Funded Projects

Browse wide-ranging research at the frontiers of neuroscience supported by Wu Tsai Neurosciences Institute grants, awards, and training fellowships.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2016
A principled investigation into the heterogeneous coding properties of medial entorhinal cortex that support accurate spatial navigation

Navigation through an environment to a remembered location is a critical skill we use every day. How does our brain accomplish such a task? Over the last few decades, several lines of evidence have suggested that a brain region called medial entorhinal cortex (MEC) supports navigation by encoding information our location and movement within an environment.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2016
Understanding why neurons die in disease

Many neurological diseases feature the death of neurons, but the mechanisms that mediate cell death in these disorders are unknown. Astrogliosis, the response of a cell-type called “astrocytes” to injury, is common to most diseases of the central nervous system (CNS), and recent studies in our lab suggest that some reactive astrocytes may release a protein that is potently toxic to neurons.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2015
Understanding cellular responses induced by chronic implantation of electrodes using a novel human neural differentiation platform

Electrodes implanted in the brain have great potential, with applications in neurodegenerative disease, brain-computer interfaces, and more. However, the presence of electrodes in brain tissue causes a response known as gliosis, in which a scar forms around the electrode, reducing its effectiveness and access to neurons.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2017
Engineering versatile deep neural networks that model cortical flexibility

In the course of everyday functioning, animals (including humans) are constantly faced with real-world environments in which they are required to shift unpredictably between multiple, sometimes unfamiliar, tasks. But how brains support this rapid adaptation of decision making schema, and how they allocate resources towards learning novel tasks is largely unknown both neuroscientifically and algorithmically.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2018
Deep brain microstimulation for memory recovery

Yi Lui's project aims to use deep brain microstimulation (DBMS), which causes even less brain damage and has higher spatial resolution than DBS, for memory recovery.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2018
Synaptic rules and circuit architectures for learning from feedback

Dr. Brandon Jay Bhasin will use engineering principles from modern control theory, experimental neuroscience and computational neuroscience to significantly advance understanding of how feedback driven plasticity in a tractable neural circuit is orchestrated across multiple synaptic sites and over various timescales so that circuit dynamics are changed to improve performance.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2019
Weak supervision in medical multi-modal time series

The project aims to alleviate this bottleneck by developing a weak supervision system that optimally deals with time-series data and takes advantage of multiple data modalities.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2021
Elucidating mechanisms of microglial tiling

In a process called tiling, homeostatic microglia homogenously organize in a grid-like fashion to achieve efficient surveillance of the brain. The molecular mechanisms underlying tiling are unknown. I hypothesize that microglia use cell-surface proteins to sense density of neighboring microglia, thereby contributing to constant cell-to-cell distances.

Wu Tsai Neurosciences Institute
SIGF - Graduate Fellowship
2021
Inference via Abstraction: A framework for efficient Bayesian cognition

We propose a novel framework for efficient Bayesian cognition called Inference via Abstraction (IvA), which learns to approximate complex world models with simpler abstractions that capture main dependencies, but leverage structure in the prior distribution for efficient inference. We instantiate IvA with a combination of probabilistic graphical models and deep neural networks.