The promise of Mobile Health (mHealth) is the ability to use wearable sensors to monitor participant physiology at high frequencies during daily life to enable temporally-precise health interventions. However, a major challenge is frequent missing data. Despite a rich imputation literature, existing techniques are ineffective for the pulsative signals which comprise many mHealth applications, and a lack of available datasets has stymied progress. We address this gap with PulseImpute, the first large-scale pulsative signal imputation challenge which includes realistic mHealth missingness models, an extensive set of baselines, and clinically-relevant downstream tasks. Our baseline models include a novel transformer-based architecture designed to exploit the structure of pulsative signals. We hope that PulseImpute will enable the ML community to tackle this significant and challenging task.
翻译:移动健康(Mmove Health)的前景是能够使用可磨损感应器监测日常生活中高频率参与者生理学,以便能够进行时间精确的健康干预。然而,一个重大挑战是经常缺少数据。尽管有丰富的估算文献,但现有技术对于包含许多健康应用的脉冲信号是无效的,而且缺乏可用的数据集阻碍了进展。我们解决了与脉冲的这一差距,这是第一个大规模脉冲信号估算挑战,其中包括现实的健康缺失模型、一套广泛的基线和临床相关的下游任务。我们的基线模型包括一个以变压器为基础的创新结构,旨在利用脉冲信号的结构。我们希望PulseImpute将使ML社区能够应对这一重要而具有挑战性的任务。