Suppr超能文献

使用联合模型对前列腺癌复发进行实时个体预测。

Real-time individual predictions of prostate cancer recurrence using joint models.

作者信息

Taylor Jeremy M G, Park Yongseok, Ankerst Donna P, Proust-Lima Cecile, Williams Scott, Kestin Larry, Bae Kyoungwha, Pickles Tom, Sandler Howard

机构信息

Department of Biostatistics, University of Michigan, Ann Arbor, Michigan 48109, USA.

出版信息

Biometrics. 2013 Mar;69(1):206-13. doi: 10.1111/j.1541-0420.2012.01823.x. Epub 2013 Feb 4.

Abstract

Patients who were previously treated for prostate cancer with radiation therapy are monitored at regular intervals using a laboratory test called Prostate Specific Antigen (PSA). If the value of the PSA test starts to rise, this is an indication that the prostate cancer is more likely to recur, and the patient may wish to initiate new treatments. Such patients could be helped in making medical decisions by an accurate estimate of the probability of recurrence of the cancer in the next few years. In this article, we describe the methodology for giving the probability of recurrence for a new patient, as implemented on a web-based calculator. The methods use a joint longitudinal survival model. The model is developed on a training dataset of 2386 patients and tested on a dataset of 846 patients. Bayesian estimation methods are used with one Markov chain Monte Carlo (MCMC) algorithm developed for estimation of the parameters from the training dataset and a second quick MCMC developed for prediction of the risk of recurrence that uses the longitudinal PSA measures from a new patient.

摘要

曾接受过前列腺癌放射治疗的患者会定期通过一项名为前列腺特异性抗原(PSA)的实验室检测进行监测。如果PSA检测值开始上升,这表明前列腺癌更有可能复发,患者可能希望开始新的治疗。通过准确估计未来几年癌症复发的概率,这类患者在做出医疗决策时会得到帮助。在本文中,我们描述了在基于网络的计算器上实现的为新患者给出复发概率的方法。这些方法使用了联合纵向生存模型。该模型是在2386名患者的训练数据集上开发的,并在846名患者的数据集上进行了测试。使用贝叶斯估计方法,一种马尔可夫链蒙特卡罗(MCMC)算法用于从训练数据集中估计参数,另一种快速MCMC用于根据新患者的纵向PSA测量值预测复发风险。

相似文献

1
Real-time individual predictions of prostate cancer recurrence using joint models.
Biometrics. 2013 Mar;69(1):206-13. doi: 10.1111/j.1541-0420.2012.01823.x. Epub 2013 Feb 4.
7
A two-stage model in a Bayesian framework to estimate a survival endpoint in the presence of confounding by indication.
Stat Methods Med Res. 2018 Apr;27(4):1271-1281. doi: 10.1177/0962280216660127. Epub 2016 Sep 1.

引用本文的文献

2
5
GPU Accelerated Estimation of a Shared Random Effect Joint Model for Dynamic Prediction.
Comput Stat Data Anal. 2022 Oct;174. doi: 10.1016/j.csda.2022.107528. Epub 2022 May 16.
7
Bayesian Learning of Personalized Longitudinal Biomarker Trajectory.
Ann Data Sci. 2024 Jun;11(3):1031-1050. doi: 10.1007/s40745-023-00486-0. Epub 2023 Aug 1.
8
Joint modeling of longitudinal CD4 count data and time to first occurrence of composite outcome.
J Clin Tuberc Other Mycobact Dis. 2024 Apr 1;35:100434. doi: 10.1016/j.jctube.2024.100434. eCollection 2024 May.
9
Optimizing dynamic predictions from joint models using super learning.
Stat Med. 2024 Mar 30;43(7):1315-1328. doi: 10.1002/sim.10010. Epub 2024 Jan 25.

本文引用的文献

1
Joint latent class models for longitudinal and time-to-event data: a review.
Stat Methods Med Res. 2014 Feb;23(1):74-90. doi: 10.1177/0962280212445839. Epub 2012 Apr 19.
2
Dynamic predictions and prospective accuracy in joint models for longitudinal and time-to-event data.
Biometrics. 2011 Sep;67(3):819-29. doi: 10.1111/j.1541-0420.2010.01546.x. Epub 2011 Feb 9.
4
Assessing the performance of prediction models: a framework for traditional and novel measures.
Epidemiology. 2010 Jan;21(1):128-38. doi: 10.1097/EDE.0b013e3181c30fb2.
7
Validation of biomarker-based risk prediction models.
Clin Cancer Res. 2008 Oct 1;14(19):5977-83. doi: 10.1158/1078-0432.CCR-07-4534.
9
Individualized predictions of disease progression following radiation therapy for prostate cancer.
J Clin Oncol. 2005 Feb 1;23(4):816-25. doi: 10.1200/JCO.2005.12.156.
10
Joint modelling of longitudinal measurements and event time data.
Biostatistics. 2000 Dec;1(4):465-80. doi: 10.1093/biostatistics/1.4.465.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验