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用于预测中国患者临床诊断的局限性前列腺癌Gleason评分升级的列线图。

A nomogram to predict Gleason sum upgrading of clinically diagnosed localized prostate cancer among Chinese patients.

作者信息

Wang Jin-You, Zhu Yao, Wang Chao-Fu, Zhang Shi-Lin, Dai Bo, Ye Ding-Wei

机构信息

Department of Oncology, Shanghai Medical College, Fudan University, Shanghai 200032, P. R. China.

出版信息

Chin J Cancer. 2014 May;33(5):241-8. doi: 10.5732/cjc.013.10137. Epub 2014 Feb 14.

Abstract

Although several models have been developed to predict the probability of Gleason sum upgrading between biopsy and radical prostatectomy specimens, most of these models are restricted to prostate-specific antigen screening-detected prostate cancer. This study aimed to build a nomogram for the prediction of Gleason sum upgrading in clinically diagnosed prostate cancer. The study cohort comprised 269 Chinese prostate cancer patients who underwent prostate biopsy with a minimum of 10 cores and were subsequently treated with radical prostatectomy. Of all included patients, 220 (81.8%) were referred with clinical symptoms. The prostate-specific antigen level, primary and secondary biopsy Gleason scores, and clinical T category were used in a multivariate logistic regression model to predict the probability of Gleason sum upgrading. The developed nomogram was validated internally. Gleason sum upgrading was observed in 90 (33.5%) patients. Our nomogram showed a bootstrap-corrected concordance index of 0.789 and good calibration using 4 readily available variables. The nomogram also demonstrated satisfactory statistical performance for predicting significant upgrading. External validation of the nomogram published by Chun et al. in our cohort showed a marked discordance between the observed and predicted probabilities of Gleason sum upgrading. In summary, a new nomogram to predict Gleason sum upgrading in clinically diagnosed prostate cancer was developed, and it demonstrated good statistical performance upon internal validation.

摘要

尽管已经开发了几种模型来预测活检标本和根治性前列腺切除术标本之间 Gleason 评分升级的概率,但这些模型大多仅限于前列腺特异性抗原筛查检测出的前列腺癌。本研究旨在构建一个列线图,用于预测临床诊断前列腺癌中 Gleason 评分升级情况。研究队列包括 269 例中国前列腺癌患者,这些患者接受了至少 10 针的前列腺活检,随后接受了根治性前列腺切除术。在所有纳入的患者中,220 例(81.8%)因临床症状就诊。将前列腺特异性抗原水平、初次和二次活检 Gleason 评分以及临床 T 分期用于多因素逻辑回归模型,以预测 Gleason 评分升级的概率。所构建的列线图进行了内部验证。90 例(33.5%)患者出现 Gleason 评分升级。我们的列线图显示自抽样校正一致性指数为 0.789,使用 4 个易于获得的变量具有良好的校准。该列线图在预测显著升级方面也表现出令人满意的统计性能。Chun 等人发表的列线图在我们的队列中的外部验证显示,Gleason 评分升级的观察概率与预测概率之间存在明显差异。总之,我们开发了一种新的列线图来预测临床诊断前列腺癌中的 Gleason 评分升级,并且在内部验证时表现出良好的统计性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9beb/4026544/056e68f7aed7/cjc-33-05-241-g001.jpg

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