人工智能在皮肤病学诊断和组织显微镜中的研究综述

IF 2.1 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Paul-Vasile Vezeteu;Andrei-Daniel Andronescu;Dumitru-Iulian Năstac
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引用次数: 0

摘要

人工智能通过利用计算机视觉实现创新和有效的医疗方法,正在重塑皮肤病学诊断和皮肤病理学。这些技术通过提供分析医学图像的创新解决方案,有可能使获得高质量诊断工具的机会大众化。皮肤诊断过程——如皮肤镜检查、显微镜检查和智能手机辅助皮肤病学——可以与人工智能配对,以支持医疗专家提高准确性和效率。本综述系统地调查了目前的科学文献,采用智能系统的技术,既用于皮肤病诊断,也用于皮肤病病理学。关键的深度学习方法,如卷积神经网络(cnn)、迁移学习和可解释的人工智能,在当前医疗实践的背景下进行了研究。该分析还解决了实际挑战,如图像质量、计算约束和数据隐私。在整个审查过程中,确定了新兴趋势和未来方向,例如人工智能集成作为辅助技术,以及显微镜作为全球医疗保健智能系统开发的促进者。本文旨在为研究人员和从业人员提供一个全面的资源,鼓励跨学科合作,以促进皮肤病学和皮肤病理学的皮肤病诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Literature Review on Artificial Intelligence in Dermatological Diagnosis and Tissue Microscopy
Artificial Intelligence is reshaping dermatological diagnosis and dermatopathology by leveraging computer vision to enable innovative and effective medical approaches. These technologies have the potential to democratize access to high-quality diagnostic tools by providing innovative solutions for analyzing medical images. Dermatological diagnostic processes — such as dermatoscopy, microscopy and smartphone-assisted dermatology — can be paired with AI to support medical experts to enhance accuracy and efficiency. This review systematically surveys the current scientific literature on techniques that employ intelligent systems both for dermatological diagnostics, as well as dermatopathology. Key deep learning methodologies, such as convolutional neural networks (CNNs), transfer learning, and explainable AI, are examined in the context of current medical practices. The analysis also addresses practical challenges, such as image quality, computational constraints, and data privacy. Throughout the review, emerging trends and future directions are identified, such as AI-integration as an assisting technology, and microscopy as a facilitator for intelligent system development in global healthcare. This paper aims to provide a comprehensive resource for researchers and practitioners, encouraging interdisciplinary collaboration to advance the diagnosis of dermatological conditions in both dermatology and dermatopathology.
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来源期刊
IEEE Photonics Journal
IEEE Photonics Journal ENGINEERING, ELECTRICAL & ELECTRONIC-OPTICS
CiteScore
4.50
自引率
8.30%
发文量
489
审稿时长
1.4 months
期刊介绍: Breakthroughs in the generation of light and in its control and utilization have given rise to the field of Photonics, a rapidly expanding area of science and technology with major technological and economic impact. Photonics integrates quantum electronics and optics to accelerate progress in the generation of novel photon sources and in their utilization in emerging applications at the micro and nano scales spanning from the far-infrared/THz to the x-ray region of the electromagnetic spectrum. IEEE Photonics Journal is an online-only journal dedicated to the rapid disclosure of top-quality peer-reviewed research at the forefront of all areas of photonics. Contributions addressing issues ranging from fundamental understanding to emerging technologies and applications are within the scope of the Journal. The Journal includes topics in: Photon sources from far infrared to X-rays, Photonics materials and engineered photonic structures, Integrated optics and optoelectronic, Ultrafast, attosecond, high field and short wavelength photonics, Biophotonics, including DNA photonics, Nanophotonics, Magnetophotonics, Fundamentals of light propagation and interaction; nonlinear effects, Optical data storage, Fiber optics and optical communications devices, systems, and technologies, Micro Opto Electro Mechanical Systems (MOEMS), Microwave photonics, Optical Sensors.
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