Unsupervised Learning Techniques for the Investigation of Chronic Rhinosinusitis

A. Walker, P. Surda
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引用次数: 8

Abstract

Objectives: This article reviews the principles of unsupervised learning, a novel technique which has increasingly been reported as a tool for the investigation of chronic rhinosinusitis (CRS). It represents a paradigm shift from the traditional approach to investigating CRS based upon the clinically recognized phenotypes of “with polyps” and “without polyps” and instead relies upon the application of complex mathematical models to derive subgroups which can then be further examined. This review article reports on the principles which underlie this investigative technique and some of the published examples in CRS. Methods: This review summarizes the different types of unsupervised learning techniques which have been described and briefly expounds upon their useful applications. A literature review of studies which have unsupervised learning is then presented to provide a practical guide to its uses and some of the new directions of investigations suggested by their findings. Results: The commonest unsupervised learning technique applied to rhinology research is cluster analysis, which can be further subdivided into hierarchical and non-hierarchical approaches. The mathematical principles which underpin these approaches are explained within this article. Studies which have used these techniques can be broadly divided into those which have used clinical data only and that which includes biomarkers. Studies which include biomarkers adhere closely to the established canon of CRS disease phenotypes, while those that use clinical data may diverge from the typical “polyp versus non-polyp” phenotypes and reflect subgroups of patients who share common symptom modifiers. Summary: Artificial intelligence is increasingly influential in health care research and machine learning techniques have been reported in the investigation of CRS, promising several interesting new avenues for research. However, when critically appraising studies which use this technique, the reader needs to be au fait with the limitations and appropriate uses of its application.
研究慢性鼻窦炎的无监督学习技术
目的:本文综述了无监督学习的原理,无监督学习是一种新技术,越来越多地被报道为慢性鼻窦炎(CRS)研究的工具。它代表了一种范式转变,从传统的研究CRS的方法转变为基于临床公认的“有息肉”和“没有息肉”的表型,而是依赖于复杂数学模型的应用来推导亚组,然后可以进一步检查。这篇综述文章报告了这种调查技术的基本原理和一些在CRS中发表的例子。方法:本文综述了不同类型的无监督学习技术,并简要阐述了它们的应用。然后,对无监督学习的研究进行了文献综述,为其使用提供了实用指南,并提出了一些由他们的发现提出的新的研究方向。结果:鼻科学研究中最常用的无监督学习技术是聚类分析,聚类分析可进一步分为分层和非分层方法。本文将解释支撑这些方法的数学原理。使用这些技术的研究大致可分为仅使用临床数据的研究和包括生物标志物的研究。包括生物标志物的研究密切遵循CRS疾病表型的既定标准,而使用临床数据的研究可能偏离典型的“息肉与非息肉”表型,并反映具有共同症状调节剂的患者亚组。摘要:人工智能在医疗保健研究中的影响力越来越大,机器学习技术在CRS的研究中得到了报道,为研究提供了一些有趣的新途径。然而,当批判性地评价使用这种技术的研究时,读者需要了解其应用的局限性和适当的用途。
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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