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Implementation of deep neural networks to count dopamine neurons in substantia nigra

机译:深度神经网络用于黑质中多巴胺神经元计数的实现

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摘要

Unbiased estimates of neuron numbers within substantia nigra are crucial for experimental Parkinson's disease models and gene‐function studies. Unbiased stereological counting techniques with optical fractionation are successfully implemented, but are extremely laborious and time‐consuming. The development of neural networks and deep learning has opened a new way to teach computers to count neurons. Implementation of a programming paradigm enables a computer to learn from the data and development of an automated cell counting method. The advantages of computerized counting are reproducibility, elimination of human error and fast high‐capacity analysis. We implemented whole‐slide digital imaging and deep convolutional neural networks (CNN) to count substantia nigra dopamine neurons. We compared the results of the developed method against independent manual counting by human observers and validated the CNN algorithm against previously published data in rats and mice, where tyrosine hydroxylase (TH)‐immunoreactive neurons were counted using unbiased stereology. The developed CNN algorithm and fully cloud‐embedded Aiforia™ platform provide robust and fast analysis of dopamine neurons in rat and mouse substantia nigra.
机译:对黑质内神经元数量的无偏估计对于实验性帕金森氏病模型和基因功能研究至关重要。具有光学分离的无偏立体计数技术已成功实施,但非常费力且费时。神经网络和深度学习的发展为教授计算机计数神经元开辟了一条新途径。编程范例的实现使计算机能够从数据中学习并开发自动细胞计数方法。计算机计数的优点是可重复性,消除人为错误和快速进行大容量分析。我们实施了全幻灯片数字成像和深度卷积神经网络(CNN)来计数黑质多巴胺神经元。我们将开发的方法的结果与人类观察者的独立手动计数进行了比较,并针对大鼠和小鼠中以前发表的数据验证了CNN算法,在该数据中,使用无偏立体学对酪氨酸羟化酶(TH)免疫反应性神经元进行了计数。先进的CNN算法和完全嵌入云的Aiforia™平台可为大鼠和小鼠黑质中的多巴胺神经元提供强大而快速的分析。

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