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A novel method for predicting the progression rate of ALS disease based on automatic generation of probabilistic causal chains

机译:一种新的方法,用于基于自动生成概率因果链的Als疾病进展率

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Causal discovery is considered as a major concept in biomedical informatics contributing to diagnosis, therapy, and prognosis of diseases. Probabilistic causality approaches in epidemiology and medicine is a common method for finding relationships between pathogen and disease, environment and disease, and adverse events and drugs. Bayesian Network (BN) is one of the common approaches for probabilistic causality, which is widely used in health-care and biomedical science. Since in many biomedical applications we deal with temporal dataset, the temporal extension of BNs called Dynamic Bayesian network (DBN) is used for such applications. DBNs define probabilistic relationships between parameters in consecutive time points in the form of a graph and have been successfully used in many biomedical applications. In this paper, a novel method was introduced for finding probabilistic causal chains from a temporal dataset with the help of entropy and causal tendency measures. In this method, first, Causal Features Dependency (CFD) matrix is created on the basis of parameters changes in consecutive events of a phenomenon, and then the probabilistic causal graph is constructed from this matrix based on entropy criteria. At the next step, a set of probabilistic causal chains of the corresponding causal graph is constructed by a novel polynomial-time heuristic. Finally, the causal chains are used for predicting the future trend of the phenomenon. The proposed model was applied to the Pooled Resource Open-Access Clinical Trials (PRO-ACT) dataset related to Amyotrophic Lateral Sclerosis (ALS) disease, in order to predict the progression rate of this disease. The results of comparison with Bayesian tree, random forest, support vector regression, linear regression, and multivariate regression show that the proposed algorithm can compete with these methods and in some cases outperforms other algorithms. This study revealed that probabilistic causality is an appropriate approach for predicting the future states of chronic diseases with unknown cause.
机译:因果发现被认为是生物医学信息学的主要概念,有助于诊断,治疗和疾病预后。流行病学和医学中的概率因果关系方法是寻找病原体和疾病,环境和疾病之间关系以及不良事件和药物的常见方法。贝叶斯网络(BN)是概率因果关系的常见方法之一,广泛应用于医疗保健和生物医学科学。由于在许多生物医学应用程序中,我们处理时间数据集,因此使用称为动态贝叶斯网络(DBN)的BNS的时间扩展用于此类应用程序。 DBNS以图形形式的连续时间点中的参数之间的概率关系定义,并且已成功用于许多生物医学应用程序。本文借助熵和因果趋势措施,引入了一种新的方法,用于从时间数据集寻找概率因果链。在该方法中,首先,基于现象的连续事件中的参数变化来创建因果特征依赖性(CFD)矩阵,然后基于熵标准从该矩阵构成概率性因果图。在下一步骤中,通过新颖的多项式 - 时间启发式构建了一组相应的因果图的概率因果链。最后,因果链用于预测现象的未来趋势。拟议的模型应用于汇集的资源开放接入临床试验(PRO-ACT)与肌萎缩外壳硬化(ALS)疾病相关的数据集,以预测该疾病的进展率。与贝叶斯树,随机森林,支持向量回归,线性回归和多变量回归的结果表明,该算法可以与这些方法竞争,在某些情况下优于其他算法。本研究表明,概率性因果关系是预测未来原因未来慢性疾病状态的适当方法。

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