Department of Otolaryngology-Head and Neck Surgery, Medical University of South Carolina, 135 Rutledge Avenue, MSC 550, Charleston, SC, 29425-5500, USA,
J Assoc Res Otolaryngol. 2013 Oct;14(5):687-701. doi: 10.1007/s10162-013-0396-x. Epub 2013 Jun 6.
Age-related hearing loss (presbyacusis) has a complex etiology. Results from animal models detailing the effects of specific cochlear injuries on audiometric profiles may be used to understand the mechanisms underlying hearing loss in older humans and predict cochlear pathologies associated with certain audiometric configurations ("audiometric phenotypes"). Patterns of hearing loss associated with cochlear pathology in animal models were used to define schematic boundaries of human audiograms. Pathologies included evidence for metabolic, sensory, and a mixed metabolic + sensory phenotype; an older normal phenotype without threshold elevation was also defined. Audiograms from a large sample of older adults were then searched by a human expert for "exemplars" (best examples) of these phenotypes, without knowledge of the human subject demographic information. Mean thresholds and slopes of higher frequency thresholds of the audiograms assigned to the four phenotypes were consistent with the predefined schematic boundaries and differed significantly from each other. Significant differences in age, gender, and noise exposure history provided external validity for the four phenotypes. Three supervised machine learning classifiers were then used to assess reliability of the exemplar training set to estimate the probability that newly obtained audiograms exhibited one of the four phenotypes. These procedures classified the exemplars with a high degree of accuracy; classifications of the remaining cases were consistent with the exemplars with respect to average thresholds and demographic information. These results suggest that animal models of age-related hearing loss can be used to predict human cochlear pathology by classifying audiograms into phenotypic classifications that reflect probable etiologies for hearing loss in older humans.
年龄相关性听力损失(presbyacusis)具有复杂的病因。详细描述特定耳蜗损伤对听力图影响的动物模型研究结果可用于了解老年人听力损失的机制,并预测与某些听力配置相关的耳蜗病变(“听力表型”)。动物模型中与耳蜗病变相关的听力损失模式用于定义人类听力图的示意性边界。病变包括代谢、感觉和混合代谢+感觉表型的证据;还定义了没有阈值升高的老年正常表型。然后,一位人类专家在大量老年受试者的听力图中搜索这些表型的“示例”(最佳示例),而不知道人类受试者的人口统计学信息。分配给这四种表型的听力图的高频阈值的平均阈值和斜率与预定义的示意性边界一致,彼此之间差异显著。年龄、性别和噪声暴露史的显著差异为这四种表型提供了外部有效性。然后使用三种监督机器学习分类器评估示例训练集的可靠性,以估计新获得的听力图是否表现出这四种表型之一的概率。这些程序以高度准确性对示例进行分类;剩余病例的分类与示例在平均阈值和人口统计学信息方面一致。这些结果表明,年龄相关性听力损失的动物模型可以通过将听力图分类为反映老年人听力损失可能病因的表型分类来预测人类耳蜗病变。