增强皮肤镜下色素皮肤病变分类:一种使用预先训练的Inception-V3架构的改进方法。

Narra J Pub Date : 2025-08-01 Epub Date: 2025-04-21 DOI:10.52225/narra.v5i2.1852
Erwin S Nugroho, Igi Ardiyanto, Hanung A Nugroho
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引用次数: 0

摘要

皮肤癌是世界上最常见的癌症之一,早期诊断对提高生存率至关重要。皮肤镜检查是一种非侵入性的成像工具,被广泛用于识别色素沉着的皮肤病变。然而,其准确性在很大程度上依赖于专家解释,这引入了可变性,并限制了资源受限环境下的可及性。这突出了对自动化解决方案的需求,以提高诊断一致性并帮助早期发现。本研究的目的是开发一个精细的机器学习框架,用于使用皮肤镜图像对色素皮肤病变进行分类。我们采用了一个增强的Inception-V3模型,一个最先进的卷积神经网络,集成了简化的软注意机制、先进的数据增强技术和贝叶斯超参数调优。这些创新提高了模型准确聚焦和识别相关病变特征的能力,标志着该领域的重大进步。使用ISIC-2019数据集(包含8个诊断类别的皮肤镜图像的公开资源),我们实施了调整大小、清洗和数据平衡等预处理步骤。此外,应用ImageNet迁移学习和贝叶斯优化对模型进行了改进。软注意机制的加入进一步增强了模型识别病变图像模式的能力。我们的模型在ISIC-2019数据集上表现出色,灵敏度为98.5%,特异性为99.62%,精度为97.42%,准确度为97.38%,F1得分为97.34%,曲线下面积(AUC)为0.99。这些指标强调了该模型在准确可靠的色素皮肤病变分类方面的卓越能力,超越了目前的基准,并展示了对现有方法的重大进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhancing dermoscopic pigmented skin lesion classification: A refined approach using the pre-trained Inception-V3 architecture.

Enhancing dermoscopic pigmented skin lesion classification: A refined approach using the pre-trained Inception-V3 architecture.

Enhancing dermoscopic pigmented skin lesion classification: A refined approach using the pre-trained Inception-V3 architecture.

Enhancing dermoscopic pigmented skin lesion classification: A refined approach using the pre-trained Inception-V3 architecture.

Skin cancer is one of the most prevalent cancers worldwide, with early diagnosis being critical for improving survival rates. Dermoscopy, a non-invasive imaging tool, is widely used for identifying pigmented skin lesions. However, its accuracy is heavily dependent on expert interpretation, which introduces variability and limits accessibility in resource-constrained settings. This highlighted the need for automated solutions to enhance diagnostic consistency and aid in early detection. The aim of this study was to develop a refined machine-learning framework for classifying pigmented skin lesions using dermoscopy images. We employed an enhanced Inception-V3 model, a state-of-the-art convolutional neural network, integrated with a simplified soft-attention mechanism, advanced data augmentation techniques, and Bayesian hyperparameter tuning. These innovations improved the model's ability to accurately focus on and identify relevant lesion features, marking a significant advancement in the field. Using the ISIC-2019 dataset, a publicly available resource containing dermoscopy images classified into eight diagnostic categories, we implemented preprocessing steps such as resizing, cleaning, and data balancing. Additionally, ImageNet transfer learning and Bayesian optimization were applied to refine the model. The inclusion of a soft-attention mechanism further enhanced the model's capacity to identify patterns within lesion images. Our model exhibited outstanding performance on the ISIC-2019 dataset, achieving a sensitivity of 98.5%, specificity of 99.62%, precision of 97.42%, accuracy of 97.38%, an F1 score of 97.34%, and an area under the curve (AUC) of 0.99. These metrics underscored the model's superior capability in accurate and reliable classification of pigmented skin lesions, surpassing current benchmarks and demonstrating significant advancements over existing methodologies.

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