| Literature DB >> 33654846 |
Shinji Urata1,2, Tadatsune Iida1, Yuri Suzuki1, Shiou-Yuh Lin2, Yu Mizushima2, Chisato Fujimoto2, Yu Matsumoto2, Tatsuya Yamasoba2.
Abstract
Here, we describe a sorbitol-based optical clearing method, called modified Sca/eS that can be used to image all hair cells (HCs) in the mouse cochlea. This modification of Sca/eS is defined by three steps: decalcification, de-lipidation, and refractive index matching, which can all be completed within 72 h. Furthermore, we established automated analysis programs that perform machine learning-based pattern recognition. These programs generate 1) a linearized image of HCs, 2) the coordinates of HCs, 3) a holocochleogram, and 4) clusters of HC loss. In summary, a novel approach that integrates modified Sca/eS and programs based on machine learning facilitates quantitative and comprehensive analysis of the physiological and pathological properties of all HCs.Entities:
Keywords: Sca/eS ; Auto hair cell analysis; Cochlea; Machine learning; Optical tissue clearing
Year: 2019 PMID: 33654846 PMCID: PMC7854069 DOI: 10.21769/BioProtoc.3342
Source DB: PubMed Journal: Bio Protoc ISSN: 2331-8325