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Classification Methods Using Neural Networks and Partial Precedence Algorithms for Differential Medical Diagnosis: A Case Study

机译:使用神经网络和部分优先算法进行差异医学诊断的分类方法:案例研究

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The problem of correctly diagnosing different types of ailments has been tackled with different artificial intelligence techniques since its inception. Both heuristic and statistically based algorithms have been discussed in the past. In this paper we establish a comparison between one heuristic algorithm based on partial precedence and majority decision rules and two types of statistical ones: multi-layer perceptrons (MLP) and self-organizing maps (SOMs) when applied to the automated diagnosis and treatment of cleft lip and palate. We show that although all three methods perform reasonably well (with efficiency ratios better than 0.9) the neural networks achieve their goals with a considerably diminished set of data without detriment in their performance. Furthermore, we are able to tackle an enlarged set and still retain the high yields with the use of MLPs and SOMs.
机译:自成立以来,已经用不同的人工智能技术解决了正确诊断不同类型疾病的问题。过去已经讨论了启发式和统计上的算法。在本文中,我们建立了一种基于部分优先级和多数决策规则的一种启发式算法的比较,以及两种类型的统计数据:应用于自动诊断和治疗时的多层感知(MLP)和自组织地图(SOM)唇裂和口感。我们表明,尽管所有三种方法都能合理地进行(效率比率优于0.9),神经网络实现了他们的目标,其目标具有明显减弱的数据,而无损地损失了它们的性能。此外,我们能够在使用MLP和SOMS和SOMS上施加放大的集合并且仍然保持高产量。

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