基于深度残差网络的银屑病分类诊断模型研究

Q3 Medicine Digital Chinese Medicine Pub Date : 2021-06-01 DOI:10.1016/j.dcmed.2021.06.003
Li Peng , Yi Na , Ding Changsong , L.I. Sheng , Min Hui
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引用次数: 9

摘要

目的建立一种基于深度残差网络的银屑病分类诊断模型。其中利用深度学习技术对牛皮癣进行分类诊断,有助于减轻医生负担,简化诊疗流程,提高诊断质量。方法首先采用数据增强、图像调整大小、TFRecord编码等方法对模型输入进行预处理,然后构建34层深度残差网络(ResNet-34)提取银屑病特征。最后,我们使用Adam算法作为优化器对ResNet-34进行训练,并在本研究中使用交叉熵作为ResNet-34的损失函数来衡量模型的准确性,得到了优化后的ResNet-34银屑病诊断模型。结果基于k-fold交叉验证的实验结果表明,该模型在召回率、f1评分和ROC曲线上均优于其他诊断方法。结论ResNet-34模型可实现银屑病的准确诊断,为银屑病的数据分析和智能化诊疗提供技术支持。
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Research on classification diagnosis model of psoriasis based on deep residual network

Objective

A classification and diagnosis model for psoriasis based on deep residual network is proposed in this paper. Which using deep learning technology to classify and diagnose psoriasis can help reduce the burden of doctors, simplify the diagnosis and treatment process, and improve the quality of diagnosis.

Methods

Firstly, data enhancement, image resizings, and TFRecord coding are used to preprocess the input of the model, and then a 34-layer deep residual network (ResNet-34) is constructed to extract the characteristics of psoriasis. Finally, we used the Adam algorithm as the optimizer to train ResNet-34, used cross-entropy as the loss function of ResNet-34 in this study to measure the accuracy of the model, and obtained an optimized ResNet-34 model for psoriasis diagnosis.

Results

The experimental results based on k-fold cross validation show that the proposed model is superior to other diagnostic methods in terms of recall rate, F1-score and ROC curve.

Conclusion

The ResNet-34 model can achieve accurate diagnosis of psoriasis, and provide technical support for data analysis and intelligent diagnosis and treatment of psoriasis.

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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
期刊最新文献
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