典型肺癌切除术后长期预后的预测模型:机器学习视角

IF 1.8 4区 医学 Q3 ONCOLOGY
Cancer Investigation Pub Date : 2024-08-01 Epub Date: 2024-07-15 DOI:10.1080/07357907.2024.2356002
Min Liang, Jian Huang, Caiyan Liu, Mafeng Chen
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引用次数: 0

摘要

典型肺类癌(TPC)的特点是生长缓慢,通常需要手术干预。尽管如此,人们对肿瘤切除术后的长期疗效仍不甚了解。本研究利用监测、流行病学和最终结果数据库中2000年至2018年的数据,研究了影响TPC患者总生存期(OS)的因素。我们采用 Lasso-Cox 分析来确定预后特征,并使用随机森林、XGBoost 和 Cox 回归算法建立了各种模型。随后,我们使用曲线下面积(AUC)、校准图、布赖尔评分和决策曲线分析(DCA)等指标评估了模型的性能。在 2687 例患者中,我们发现了对 OS 有显著影响的五个临床特征。值得注意的是,随机森林模型表现出强劲的性能,在训练集和验证集上,5年和7年的AUC值分别为0.744/0.757和0.715/0.740,优于其他模型。此外,我们还开发了一个基于网络的平台,旨在方便用户访问该模型。本研究为医护人员展示了一个机器学习模型和一个基于网络的支持系统,有助于为肿瘤切除术后的 TPC 患者做出个性化治疗决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Modeling of Long-Term Prognosis After Resection in Typical Pulmonary Carcinoid: A Machine Learning Perspective.

Typical Pulmonary Carcinoid (TPC) is defined by its slow growth, frequently necessitating surgical intervention. Despite this, the long-term outcomes following tumor resection are not well understood. This study examined the factors impacting Overall Survival (OS) in patients with TPC, leveraging data from the Surveillance, Epidemiology, and End Results database spanning from 2000 to 2018. We employed Lasso-Cox analysis to identify prognostic features and developed various models using Random Forest, XGBoost, and Cox regression algorithms. Subsequently, we assessed model performance using metrics such as Area Under the Curve (AUC), calibration plot, Brier score, and Decision Curve Analysis (DCA). Among the 2687 patients, we identified five clinical features significantly affecting OS. Notably, the Random Forest model exhibited strong performance, achieving 5- and 7-year AUC values of 0.744/0.757 in the training set and 0.715/0.740 in the validation set, respectively, outperforming other models. Additionally, we developed a web-based platform aimed at facilitating easy access to the model. This study presents a machine learning model and a web-based support system for healthcare professionals, assisting in personalized treatment decisions for patients with TPC post-tumor resection.

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来源期刊
Cancer Investigation
Cancer Investigation 医学-肿瘤学
CiteScore
3.80
自引率
4.20%
发文量
71
审稿时长
8.5 months
期刊介绍: Cancer Investigation is one of the most highly regarded and recognized journals in the field of basic and clinical oncology. It is designed to give physicians a comprehensive resource on the current state of progress in the cancer field as well as a broad background of reliable information necessary for effective decision making. In addition to presenting original papers of fundamental significance, it also publishes reviews, essays, specialized presentations of controversies, considerations of new technologies and their applications to specific laboratory problems, discussions of public issues, miniseries on major topics, new and experimental drugs and therapies, and an innovative letters to the editor section. One of the unique features of the journal is its departmentalized editorial sections reporting on more than 30 subject categories covering the broad spectrum of specialized areas that together comprise the field of oncology. Edited by leading physicians and research scientists, these sections make Cancer Investigation the prime resource for clinicians seeking to make sense of the sometimes-overwhelming amount of information available throughout the field. In addition to its peer-reviewed clinical research, the journal also features translational studies that bridge the gap between the laboratory and the clinic.
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