首页> 美国卫生研究院文献>other >Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression
【2h】

Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression

机译:疾病发展的连续时间隐马尔可夫模型的有效学习

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

The Continuous-Time Hidden Markov Model (CT-HMM) is an attractive approach to modeling disease progression due to its ability to describe noisy observations arriving irregularly in time. However, the lack of an efficient parameter learning algorithm for CT-HMM restricts its use to very small models or requires unrealistic constraints on the state transitions. In this paper, we present the first complete characterization of efficient EM-based learning methods for CT-HMM models. We demonstrate that the learning problem consists of two challenges: the estimation of posterior state probabilities and the computation of end-state conditioned statistics. We solve the first challenge by reformulating the estimation problem in terms of an equivalent discrete time-inhomogeneous hidden Markov model. The second challenge is addressed by adapting three approaches from the continuous time Markov chain literature to the CT-HMM domain. We demonstrate the use of CT-HMMs with more than 100 states to visualize and predict disease progression using a glaucoma dataset and an Alzheimer’s disease dataset.
机译:连续时间隐马尔可夫模型(CT-HMM)是一种用于建模疾病进展的有吸引力的方法,因为它具有描述时间不规则到达的嘈杂观测结果的能力。但是,由于缺少针对CT-HMM的高效参数学习算法,因此将其用于非常小的模型,或者需要对状态转换进行不切实际的约束。在本文中,我们提出了针对CT-HMM模型的基于EM的有效学习方法的第一个完整特征。我们证明了学习问题包括两个挑战:后状态概率的估计和最终状态条件统计的计算。我们通过根据等效的离散时间非均匀隐马尔可夫模型重新构造估计问题来解决第一个挑战。通过将三种方法从连续时间马尔可夫链文献转移到CT-HMM域,可以解决第二个挑战。我们通过使用青光眼数据集和阿尔茨海默氏病数据集,演示了使用100多个州的CT-HMM来可视化和预测疾病进展。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号