Vardasca Ricardo, Mendes Joaquim Gabriel, Magalhaes Carolina
ISLA Santarem, Rua Teixeira Guedes 31, 2000-029 Santarem, Portugal.
Instituto de Ciência e Inovação em Engenharia Mecânica e Engenharia Industrial, Universidade do Porto, 4099-002 Porto, Portugal.
J Imaging. 2024 Oct 22;10(11):265. doi: 10.3390/jimaging10110265.
The increasing incidence of and resulting deaths associated with malignant skin tumors are a public health problem that can be minimized if detection strategies are improved. Currently, diagnosis is heavily based on physicians' judgment and experience, which can occasionally lead to the worsening of the lesion or needless biopsies. Several non-invasive imaging modalities, e.g., confocal scanning laser microscopy or multiphoton laser scanning microscopy, have been explored for skin cancer assessment, which have been aligned with different artificial intelligence (AI) strategies to assist in the diagnostic task, based on several image features, thus making the process more reliable and faster. This systematic review concerns the implementation of AI methods for skin tumor classification with different imaging modalities, following the PRISMA guidelines. In total, 206 records were retrieved and qualitatively analyzed. Diagnostic potential was found for several techniques, particularly for dermoscopy images, with strategies yielding classification results close to perfection. Learning approaches based on support vector machines and artificial neural networks seem to be preferred, with a recent focus on convolutional neural networks. Still, detailed descriptions of training/testing conditions are lacking in some reports, hampering reproduction. The use of AI methods in skin cancer diagnosis is an expanding field, with future work aiming to construct optimal learning approaches and strategies. Ultimately, early detection could be optimized, improving patient outcomes, even in areas where healthcare is scarce.
恶性皮肤肿瘤的发病率不断上升及其导致的死亡是一个公共卫生问题,如果改进检测策略,这个问题可以得到最小化。目前,诊断很大程度上基于医生的判断和经验,这偶尔会导致病变恶化或不必要的活检。已经探索了几种非侵入性成像模式,例如共聚焦扫描激光显微镜或多光子激光扫描显微镜,用于皮肤癌评估,这些模式已经与不同的人工智能(AI)策略相结合,基于几种图像特征协助诊断任务,从而使过程更加可靠和快速。本系统评价遵循PRISMA指南,关注使用不同成像模式的AI方法进行皮肤肿瘤分类的情况。总共检索并定性分析了206条记录。发现几种技术具有诊断潜力,特别是对于皮肤镜图像,其策略产生的分类结果接近完美。基于支持向量机和人工神经网络的学习方法似乎更受青睐,最近则侧重于卷积神经网络。然而,一些报告缺乏对训练/测试条件的详细描述,妨碍了结果的重现。在皮肤癌诊断中使用AI方法是一个不断扩展的领域,未来的工作旨在构建最佳的学习方法和策略。最终,可以优化早期检测,即使在医疗资源稀缺的地区也能改善患者的治疗结果。