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A Framework for Individualizing Predictions of Disease Trajectories by Exploiting Multi-Resolution Structure

机译:利用多分辨率结构个性化疾病轨迹预测的框架

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For many complex diseases, there is a wide variety of ways in which an individual can manifest the disease. The challenge of personalized medicine is to develop tools that can accurately predict the trajectory of an individual's disease, which can in turn enable clinicians to optimize treatments. We represent an individual's disease trajectory as a continuous-valued continuous-time function describing the severity of the disease over time. We propose a hierarchical latent variable model that individualizes predictions of disease trajectories. This model shares statistical strength across observations at different resolutions-the population, subpopulation and the individual level. We describe an algorithm for learning population and subpopulation parameters offline, and an online procedure for dynamically learning individual-specific parameters. Finally, we validate our model on the task of predicting the course of interstitial lung disease, a leading cause of death among patients with the autoimmune disease scleroderma. We compare our approach against state-of-the-art and demonstrate significant improvements in predictive accuracy.
机译:对于许多复杂的疾病,个人可以通过多种方式表现出该疾病。个性化医学的挑战在于开发可准确预测个人疾病轨迹的工具,从而使临床医生能够优化治疗方法。我们将个体的疾病轨迹表示为描述疾病随着时间推移的严重程度的连续值连续时间函数。我们提出了一个分层的潜在变量模型,可以对疾病轨迹的预测进行个性化处理。该模型在不同分辨率(人口,亚种群和个人水平)的观察结果之间具有统计优势。我们描述了一种用于离线学习种群和亚种群参数的算法,以及一种用于动态学习个体特定参数的在线过程。最后,我们在预测间质性肺病病程的任务上验证了我们的模型,该病是自身免疫性疾病硬皮病患者的主要死亡原因。我们将我们的方法与最新技术进行了比较,并证明了预测准确性的显着提高。

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