Mazhar Tehseen, Haq Inayatul, Ditta Allah, Mohsan Syed Agha Hassnain, Rehman Faisal, Zafar Imran, Gansau Jualang Azlan, Goh Lucky Poh Wah
Department of Computer Science, Virtual University of Pakistan, Lahore 54000, Pakistan.
School of Information Engineering, Zhengzhou University, Zhengzhou 450001, China.
Healthcare (Basel). 2023 Feb 1;11(3):415. doi: 10.3390/healthcare11030415.
Machine learning (ML) can enhance a dermatologist's work, from diagnosis to customized care. The development of ML algorithms in dermatology has been supported lately regarding links to digital data processing (e.g., electronic medical records, Image Archives, omics), quicker computing and cheaper data storage. This article describes the fundamentals of ML-based implementations, as well as future limits and concerns for the production of skin cancer detection and classification systems. We also explored five fields of dermatology using deep learning applications: (1) the classification of diseases by clinical photos, (2) der moto pathology visual classification of cancer, and (3) the measurement of skin diseases by smartphone applications and personal tracking systems. This analysis aims to provide dermatologists with a guide that helps demystify the basics of ML and its different applications to identify their possible challenges correctly. This paper surveyed studies on skin cancer detection using deep learning to assess the features and advantages of other techniques. Moreover, this paper also defined the basic requirements for creating a skin cancer detection application, which revolves around two main issues: the full segmentation image and the tracking of the lesion on the skin using deep learning. Most of the techniques found in this survey address these two problems. Some of the methods also categorize the type of cancer too.
机器学习(ML)可以提升皮肤科医生的工作效率,从诊断到定制化护理。近年来,随着与数字数据处理(如电子病历、图像存档、组学)的关联、更快的计算速度和更廉价的数据存储,皮肤科领域的ML算法得到了发展。本文介绍了基于ML的实施方法的基本原理,以及皮肤癌检测和分类系统生产的未来局限与问题。我们还探讨了深度学习应用在皮肤科的五个领域:(1)通过临床照片进行疾病分类;(2)皮肤病理学中癌症的视觉分类;(3)通过智能手机应用和个人跟踪系统测量皮肤疾病。本分析旨在为皮肤科医生提供一份指南,帮助揭开ML基础知识及其不同应用的神秘面纱,以便正确识别其可能面临的挑战。本文调查了使用深度学习进行皮肤癌检测的研究,以评估其他技术的特点和优势。此外,本文还定义了创建皮肤癌检测应用的基本要求,这主要围绕两个主要问题:使用深度学习对图像进行完整分割以及跟踪皮肤上的病变。本次调查中发现的大多数技术都解决了这两个问题。一些方法还对癌症类型进行了分类。