生物信息学
人工神经网络
人工智能
生物
计算机科学
表型
深度学习
布尔网络
系统生物学
功能(生物学)
计算生物学
机器学习
布尔函数
遗传学
基因
算法
作者
Jianzhu Ma,Michael Yu,Samson Fong,Keiichiro Ono,Eric Sage,Barry Demchak,Roded Sharan,Trey Ideker
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2018-03-05
卷期号:15 (4): 290-298
被引量:398
摘要
Embedding a deep-learning model in the known structure of cellular systems yields DCell, a ‘visible’ neural network that can be used to mechanistically interpret genotype–phenotype relationships. Although artificial neural networks are powerful classifiers, their internal structures are hard to interpret. In the life sciences, extensive knowledge of cell biology provides an opportunity to design visible neural networks (VNNs) that couple the model's inner workings to those of real systems. Here we develop DCell, a VNN embedded in the hierarchical structure of 2,526 subsystems comprising a eukaryotic cell ( http://d-cell.ucsd.edu/ ). Trained on several million genotypes, DCell simulates cellular growth nearly as accurately as laboratory observations. During simulation, genotypes induce patterns of subsystem activities, enabling in silico investigations of the molecular mechanisms underlying genotype–phenotype associations. These mechanisms can be validated, and many are unexpected; some are governed by Boolean logic. Cumulatively, 80% of the importance for growth prediction is captured by 484 subsystems (21%), reflecting the emergence of a complex phenotype. DCell provides a foundation for decoding the genetics of disease, drug resistance and synthetic life.
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