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Experiments in the automated detection of multiple sclerosis brain lesions in magnetic resonance images

机译:在磁共振图像中自动检测多发性硬化症脑病变的实验

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Summary form only given. Artificial intelligence techniques of machine learning, pattern recognition, and the use of domain knowledge were employed in the segmentation, or automated detection, of multiple sclerosis (MS) lesions in magnetic resonance images of the human brain. The performances of the statistical minimum distance and Bayesian classifiers, applied to MS lesion segmentation, are compared to that of the classifiers developed by pruned and unpruned decision tree learning. The statistical classifiers were the fastest in training, yet were the slowest in recall. Each classifier performed at about the same level of accuracy. An additional difference is seen in the interpretability of each classifier's learned rules. Whereas the minimum distance and Bayesian classifiers represent class descriptions with mathematical formulas, the decision tree classifier's representation of acquired knowledge is symbolic. Classification rules produced by the pruned decision tree classifier were concise, and thus preferable for their human interpretability.
机译:仅提供摘要表格。在人脑磁共振图像中的多发性硬化(MS)病变的分割或自动检测中,采用了机器学习,模式识别和领域知识使用的人工智能技术。将统计最小距离和贝叶斯分类器应用于MS病变分割的性能与通过修剪和未经修剪的决策树学习开发的分类器的性能进行比较。统计分类器在训练中最快,但在召回中最慢。每个分类器的准确度大致相同。在每个分类器所学规则的可解释性方面还看到了另一个差异。最小距离和贝叶斯分类器以数学公式表示类描述,而决策树分类器对获得的知识的表示则是符号性的。修剪后的决策树分类器生成的分类规则简洁明了,因此对于人类可解释性而言更可取。

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