卷积神经网络
计算机科学
人工智能
人工神经网络
深度学习
特征提取
药物输送
机器学习
纳米技术
材料科学
作者
Philip J. Harrison,Håkan Wieslander,Alan Sabirsh,Johan Karlsson,Victor Malmsjö,Andreas Hellander,Carolina Wählby,Ola Spjuth
出处
期刊:Nanomedicine
日期:2021-05-05
卷期号:16 (13): 1097-1110
被引量:27
标识
DOI:10.2217/nnm-2020-0461
摘要
Background: Early prediction of time-lapse microscopy experiments enables intelligent data management and decision-making. Aim: Using time-lapse data of HepG2 cells exposed to lipid nanoparticles loaded with mRNA for expression of GFP, the authors hypothesized that it is possible to predict in advance whether a cell will express GFP. Methods: The first modeling approach used a convolutional neural network extracting per-cell features at early time points. These features were then combined and explored using either a long short-term memory network (approach 2) or time series feature extraction and gradient boosting machines (approach 3). Results: Accounting for the temporal dynamics significantly improved performance. Conclusion: The results highlight the benefit of accounting for temporal dynamics when studying drug delivery using high-content imaging.
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