Tinnitus risk factors and its evolution over time: a cohort study

Lise Hobeika, Matt Fillingim, Christophe Tanguay-Sabourin, Mathieu Roy, Alain Londero, Séverine Samson, Etienne Vachon-Presseau
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Abstract

Background. Subjective tinnitus is an auditory percept unrelated to an external sound source. The lack of curative treatments and limited understanding of its risk factors complicate the prevention and management of this distressing symptom. This study seeks to identify socio-demographic, psychological, and health-related risk factors predicting tinnitus presence (how often individuals perceive tinnitus) and severity separately, and their evolution over time. Methods Using the UK Biobank dataset which encompasses data on the socio-demographic, physical, mental and hearing health from more than 170,000 participants, we trained two distinct machine learning models to identify risk scores predicting tinnitus presence and severity separately. These models were used to predict tinnitus over time and were replicated in 463 individuals from the Tinnitus Research Initiative database. Finding Machine learning based approach identified hearing health as a primary risk factor for the presence and severity of tinnitus, while mood, neuroticism, hearing health, and sleep only predicted tinnitus severity. Only the severity model accurately predicted the evolution over nine years, with a large effect size for individuals developing severe tinnitus (Cohen's d = 1.10, AUC-ROC = 0.70). To facilitate its clinical applications, we simplified the severity model and validated a five-item questionnaire to detect individuals at risk of developing severe tinnitus. Interpretation This study is the first to clearly identify risk factors predicting tinnitus presence and severity separately. Hearing health emerges as a major predictor of tinnitus presence, while mental health plays a crucial role in its severity. The successful prediction of the evolution of tinnitus severity over nine years based on socio-emotional, hearing and sleep factors suggests that modifying these factors could mitigate the impact of tinnitus. The newly developed questionnaire represents a significant advancement in identifying individuals at risk of severe tinnitus, for which early supportive care would be crucial.
耳鸣风险因素及其随时间的演变:一项队列研究
背景介绍主观性耳鸣是一种与外部声源无关的听觉感受。由于缺乏治疗方法以及对其风险因素的了解有限,使得这种令人痛苦的症状的预防和管理变得更加复杂。本研究旨在确定分别预测耳鸣存在(个人感知耳鸣的频率)和严重程度的社会人口、心理和健康相关风险因素,以及这些因素随时间的变化情况。方法利用英国生物库数据集(该数据集包含 17 万多名参与者的社会-人口、身体、心理和听力健康数据),我们训练了两个不同的机器学习模型,以识别分别预测耳鸣存在和严重程度的风险分数。这些模型用于预测耳鸣随时间变化的情况,并在耳鸣研究计划数据库中的 463 人中进行了复制。结果 基于机器学习的方法确定了听力健康是耳鸣出现和严重程度的主要风险因素,而情绪、神经质、听力健康和睡眠只能预测耳鸣的严重程度。只有耳鸣严重程度模型能准确预测九年来耳鸣的演变情况,对出现严重耳鸣的个体有较大的影响(Cohen's d = 1.10,AUC-ROC = 0.70)。为了便于临床应用,我们简化了严重程度模型,并验证了五项调查问卷,以检测有可能发展为严重耳鸣的个体。释义这项研究首次明确了分别预测耳鸣存在和严重程度的风险因素。听力健康是预测耳鸣是否存在的主要因素,而心理健康则对耳鸣的严重程度起着至关重要的作用。根据社会情感、听力和睡眠因素成功预测了九年来耳鸣严重程度的变化,这表明改变这些因素可以减轻耳鸣的影响。新开发的调查问卷在识别严重耳鸣高危人群方面取得了重大进展,对这些人群来说,早期支持性护理至关重要。
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