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NasoNet, Joining Bayesian Networks, and Time to Model Nasopharyngeal Cancer Spread

机译:NasoNet,加入贝叶斯网络和建立鼻咽癌扩散模型的时间

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Cancer spread is a non-deterministic dynamic process. As a consequence, the design of an assistant system for the diagnosis and prognosis of the extent of a cancer should he based on a representation method which deals with both uncertainty and time. The ultimate goal is to know the stage of development reached by a cancer in the patient, previously to selecting the appropriate treatment. A network of probabilistic events in discrete time (NPEDT) is a type of temporal Bayesian network that permits to model the causal mechanisms associated with the time evolution of a process. The present work describes NasoNet, a system which applies the formalism of NPEDTs to the case of nas-opharyngeal cancer. We have made use of temporal noisy gates to model the dynamic causal interactions that take place in the domain. The methodology we describe is sufficiently general to be applied to any other type of cancer.
机译:癌症扩散是一个不确定的动态过程。结果,应该基于处理不确定性和时间的表示方法来设计用于癌症程度的诊断和预后的辅助系统。最终目标是在选择合适的治疗方法之前,先了解患者癌症所达到的发展阶段。离散时间概率事件网络(NPEDT)是一种时间贝叶斯网络,可以用来建模与过程的时间演变相关的因果机制。本工作介绍了NasoNet,这是一种将NPEDT形式化应用于鼻咽癌的系统。我们利用时间噪声门来模拟在域中发生的动态因果相互作用。我们描述的方法足够通用,可以应用于任何其他类型的癌症。

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