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建立和验证模型预测浆液性卵巢癌初次治疗反应。

Creation and validation of models to predict response to primary treatment in serous ovarian cancer.

机构信息

Division of Gynecologic Oncology, Department of Obstetrics and Gynecology, University of Iowa Hospitals and Clinics, Iowa City, IA, 52242, USA.

Holden Comprehensive Cancer Center, University of Iowa Hospitals and Clinics, Iowa City, IA, 52242, USA.

出版信息

Sci Rep. 2021 Mar 16;11(1):5957. doi: 10.1038/s41598-021-85256-9.

Abstract

Nearly a third of patients with high-grade serous ovarian cancer (HGSC) do not respond to initial therapy and have an overall poor prognosis. However, there are no validated tools that accurately predict which patients will not respond. Our objective is to create and validate accurate models of prediction for treatment response in HGSC. This is a retrospective case-control study that integrates comprehensive clinical and genomic data from 88 patients with HGSC from a single institution. Responders were those patients with a progression-free survival of at least 6 months after treatment. Only patients with complete clinical information and frozen specimen at surgery were included. Gene, miRNA, exon, and long non-coding RNA (lncRNA) expression, gene copy number, genomic variation, and fusion-gene determination were extracted from RNA-sequencing data. DNA methylation analysis was performed. Initial selection of informative variables was performed with univariate ANOVA with cross-validation. Significant variables (p < 0.05) were included in multivariate lasso regression prediction models. Initial models included only one variable. Variables were then combined to create complex models. Model performance was measured with area under the curve (AUC). Validation of all models was performed using TCGA HGSC database. By integrating clinical and genomic variables, we achieved prediction performances of over 95% in AUC. Most performances in the validation set did not differ from the training set. Models with DNA methylation or lncRNA underperformed in the validation set. Integrating comprehensive clinical and genomic data from patients with HGSC results in accurate and robust prediction models of treatment response.

摘要

大约三分之一的高级别浆液性卵巢癌 (HGSC) 患者对初始治疗无反应,总体预后较差。然而,目前尚无经过验证的工具能够准确预测哪些患者将无反应。我们的目标是创建和验证 HGSC 治疗反应的准确预测模型。这是一项回顾性病例对照研究,整合了来自单一机构的 88 名 HGSC 患者的综合临床和基因组数据。响应者是指治疗后无进展生存期至少 6 个月的患者。仅纳入具有完整临床信息和手术时冷冻标本的患者。从 RNA-seq 数据中提取基因、miRNA、外显子和长非编码 RNA (lncRNA) 表达、基因拷贝数、基因组变异和融合基因确定。进行 DNA 甲基化分析。使用具有交叉验证的单变量 ANOVA 进行初始信息变量选择。选择具有统计学意义的变量(p < 0.05)纳入多变量套索回归预测模型。初始模型仅包含一个变量。然后将变量组合以创建复杂模型。使用曲线下面积 (AUC) 来衡量模型性能。使用 TCGA HGSC 数据库对所有模型进行验证。通过整合临床和基因组变量,我们在 AUC 中实现了超过 95%的预测性能。验证集中的大多数性能与训练集没有差异。包含 DNA 甲基化或 lncRNA 的模型在验证集中表现不佳。整合 HGSC 患者的综合临床和基因组数据可产生治疗反应的准确且稳健的预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4d6c/7971042/ca1576579ab0/41598_2021_85256_Fig1_HTML.jpg

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