关于深度学习在一个具有挑战性的mri图像分类问题中的准确性和相关性

M. Hannula
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引用次数: 0

摘要

在这项研究中,一个具有挑战性的二元分类是用一个大的(>100GB,总共数百个受试者)带注释的mri数据集完成的,这是一个在数千个团队之间的竞争,他们提出了解决这个问题的建议。为了进行分类,开发并测试了一种先进的深度神经网络,该网络由定制的结构元素组成,具有从图像数据中检测小抽象级别特征的能力。结果ROC在测试数据阶段为0.74 ($\ mathm {N}=87$),在扩展测试数据阶段为0.55;结果在其他提案(>1000个解决方案)中相应地排在前5-25%。讨论了解决方案的相关性和准确性,包括关于不同类型mri扫描数据之间分类性能的有趣差异的具体发现,与其他独立研究结果一致。这可能表明深度神经网络的结果为MGMT的存在提供了一些额外的价值。然而,总的来说,这个话题仍然是开放的,需要进一步的研究来实现更好的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
About the Accuracy and Relevance of Deep Learning in a Challenging MRI-Image Classification Problem
In this study a challenging binary classification was done with a large (>100GB, hundreds of subjects in total) annotated MRI-dataset in public a competition between over thousand teams with their proposals for the problem. For the classification an advanced deep neural network consisting of tailored structural elements having capabilities for detecting small abstract level features from the image data was developed and tested. The resulted ROC was 0,74 in the test data ($\mathrm{N}=87$) and 0,55 in the extended test data phase; the results were among other proposals (>1000 solutions) in the top 5-25%, correspondingly. The relevance and accuracy of the solution was discussed including a specific finding about interesting differences in the classification performance between the data from different types of MRI-scans, being in line with other independent research findings. This may indicate the results of the deep neural network provide some additional value about the presence of MGMT. However, in general level the topic is still open and requires further studies to achieve a better understanding.
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