基于Leakyrelu和平均池的Inception-ResNet-v2胸部x线图像更可靠和准确的分类

Ahmet Demir, F. Yilmaz
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引用次数: 9

摘要

肺炎是世界上最常见的疾病之一,其诊断需要一些专业知识。计算机辅助诊断方法在医疗保健等许多领域得到了广泛的应用。本研究采用Inception-ResNet-v2深度学习架构。分类是通过使用这个体系结构完成的。将网络体系结构中的ReLU激活函数改为LeakyReLU激活函数,完成分类任务。之后,所有在网络体系结构中看到的maxpooling层都被avepooling层所改变,再次完成分类任务。最后,将这些单独的网络结构变化合并到一个网络中,再用新的网络结构完成分类任务。共进行了4次实验,并对实验结果进行了比较。在Inception Resnet V2中,结合LeakyReLU和Averagepooling,获得了灵敏度为93.16%、特异度为93.59%的最佳案例。
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Inception-ResNet-v2 with Leakyrelu and Averagepooling for More Reliable and Accurate Classification of Chest X-ray Images
Pneumonia is one of the most commonly seen illnesses in the world and its diagnosis needs some expertise. Computer aided diagnosis methods are used extensively in a lot of fields like health care. This study uses Inception-ResNet-v2 deep learning architecture. Classification is done by using this architecture. ReLU activation function seen in network architecture is changed with LeakyReLU activation function and classification task is done. After that, all of the maxpooling layers seen in network architecture is changed with avepooling layers and again classification task is done. Lastly, this seperate changes done in network architecture is combined in one network and again classification task is done with new network architecture. Four experiments are done in total and their results are compared. The best case with a sensitivity value of 93.16% and with a specificity value of 93.59% is obtained in Inception Resnet V2 with together application of LeakyReLU and Averagepooling.
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