The role of public challenges and data sets towards algorithm development, trust, and use in clinical practice.

Q1 Medicine
Veronica Rotemberg, Allan Halpern, Steven Dusza, Noel Cf Codella
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引用次数: 18

Abstract

In the past decade, machine learning and artificial intelligence have made significant advancements in pattern analysis, including speech and natural language processing, image recognition, object detection, facial recognition, and action categorization. Indeed, in many of these applications, accuracy has reached or exceeded human levels of performance. Subsequently, a multitude of studies have begun to examine the application of these technologies to health care, and in particular, medical image analysis. Perhaps the most difficult subdomain involves skin imaging because of the lack of standards around imaging hardware, technique, color, and lighting conditions. In addition, unlike radiological images, skin image appearance can be significantly affected by skin tone as well as the broad range of diseases. Furthermore, automated algorithm development relies on large high-quality annotated image data sets that incorporate the breadth of this circumstantial and diagnostic variety. These issues, in combination with unique complexities regarding integrating artificial intelligence systems into a clinical workflow, have led to difficulty in using these systems to improve sensitivity and specificity of skin diagnostics in health care networks around the world. In this article, we summarize recent advancements in machine learning, with a focused perspective on the role of public challenges and data sets on the progression of these technologies in skin imaging. In addition, we highlight the remaining hurdles toward effective implementation of technologies to the clinical workflow and discuss how public challenges and data sets can catalyze the development of solutions.

公众挑战和数据集对算法开发、信任和临床实践使用的作用。
在过去的十年中,机器学习和人工智能在模式分析方面取得了重大进展,包括语音和自然语言处理、图像识别、对象检测、面部识别和动作分类。事实上,在许多这些应用程序中,准确性已经达到或超过了人类的表现水平。随后,大量的研究已经开始检查这些技术在医疗保健中的应用,特别是医学图像分析。也许最困难的子领域涉及皮肤成像,因为在成像硬件、技术、颜色和光照条件方面缺乏标准。此外,与放射图像不同,皮肤图像外观会受到肤色以及广泛疾病的显着影响。此外,自动化算法的开发依赖于大量高质量的带注释的图像数据集,这些数据集包含了这种环境和诊断多样性的广度。这些问题,再加上将人工智能系统集成到临床工作流程中的独特复杂性,导致在使用这些系统来提高世界各地卫生保健网络中皮肤诊断的敏感性和特异性方面存在困难。在本文中,我们总结了机器学习的最新进展,重点介绍了公共挑战和数据集对这些技术在皮肤成像中的进展的作用。此外,我们强调了在临床工作流程中有效实施技术的剩余障碍,并讨论了公共挑战和数据集如何促进解决方案的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.90
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: Seminars in Cutaneous Medicine and Surgery (SCMS) presents well-rounded and authoritative discussions of important clinical areas, especially those undergoing rapid change in the specialty. Each issue, under the direction of the Editors and Guest Editors selected because of their expertise in the subject area, includes the most current information on the diagnosis and management of specific disorders of the skin, as well as the application of the latest scientific findings to patient care.
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