TY - JOUR T1 - Dynamical networks: finding, measuring, and tracking neural population activity using network theory JF - bioRxiv DO - 10.1101/115485 SP - 115485 AU - Mark D. Humphries Y1 - 2017/01/01 UR - http://biorxiv.org/content/early/2017/03/10/115485.abstract N2 - Systems neuroscience is in a head-long rush to record from as many neurons at the same time as possible. As the brain computes and codes using neuron populations, it is hoped these data will uncover the fundamentals of neural computation. But with hundreds, thousands, or more simultaneously recorded neurons comes the inescapable problems of visualising, describing, and quantifying their interactions. Here I argue that network theory provides a set of scalable, analytical tools that already solve these problems. By treating neurons as nodes and their interactions as links, a single network can visualise and describe an arbitrarily large recording. I show that with this description we can quantify the effects of manipulating a neural circuit, track changes in population dynamics over time, and quantitatively define theoretical concepts of neural populations such as cell assemblies. Using network theory as a core part of analysing population recordings will thus provide both qualitative and quantitative advances to our understanding of neural computation. ER -