Suppr超能文献

基于机器学习的治疗前血清肿瘤标志物的非转移性三阴性乳腺癌预后模型

Prognostic Models for Nonmetastatic Triple-Negative Breast Cancer Based on the Pretreatment Serum Tumor Markers with Machine Learning.

作者信息

Chen Huihui, Wu Shijie, Hu Jun, Zhang Kun, Hu Kaimin, Lu Yuexin, He Jiapan, Pan Tao, Chen Yiding

机构信息

Department of Breast Surgery, The Second Affiliated Hospital, Zhejiang University School of Medicine, 88 Jie-Fang Rd, Hangzhou, Zhejiang 310009, China.

The Key Laboratory of Cancer Prevention and Intervention, China National Ministry of Education, 88 Jie-Fang Rd, Hangzhou, Zhejiang 310009, China.

出版信息

J Oncol. 2021 May 15;2021:6641421. doi: 10.1155/2021/6641421. eCollection 2021.

Abstract

PURPOSE

Triple-negative breast cancer (TNBC) is a heterogeneous and aggressive disease with poorer prognosis than other subtypes. We aimed to investigate the prognostic efficacy of multiple tumor markers and constructed a prognostic model for stage I-III TNBC patients. . We included stage I-III TNBC patients whose serum tumor markers levels were measured prior to the treatment. The optimal cut-off value of each tumor marker was determined by X-tile. Then, we adopted two survival models (lasso Cox model and random survival forest model) to build the prognostic model and AUC values of the time-dependent receiver operating characteristic (ROC) were calculated. The Kaplan-Meier method was used to plot the survival curves and the log-rank test was used to test whether there was a significant difference between the predicted high-risk and low-risk groups. We used univariable and multivariable Cox analysis to identify independent prognostic factors and did subgroup analysis further for the lasso Cox model.

RESULTS

We included 258 stage I-III TNBC patients. CEA, CA125, and CA211 showed independent prognostic value for DFS when using the optimal cut-off values; their HRs and 95% CI were as follows: 1.787 (1.056-3.226), 2.684 (1.200-3.931), and 2.513 (1.567-4.877). AUC values of lasso Cox model and random survival forest model were 0.740 and 0.663 for DFS at 60 months, respectively. Both the lasso Cox model and random survival forest model demonstrated excellent prognostic value. According to tumor marker risk scores (TMRS) computed by the lasso Cox model, the high TMRS group had worse DFS (HR = 3.138, 95% CI: 1.711-5.033, < 0.0001) and OS (3.983, 1.637-7.214, =0.0011) than low TMRS group. Furthermore, subgroup analysis of N-N patients in the lasso Cox model indicated that TMRS still had a significant prognostic effect on DFS (2.278, 1.189-4.346) and OS (2.982, 1.110-7.519).

CONCLUSIONS

Our study indicated that pretreatment levels of serum CEA, CA125, and CA211 had independent prognostic significance for TNBC patients. Both lasso Cox model and random survival forest model that we constructed based on tumor markers could strongly predict the survival risk. Higher TMRS was associated with worse DFS and OS both in stage I-III and N-N TNBC patients.

摘要

目的

三阴性乳腺癌(TNBC)是一种异质性侵袭性疾病,预后比其他亚型更差。我们旨在研究多种肿瘤标志物的预后效能,并为I-III期TNBC患者构建一个预后模型。我们纳入了在治疗前测量血清肿瘤标志物水平的I-III期TNBC患者。每个肿瘤标志物的最佳临界值由X-tile确定。然后,我们采用两种生存模型(套索Cox模型和随机生存森林模型)构建预后模型,并计算时间依赖性受试者操作特征(ROC)曲线的AUC值。采用Kaplan-Meier法绘制生存曲线,采用对数秩检验来检验预测的高风险组和低风险组之间是否存在显著差异。我们使用单变量和多变量Cox分析来确定独立的预后因素,并对套索Cox模型进一步进行亚组分析。

结果

我们纳入了258例I-III期TNBC患者。当使用最佳临界值时,癌胚抗原(CEA)、糖类抗原125(CA125)和糖类抗原211(CA211)对无病生存期(DFS)显示出独立的预后价值;它们的风险比(HR)和95%置信区间(CI)如下:1.787(1.056 - 3.226)、2.684(1.200 - 3.931)和2.513(1.567 - 4.877)。在60个月时,套索Cox模型和随机生存森林模型对DFS的AUC值分别为0.740和0.663。套索Cox模型和随机生存森林模型均显示出优异的预后价值。根据套索Cox模型计算的肿瘤标志物风险评分(TMRS),高TMRS组的DFS(HR = 3.138,95% CI:1.711 - 5.033,P < 0.0001)和总生存期(OS,3.983,1.637 - 7.214,P = 0.0011)比低TMRS组更差。此外,套索Cox模型中N0-N1患者的亚组分析表明,TMRS对DFS(2.278,1.189 - 4.346)和OS(2.982,1.110 - 7.519)仍具有显著的预后作用。

结论

我们的研究表明,血清CEA、CA125和CA211的预处理水平对TNBC患者具有独立的预后意义。我们基于肿瘤标志物构建的套索Cox模型和随机生存森林模型都能有力地预测生存风险。较高的TMRS与I-III期和N0-N1期TNBC患者较差的DFS和OS相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2613/8147528/af667d6cd202/JO2021-6641421.001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验