IEEE Trans Neural Netw Learn Syst. 2017 Jul;28(7):1508-1519. doi: 10.1109/TNNLS.2016.2520964. Epub 2016 Feb 24.
Understanding the progression of chronic diseases can empower the sufferers in taking proactive care. To predict the disease status in the future time points, various machine learning approaches have been proposed. However, a few of them jointly consider the dual heterogeneities of chronic disease progression. In particular, the predicting task at each time point has features from multiple sources, and multiple tasks are related to each other in chronological order. To tackle this problem, we propose a novel and unified scheme to coregularize the prior knowledge of source consistency and temporal smoothness. We theoretically prove that our proposed model is a linear model. Before training our model, we adopt the matrix factorization approach to address the data missing problem. Extensive evaluations on real-world Alzheimer's disease data set have demonstrated the effectiveness and efficiency of our model. It is worth mentioning that our model is generally applicable to a rich range of chronic diseases.
了解慢性病的进展可以使患者能够主动进行护理。为了预测未来时间点的疾病状态,已经提出了各种机器学习方法。然而,其中一些方法很少同时考虑慢性病进展的双重异质性。特别是,每个时间点的预测任务都具有来自多个来源的特征,并且多个任务按时间顺序相互关联。为了解决这个问题,我们提出了一种新颖而统一的方案,以正则化源一致性和时间平滑性的先验知识。我们从理论上证明了所提出的模型是一个线性模型。在训练我们的模型之前,我们采用矩阵分解方法来解决数据缺失问题。在真实的阿尔茨海默病数据集上的广泛评估表明了我们模型的有效性和效率。值得一提的是,我们的模型通常适用于广泛的慢性病。