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当代综述:机器学习在耳鼻喉-头颈外科中的应用。

A contemporary review of machine learning in otolaryngology-head and neck surgery.

机构信息

Department of Otolaryngology-Head and Neck Surgery, Sunnybrook Health Sciences Center, Toronto, Ontario, Canada.

Department of Mechanical and Industrial Engineering, University of Toronto, Toronto, Ontario, Canada.

出版信息

Laryngoscope. 2020 Jan;130(1):45-51. doi: 10.1002/lary.27850. Epub 2019 Feb 1.

Abstract

One of the key challenges with big data is leveraging the complex network of information to yield useful clinical insights. The confluence of massive amounts of health data and a desire to make inferences and insights on these data has produced a substantial amount of interest in machine-learning analytic methods. There has been a drastic increase in the otolaryngology literature volume describing novel applications of machine learning within the past 5 years. In this timely contemporary review, we provide an overview of popular machine-learning techniques, and review recent machine-learning applications in otolaryngology-head and neck surgery including neurotology, head and neck oncology, laryngology, and rhinology. Investigators have realized significant success in validated models with model sensitivities and specificities approaching 100%. Challenges remain in the implementation of machine-learning algorithms. This may be in part the unfamiliarity of these techniques to clinician leaders on the front lines of patient care. Spreading awareness and confidence in machine learning will follow with further validation and proof-of-value analyses that demonstrate model performance superiority over established methods. We are poised to see a greater influx of machine-learning applications to clinical problems in otolaryngology-head and neck surgery, and it is prudent for providers to understand the potential benefits and limitations of these technologies. Laryngoscope, 130:45-51, 2020.

摘要

大数据面临的主要挑战之一是利用复杂的信息网络来产生有用的临床见解。大量的健康数据的融合,以及对这些数据进行推断和洞察的愿望,使得人们对机器学习分析方法产生了浓厚的兴趣。在过去的 5 年中,耳鼻喉科学文献中描述机器学习新应用的数量急剧增加。在这个及时的现代综述中,我们提供了流行的机器学习技术概述,并回顾了最近在耳鼻喉科-头颈外科中的机器学习应用,包括神经耳科学、头颈部肿瘤学、喉科学和鼻科学。研究人员在经过验证的模型中取得了显著的成功,模型的敏感性和特异性接近 100%。在机器学习算法的实施方面仍然存在挑战。这可能部分是由于临床医生在患者护理第一线对这些技术不熟悉。随着进一步的验证和证明模型性能优于现有方法的价值分析,机器学习的意识和信心将得到传播。我们有望看到更多的机器学习应用于耳鼻喉科-头颈外科的临床问题,因此了解这些技术的潜在优势和局限性是明智的。《喉镜》,130:45-51, 2020。

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