Ceriani Federico, Giles Joshua, Ingham Neil J, Jeng Jing-Yi, Lewis Morag A, Steel Karen P, Arvaneh Mahnaz, Marcotti Walter
School of Biosciences, University of Sheffield, Sheffield S10 2TN, UK; Centre for Machine Intelligence, University of Sheffield, Sheffield S10 2TN, UK.
Department of Automatic Control and Systems Engineering, University of Sheffield, Sheffield S1 4DT, UK; Centre for Machine Intelligence, University of Sheffield, Sheffield S10 2TN, UK.
Hear Res. 2025 Aug;464:109328. doi: 10.1016/j.heares.2025.109328. Epub 2025 Jun 6.
Machine learning (ML) techniques are increasingly being used to improve disease diagnosis and treatment. However, the application of these computational approaches to the early diagnosis of age-related hearing loss (ARHL), the most common sensory deficit in adults, remains underexplored. Here, we demonstrate the potential of ML for identifying early signs of ARHL in adult mice. We used auditory brainstem responses (ABRs), which are non-invasive electrophysiological recordings that can be performed in both mice and humans, as a readout of hearing function. We recorded ABRs from C57BL/6N mice (6N), which develop early-onset ARHL due to a hypomorphic allele of Cadherin23 (Cdh23), and from co-isogenic C57BL/6NTac mice (6N-Repaired), which do not harbour the Cdh23 allele and maintain good hearing until later in life. We evaluated several ML classifiers across different metrics for their ability to distinguish between the two mouse strains based on ABRs. Remarkably, the models accurately identified mice carrying the Cdh23 allele even in the absence of obvious signs of hearing loss at 1 month of age, surpassing the classification accuracy of human experts. Feature importance analysis using Shapley values indicated that subtle differences in ABR wave 1 were critical for distinguishing between the two genotypes. This superior performance underscores the potential of ML approaches in detecting subtle phenotypic differences that may elude manual classification. Additionally, we successfully trained regression models capable of predicting ARHL progression rate at older ages from ABRs recorded in younger mice. We propose that ML approaches are suitable for the early diagnosis of ARHL and could potentially improve the success of future treatments in humans by predicting the progression of hearing dysfunction.
机器学习(ML)技术正越来越多地用于改善疾病的诊断和治疗。然而,这些计算方法在成人中最常见的感觉缺陷——年龄相关性听力损失(ARHL)早期诊断中的应用仍未得到充分探索。在此,我们展示了ML在识别成年小鼠ARHL早期迹象方面的潜力。我们使用听觉脑干反应(ABR)作为听力功能的读数,ABR是一种可在小鼠和人类中进行的非侵入性电生理记录。我们记录了C57BL/6N小鼠(6N)的ABR,这些小鼠由于钙黏蛋白23(Cdh23)的低表达等位基因而出现早发性ARHL;还记录了同基因的C57BL/6NTac小鼠(6N-Repaired)的ABR,这些小鼠不携带Cdh23等位基因,在生命后期仍保持良好的听力。我们基于不同指标评估了几种ML分类器根据ABR区分这两种小鼠品系的能力。值得注意的是,这些模型即使在1月龄小鼠没有明显听力损失迹象的情况下,也能准确识别携带Cdh23等位基因的小鼠,其分类准确率超过了人类专家。使用Shapley值进行特征重要性分析表明,ABR波1的细微差异对于区分两种基因型至关重要。这种卓越的性能凸显了ML方法在检测可能难以通过人工分类的细微表型差异方面的潜力。此外,我们成功训练了能够根据幼年小鼠记录的ABR预测老年时ARHL进展率的回归模型。我们提出,ML方法适用于ARHL的早期诊断,并有可能通过预测听力功能障碍的进展来提高未来人类治疗的成功率。