New York: O’Reilly, 2019. — 220 p.
Why Deep Learning?
Contemporary Life Science Is About Data
What Will You Learn?Intro to Deep Learning
Linear Models
Multilayer Perceptrons
Training Models
Regularization
Hyperparameter Optimization
Other Types of Models
Further Reading
Machine Learning with DeepChem
DeepChem Datasets
Training a Model to Predict Toxicity of Molecules
Case Study: Training an MNIST Model
Machine Learning for Molecules
What Is a Molecule?
Featurizing a Molecule
Graph Convolutions
Training a Model to Predict Solubility
MoleculeNet
Biophysical Machine Learning
Protein Structures
Biophysical Featurizations
The PDBBind Case Study
DNA, RNA, and Proteins
And Now for the Real World
Transcription Factor Binding
Chromatin Accessibility
RNA Interference
Machine Learning for Microscopy
A Brief Introduction to Microscopy
The Diffractio Limit
Preparing Biological Samples for Microscopy
Deep Learning Applications
Computer-Aided Diagnostics
Probabilistic Diagnoses with Bayesian Networks
Electronic Health Record Data
Deep Radiology
Learning Models as Therapeutics
Diabetic Retinopathy
Variational Autoencoders
Generative Adversarial Networks
Applications of Generative Models in the Life Sciences
Working with Generative Models
Explaining Predictions
Optimizing Inputs
Predicting Uncertainty
Interpretability, Explainability, and Real-World Consequences
Virtual Screening Workflow Example
Preparing a Dataset for Predictive Modeling
Training a Predictive Model
Preparing a Dataset for Model Prediction
Applying a Predictive Model
Medical Diagnosis
Personalized Medicine
Pharmaceutical Development
Biology Research