Enhanced skin cancer diagnosis using optimized CNN architecture and checkpoints for automated dermatological lesion classification.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-08-02 DOI:10.1186/s12880-024-01356-8
M Mohamed Musthafa, Mahesh T R, Vinoth Kumar V, Suresh Guluwadi
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Abstract

Skin cancer stands as one of the foremost challenges in oncology, with its early detection being crucial for successful treatment outcomes. Traditional diagnostic methods depend on dermatologist expertise, creating a need for more reliable, automated tools. This study explores deep learning, particularly Convolutional Neural Networks (CNNs), to enhance the accuracy and efficiency of skin cancer diagnosis. Leveraging the HAM10000 dataset, a comprehensive collection of dermatoscopic images encompassing a diverse range of skin lesions, this study introduces a sophisticated CNN model tailored for the nuanced task of skin lesion classification. The model's architecture is intricately designed with multiple convolutional, pooling, and dense layers, aimed at capturing the complex visual features of skin lesions. To address the challenge of class imbalance within the dataset, an innovative data augmentation strategy is employed, ensuring a balanced representation of each lesion category during training. Furthermore, this study introduces a CNN model with optimized layer configuration and data augmentation, significantly boosting diagnostic precision in skin cancer detection. The model's learning process is optimized using the Adam optimizer, with parameters fine-tuned over 50 epochs and a batch size of 128 to enhance the model's ability to discern subtle patterns in the image data. A Model Checkpoint callback ensures the preservation of the best model iteration for future use. The proposed model demonstrates an accuracy of 97.78% with a notable precision of 97.9%, recall of 97.9%, and an F2 score of 97.8%, underscoring its potential as a robust tool in the early detection and classification of skin cancer, thereby supporting clinical decision-making and contributing to improved patient outcomes in dermatology.

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利用优化的 CNN 架构和检查点增强皮肤癌诊断,实现皮肤病自动分类。
皮肤癌是肿瘤学领域的首要挑战之一,其早期检测对治疗效果至关重要。传统的诊断方法依赖于皮肤科医生的专业知识,因此需要更可靠的自动化工具。本研究探索深度学习,尤其是卷积神经网络(CNN),以提高皮肤癌诊断的准确性和效率。HAM10000 数据集是一个全面的皮肤镜图像集合,涵盖了各种皮肤病变,本研究利用该数据集引入了一个复杂的 CNN 模型,该模型专为皮肤病变分类这一细致入微的任务量身定制。该模型的架构设计错综复杂,包含多个卷积层、池化层和密集层,旨在捕捉皮损的复杂视觉特征。为了应对数据集中类别不平衡的挑战,本研究采用了一种创新的数据增强策略,确保在训练过程中每个皮损类别都有均衡的表示。此外,本研究还引入了一种具有优化层配置和数据增强功能的 CNN 模型,大大提高了皮肤癌检测的诊断精度。该模型的学习过程使用 Adam 优化器进行了优化,参数经过 50 次历时微调,批量大小为 128,以增强模型辨别图像数据中微妙模式的能力。模型检查点回调确保了最佳模型迭代的保留,以备将来使用。所提出的模型准确率为 97.78%,精确度为 97.9%,召回率为 97.9%,F2 得分为 97.8%,突出了其作为皮肤癌早期检测和分类的强大工具的潜力,从而支持临床决策,并有助于改善皮肤科患者的治疗效果。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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