Bayesian networks in ovarian cancer diagnosis: potentials and limitations

P. Antal, H. Verrelst, D. Timmerman, S. Huffel, B. Moor, I. Vergote
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引用次数: 32

Abstract

The pre-operative discrimination between malignant and benign masses is a crucial issue in gynaecology. Next to the large amount of background knowledge, there is a growing amount of collected patient data that can be used in inductive techniques. These two sources of information result in two different modelling strategies. Based on the background knowledge, various discrimination models have been constructed by leading experts in the field, tuned and tested by observations. Based on the patient observations, various statistical models have been developed, such as logistic regression models and artificial neural network models. For the efficient combination of prior background knowledge and observations, Bayesian network models are suggested. We summarize the applicability of this technique, report the performance of such models in ovarian cancer diagnosis and outline a possible hybrid usage of this technique.
贝叶斯网络在卵巢癌诊断中的应用:潜力与局限
术前良性肿块与恶性肿块的鉴别是妇科的一个重要问题。除了大量的背景知识之外,越来越多的收集到的患者数据可以用于归纳技术。这两种信息来源导致了两种不同的建模策略。基于背景知识,由该领域的权威专家构建了各种识别模型,并通过观察进行了调整和测试。根据患者的观察,建立了各种统计模型,如逻辑回归模型和人工神经网络模型。为了有效地结合先验背景知识和观测值,建议使用贝叶斯网络模型。我们总结了这种技术的适用性,报告了这种模型在卵巢癌诊断中的表现,并概述了这种技术的可能的混合使用。
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