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引用次数: 24

摘要

前列腺癌作为常见的癌症之一,是危害老年男性健康的主要原因之一,在欧美国家尤为突出。在中国,随着生活水平的提高和人口的老龄化,前列腺癌的发病率呈上升趋势,年轻化趋势。早发现、早治疗对患者有帮助。在前列腺的影像学诊断方法中,磁共振成像(MRI)已被公认为最有效的方法。而MRI图像有多种专业配置,包含大量医学信息,诊断结果与医生的专业技能和经验有很大关系,这给前列腺癌的诊断增加了难度。基于深度学习和卷积神经网络(CNN),提出了一种能够提供诊断分类参考的图像分类模型。本文使用的数据集由10056张扩散加权磁共振成像(DWI)图像组成。四分之三的图像用于训练,其余图像用于测试。实验表明,训练集的准确率为80.1539%,测试集的准确率为78.1538%。测试准确率和损失曲线表明,该模型得到了稳定的训练。单幅图像的准确率在64.91%以上,有的甚至可以达到99.99%。该深度学习方法可广泛应用于前列腺癌等癌症任务的分级和分期,具有一定的临床应用价值。
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A classification model for the prostate cancer based on deep learning
Regarded as one of the common cancers, the prostate cancer is a main reason harming the health of senile men, especially in Europe and the United States. In China, with increasing of living standards and aging of populations, the incidence of prostate cancer has an upward and younger tendency. Early detection and early treatment are helpful to patients. In the imaging diagnosis methods of prostate, magnetic resonance imaging (MRI) has been recognized as the most effective way. Whereas MRI image has several specialized configurations with a lot of medical information, and diagnosis results have a strong relationship with doctor's professional skill and experience, which makes the diagnosis for prostate cancer more difficult. Based on deep learning and the Convolutional Neural Networks (CNN), an image classification model which can provide some diagnosis classification reference was proposed in this paper. The data sets used in this paper consisted of 10056 diffusion weighted magnetic resonance imaging (DWI) images. Three quarters of the images were used for training and the rest images for testing. Experiments show that the accuracy rate of training set is 80.1539%, and the accuracy rate of testing set is 78.1538%. The curves of testing accuracy rate and loss show that this model has been trained steadily. The accuracy rate for single images are above 64.91%, and some may reach 99.99%. With certain clinical application value, this deep learning method can be widely applied to the grading and staging of prostate cancer and other cancer tasks.
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