类有机物
多巴胺能
神经科学
神经毒性
神经毒素
计算机科学
中脑
机器学习
人工智能
生物
医学
多巴胺
中枢神经系统
毒性
内科学
作者
Anna S. Monzel,Kathrin Hemmer,Tony Kaoma,Lisa M. Smits,Silvia Bolognin,Philippe Lucarelli,Isabel Rosety,Alise Žagare,Paul Antony,Sarah L. Nickels,Rejko Krueger,Francisco Azuaje,Jens C. Schwamborn
标识
DOI:10.1016/j.parkreldis.2020.05.011
摘要
Brain organoids are highly complex multi-cellular tissue proxies, which have recently risen as novel tools to study neurodegenerative diseases such as Parkinson's disease (PD). However, with increasing complexity of the system, usage of quantitative tools becomes challenging.The primary objective of this study was to develop a neurotoxin-induced PD organoid model and to assess the neurotoxic effect on dopaminergic neurons using microscopy-based phenotyping in a high-content fashion.We describe a pipeline for a machine learning-based analytical method, allowing for detailed image-based cell profiling and toxicity prediction in brain organoids treated with the neurotoxic compound 6-hydroxydopamine (6-OHDA).We quantified features such as dopaminergic neuron count and neuronal complexity and built a machine learning classifier with the data to optimize data processing strategies and to discriminate between different treatment conditions. We validated the approach with high content imaging data from PD patient derived midbrain organoids.The here described model is a valuable tool for advanced in vitro PD modeling and to test putative neurotoxic compounds.
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