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一种新的预处理方法,用于提高基于 CNN 的皮肤病变分类性能。

A new preprocessing approach to improve the performance of CNN-based skin lesion classification.

机构信息

Department of Electrical Engineering, University of South Florida, Tampa, 33620, USA.

出版信息

Med Biol Eng Comput. 2021 May;59(5):1123-1131. doi: 10.1007/s11517-021-02355-5. Epub 2021 Apr 26.

DOI:10.1007/s11517-021-02355-5
PMID:33904008
Abstract

Skin lesion is one of the severe diseases which in many cases endanger the lives of patients on a worldwide extent. Early detection of disease in dermoscopy images can significantly increase the survival rate. However, the accurate detection of disease is highly challenging due to the following reasons: e.g., visual similarity between different classes of disease (e.g., melanoma and non-melanoma lesions), low contrast between lesions and skin, background noise, and artifacts. Machine learning models based on convolutional neural networks (CNN) have been widely used for automatic recognition of lesion diseases with high accuracy in comparison to conventional machine learning methods. In this research, we proposed a new preprocessing technique in order to extract the region of interest (RoI) of skin lesion dataset. We compare the performance of the most state-of-the-art CNN classifiers with two datasets which contain (1) raw, and (2) RoI extracted images. Our experiment results show that training CNN models by RoI extracted dataset can improve the accuracy of the prediction (e.g., InceptionResNetV2, 2.18% improvement). Moreover, it significantly decreases the evaluation (inference) and training time of classifiers as well.

摘要

皮肤损伤是一种严重的疾病,在全球范围内,许多情况下会危及患者的生命。通过皮肤镜图像对疾病进行早期检测,可以显著提高患者的存活率。然而,由于以下原因,准确地检测疾病具有很高的挑战性:例如,不同疾病类别之间的视觉相似性(例如,黑色素瘤和非黑色素瘤病变)、病变与皮肤之间的对比度低、背景噪声和伪影。基于卷积神经网络(CNN)的机器学习模型已被广泛用于自动识别病变疾病,与传统的机器学习方法相比,其准确率更高。在这项研究中,我们提出了一种新的预处理技术,以便从皮肤损伤数据集中提取感兴趣区域(RoI)。我们将最先进的 CNN 分类器的性能与包含(1)原始图像和(2)提取 RoI 后的图像的两个数据集进行了比较。我们的实验结果表明,通过提取 RoI 的数据集训练 CNN 模型可以提高预测的准确性(例如,InceptionResNetV2 提高了 2.18%)。此外,它还显著减少了分类器的评估(推断)和训练时间。

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引用本文的文献

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Analysis of dermoscopy images of multi-class for early detection of skin lesions by hybrid systems based on integrating features of CNN models.基于集成卷积神经网络模型特征的混合系统对多类皮肤镜图像进行早期皮肤病变检测分析。
PLoS One. 2024 Mar 21;19(3):e0298305. doi: 10.1371/journal.pone.0298305. eCollection 2024.
2
AI Techniques of Dermoscopy Image Analysis for the Early Detection of Skin Lesions Based on Combined CNN Features.基于组合卷积神经网络特征的皮肤镜图像分析人工智能技术用于皮肤病变的早期检测
Diagnostics (Basel). 2023 Apr 1;13(7):1314. doi: 10.3390/diagnostics13071314.
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An Improved Skin Lesion Boundary Estimation for Enhanced-Intensity Images Using Hybrid Metaheuristics.
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Dermoscopic Image Classification Method Using an Ensemble of Fine-Tuned Convolutional Neural Networks.基于集成微调卷积神经网络的皮肤镜图像分类方法。
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JMIR Med Inform. 2022 Mar 9;10(3):e33006. doi: 10.2196/33006.
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