 3.
6
Assessing the performance of prediction models: a framework for traditional and novel measures.评估预测模型的性能:传统和新型指标的框架。
Epidemiology. 2010 Jan;21(1):128-38. doi: 10.1097/EDE.0b013e3181c30fb2.
7
Performance of prostate cancer prevention trial risk calculator in a contemporary cohort screened for prostate cancer and diagnosed by extended prostate biopsy.在经前列腺癌筛查和扩展前列腺活检诊断的当代队列中,前列腺癌预防试验风险计算器的表现。
J Urol. 2010 Feb;183(2):529-33. doi: 10.1016/j.juro.2009.10.007. Epub 2009 Dec 14.
8
Validation in a multiple urology practice cohort of the Prostate Cancer Prevention Trial calculator for predicting prostate cancer detection.在多个泌尿外科实践队列中对前列腺癌预防试验计算器进行验证,以预测前列腺癌的检测情况。
J Urol. 2009 Dec;182(6):2653-8. doi: 10.1016/j.juro.2009.08.056.
9
Predicting the outcome of prostate biopsy: comparison of a novel logistic regression-based model, the prostate cancer risk calculator, and prostate-specific antigen level alone.预测前列腺活检结果:基于新型逻辑回归模型、前列腺癌风险计算器及单独前列腺特异性抗原水平的比较
BJU Int. 2009 Mar;103(5):609-14. doi: 10.1111/j.1464-410X.2008.08127.x. Epub 2008 Oct 24.
10
Estimating the capacity for improvement in risk prediction with a marker.评估利用一个标志物改善风险预测的能力。
Biostatistics. 2009 Jan;10(1):172-86. doi: 10.1093/biostatistics/kxn025. Epub 2008 Aug 19.

更新风险预测工具:前列腺癌的一个案例研究。

Updating risk prediction tools: a case study in prostate cancer.

作者信息

Ankerst Donna P, Koniarski Tim, Liang Yuanyuan, Leach Robin J, Feng Ziding, Sanda Martin G, Partin Alan W, Chan Daniel W, Kagan Jacob, Sokoll Lori, Wei John T, Thompson Ian M

机构信息

Department of Mathematics, Technische Universitaet Muenchen, Unit M4, Boltzmannstr 3, 85748 Garching b. Munich, Germany.

出版信息

Biom J. 2012 Jan;54(1):127-42. doi: 10.1002/bimj.201100062. Epub 2011 Nov 17.

DOI:10.1002/bimj.201100062
PMID:22095849
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3715690/
Abstract

Online risk prediction tools for common cancers are now easily accessible and widely used by patients and doctors for informed decision-making concerning screening and diagnosis. A practical problem is as cancer research moves forward and new biomarkers and risk factors are discovered, there is a need to update the risk algorithms to include them. Typically, the new markers and risk factors cannot be retrospectively measured on the same study participants used to develop the original prediction tool, necessitating the merging of a separate study of different participants, which may be much smaller in sample size and of a different design. Validation of the updated tool on a third independent data set is warranted before the updated tool can go online. This article reports on the application of Bayes rule for updating risk prediction tools to include a set of biomarkers measured in an external study to the original study used to develop the risk prediction tool. The procedure is illustrated in the context of updating the online Prostate Cancer Prevention Trial Risk Calculator to incorporate the new markers %freePSA and [-2]proPSA measured on an external case-control study performed in Texas, U.S.. Recent state-of-the art methods in validation of risk prediction tools and evaluation of the improvement of updated to original tools are implemented using an external validation set provided by the U.S. Early Detection Research Network.

摘要

常见癌症的在线风险预测工具现在很容易获取,患者和医生广泛使用这些工具来做出有关筛查和诊断的明智决策。一个实际问题是,随着癌症研究的推进以及新的生物标志物和风险因素被发现,需要更新风险算法以将它们纳入其中。通常,新的标志物和风险因素无法在用于开发原始预测工具的同一研究参与者身上进行回顾性测量,因此需要合并一项针对不同参与者的单独研究,而该研究的样本量可能小得多且设计不同。在更新后的工具上线之前,有必要在第三个独立数据集上对其进行验证。本文报告了贝叶斯规则在更新风险预测工具中的应用,即将在一项外部研究中测量的一组生物标志物纳入用于开发风险预测工具的原始研究中。该程序在更新在线前列腺癌预防试验风险计算器以纳入在美国德克萨斯州进行的一项外部病例对照研究中测量的新标志物%游离前列腺特异性抗原和[-2]前列腺特异性抗原的背景下进行了说明。使用美国早期检测研究网络提供的外部验证集,实施了风险预测工具验证和更新工具相对于原始工具改进评估方面的最新先进方法。