Combining the increasing availability and abundance of healthcare data and the current advances in machine learning methods have created renewed opportunities to improve clinical decision support systems. However, in healthcare risk prediction applications, the proportion of cases with the condition (label) of interest is often very low relative to the available sample size. Though very prevalent in healthcare, such imbalanced classification settings are also common and challenging in many other scenarios. So motivated, we propose a variational disentanglement approach to semi-parametrically learn from rare events in heavily imbalanced classification problems. Specifically, we leverage the imposed extreme-distribution behavior on a latent space to extract information from low-prevalence events, and develop a robust prediction arm that joins the merits of the generalized additive model and isotonic neural nets. Results on synthetic studies and diverse real-world datasets, including mortality prediction on a COVID-19 cohort, demonstrate that the proposed approach outperforms existing alternatives.
翻译:医疗数据越来越多,数量越来越多,医疗数据越来越多,机器学习方法也不断进步,两者相结合,为改进临床决策支持系统创造了新的机会。然而,在医疗风险预测应用方面,与现有抽样规模相比,有兴趣的病症(标签)的比例往往很低。虽然在保健领域非常普遍,但这种不平衡的分类设置在许多其它情况中也很常见,也具有挑战性。因此,我们提议采用差异分解方法,从严重不平衡的分类问题中的罕见事件中进行半分解学习。具体地说,我们利用在潜在空间上强加的极端分配行为,从低流行率事件中提取信息,并发展一种强有力的预测机制,结合通用添加模型和异声神经网的优点。关于合成研究和多种现实世界数据集的结果,包括COVID-19组的死亡率预测,表明拟议方法比现有替代方法更完美。