Pillai Rudresh, Sharma Neha, Gupta Sheifali, Gupta Deepali, Juneja Sapna, Malik Saurav, Qin Hong, Alqahtani Mohammed S, Ksibi Amel
Chitkara University Institute of Engineering and Technology, Chitkara University, Rajpura, Punjab.
CSE(AI), KIET Group of Institutions, Ghaziabad, India.
Front Med (Lausanne). 2024 Nov 7;11:1436470. doi: 10.3389/fmed.2024.1436470. eCollection 2024.
Skin cancer is a widespread and perilous disease that necessitates prompt and precise detection for successful treatment. This research introduces a thorough method for identifying skin lesions by utilizing sophisticated deep learning (DL) techniques. The study utilizes three convolutional neural networks (CNNs)-CNN1, CNN2, and CNN3-each assigned to a distinct categorization job. Task 1 involves binary classification to determine whether skin lesions are present or absent. Task 2 involves distinguishing between benign and malignant lesions. Task 3 involves multiclass classification of skin lesion images to identify the precise type of skin lesion from a set of seven categories. The most optimal hyperparameters for the proposed CNN models were determined using the Grid Search Optimization technique. This approach determines optimal values for architectural and fine-tuning hyperparameters, which is essential for learning. Rigorous evaluations of loss, accuracy, and confusion matrix thoroughly assessed the performance of the CNN models. Three datasets from the International Skin Imaging Collaboration (ISIC) Archive were utilized for the classification tasks. The primary objective of this study is to create a robust CNN system that can accurately diagnose skin lesions. Three separate CNN models were developed using the labeled ISIC Archive datasets. These models were designed to accurately detect skin lesions, assess the malignancy of the lesions, and classify the different types of lesions. The results indicate that the proposed CNN models possess robust capabilities in identifying and categorizing skin lesions, aiding healthcare professionals in making prompt and precise diagnostic judgments. This strategy presents an optimistic avenue for enhancing the diagnosis of skin cancer, which could potentially decrease avoidable fatalities and extend the lifespan of people diagnosed with skin cancer. This research enhances the discipline of biomedical image processing for skin lesion identification by utilizing the capabilities of DL algorithms.
皮肤癌是一种广泛且危险的疾病,为了成功治疗,需要及时且准确的检测。本研究介绍了一种利用先进的深度学习(DL)技术来识别皮肤病变的全面方法。该研究使用了三个卷积神经网络(CNN)——CNN1、CNN2和CNN3,每个都分配了一项不同的分类任务。任务1涉及二元分类,以确定皮肤病变是否存在。任务2涉及区分良性和恶性病变。任务3涉及对皮肤病变图像进行多类分类,以从七个类别中识别出皮肤病变的精确类型。使用网格搜索优化技术确定了所提出的CNN模型的最优超参数。这种方法确定了架构和微调超参数的最优值,这对学习至关重要。对损失、准确率和混淆矩阵的严格评估全面评估了CNN模型的性能。来自国际皮肤成像协作(ISIC)存档的三个数据集被用于分类任务。本研究的主要目标是创建一个强大的CNN系统,能够准确诊断皮肤病变。使用标记的ISIC存档数据集开发了三个独立的CNN模型。这些模型旨在准确检测皮肤病变、评估病变的恶性程度,并对不同类型的病变进行分类。结果表明,所提出的CNN模型在识别和分类皮肤病变方面具有强大的能力,有助于医疗保健专业人员做出及时且准确的诊断判断。这种策略为加强皮肤癌的诊断提供了一条乐观的途径,这有可能减少可避免的死亡,并延长皮肤癌患者的寿命。本研究通过利用DL算法的能力,增强了用于皮肤病变识别的生物医学图像处理学科。