首页> 外文会议>2018 IEEE 4th Middle East Conference on Biomedical Engineering >Simple net: Convolutional neural network to perform differential diagnosis of ampullary tumors
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Simple net: Convolutional neural network to perform differential diagnosis of ampullary tumors

机译:简单网络:卷积神经网络对壶腹肿瘤进行鉴别诊断

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Diagnosing different stages of cancer has only been performed by doctors due to the complexity of the task. However recent advancements made in the field of deep learning has pushed the capabilities of what an algorithm can achieve. In this study, we have trained a convolutional neural network to perform differential diagnosis of Ampullary tumors. Our proposed network is only made out of seven layers. However, when compared with other state of the art classification networks such as VGG 16, VGG 19, Res Net, and Dense Net our model not only had the best performance but also shortest training time. All of the networks were trained for 150 epochs with step wise learning rate with Adam optimizer to converge as quick as possible. Our model was able to reach average of 78.14 percent accuracy with average training time of 50.60 seconds on Asus Zephyrus, with Nvidia 1080 GPU and Max Q technology.
机译:由于任务的复杂性,只有医生才能诊断出癌症的不同阶段。但是,深度学习领域的最新进展推动了算法可以实现的功能。在这项研究中,我们训练了一个卷积神经网络来进行壶腹肿瘤的鉴别诊断。我们建议的网络仅由七个层组成。但是,与其他最新的分类网络(例如VGG 16,VGG 19,Res Net和Dense Net)相比,我们的模型不仅具有最佳性能,而且训练时间最短。所有网络均使用Adam优化器以逐步学习速率训练了150个时期,以尽可能快地收敛。我们的模型使用Nvidia 1080 GPU和Max Q技术,在华硕Zephyrus上的平均训练时间为50.60秒,能够达到平均78.14%的准确性。

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