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Identifying Critical State of Complex Diseases by Single-Sample-Based Hidden Markov Model.


ABSTRACT: The progression of complex diseases is generally divided as a normal state, a pre-disease state or tipping point, and a disease state. Developing individual-specific method that can identify the pre-disease state just before a catastrophic deterioration, is critical for patients with complex diseases. However, with only a case sample, it is challenging to detect a pre-disease state which has little significant differences comparing with a normal state in terms of phenotypes and gene expressions. In this study, by regarding the tipping point as the end point of a stationary Markov process, we proposed a single-sample-based hidden Markov model (HMM) approach to explore the dynamical differences between a normal and a pre-disease states, and thus can signal the upcoming critical transition immediately after a pre-disease state. Using this method, we identified the pre-disease state or tipping point in a numerical simulation and two real datasets including stomach adenocarcinoma and influenza infection, which demonstrate the effectiveness of the method.

SUBMITTER: Liu R 

PROVIDER: S-EPMC6458292 | biostudies-literature | 2019

REPOSITORIES: biostudies-literature

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Identifying Critical State of Complex Diseases by Single-Sample-Based Hidden Markov Model.

Liu Rui R   Zhong Jiayuan J   Yu Xiangtian X   Li Yongjun Y   Chen Pei P  

Frontiers in genetics 20190404


The progression of complex diseases is generally divided as a normal state, a pre-disease state or tipping point, and a disease state. Developing individual-specific method that can identify the pre-disease state just before a catastrophic deterioration, is critical for patients with complex diseases. However, with only a case sample, it is challenging to detect a pre-disease state which has little significant differences comparing with a normal state in terms of phenotypes and gene expressions.  ...[more]

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