利用联合学习检测延迟性脑缺血的通用生理模型

Ahmed Elhussein, Murad Megjhani, Daniel Nametz, Miriam Weiss, Jude Savarraj, Soon Bin Kwon, David J Roh, Sachin Agarwal, E Sander Connolly, Angela Velazquez, Jan Claassen, Huimahn A Choi, Gerrit A Schubert, Soojin Park, Gamze Gürsoy
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摘要

延迟性脑缺血(DCI)是蛛网膜下腔出血中风患者的一种并发症。它是预示不良预后的主要因素,而且发现较晚。机器学习模型被证明可用于早期检测,但由于该病症的罕见性,训练此类模型的样本量较小。在此,我们提出了一种联合学习方法,在三个机构中训练 DCI 分类器,以克服跨医院共享数据的挑战。我们开发了一个联合特征选择框架,并建立了一个联合集合分类器。我们将FL模型的性能与在每个站点单独训练模型所获得的性能进行了比较。FL模型仅在两个地点明显提高了性能。我们发现,这是由于各站点的特征分布存在差异。在特征分布相似的站点,FL 可以提高性能,但在特征分布不均的站点,FL 可能会降低性能。结果凸显了 FL 的优势,以及在进行 FL 之前评估数据集分布相似性的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A generalizable physiological model for detection of Delayed Cerebral Ischemia using Federated Learning.

Delayed cerebral ischemia (DCI) is a complication seen in patients with subarachnoid hemorrhage stroke. It is a major predictor of poor outcomes and is detected late. Machine learning models are shown to be useful for early detection, however training such models suffers from small sample sizes due to rarity of the condition. Here we propose a Federated Learning approach to train a DCI classifier across three institutions to overcome challenges of sharing data across hospitals. We developed a framework for federated feature selection and built a federated ensemble classifier. We compared the performance of FL model to that obtained by training separate models at each site. FL significantly improved performance at only two sites. We found that this was due to feature distribution differences across sites. FL improves performance in sites with similar feature distributions, however, FL can worsen performance in sites with heterogeneous distributions. The results highlight both the benefit of FL and the need to assess dataset distribution similarity before conducting FL.

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