Institute for Computing and Information Sciences, Radboud University Nijmegen, Heyendaalseweg 135, 6525 AJ Nijmegen, The Netherlands.
Artif Intell Med. 2013 Jan;57(1):73-86. doi: 10.1016/j.artmed.2012.12.004. Epub 2013 Feb 7.
To obtain a balanced view on the role and place of expert knowledge and learning methods in building Bayesian networks for medical image interpretation.
The interpretation of mammograms was selected as the example medical image interpretation problem. Medical image interpretation has its own common standards and procedures. The impact of these on two complementary methods for Bayesian network construction was explored. Firstly, methods for the discretisation of continuous features were investigated, yielding multinomial distributions that were compared to the original Gaussian probabilistic parameters of the network. Secondly, the structure of a manually constructed Bayesian network was tested by structure learning from image data. The image data used for the research came from screening mammographic examinations of 795 patients, of whom 344 were cancerous.
The experimental results show that there is an interesting interplay of machine learning results and background knowledge in medical image interpretation. Networks with discretised data lead to better classification performance (increase in the detected cancers of up to 11.7%), easier interpretation, and a better fit to the data in comparison to the expert-based Bayesian network with Gaussian probabilistic parameters. Gaussian probability distributions are often used in medical image interpretation because of the continuous nature of many of the image features. The structures learnt supported many of the expert-originated relationships but also revealed some novel relationships between the mammographic features. Using discretised features and performing structure learning on the mammographic data has further improved the cancer detection performance of up to 17% compared to the manually constructed Bayesian network model.
Finding the right balance between expert knowledge and data-derived knowledge, both at the level of network structure and parameters, is key to using Bayesian networks for medical image interpretation. A balanced approach to building Bayesian networks for image interpretation yields more accurate and understandable Bayesian network models.
全面评估专家知识和学习方法在构建医学图像解释贝叶斯网络中的作用和地位。
选择乳腺 X 线摄影图像解释作为医学图像解释的范例问题。医学图像解释有其自身的通用标准和程序。研究探索了这些标准和程序对两种互补的贝叶斯网络构建方法的影响。首先,研究了连续特征的离散化方法,得到了多项分布,并与网络的原始高斯概率参数进行了比较。其次,通过从图像数据中学习结构,测试了手动构建的贝叶斯网络的结构。用于研究的图像数据来自 795 名患者的筛查性乳腺 X 线摄影检查,其中 344 名患者患有癌症。
实验结果表明,在医学图像解释中,机器学习结果和背景知识之间存在有趣的相互作用。与具有高斯概率参数的专家贝叶斯网络相比,具有离散数据的网络可实现更好的分类性能(检测到的癌症增加了 11.7%)、更易于解释以及更好地拟合数据。由于许多图像特征具有连续性,因此在医学图像解释中经常使用高斯概率分布。从乳腺 X 线摄影数据中学习到的结构支持了许多源于专家的关系,但也揭示了乳腺 X 线摄影特征之间的一些新关系。与手动构建的贝叶斯网络模型相比,使用离散特征并对乳腺 X 线摄影数据执行结构学习可将癌症检测性能进一步提高 17%。
在网络结构和参数级别上找到专家知识和数据衍生知识之间的正确平衡是使用贝叶斯网络进行医学图像解释的关键。平衡的方法来构建医学图像解释的贝叶斯网络可以生成更准确和易于理解的贝叶斯网络模型。