Abstract The adoption of deep learning techniques in genomics has been hindered by the difficulty of mechanistically interpreting the models that these techniques produce. In recent years, a variety of post-hoc attribution methods have been proposed for addressing this neural network interpretability problem in the context of gene regulation. Here we describe a complementary way of approaching this problem. Our strategy is based on the observation that two large classes of biophysical models of cis-regulatory mechanisms can be expressed as deep neural networks in which nodes and weights have explicit physiochemical interpretations. We also demonstrate how such biophysical networks can be rapidly inferred, using modern deep learning framewor...
The regulation and responses of genes involve complex systems of relationships between genes, protei...
Background The evolution of high throughput technologies that measure gene expression levels has cr...
The DNA holds the recipe of all life functions. To decipher the instructions, one has to learn and u...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
AbstractModeling and simulation of gene-regulatory networks (GRNs) has become an important aspect of...
Institute for Adaptive and Neural ComputationAn important problem in systems biology is the inferenc...
Gene regulation is responsible for controlling numerous physiological functions and dynamically resp...
There is an urgent need for tools to unravel the complex interactions and functionalities of genes. ...
Deep neural networks (DNNs) have been applied to a variety of regulatory genomics tasks. For interpr...
Networks provide powerful and flexible models for many biological systems. Gene regulatory networks ...
Abstract Background Probability based statistical lea...
Background In microarray data analysis, factors such as data quality, biological variation, and the...
Genomics and deep learning are a natural match since both are data-driven fields. Regulatory genomic...
The regulation and responses of genes involve complex systems of relationships between genes, protei...
Background The evolution of high throughput technologies that measure gene expression levels has cr...
The DNA holds the recipe of all life functions. To decipher the instructions, one has to learn and u...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
AbstractModeling and simulation of gene-regulatory networks (GRNs) has become an important aspect of...
Institute for Adaptive and Neural ComputationAn important problem in systems biology is the inferenc...
Gene regulation is responsible for controlling numerous physiological functions and dynamically resp...
There is an urgent need for tools to unravel the complex interactions and functionalities of genes. ...
Deep neural networks (DNNs) have been applied to a variety of regulatory genomics tasks. For interpr...
Networks provide powerful and flexible models for many biological systems. Gene regulatory networks ...
Abstract Background Probability based statistical lea...
Background In microarray data analysis, factors such as data quality, biological variation, and the...
Genomics and deep learning are a natural match since both are data-driven fields. Regulatory genomic...
The regulation and responses of genes involve complex systems of relationships between genes, protei...
Background The evolution of high throughput technologies that measure gene expression levels has cr...
The DNA holds the recipe of all life functions. To decipher the instructions, one has to learn and u...