Oetting Dirk, Brand Thomas, Ewert Stephan D
Project Group Hearing, Speech and Audio Technology of the Fraunhofer IDMT and Cluster of Excellence Hearing4all, Marie-Curie-Str. 2, 26129 Oldenburg, Germany; Medizinische Physik and Cluster of Excellence Hearing4all, Universität Oldenburg, 26111 Oldenburg, Germany.
Medizinische Physik and Cluster of Excellence Hearing4all, Universität Oldenburg, 26111 Oldenburg, Germany.
Hear Res. 2014 Oct;316:16-27. doi: 10.1016/j.heares.2014.07.003. Epub 2014 Jul 21.
Individual loudness perception can be assessed using categorical loudness scaling (CLS). The procedure does not require any training and is frequently used in clinics. The goal of this study was to investigate different methods of loudness-function estimation from CLS data in terms of their test-retest behaviour and to suggest an improved method compared to Brand and Hohmann (2002) for adaptive CLS. Four different runs of the CLS procedure were conducted using 13 normal-hearing and 11 hearing-impaired listeners. The following approaches for loudness-function estimation (fitting) by minimising the error between the data and loudness function were compared: Errors were defined both in level and in loudness direction, respectively. The hearing threshold level (HTL) was extracted from CLS by splitting the responses into an audible and an inaudible category. The extracted HTL was used as a fixed starting point of the loudness function. The uncomfortable loudness level (UCL) was estimated if presentation levels were not sufficiently high to yield responses in the upper loudness range, as often observed in practise. Compared to the original fitting method, the modified estimation of the HTL was closer to the pure-tone audiometric threshold. Results of a computer simulation for UCL estimation showed that the estimation error was reduced for data sets with sparse or absent responses in the upper loudness range. Overall, the suggested modifications lead to a better test-retest behaviour. If CLS data are highly consistent over the whole loudness range, all fitting methods lead to almost equal loudness functions. A considerable advantage of the suggested fitting method is observed for data sets where the responses either show high standard deviations or where responses are not present in the upper loudness range. Both cases regularly occur in clinical practice.
个体响度感知可以通过分类响度标度法(CLS)进行评估。该程序无需任何训练,且在临床中经常使用。本研究的目的是根据重测行为研究从CLS数据估计响度函数的不同方法,并提出一种比布兰德和霍曼(2002年)用于自适应CLS的方法有所改进的方法。使用13名听力正常的受试者和11名听力受损的受试者进行了四轮不同的CLS程序。通过最小化数据与响度函数之间的误差,比较了以下响度函数估计(拟合)方法:误差分别在声级和响度方向上定义。通过将反应分为可听和不可听类别,从CLS中提取听力阈值水平(HTL)。提取的HTL用作响度函数的固定起点。如果呈现水平不够高,无法在上响度范围内产生反应(在实际中经常观察到这种情况),则估计不适响度水平(UCL)。与原始拟合方法相比,HTL的修正估计更接近纯音听力阈值。UCL估计的计算机模拟结果表明,对于上响度范围内反应稀疏或没有反应的数据集,估计误差减小。总体而言,所建议的修正导致了更好的重测行为。如果CLS数据在整个响度范围内高度一致,则所有拟合方法都会得出几乎相同的响度函数。对于反应显示出高标准差或上响度范围内没有反应的数据集,观察到所建议的拟合方法具有相当大的优势。这两种情况在临床实践中经常出现。