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A fusion method based on Deep Learning and Case-Based Reasoning which improves the resulting medical image segmentations

机译:基于深度学习的融合方法和基于案例的推理,从而改善了所得的医学图像分割

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The fusion of multiple segmentations of different biological structures is inevitable in the case where each structure has been segmented individually for performance reasons. However, when aggregating these structures for a final segmentation, conflicting pixels may appear. These conflicts can be solved by artificial intelligence techniques. Our system, integrated into the SAIAD project, carries out the fusion of deformed kidneys and nephroblastoma segmentations using the combination of Deep Learning and Case-Based Reasoning. The performances of our method were evaluated on 9 patients affected by nephroblastoma, and compared with other Al and non-Al methods adapted from the literature. The results demonstrate its effectiveness in resolving the conflicting pixels and its ability to improve the resulting segmentations. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在分别为性能原因分割的情况下,不同生物结构的多个分段的融合是不可避免的。但是,在聚合这些结构以进行最终分割时,可能会出现冲突的像素。这些冲突可以通过人工智能技术来解决。我们的系统融入了索亚德项目,使用深度学习和基于案例的推理的组合进行变形的肾脏和肾细胞瘤细分的融合。在受肾细胞瘤影响的9例患者中评估了我们方法的性能,并与来自文献组合的其他Al和非Al方法进行比较。结果证明了其在解决冲突像素的有效性及其改进所产生的细分的能力。 (c)2020 elestvier有限公司保留所有权利。

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