皮肤病变生成与分类的生成对抗网络图像合成方法。

IF 1.1 Q4 ENGINEERING, BIOMEDICAL
Journal of Medical Signals & Sensors Pub Date : 2021-10-20 eCollection Date: 2021-10-01 DOI:10.4103/jmss.JMSS_53_20
Freedom Mutepfe, Behnam Kiani Kalejahi, Saeed Meshgini, Sebelan Danishvar
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引用次数: 6

摘要

背景:癌症治疗中常见的限制之一是这种疾病的早期发现。癌症检查的习惯医学实践是由皮肤科医生进行视觉检查,然后进行侵入性活检。尽管如此,这种有症状的方法非常耗时,而且容易出现人为错误。自动化机器学习模型对于实现快速诊断和早期治疗至关重要。目的:本研究的主要目的是建立一个全自动模型,以帮助皮肤科医生在皮肤癌处理过程中提高皮肤病变分类的准确性。方法:这项工作是在使用基于python的深度学习库Keras实现深度卷积生成对抗网络(DCGAN)之后进行的。我们结合了有效的图像滤波和增强算法,如双边滤波,以增强训练过程中的特征检测和提取。深度卷积生成对抗网络(DCGAN)需要稍微微调才能获得更好的回报。利用超参数优化选择性能最佳的超参数组合和多个网络超参数。在这项工作中,我们将学习率从默认的0.001降低到0.0002,并将Adam优化算法的动量从0.9降低到0.5,试图减少与GAN模型相关的不稳定性问题,并且在每次迭代时更新判别和生成网络的权重以平衡它们之间的损失。我们努力解决一个二元分类,它预测了我们数据集中存在的两类,即良性和恶性。更重要的是,一些众所周知的指标,如接受者工作特征-曲线下面积和混淆矩阵被纳入评估结果和分类精度。结果:该模型在实验的早期阶段产生了非常可想象的病变,我们可以很容易地看到在分辨率上的平滑过渡。因此,在对网络的大部分参数进行微调后,我们的整体测试精度达到了93.5%。结论:该分类模型为未来的癌症风险预测提供了空间智能。不幸的是,由于一些方法使用非公开数据集进行训练,很难生成与合成真实样本非常相似的高质量图像,也很难比较不同的分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generative Adversarial Network Image Synthesis Method for Skin Lesion Generation and Classification.

Generative Adversarial Network Image Synthesis Method for Skin Lesion Generation and Classification.

Generative Adversarial Network Image Synthesis Method for Skin Lesion Generation and Classification.

Generative Adversarial Network Image Synthesis Method for Skin Lesion Generation and Classification.

Background: One of the common limitations in the treatment of cancer is in the early detection of this disease. The customary medical practice of cancer examination is a visual examination by the dermatologist followed by an invasive biopsy. Nonetheless, this symptomatic approach is timeconsuming and prone to human errors. An automated machine learning model is essential to capacitate fast diagnoses and early treatment.

Objective: The key objective of this study is to establish a fully automatic model that helps Dermatologists in skin cancer handling process in a way that could improve skin lesion classification accuracy.

Method: The work is conducted following an implementation of a Deep Convolutional Generative Adversarial Network (DCGAN) using the Python-based deep learning library Keras. We incorporated effective image filtering and enhancement algorithms such as bilateral filter to enhance feature detection and extraction during training. The Deep Convolutional Generative Adversarial Network (DCGAN) needed slightly more fine-tuning to ripe a better return. Hyperparameter optimization was utilized for selecting the best-performed hyperparameter combinations and several network hyperparameters. In this work, we decreased the learning rate from the default 0.001 to 0.0002, and the momentum for Adam optimization algorithm from 0.9 to 0.5, in trying to reduce the instability issues related to GAN models and at each iteration the weights of the discriminative and generative network were updated to balance the loss between them. We endeavour to address a binary classification which predicts two classes present in our dataset, namely benign and malignant. More so, some wellknown metrics such as the receiver operating characteristic -area under the curve and confusion matrix were incorporated for evaluating the results and classification accuracy.

Results: The model generated very conceivable lesions during the early stages of the experiment and we could easily visualise a smooth transition in resolution along the way. Thus, we have achieved an overall test accuracy of 93.5% after fine-tuning most parameters of our network.

Conclusion: This classification model provides spatial intelligence that could be useful in the future for cancer risk prediction. Unfortunately, it is difficult to generate high quality images that are much like the synthetic real samples and to compare different classification methods given the fact that some methods use non-public datasets for training.

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来源期刊
Journal of Medical Signals & Sensors
Journal of Medical Signals & Sensors ENGINEERING, BIOMEDICAL-
CiteScore
2.30
自引率
0.00%
发文量
53
审稿时长
33 weeks
期刊介绍: JMSS is an interdisciplinary journal that incorporates all aspects of the biomedical engineering including bioelectrics, bioinformatics, medical physics, health technology assessment, etc. Subject areas covered by the journal include: - Bioelectric: Bioinstruments Biosensors Modeling Biomedical signal processing Medical image analysis and processing Medical imaging devices Control of biological systems Neuromuscular systems Cognitive sciences Telemedicine Robotic Medical ultrasonography Bioelectromagnetics Electrophysiology Cell tracking - Bioinformatics and medical informatics: Analysis of biological data Data mining Stochastic modeling Computational genomics Artificial intelligence & fuzzy Applications Medical softwares Bioalgorithms Electronic health - Biophysics and medical physics: Computed tomography Radiation therapy Laser therapy - Education in biomedical engineering - Health technology assessment - Standard in biomedical engineering.
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