Philip Rohit C, Rodriguez Jeffrey J, Niihori Maki, Francis Ross H, Mudery Jordan A, Caskey Justin S, Krupinski Elizabeth, Jacob Abraham
1 Department of Electrical and Computer Engineering, The University of Arizona , Tucson, Arizona.
2 Department of Otolaryngology, The University of Arizona , Tucson, Arizona.
Zebrafish. 2018 Apr;15(2):145-155. doi: 10.1089/zeb.2017.1451. Epub 2018 Jan 30.
Zebrafish have emerged as a powerful biological system for drug development against hearing loss. Zebrafish hair cells, contained within neuromasts along the lateral line, can be damaged with exposure to ototoxins, and therefore, pre-exposure to potentially otoprotective compounds can be a means of identifying promising new drug candidates. Unfortunately, anatomical assays of hair cell damage are typically low-throughput and labor intensive, requiring trained experts to manually score hair cell damage in fluorescence or confocal images. To enhance throughput and consistency, our group has developed an automated damage-scoring algorithm based on machine-learning techniques that produce accurate damage scores, eliminate potential operator bias, provide more fidelity in determining damage scores that are between two levels, and deliver consistent results in a fraction of the time required for manual analysis. The system has been validated against trained experts using linear regression, hypothesis testing, and the Pearson's correlation coefficient. Furthermore, performance has been quantified by measuring mean absolute error for each image and the time taken to automatically compute damage scores. Coupling automated analysis of zebrafish hair cell damage to behavioral assays for ototoxicity produces a novel drug discovery platform for rapid translation of candidate drugs into preclinical mammalian models of hearing loss.
斑马鱼已成为一种用于开发抗听力损失药物的强大生物系统。斑马鱼的毛细胞位于侧线沿线的神经丘内,接触耳毒性药物时会受损,因此,预先接触具有潜在耳保护作用的化合物可能是识别有前景的新药候选物的一种方法。不幸的是,毛细胞损伤的解剖学检测通常通量低且劳动强度大,需要训练有素的专家在荧光或共聚焦图像中手动对毛细胞损伤进行评分。为了提高通量和一致性,我们团队开发了一种基于机器学习技术的自动损伤评分算法,该算法能产生准确的损伤评分,消除潜在的操作者偏差,在确定两个水平之间的损伤评分时提供更高的保真度,并在手动分析所需时间的一小部分内给出一致的结果。该系统已通过线性回归、假设检验和皮尔逊相关系数与训练有素的专家进行了验证。此外,通过测量每张图像的平均绝对误差和自动计算损伤评分所需的时间对性能进行了量化。将斑马鱼毛细胞损伤的自动分析与耳毒性行为检测相结合,产生了一个新的药物发现平台,可将候选药物快速转化为听力损失的临床前哺乳动物模型。