Lu Jiaying, Zhao Shifan, Ma Wenjing, Shao Hui, Hu Xiao, Xi Yuanzhe, Yang Carl
Department of Computer Science & Nell Hodgson Woodruff School of Nursing, Emory University.
Department of Mathematics, Emory University.
Proc Int World Wide Web Conf. 2024 May;2024(Companion):1162-1165. doi: 10.1145/3589335.3651456. Epub 2024 May 13.
Patient risk prediction models are crucial as they enable healthcare providers to proactively identify and address potential health risks. Large pre-trained foundation models offer remarkable performance in risk prediction tasks by analyzing multimodal patient data. However, a notable limitation of pre-trained foundation models lies in their deterministic predictions (, lacking the ability to acknowledge uncertainty). We propose Gaussian Process-based foundation models to enable the generation of accurate predictions with instance-level uncertainty quantification, thus allowing healthcare professionals to make more informed and cautious decisions. Our proposed approach is principled and architecture-agnostic. Experimental results show that our proposed approach achieves competitive performance on classical classification metrics. Moreover, we observe that the accuracy of certain predictions is much higher than that of the uncertain ones, which validates the uncertainty awareness of our proposed method. Therefore, healthcare providers can trust low-uncertainty predictions and conduct more comprehensive investigations on high-uncertainty predictions, ultimately enhancing patient outcomes with less expert intervention.
患者风险预测模型至关重要,因为它们能使医疗保健提供者主动识别并应对潜在的健康风险。大型预训练基础模型通过分析多模态患者数据,在风险预测任务中表现出色。然而,预训练基础模型的一个显著局限性在于其确定性预测(即缺乏承认不确定性的能力)。我们提出基于高斯过程的基础模型,以实现具有实例级不确定性量化的准确预测,从而使医疗保健专业人员能够做出更明智、更谨慎的决策。我们提出的方法是有原则的且与架构无关。实验结果表明,我们提出的方法在经典分类指标上取得了有竞争力的性能。此外,我们观察到某些预测的准确性远高于不确定预测,这验证了我们提出方法的不确定性感知能力。因此,医疗保健提供者可以信任低不确定性预测,并对高不确定性预测进行更全面的调查,最终在较少专家干预的情况下改善患者预后。