Faculty of Automatic Control and Computers, University Politehnica of Bucharest, 060042 Bucharest, Romania.
Sensors (Basel). 2022 Jan 10;22(2):496. doi: 10.3390/s22020496.
Due to its increasing incidence, skin cancer, and especially melanoma, is a serious health disease today. The high mortality rate associated with melanoma makes it necessary to detect the early stages to be treated urgently and properly. This is the reason why many researchers in this domain wanted to obtain accurate computer-aided diagnosis systems to assist in the early detection and diagnosis of such diseases. The paper presents a systematic review of recent advances in an area of increased interest for cancer prediction, with a focus on a comparative perspective of melanoma detection using artificial intelligence, especially neural network-based systems. Such structures can be considered intelligent support systems for dermatologists. Theoretical and applied contributions were investigated in the new development trends of multiple neural network architecture, based on decision fusion. The most representative articles covering the area of melanoma detection based on neural networks, published in journals and impact conferences, were investigated between 2015 and 2021, focusing on the interval 2018-2021 as new trends. Additionally presented are the main databases and trends in their use in teaching neural networks to detect melanomas. Finally, a research agenda was highlighted to advance the field towards the new trends.
由于其发病率不断上升,皮肤癌,尤其是黑色素瘤,如今是一种严重的健康疾病。黑色素瘤的高死亡率使得有必要及时且正确地对早期阶段进行治疗。这就是为什么该领域的许多研究人员希望获得准确的计算机辅助诊断系统,以帮助早期发现和诊断此类疾病。本文对癌症预测领域的最新进展进行了系统的回顾,重点是基于人工智能,特别是基于神经网络的系统对黑色素瘤检测的比较视角。这些结构可以被认为是皮肤科医生的智能支持系统。在基于决策融合的多神经网络架构的新发展趋势中,研究了理论和应用方面的贡献。对 2015 年至 2021 年期间在期刊和有影响力的会议上发表的、基于神经网络的黑色素瘤检测领域最具代表性的文章进行了调查,重点关注 2018 年至 2021 年的新趋势。还介绍了主要的数据库及其在教授神经网络检测黑色素瘤方面的使用趋势。最后,强调了一个研究议程,以推进该领域朝着新的趋势发展。