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Systematic Assessment of Performance Prediction Techniques in Medical Image Classification A Case Study on Celiac Disease

机译:医学图像分类中性能预测技术的系统评价-以乳糜泻为例

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In the context of automated classification of medical images, many authors report a lack of available test data. Therefore techniques such as the leave-one-out cross validation or k-fold validation are used to assess how well methods will perform in practice. In case of methods based on feature subset selection, cross validation might provide bad estimations of how well the optimized technique generalizes on an independent data set. In this work, we assess how well cross validation techniques are suited to predict the outcome of a preferred setup of distinct test- and training data sets. This is accomplished by creating two distinct sets of images, used separately as training- and test-data. The experiments are conducted using a set of Local Binary Pattern based operators for feature extraction which are using histogram subset selection to improve the feature discrimination. Common problems such as the effects of over fitting data during cross validation as well as using biased image sets due to multiple images from a single patient are considered.
机译:在医学图像的自动分类的背景下,许多作者报告说缺少可用的测试数据。因此,诸如留一法交叉验证或k倍验证之类的技术用于评估方法在实践中的执行效果。在基于特征子集选择的方法的情况下,交叉验证可能无法正确评估优化技术在独立数据集上的概括程度。在这项工作中,我们评估交叉验证技术如何适合预测不同测试和训练数据集的首选设置的结果。这是通过创建两组不同的图像来完成的,分别用作训练数据和测试数据。实验是使用一组基于局部二进制模式的用于特征提取的算子进行的,这些算子使用直方图子集选择来改善特征判别。考虑了常见问题,例如在交叉验证期间过度拟合数据的效果以及由于来自单个患者的多个图像而导致使用有偏见的图像集。

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