FLICU: A Federated Learning Workflow for Intensive Care Unit Mortality Prediction

Lena Mondrejevski, Ioanna Miliou, Annaclaudia Montanino, David Pitts, Jaakko Hollmén, P. Papapetrou
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引用次数: 2

Abstract

Although Machine Learning can be seen as a promising tool to improve clinical decision-making, it remains limited by access to healthcare data. Healthcare data is sensitive, requiring strict privacy practices, and typically stored in data silos, making traditional Machine Learning challenging. Federated Learning can counteract those limitations by training Machine Learning models over data silos while keeping the sensitive data localized. This study proposes a Federated Learning workflow for Intensive Care Unit mortality prediction. Hereby, the applicability of Federated Learning as an alternative to Centralized Machine Learning and Local Machine Learning is investigated by introducing Federated Learning to the binary classification problem of predicting Intensive Care Unit mortality. We extract multivariate time series data from the MIMIC-III database (lab values and vital signs), and benchmark the predictive performance of four deep sequential classifiers (FRNN, LSTM, GRU, and 1DCNN) varying the patient history window lengths (8h, 16h, 24h, and 48h) and the number of Federated Learning clients (2, 4, and 8). The experiments demonstrate that both Centralized Machine Learning and Federated Learning are comparable in terms of AUPRC and F1-score. Furthermore, the federated approach shows superior performance over Local Machine Learning. Thus, Federated Learning can be seen as a valid and privacy-preserving alternative to Centralized Machine Learning for classifying Intensive Care Unit mortality when the sharing of sensitive patient data between hospitals is not possible.
重症监护病房死亡率预测的联邦学习工作流
尽管机器学习可以被视为改善临床决策的有前途的工具,但它仍然受到医疗数据访问的限制。医疗保健数据非常敏感,需要严格的隐私保护措施,并且通常存储在数据孤岛中,这使得传统的机器学习具有挑战性。联邦学习可以通过在数据孤岛上训练机器学习模型来抵消这些限制,同时保持敏感数据的本地化。本研究提出一种用于重症监护病房死亡率预测的联邦学习工作流程。因此,通过将联邦学习引入预测重症监护病房死亡率的二元分类问题,研究联邦学习作为集中式机器学习和局部机器学习替代方案的适用性。我们从MIMIC-III数据库中提取多元时间序列数据(实验室值和生命体征),并对四种深度顺序分类器(FRNN, LSTM, GRU和1DCNN)的预测性能进行基准测试,这些分类器改变了患者历史窗口长度(8h, 16h, 24h和48h)和联邦学习客户端数量(2,4和8)。实验表明,集中式机器学习和联邦学习在AUPRC和f1得分方面具有可比性。此外,联邦方法表现出优于本地机器学习的性能。因此,当医院之间无法共享敏感患者数据时,联邦学习可以被视为一种有效且保护隐私的集中式机器学习替代方案,用于对重症监护病房死亡率进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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