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子宫内膜样癌复发的综合预测模型

An integrated prediction model of recurrence in endometrial endometrioid cancers.

作者信息

Miller Marina D, Salinas Erin A, Newtson Andreea M, Sharma Deepti, Keeney Matthew E, Warrier Akshaya, Smith Brian J, Bender David P, Goodheart Michael J, Thiel Kristina W, Devor Eric J, Leslie Kimberly K, Gonzalez-Bosquet Jesus

机构信息

Department of Obstetrics and Gynecology, University of Iowa Carver College of Medicine, Iowa City, IA, USA.

Department of Pathology, University of Iowa Carver College of Medicine, Iowa City, IA, USA.

出版信息

Cancer Manag Res. 2019 Jun 6;11:5301-5315. doi: 10.2147/CMAR.S202628. eCollection 2019.

Abstract

Endometrial cancer incidence and mortality are rising in the US. Disease recurrence has been shown to have a significant impact on mortality. However, to date, there are no accurate and validated prediction models that would discriminate which individual patients are likely to recur. Reliably predicting recurrence would be of benefit for treatment decisions following surgery. We present an integrated model constructed with comprehensive clinical, pathological and molecular features designed to discriminate risk of recurrence for patients with endometrioid endometrial adenocarcinoma. A cohort of endometrioid endometrial cancer patients treated at our institution was assembled. Clinical characteristics were extracted from patient charts. Primary tumors from these patients were obtained and total tissue RNA extracted for RNA sequencing. A prediction model was designed containing both clinical characteristics and molecular profiling of the tumors. The same analysis was carried out with data derived from The Cancer Genome Atlas for replication and external validation. Prediction models derived from our institutional data predicted recurrence with high accuracy as evidenced by areas under the curve approaching 1. Similar trends were observed in the analysis of TCGA data. Further, a scoring system for risk of recurrence was devised that showed specificities as high as 81% and negative predictive value as high as 90%. Lastly, we identify specific molecular characteristics of patient tumors that may contribute to the process of disease recurrence. By constructing a comprehensive model, we are able to reliably predict recurrence in endometrioid endometrial cancer. We devised a clinically useful scoring system and thresholds to discriminate risk of recurrence. Finally, the data presented here open a window to understanding the mechanisms of recurrence in endometrial cancer.

摘要

在美国,子宫内膜癌的发病率和死亡率正在上升。疾病复发已被证明对死亡率有重大影响。然而,迄今为止,尚无准确且经过验证的预测模型能够区分哪些个体患者可能会复发。可靠地预测复发将有助于手术后续的治疗决策。我们提出了一个综合模型,该模型由全面的临床、病理和分子特征构建而成,旨在区分子宫内膜样子宫内膜腺癌患者的复发风险。我们收集了在本机构接受治疗的一组子宫内膜样子宫内膜癌患者。从患者病历中提取临床特征。获取这些患者的原发性肿瘤,并提取总组织RNA用于RNA测序。设计了一个包含肿瘤临床特征和分子图谱的预测模型。使用来自癌症基因组图谱(The Cancer Genome Atlas)的数据进行相同分析以进行复制和外部验证。从我们机构数据得出的预测模型能够高精度地预测复发,曲线下面积接近1就证明了这一点。在对TCGA数据的分析中也观察到了类似趋势。此外,还设计了一个复发风险评分系统,其特异性高达81%,阴性预测值高达90%。最后,我们确定了患者肿瘤可能导致疾病复发过程的特定分子特征。通过构建一个综合模型,我们能够可靠地预测子宫内膜样子宫内膜癌的复发。我们设计了一个临床有用的评分系统和阈值来区分复发风险。最后,这里呈现的数据为理解子宫内膜癌复发机制打开了一扇窗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7a02/6559142/f4d5df5c25ac/CMAR-11-5301-g0001.jpg

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