Department of Electrical and Computer Engineering, Inha University, Incheon 22212, Republic of Korea.
Department of Otolaryngology, Inha University Hospital, Incheon 22332, Republic of Korea.
J Healthc Eng. 2022 Oct 15;2022:1667672. doi: 10.1155/2022/1667672. eCollection 2022.
The initial software fitting prescribed by the fitting formula largely depends on the patient's hearing loss, which may not be the optimal preference for a particular user. Certain criteria must also be readjusted by an audiologist to meet the user-specific requirements. Therefore, this study focuses on the novel application of a neural network (NN) technique to build a suitable fitting algorithm with prescribed hearing loss and the corresponding preferred gain to minimize the gap between optimized fittings. The algorithm intended to learn the hearing preferences of an individual user such that the initial fitting may be optimized. These findings demonstrate the efficiency of the algorithm, with and without additional features. Using the clinical fitting data, the average mean square error (MSE) for the simple NN algorithm was 5.4183%. By adding additional features to the data, the algorithm performed better, and the average MSE was as low as 5.2530%. However, the algorithm outperformed Company A fitting software, as the MSE was the highest at 5.4748%. As the company's automatic fitting has a noticeable discrepancy with clinical fitting records, the impeccable results from this study can lead to a better path towards fitting satisfaction, thus benefiting the hearing-impaired community to a larger extent.
初始软件拟合规定的拟合公式在很大程度上取决于患者的听力损失,这可能不是特定用户的最佳偏好。听力学家还必须调整某些标准,以满足用户特定的需求。因此,本研究专注于神经网络 (NN) 技术的新应用,以建立一个合适的拟合算法,规定听力损失和相应的首选增益,以最小化优化拟合之间的差距。该算法旨在学习个体用户的听力偏好,以便可以优化初始拟合。这些发现证明了算法的效率,无论是否有额外的特征。使用临床拟合数据,简单 NN 算法的平均均方误差 (MSE) 为 5.4183%。通过向数据添加额外的特征,算法的性能更好,平均 MSE 低至 5.2530%。然而,该算法的表现优于公司 A 的拟合软件,因为 MSE 最高为 5.4748%。由于公司的自动拟合与临床拟合记录有明显差异,因此这项研究的完美结果可以为满足拟合需求提供更好的途径,从而使听力受损人群受益更大。