Skin Lesion Detection Using Deep Learning

Q4 Engineering
Rajit Chandra, M. Hajiarbabi
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引用次数: 0

Abstract

Abstract Skin lesion can be deadliest if not detected early. Early detection of skin lesion can save many lives. Artificial Intelligence and Machine learning is helping health-care in many ways and so in the diagnosis of skin lesion. Computer aided diagnosis help clinicians in detecting the cancer. The study was conducted to classify the seven classes of skin lesion using very powerful convolutional neural networks. The two pre trained models i.e DenseNet and Incepton-v3 were employed to train the model and accuracy, precision, recall, f1score and ROCAUC was calculated for every class prediction. Moreover, gradient class activation maps were also used to aid the clinicians in determining what are the regions of image that influence model to make a certain decision. These visualizations are used for explain ability of the model. Experiments showed that DenseNet performed better then Inception V3. Also it was noted that gradient class activation maps highlighted different regions for predicting same class. The main contribution was to introduce medical aided visualizations in lesion classification model that will help clinicians in understanding the decisions of the model. It will enhance the reliability of the model. Also, different optimizers were employed with both models to compare the accuracies.
基于深度学习的皮肤病变检测
如果不及早发现,皮肤病变可能是致命的。早期发现皮肤病变可以挽救许多生命。人工智能和机器学习在很多方面都在帮助医疗保健,包括皮肤病变的诊断。计算机辅助诊断帮助临床医生发现癌症。该研究使用非常强大的卷积神经网络对七种皮肤病变进行分类。采用DenseNet和Incepton-v3这两个预训练模型对模型进行训练,计算每个类别预测的准确率、精密度、召回率、f1score和ROCAUC。此外,还使用梯度类激活图来帮助临床医生确定哪些图像区域影响模型做出特定决策。这些可视化用于模型的解释能力。实验表明DenseNet比Inception V3表现得更好。此外,还注意到梯度类激活图突出了预测同一类的不同区域。主要贡献是在病变分类模型中引入医学辅助可视化,这将有助于临床医生理解模型的决策。这将提高模型的可靠性。此外,两种模型采用了不同的优化器来比较精度。
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来源期刊
Journal of Automation, Mobile Robotics and Intelligent Systems
Journal of Automation, Mobile Robotics and Intelligent Systems Engineering-Control and Systems Engineering
CiteScore
1.10
自引率
0.00%
发文量
25
期刊介绍: Fundamentals of automation and robotics Applied automatics Mobile robots control Distributed systems Navigation Mechatronics systems in robotics Sensors and actuators Data transmission Biomechatronics Mobile computing
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