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首页> 外文期刊>Methods of information in medicine >Diagnosis of acute appendicitis in two databases. Evaluation of different neighborhoods with an LVQ neural network.
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Diagnosis of acute appendicitis in two databases. Evaluation of different neighborhoods with an LVQ neural network.

机译:在两个数据库中诊断急性阑尾炎。使用LVQ神经网络评估不同社区。

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摘要

The use of an artificial neural network system was studied in the diagnosis of acute abdominal pain, especially acute appendicitis, with patients from Finland and Germany. Separate Learning Vector Quantization (LVQ) neural networks were trained with a training set from each database and also with a combined database. Each neural network was evaluated separately with a test set of cases from each database. With the combined database different neighborhood methods were compared to find the optimal choice for this decision-making problem. The acute appendicitis cases of the Finnish test data set were classified well with all the networks, but the cases of the German test set were difficult to classify for the Finnish network. The use of larger neighborhoods increased the sensitivity of the classification by nearly 10%. The differences in the results of the Finnish and German databases suggest that there are differences in the data collection or patient populations between centers. Therefore, care must be taken when using decision-support systems which have been developed in other centers. Neural networks offer a method to evaluate differences between databases. With the use of larger neighborhoods, the effects of the differences on the accuracy of the classification can be partly diminished.
机译:在芬兰和德国的患者中,研究了使用人工神经网络系统诊断急性腹痛,尤其是急性阑尾炎。使用来自每个数据库以及组合数据库的训练集对单独的学习向量量化(LVQ)神经网络进行了训练。使用来自每个数据库的一组案例测试对每个神经网络分别进行评估。使用组合的数据库,比较了不同的邻域方法,以找到针对该决策问题的最佳选择。芬兰测试数据集的急性阑尾炎病例在所有网络中都得到很好的分类,但是德国测试集的病例很难对芬兰网络进行分类。使用较大的邻域将分类的敏感性提高了近10%。芬兰和德国数据库结果的差异表明,各中心之间的数据收集或患者人数存在差异。因此,在使用在其他中心开发的决策支持系统时必须小心。神经网络提供了一种评估数据库之间差异的方法。通过使用较大的邻域,可以部分减少差异对分类准确性的影响。

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