自监督预训练和迁移学习使小型移动传感数据集的流感和COVID-19预测成为可能

Michael Merrill, Tim Althoff
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引用次数: 8

摘要

来自手机、手表和健身追踪器的详细移动传感数据提供了一个无与伦比的机会,可以量化以前无法衡量的行为变化,并对其采取行动,从而改善个人健康,加快对新出现疾病的反应。与自然语言处理和计算机视觉不同,深度表示学习尚未广泛影响这一领域,在这一领域,绝大多数研究和临床应用仍然依赖于手动定义的特征和增强的树模型,甚至由于准确性不足而完全放弃预测建模。这是由于行为健康领域的独特挑战,包括非常小的数据集(~10^1参与者),其中经常包含缺失数据,由具有关键远程依赖关系的长时间序列(长度>10^4)和极端的类别不平衡(>10^3:1)组成。在这里,我们介绍了一种用于多变量时间序列分类的神经结构,旨在解决这些独特的领域挑战。我们提出的行为表征学习方法结合了自我监督预训练和迁移学习的新任务,以解决数据稀缺性问题,并通过基于卷积神经网络的降维后的变压器自关注,捕获长历史时间序列中的长期依赖关系。我们提出了一个评估框架,旨在在合理的部署场景中反映预期的实际性能。具体来说,我们证明了(1)在五个预测任务中,迁移学习在基线上的性能提高高达0.15 ROC AUC;(2)在小数据场景中,迁移学习诱导的性能提高了16% PR AUC;(3)通过在独立数据集中的零shot COVID-19预测的探索性案例研究,迁移学习在新型疾病场景中的潜力。最后,我们讨论了医学监测测试的潜在影响。
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Self-supervised Pretraining and Transfer Learning Enable Flu and COVID-19 Predictions in Small Mobile Sensing Datasets
Detailed mobile sensing data from phones, watches, and fitness trackers offer an unparalleled opportunity to quantify and act upon previously unmeasurable behavioral changes in order to improve individual health and accelerate responses to emerging diseases. Unlike in natural language processing and computer vision, deep representation learning has yet to broadly impact this domain, in which the vast majority of research and clinical applications still rely on manually defined features and boosted tree models or even forgo predictive modeling altogether due to insufficient accuracy. This is due to unique challenges in the behavioral health domain, including very small datasets (~10^1 participants), which frequently contain missing data, consist of long time series with critical long-range dependencies (length>10^4), and extreme class imbalances (>10^3:1). Here, we introduce a neural architecture for multivariate time series classification designed to address these unique domain challenges. Our proposed behavioral representation learning approach combines novel tasks for self-supervised pretraining and transfer learning to address data scarcity, and captures long-range dependencies across long-history time series through transformer self-attention following convolutional neural network-based dimensionality reduction. We propose an evaluation framework aimed at reflecting expected real-world performance in plausible deployment scenarios. Concretely, we demonstrate (1) performance improvements over baselines of up to 0.15 ROC AUC across five prediction tasks, (2) transfer learning-induced performance improvements of 16% PR AUC in small data scenarios, and (3) the potential of transfer learning in novel disease scenarios through an exploratory case study of zero-shot COVID-19 prediction in an independent data set. Finally, we discuss potential implications for medical surveillance testing.
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