Online Transfer Learning for RSV Case Detection.

Yiming Sun, Yuhe Gao, Runxue Bao, Gregory F Cooper, Jessi Espino, Harry Hochheiser, Marian G Michaels, John M Aronis, Chenxi Song, Ye Ye
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Abstract

Transfer learning has become a pivotal technique in machine learning and has proven to be effective in various real-world applications. However, utilizing this technique for classification tasks with sequential data often faces challenges, primarily attributed to the scarcity of class labels. To address this challenge, we introduce Multi-Source Adaptive Weighting (MSAW), an online multi-source transfer learning method. MSAW integrates a dynamic weighting mechanism into an ensemble framework, enabling automatic adjustment of weights based on the relevance and contribution of each source (representing historical knowledge) and target model (learning from newly acquired data). We demonstrate the effectiveness of MSAW by applying it to detect Respiratory Syncytial Virus cases within Emergency Department visits, utilizing multiple years of electronic health records from the University of Pittsburgh Medical Center. Our method demonstrates performance improvements over many baselines, including refining pre-trained models with online learning as well as three static weighting approaches, showing MSAW's capacity to integrate historical knowledge with progressively accumulated new data. This study indicates the potential of online transfer learning in healthcare, particularly for developing machine learning models that dynamically adapt to evolving situations where new data is incrementally accumulated.

RSV病例检测的在线迁移学习。
迁移学习已经成为机器学习中的一项关键技术,并已被证明在各种实际应用中是有效的。然而,将这种技术用于具有顺序数据的分类任务常常面临挑战,这主要归因于类标签的稀缺性。为了解决这一挑战,我们引入了多源自适应加权(MSAW),一种在线多源迁移学习方法。MSAW将动态加权机制集成到集成框架中,可以根据每个源(代表历史知识)和目标模型(从新获取的数据中学习)的相关性和贡献自动调整权重。我们利用匹兹堡大学医学中心多年来的电子健康记录,将MSAW应用于检测急诊科就诊中的呼吸道合胞病毒病例,从而证明了MSAW的有效性。我们的方法证明了在许多基线上的性能改进,包括使用在线学习和三种静态加权方法来改进预训练模型,显示了MSAW将历史知识与逐步积累的新数据整合在一起的能力。这项研究表明了在线迁移学习在医疗保健领域的潜力,特别是在开发动态适应新数据逐渐积累的不断变化的情况的机器学习模型方面。
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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