基于机器学习的新发转移性浸润性乳腺导管癌预后建模及手术价值分析。

IF 2.4 3区 医学 Q2 SURGERY Updates in Surgery Pub Date : 2025-01-15 DOI:10.1007/s13304-025-02066-8
Changlong Wei, Honghui Li, Jinsong Li, Yaxiong Liu, Jinsheng Zeng, Qiuhong Tian
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引用次数: 0

摘要

原发病变手术是否能提高新发转移性乳腺癌(dnMBC)患者的生存率尚无定论。我们的目的是建立一个基于机器学习算法的新发转移性乳腺浸润性导管癌(dnMBIDC)患者的预后预测模型,并探讨原发部位手术的价值。本研究使用的数据来自监测、流行病学和最终结果数据库(SEER, 2010-2021)和南昌大学第一附属医院(1st-NCUH, 2013年6月- 2023年6月)。我们使用COX回归分析来确定预后因素。我们将患者分为训练组和验证组,构建极端梯度增强(XGBoost)预后预测模型。此外,我们使用倾向评分匹配(PSM)、K-M生存分析和COX回归分析来探讨原发病变手术患者的生存获益。共有13383名患者入组,其中13326名来自SEER, 57名来自first - ncuh。结果表明,XGboost具有较好的预测能力(训练集C-index = 0.726, 1年AUC = 0.788, 3年AUC = 0.774, 5年AUC = 0.774;验证集C-index = 0.723, 1年AUC = 0.785.1, 3年AUC = 0.770, 5年AUC = 0.764),其预测能力优于Coxph模型。我们使用shine - web使我们的模型易于获得。此外,我们发现手术与dnMBIDC患者更好的预后相关。基于XGboost,我们可以准确预测dnMBIDC患者的生存期,为临床医生治疗患者提供参考。此外,手术可能会给dnMBIDC患者带来生存益处。
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Machine learning-based prognostic modeling and surgical value analysis of de novo metastatic invasive ductal carcinoma of the breast.

Whether primary lesion surgery improves survival in patients with de novo metastatic breast cancer (dnMBC) is inconclusive. We aimed to establish a prognostic prediction model for patients with de novo metastatic breast invasive ductal carcinoma (dnMBIDC) based on machine learning algorithms and to investigate the value of primary site surgery. The data used in our study were obtained from the Surveillance, Epidemiology, and End Results database (SEER, 2010-2021) and the First Affiliated Hospital of Nanchang University (1st-NCUH, June 2013-June 2023). We used COX regression analysis to identify prognostic factors. We divided patients into training and validation groups and constructed Extreme Gradient Boosting (XGBoost) prognostic prediction model. In addition, we used propensity score matching (PSM), K-M survival analysis, and COX regression analysis to explore the survival benefit of patients undergoing primary lesion surgery. A total of 13,383 patients were enrolled, with 13,326 from SEER and 57 from 1st-NCUH. The results showed that XGboost had good predictive ability (training set C-index = 0.726, 1 year AUC = 0.788, 3 year AUC = 0.774, 5 year AUC = 0.774; validation set C-index = 0.723, 1 year AUC = 0.785.1, 3 year AUC = 0.770, 5 year AUC = 0.764), which has better predictive power than the Coxph model. We used Shiny-Web to make our model easily available. Furthermore, we found that surgery was associated with a better prognosis in dnMBIDC patients. Based on the XGboost, we can accurately predict the survival of dnMBIDC patients, which can provide a reference for clinicians to treat patients. In addition, surgery may bring survival benefits to dnMBIDC patients.

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来源期刊
Updates in Surgery
Updates in Surgery Medicine-Surgery
CiteScore
4.50
自引率
7.70%
发文量
208
期刊介绍: Updates in Surgery (UPIS) has been founded in 2010 as the official journal of the Italian Society of Surgery. It’s an international, English-language, peer-reviewed journal dedicated to the surgical sciences. Its main goal is to offer a valuable update on the most recent developments of those surgical techniques that are rapidly evolving, forcing the community of surgeons to a rigorous debate and a continuous refinement of standards of care. In this respect position papers on the mostly debated surgical approaches and accreditation criteria have been published and are welcome for the future. Beside its focus on general surgery, the journal draws particular attention to cutting edge topics and emerging surgical fields that are publishing in monothematic issues guest edited by well-known experts. Updates in Surgery has been considering various types of papers: editorials, comprehensive reviews, original studies and technical notes related to specific surgical procedures and techniques on liver, colorectal, gastric, pancreatic, robotic and bariatric surgery.
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