Application of supervised machine learning algorithms for the evaluation of utricular function on patients with Meniere's disease: utilizing subjective visual vertical and ocular-vestibular-evoked myogenic potentials.

IF 1.2 4区 医学 Q3 OTORHINOLARYNGOLOGY
Phillip G Bragg, Benjamin M Norton, Michelle R Petrak, Allyson D Weiss, Lindsay M Kandl, Megan L Corrigan, Cammy L Bahner, Akihiro J Matsuoka
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引用次数: 1

Abstract

Background: Research on the otolith organs remains inconclusive.

Objectives: This study seeks to further elucidate utricular function in patients with Meniere's disease (MD) in three ways: (1) We aimed to disambiguate the role of the Subjective Visual Vertical (SVV) and Ocular Vestibular Evoked Myogenic Potential (o-VEMP) tests regarding which utricular subsystem each is measuring. (2) We sought to characterize the acute and chronic state of MD by identifying differences in the relationship of SVV and o-VEMP results across patients with acute and chronic MD. (3) We attempted to find a machine-learning algorithm that could predict acute versus chronic MD using SVV and o-VEMP.

Methods: A prospective study with ninety subjects.

Results: (1) SVV and o-VEMP tests were found to have a moderate linear relationship in patients with acute MD, suggesting each test measures a different utricular subsystem. (2) Regression analyses statistically differed across the two patient populations, suggesting that SVV results were normalized in chronic MD patients. (3) Logistic regression and Naïve Bayes algorithms were found to predict acute and chronic MD accurately.

Significance: A better understanding of what diagnostic tests measure will lead to a better classification system for MD and more targeted treatment options in the future.

应用监督机器学习算法评估梅尼埃病患者的脑室功能:利用主观视觉垂直和眼前庭诱发肌源性电位。
背景:耳石器官的研究尚无定论。目的:本研究旨在通过三种方式进一步阐明梅尼埃病(MD)患者的心室功能:(1)我们旨在消除主观视觉垂直(SVV)和眼前庭诱发肌原电位(o-VEMP)测试所测量的心室子系统的作用的歧义。(2)我们试图通过识别急性和慢性MD患者SVV和o-VEMP结果之间关系的差异来表征MD的急性和慢性状态。(3)我们试图找到一种机器学习算法,可以使用SVV和o-VEMP预测急性和慢性MD。方法:采用前瞻性研究,纳入90例受试者。结果:(1)SVV和o-VEMP检测在急性MD患者中呈中等线性关系,表明各检测检测的是不同的心室子系统。(2)两组患者的回归分析有统计学差异,表明慢性MD患者的SVV结果归一化。(3) Logistic回归和Naïve贝叶斯算法能够准确预测急慢性MD。意义:更好地了解诊断测试的测量将导致更好的MD分类系统和未来更有针对性的治疗选择。
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
Acta Oto-Laryngologica
Acta Oto-Laryngologica 医学-耳鼻喉科学
CiteScore
2.50
自引率
0.00%
发文量
99
审稿时长
3-6 weeks
期刊介绍: Acta Oto-Laryngologica is a truly international journal for translational otolaryngology and head- and neck surgery. The journal presents cutting-edge papers on clinical practice, clinical research and basic sciences. Acta also bridges the gap between clinical and basic research.
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