基于多中心隐私保护LASSO特征选择的联邦Cox比例风险模型用于个性化医疗视角下的生存分析

C. Masciocchi, B. Gottardelli, Mariachiara Savino, L. Boldrini, A. Martino, C. Mazzarella, M. Massaccesi, V. Valentini, A. Damiani
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引用次数: 6

摘要

Cox比例风险回归是临床和流行病学研究中最广泛使用的模型之一,用于调查事件发生时间结果与多个预测因子之间的关系,从现代个性化医疗的角度来看,这些预测因子往往属于与患者及其医疗状况有关的更广泛的领域。当目标是在预测模型中包含大量变量时,通常需要特征选择技术来确保结果具有一定程度的可解释性,并且需要联邦学习来在研究中招募足够数量的患者以获得可靠的模型结果,从而克服数据隐私和所有权的主要问题。在这方面,我们提出了一种适应于Cox比例风险回归模型优化算法的联邦学习,将LASSO正则化作为特征选择器,并通过比较其模型参数估计性能与集中式版本,在模拟分布式环境中,我们的算法在没有患者级数据共享的真实和模拟数据集上的有效性。
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Federated Cox Proportional Hazards Model with multicentric privacy-preserving LASSO feature selection for survival analysis from the perspective of personalized medicine
The Cox Proportional Hazards regression is among the most widely used models in clinical and epidemiological research for investigating the association between time-to-event outcomes and multiple predictors, that, in the modern perspective of personalized medicine, tend to belong to ever wider spheres relating to the patient and his medical condition. When the goal is to include a large number of variables in a prediction model, feature selection techniques are often required to ensure a certain level of interpretability of the results and federated learning is necessary to recruit in the study the sufficient number of patients for reliable model outcomes, overcoming the main problems of data privacy and ownership. In this regard, we here propose an adaptation for federated learning of the optimization algorithm of the Cox Proportional Hazards regression model with LASSO regularization as feature selector and we demonstrate the efficacy of our algorithm on real and simulated data sets in a simulated distributed environment with no patient-level data sharing by comparing its model parameter estimation performances with its centralised version.
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