INEGI-LAETA, Faculdade de Engenharia, Universidade do Porto, Porto, Portugal.
Skin Res Technol. 2019 Sep;25(5):750-757. doi: 10.1111/srt.12713. Epub 2019 May 20.
The use of different imaging modalities to assist in skin cancer diagnosis is a common practice in clinical scenarios. Different features representative of the lesion under evaluation can be retrieved from image analysis and processing. However, the integration and understanding of these additional parameters can be a challenging task for physicians, so artificial intelligence (AI) methods can be implemented to assist in this process. This bibliographic research was performed with the goal of assessing the current applications of AI algorithms as an assistive tool in skin cancer diagnosis, based on information retrieved from different imaging modalities.
The bibliography databases ISI Web of Science, PubMed and Scopus were used for the literature search, with the combination of keywords: skin cancer, skin neoplasm, imaging and classification methods.
The search resulted in 526 publications, which underwent a screening process, considering the established eligibility criteria. After screening, only 65 were qualified for revision.
Different imaging modalities have already been coupled with AI methods, particularly dermoscopy for melanoma recognition. Learners based on support vector machines seem to be the preferred option. Future work should focus on image analysis, processing stages and image fusion assuring the best possible classification outcome.
在临床场景中,使用不同的成像模式来辅助皮肤癌诊断是一种常见做法。可以从图像分析和处理中提取代表评估病变的不同特征。然而,对于医生来说,整合和理解这些附加参数可能是一项具有挑战性的任务,因此可以实施人工智能 (AI) 方法来协助完成此过程。本文献研究旨在评估基于不同成像模式检索到的信息,将 AI 算法作为皮肤癌诊断辅助工具的当前应用。
使用 ISI Web of Science、PubMed 和 Scopus 等文献数据库进行文献检索,关键词组合为:皮肤癌、皮肤肿瘤、成像和分类方法。
搜索共产生了 526 篇出版物,经过筛选过程,考虑到既定的合格标准,只有 65 篇符合修订条件。
不同的成像模式已经与 AI 方法相结合,特别是用于识别黑色素瘤的皮肤镜检查。基于支持向量机的学习者似乎是首选。未来的工作应侧重于图像分析、处理阶段和图像融合,以确保尽可能好的分类结果。