Kotaro Tsutsumi, Sina Soltanzadeh-Zarandi, Pooya Khosravi, K. Goshtasbi, H. Djalilian, M. Abouzari
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引用次数: 0
Abstract
The application of machine learning (ML) techniques to otolaryngology remains a topic of interest and prevalence in the literature, though no previous articles have summarized the current state of ML application to management and the diagnosis of lateral skull base (LSB) tumors. Subsequently, we present a systematic overview of previous applications of ML techniques to the management of LSB tumors. Independent searches were conducted on PubMed and Web of Science between August 2020 and February 2021 to identify the literature pertaining to the use of ML techniques in LSB tumor surgery written in the English language. All articles were assessed in regard to their application task, ML methodology, and their outcomes. A total of 32 articles were examined. The number of articles involving applications of ML techniques to LSB tumor surgeries has significantly increased since the first article relevant to this field was published in 1994. The most commonly employed ML category was tree-based algorithms. Most articles were included in the category of surgical management (13; 40.6%), followed by those in disease classification (8; 25%). Overall, the application of ML techniques to the management of LSB tumor has evolved rapidly over the past two decades, and the anticipated growth in the future could significantly augment the surgical outcomes and management of LSB tumors.
机器学习(ML)技术在耳鼻喉科的应用在文献中仍然是一个感兴趣和流行的话题,尽管之前没有文章总结ML在侧颅底(LSB)肿瘤的管理和诊断中的应用现状。随后,我们对先前ML技术在LSB肿瘤治疗中的应用进行了系统的概述。在2020年8月至2021年2月期间,在PubMed和Web of Science上进行了独立搜索,以确定用英语撰写的关于在LSB肿瘤手术中使用ML技术的文献。对所有文章的应用任务、机器学习方法和结果进行评估。共审查了32篇文章。自1994年第一篇有关该领域的文章发表以来,涉及ML技术在LSB肿瘤手术中的应用的文章数量显著增加。最常用的ML类别是基于树的算法。大多数文章被纳入手术管理范畴(13;40.6%),其次是疾病分类(8;25%)。总的来说,在过去的二十年里,机器学习技术在LSB肿瘤治疗中的应用发展迅速,未来的预期增长可能会显著提高LSB肿瘤的手术效果和治疗。