基于卷积神经网络的皮肤癌和乳腺癌诊断系统

Ruipu Li, Yi Lu, Haoran Zhang
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引用次数: 0

摘要

人工智能在医学上的应用使诊断方法发生了变化。基于深度神经网络的诊断系统可以对许多已知疾病进行有效的预测。我们的研究是利用CNN模型构建一个癌症诊断系统。癌症诊断系统能够通过输入图像对皮肤癌和乳腺癌进行预测。皮肤癌的诊断模型是AlexNet,乳腺癌的诊断模型是VGGnet。基于这两个预训练好的CNN模型,我们使用PyQt5开发用户界面,构建诊断系统。根据测试结果,皮肤癌诊断模型达到80%左右的准确率,乳腺癌模型达到85%左右的准确率。对于诊断系统,用户最多可以上传三张图片,选择癌症类型,并在界面上查看分析结果。总之,我们的诊断系统能够准确、高效地呈现皮肤癌和乳腺癌的诊断结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Network Based Diagnosis System on Skin and Breast Cancers
Use of artificial intelligence in medicine makes a difference in diagnosis methods. A diagnosis system based on deep neural network can efficiently make predictions for many known diseases. Our study is to construct a cancer diagnosis system using CNN models. The cancer diagnosis system is capable of giving predictions on skin cancer and breast cancer with input images. The diagnosis model for skin cancer is AlexNet, and the model for breast cancer is VGGnet. Based on the two pre-trained CNN models, we use PyQt5 to develop the user interface and construct the diagnosis system. According to the test result, the skin cancer diagnosis model achieves about 80% accuracy, and the breast cancer model achieves about 85% accuracy. As for the diagnosis system, users can upload at most three images, select cancer type, and view the analysis results on the interface. In conclusion, our diagnosis system can accurately and efficiently present skin and breast cancer diagnosis results.
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