机器学习预测肺癌切除患者的财务毒性。

IF 3.8 2区 医学 Q1 SURGERY
Nathaniel Deboever, Qasem Al-Tashi, Michael Eisenberg, Maliazurina B Saad, Mara B Antonoff, Wayne L Hofstetter, Reza J Mehran, David C Rice, Jack Roth, Stephen G Swisher, Ara A Vaporciyan, Garrett L Walsh, Jia Wu, Ravi Rajaram
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引用次数: 0

摘要

背景:财务毒性(Financial toxicity, FT)是指患者因治疗费用而承受的经济压力和对生活质量的不利影响。在切除的肺癌(LC)患者中,我们试图利用基于术前特征的机器学习(ML)技术来识别那些有发展为中度或重度(“严重”)FT风险的患者。研究设计:对2016年1月至2021年12月在单一中心接受LC切除术的患者进行调查,以确定人口统计信息、财务数据和主要FT的存在。从前瞻性数据库中提取临床病理变量。患者被随机分为训练组和测试组。首先,我们确定了信息量最大的特征。然后,训练了4种ML算法(决策树、随机森林[RF]、梯度增强和极端梯度增强)。我们对4个模型的预测结果进行综合,对模型进行优化。结果:共发现1477例患者,其中462例(31.3%)完成调查。46例(10.0%)患者出现严重FT。在我们的模型中,影响最大的变量包括年龄、种族/民族、吸烟状况、家庭收入、信用评分、婚姻和就业状况、住所规模、BMI、组织学、切除程度和术前1秒用力呼气量。集成模型的准确度为0.86,精度为0.93,灵敏度为0.86,F1得分为0.88,表明算法可靠。结论:ML算法可以准确识别LC术后有发生严重FT风险的患者。术前识别易受经济压力影响的LC患者可能会有机会进行干预,以解决下游成本问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Prediction of Financial Toxicity in Patients with Resected Lung Cancer.

Background: Financial toxicity (FT) refers to the financial stress and detrimental impact on quality of life experienced by patients due to treatment cost. In patients with resected lung cancer (LC), we sought to identify those at risk of developing moderate or severe ("major") FT using machine learning (ML) techniques based on preoperative characteristics.

Study design: Patients who underwent LC resection at a single center between January 2016 and December 2021 were surveyed to ascertain demographic information, financial data, and presence of major FT. Clinicopathologic variables were extracted from a prospective database. Patients were randomly divided into training and test sets. First, we identified the most informative features. Then, 4 ML algorithms (decision tree, random forest, gradient boosting, and extreme gradient boosting) were trained. We ensembled the 4 models' predictions to optimize the model.

Results: There were 1,477 patients identified, of whom 462 (31.3%) completed the survey. Forty-six patients (10.0%) experienced major FT. The variables most influential in our models included age, race and ethnicity, smoking status, household income, credit score, marital and employment status, size of residence, BMI, histology, extent of resection, and preoperative forced expiratory volume in 1 second. The ensemble model yielded an accuracy of 0.86, precision of 0.93, and sensitivity of 0.86, leading to an F1 score of 0.88, indicative of a reliable algorithm.

Conclusions: ML algorithms can accurately identify patients at risk of experiencing major FT after LC surgery. Preoperatively identifying patients with cancer vulnerable to financial stress may allow an opportunity for intervention to address downstream cost considerations.

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来源期刊
CiteScore
6.90
自引率
5.80%
发文量
1515
审稿时长
3-6 weeks
期刊介绍: The Journal of the American College of Surgeons (JACS) is a monthly journal publishing peer-reviewed original contributions on all aspects of surgery. These contributions include, but are not limited to, original clinical studies, review articles, and experimental investigations with clear clinical relevance. In general, case reports are not considered for publication. As the official scientific journal of the American College of Surgeons, JACS has the goal of providing its readership the highest quality rapid retrieval of information relevant to surgeons.
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