Over the past several years, multivariate approaches have been developed that address the problem of disease diagnosis. Here, we report an integrated approach to the problem of prognosis that uses protein microarrays to measure a focused set of molecular markers and non-parametric methods to reveal non-linear relationships among these markers, clinical variables, and patient outcome. As proof-of-concept, we applied our approach to the prediction of early mortality in patients initiating kidney dialysis. We found that molecular markers are not uniformly prognostic, but instead vary in their value depending on a combination of clinical variables. This may explain why reports in this area aiming to identify prognostic markers, without taking into account clinical variables, are either conflicting or show that markers have marginal prognostic value. Just as treatments are now being tailored to specific subsets of patients, our results show that prognosis can also benefit from a 'personalized' approach.

译文

:在过去的几年中,已经开发出多种方法来解决疾病诊断问题。在这里,我们报告了一种针对预后问题的综合方法,该方法使用蛋白质微阵列测量一组重点的分子标志物,并使用非参数方法来揭示这些标志物,临床变量和患者预后之间的非线性关系。作为概念验证,我们将我们的方法应用于开始肾脏透析的患者的早期死亡率的预测。我们发现分子标记物的预后并不统一,而是根据临床变量的组合而改变其价值。这可以解释为什么在不考虑临床变量的情况下,旨在鉴定预后标志物的该领域的报告要么矛盾,要么表明该标志物具有预后价值。正如现在针对特定患者子集调整治疗方法一样,我们的结果表明,“个性化”方法也可以使预后受益。

+1
+2
100研值 100研值 ¥99课程
检索文献一次
下载文献一次

去下载>

成功解锁2个技能,为你点赞

《SCI写作十大必备语法》
解决你的SCI语法难题!

技能熟练度+1

视频课《玩转文献检索》
让你成为检索达人!

恭喜完成新手挑战

手机微信扫一扫,添加好友领取

免费领《Endnote文献管理工具+教程》

微信扫码, 免费领取

手机登录

获取验证码
登录