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RECURSIVE BAYESIAN NETS FOR PREDICTION, EXPLANATION AND CONTROL IN CANCER SCIENCE: A Position Paper

机译:癌症科学预测,解释和控制的递归贝叶斯网:一个位置纸

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The Recursive Bayesian Net formalism was originally developed for modelling nested causal relationships. In this paper we argue that the formalism can also be applied to modelling the hierarchical structure of physical mechanisms. The resulting network contains quantitative information about probabilities, as well as qualitative information about mechanistic structure and causal relations. Since information about probabilities, mechanisms and causal relations are vital for prediction, explanation and control respectively, a recursive Bayesian net can be applied to all these tasks. We show how a Recursive Bayesian Net can be used to model mechanisms in cancer science. The highest level of the proposed model will contain variables at the clinical level, while a middle level will map the structure of the DNA damage response mechanism and the lowest level will contain information about gene expression.
机译:最初是为嵌套因果关系建模而开发的递归贝叶斯净形式主义。在本文中,我们认为形式主义也可以应用于建模物理机制的层次结构。得到的网络包含有关概率的定量信息,以及有关机制结构和因果关系的定性信息。由于有关概率,机制和因果关系的信息,分别对预测,解释和控制至关重要,因此递归贝叶斯网可以应用于所有这些任务。我们展示了递归贝叶斯网如何用于模拟癌症科学的机制。所提出的模型的最高级别将含有临床水平的变量,而中间水平将映射DNA损伤响应机制的结构,最低水平将包含有关基因表达的信息。

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