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Several Indicators of Critical Transitions for Complex Diseases Based on Stochastic Analysis

机译:基于随机分析的复杂疾病关键转变的几个指标

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摘要

Many complex diseases (chronic disease onset, development and differentiation, self-assembly, etc.) are reminiscent of phase transitions in a dynamical system: quantitative changes accumulate largely unnoticed until a critical threshold is reached, which causes abrupt qualitative changes of the system. Understanding such nonlinear behaviors is critical to dissect the multiple genetic/environmental factors that together shape the genetic and physiological landscape underlying basic biological functions and to identify the key driving molecules. Based on stochastic differential equation (SDE) model, we theoretically derive three statistical indicators, that is, coefficient of variation (CV), transformed Pearson's correlation coefficient (TPC), and transformed probability distribution (TPD), to identify critical transitions and detect the early-warning signals of the phase transition in complex diseases. To verify the effectiveness of these early-warning indexes, we use high-throughput data for three complex diseases, including influenza caused by either H3N2 or H1N1 and acute lung injury, to extract the dynamical network biomarkers (DNBs) responsible for catastrophic transition into the disease state from predisease state. The numerical results indicate that the derived indicators provide a data-based quantitative analysis for early-warning signals for critical transitions in complex diseases or other dynamical systems.
机译:许多复杂的疾病(慢性疾病的发作,发展和分化,自组装等)让人联想到动力系统中的相变:在达到临界阈值之前,数量变化的积累在很大程度上未被注意到,这会导致系统的突然质变。了解此类非线性行为对于剖析共同构成基本生物学功能的遗传和生理景观并确定关键驱动分子的多种遗传/环境因素至关重要。基于随机微分方程(SDE)模型,我们从理论上推导了三个统计指标,即变异系数(CV),变换的Pearson相关系数(TPC)和变换的概率分布(TPD),以识别关键转换并检测复杂疾病相变的预警信号。为了验证这些预警指标的有效性,我们使用了三种复杂疾病(包括由H3N2或H1N1引起的流行性感冒和急性肺损伤)的高通量数据,来提取导致灾难性过渡到疾病的动态网络生物标记(DNB)。从疾病状态转变为疾病状态。数值结果表明,得出的指标为复杂疾病或其他动力系统中的关键转变的预警信号提供了基于数据的定量分析。

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