VA RR&D National Center for Rehabilitative Auditory Research (NCRAR), Portland VA Medical Center, Portland, Oregon 97239, USA.
Int J Audiol. 2012 Feb;51 Suppl 1(Suppl 1):S51-62. doi: 10.3109/14992027.2011.635713.
Distortion-product otoacoustic emissions (DPOAEs) provide a window into real-time cochlear mechanical function. Yet, relationships between the changes in DPOAE metrics and auditory sensitivity are still poorly understood. Explicating these relationships might support the use of DPOAEs in hearing conservation programs (HCPs) for detecting early damage leading to noise-induced hearing loss (NIHL) so that mitigating steps might be taken to limit any lasting damage. This report describes the development of DPOAE-based statistical models to assess the risk of hearing loss from cisplatin treatment among cancer patients. Ototoxicity risk assessment (ORA) models were constructed using a machine learning paradigm in which partial least squares and leave-one-out cross-validation were applied, yielding optimal screening algorithms from a set of known risk factors for ototoxicity and DPOAE changes from pre-exposure baseline measures. Single DPOAE metrics alone were poorer indicators of the risk of ototoxic hearing shifts than the best performing multivariate models. This finding suggests that multivariate approaches applied to the use of DPOAEs in a HCP, will improve the ability of DPOAE measures to identify ears with noise-induced mechanical damage and/or hearing loss at each monitoring interval. This prediction must be empirically assessed in noise-exposed subjects.
畸变产物耳声发射(DPOAEs)为实时耳蜗机械功能提供了一个窗口。然而,DPOAE 测量值的变化与听觉敏感度之间的关系仍未得到很好的理解。阐明这些关系可能有助于在听力保护计划(HCP)中使用 DPOAEs 来检测导致噪声性听力损失(NIHL)的早期损伤,以便采取缓解措施来限制任何持续的损伤。本报告描述了基于 DPOAE 的统计模型的开发,以评估顺铂治疗癌症患者听力损失的风险。使用机器学习范例构建了耳毒性风险评估(ORA)模型,其中应用了偏最小二乘和留一法交叉验证,从一组已知的耳毒性和 DPOAE 变化的风险因素以及暴露前基线测量中得出了最佳的筛选算法。与表现最佳的多变量模型相比,单一的 DPOAE 指标并不能更好地指示耳毒性听力转移的风险。这一发现表明,在 HCP 中应用多变量方法来使用 DPOAEs,将提高 DPOAE 测量值识别每个监测间隔内具有噪声引起的机械损伤和/或听力损失的耳朵的能力。这一预测必须在噪声暴露的受试者中进行实证评估。