Dynamical Inference and Representations in Complex Biological Systems Restricted; Files Only

Calderon, Josuan (Spring 2024)

Permanent URL: https://etd.library.emory.edu/concern/etds/rv042v63t?locale=en%255D
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Abstract

This thesis introduces a comprehensive analytical framework that combines Temporal Autoencoders for Causal Inference (TACI) with a new pipeline for discovering and analyzing behavioral states in complex dynamical systems. Although these two methodologies have different purposes, they both focus on comprehending time-dependent phenomena through the lens of time series and temporal interactions, which are omnipresent in the natural world.

We begin with TACI, a novel methodology designed to analyze time-varying causal interactions within complex dynamical systems. Traditional approaches to causality often fall short when faced with non-linear, non-stationary interactions between system variables. To address these challenges, TACI leverages a novel metric, the Comparative Surrogate Granger Index (CGSI), alongside a two-headed Temporal Convolutional Network (TCN) autoencoder architecture. Through tests on both synthetic and real-world datasets, we demonstrate TACI’s ability to accurately quantify dynamic causal interactions across a variety of systems. Our findings display the method’s effectiveness compared to existing approaches and also enhance our understanding of time-varying interactions in various domains, from physical to biological systems. Through this work, TACI emerges as a significant advancement in the field of causal inference, promising to deepen our comprehension of dynamic systems across a range of scientific disciplines.

The thesis also explores the intricate dynamics of behavioral states using a comprehensive analytical framework rooted in proven methods of dynamical systems and advanced computational techniques. By integrating wavelet transforms with autoencoders, followed by predictive modeling using Long Short-Term Memory (LSTM) networks and dimensionality reduction via t-distributed stochastic neighbor embedding (t-SNE), we offer novel insights into the temporal and spectral characteristics of behavior. The use of LSTM networks to model the temporal sequences of behavioral states aims to predict future states and identify stable points within the system's dynamics. These fixed points are then mapped into a two-dimensional space using t-SNE, creating a visual landscape of behavioral basins of attraction. This visualization not only simplifies the interpretation of behavioral dynamics but also reveals the underlying structure and transitions between states, highlighting areas of stability and potential pathways for state changes. Our findings highlight the stability and fluidity of behavioral states, providing insights into the mechanisms governing behavioral transitions. The identification of basins of attraction and the hierarchical organization of behaviors suggest that complex behaviors may be constructed from simpler, foundational actions. 

The thesis successfully demonstrates how the TACI methodology and the behavioral states pipeline provide an extensive strategy to understand dynamical systems. Together, they offer novel insights into the behavior and causality within these systems, highlighting the fluidity and stability of behavioral states, and providing a deeper understanding of the mechanisms driving transitions. This unified approach not only advances our understanding of individual systems but also offers a broader perspective on the temporal interactions that shape the complexity of the natural world, as exemplified by its application to diverse datasets including climate patterns, neural activities in monkeys, and the behaviors of rats.

Table of Contents

Quantifying temporal dynamics in biological time series 1

Introduction 1

Causality 11

Challenges in Causal Inference 12

The Dynamics of Behavior 15

Ethology and Tinbergen’s Four Questions 15

Measuring Behavior 17

Stereotyped Behavior 18

Thesis Outline 19

Background Information 22

Introduction 22

Methods for Causal Inference Analysis 23

Correlation 23

Granger Causality 28

Information theory as a tool for causality detection 33

Cross Mappings 39

Causal Neural Networks 43

Neural Granger Causality 46

TCN Introduction 52

Temporal Causal Discovery Framework 60

Methods for Behavioral States Discovery 64

Dynamical systems 64

Fixed Points 66

Recurrent Neural Networks 67

Wavelet Transform 73

Autoencoders as a dimensionality reduction technique 75

Spatial embedding 76

Inferring time-varying coupling of dynamical systems with temporal convolutional network autoencoders 78

Introduction 78

Overview of Methodology 80

Comparative Surrogate Granger Index (CSGI) 80

Temporal Autoencoders for Causal Inference 82

Other Methods We Compare Against 86

Results 87

Artificial Test Systems 87

Jena Climate Dataset 95

Electrocorticography in Non-Human Primates 97

Discussion 100

Materials and methods 103

Architecture 104

Training and Prediction 106

TACI Network Parameters 108

Building emergent representation of behavioral states using dynamical models 109

Introduction 109

Methods 110

Recurrent Neural Networks Fixed Points 112

Data 115

Analysis Pipeline 116

Results 128

Embedded Space Dynamics 128

Transition Matrices 129

Predictability and Hierarchy 131

Discussion 132

Conclusion and Future Directions 134

Thesis Contributions 134

Summaries of Chapters 136

Chapter 1 summary 136

Chapter 2 summary 137

Chapter 3 summary 138

Chapter 4 summary 139

Limitations 140

TACI and causal inference 140

Fixed Points Pipeline 141

Future Directions 142

Brain connectivity of prairie voles during social bonding 142

Brain States 143

Bibliography 145

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