Department of Biomedicine, University of Basel, Hebelstrasse 20, Basel 4031, Switzerland.
Department of Biomedicine, University of Basel, Hebelstrasse 20, Basel 4031, Switzerland; Clinic for Otorhinolaryngology, Head and Neck Surgery, University of Basel Hospital, Petersgraben 4, Basel CH-4031, Switzerland.
Hear Res. 2021 Sep 15;409:108317. doi: 10.1016/j.heares.2021.108317. Epub 2021 Jul 22.
Hearing loss affects millions of people worldwide. Yet, there are still no curative therapies for sensorineural hearing loss. Frequent causes of sensorineural hearing loss are due to damage or loss of the sensory hair cells, the spiral ganglion neurons, or the synapses between them. Culturing the organ of Corti allows the study of all these structures in an experimental model, which is easy to manipulate. Therefore, the in vitro culture of the neonatal mammalian organ of Corti remains a frequently used experimental system, in which hair cell survival is routinely assessed. However, the analysis of the surviving hair cells is commonly performed via manual counting, which is a time-consuming process and the inter-rater reliability can be an issue. Here, we describe a deep learning approach to quantify hair cell survival in the murine organ of Corti explants. We used StarDist, a publicly available platform and plugin for Fiji (Fiji is just ImageJ), to train and apply our own custom deep learning model. We successfully validated our model in untreated, cisplatin, and gentamicin treated organ of Corti explants. Therefore, deep learning is a valuable approach for quantifying hair cell survival in organ of Corti explants. Moreover, we also demonstrate how the publicly available Fiji plugin StarDist can be efficiently used for this purpose.
听力损失影响着全球数百万人。然而,目前对于感音神经性听力损失仍然没有治愈疗法。感音神经性听力损失的常见原因是感觉毛细胞、螺旋神经节神经元或它们之间的突触受损或丧失。培养耳蜗器官可以在实验模型中研究所有这些结构,并且易于操作。因此,新生哺乳动物耳蜗器官的体外培养仍然是一个常用的实验系统,其中毛细胞的存活通常被评估。然而,对存活毛细胞的分析通常通过手动计数来进行,这是一个耗时的过程,并且评分者间的可靠性可能是一个问题。在这里,我们描述了一种用于量化鼠耳蜗器官外植体中毛细胞存活的深度学习方法。我们使用了 StarDist,这是一个可公开获取的平台和 Fiji(Fiji 即 ImageJ)的插件,来训练和应用我们自己的定制深度学习模型。我们成功地在未经处理、顺铂和庆大霉素处理的耳蜗器官外植体中验证了我们的模型。因此,深度学习是量化耳蜗器官外植体中毛细胞存活的一种有价值的方法。此外,我们还展示了如何有效地将可公开获取的 Fiji 插件 StarDist 用于此目的。