Research
I am interested in studying developmental trajectories of cognition and mental health and how these paths interact. My work focuses on investigating how the hormonal changes that accompany adolescence and the pubertal transition influence the development of higher-order cognitive processes, such as decision making and cognitive control, and how this may confer risk for internalizing disorders, such as depression.
How Brain-Hormone Interactions Impact Resting Regional Cerebral Blood Flow (2023-2024)
In Dr. Karen Berman’s lab, I worked to better characterize the intricate link between the endocrine and nervous systems. To measure brain function, I used PET imaging to extract measures of resting regional cerebral blood flow (rCBF) as well as an MRI method known as Arterial Spin Labeling. Resting rCBF has been shown to exhibit robust sex differences, as well as abnormalities in several neuropsychiatric illnesses where in sex differences occur, such as major depression and schizophrenia. The goal of my project was to to evaluate the effects of hormone condition on brain function using measures of rCBF extracted from PET resting scans of healthy subjects done at the NIH Clinical Center. Our subjects included men, naturally cycling women, and women using oral contraceptives.
Functional MRI Connectivity Analyses (2021-2023)
During my time in Dr. Peter Bandettini’s lab, I worked on a multitude of projects analyzing functional connectivity in resting-state fMRI and how to leverage connectivity information to enhance brain-behavior predictions. The goal of my first project was to investigate the source of individual variability in resting-state fMRI in healthy adults. We hypothesized that a potential source of variability during rest is ‘ongoing cognition’ that subjects engage in over the course of the scan (a, b). Ongoing cognition refers to everything from thinking about what to make for dinner to stressing about an upcoming meeting with your boss to daydreaming about a vacation and more. We used a publicly available dataset that consisted of multiple resting-state scans per subject as well as responses to a post-scan questionnaire that asked subjects to characterize their in-scanner experience. We found significant associations between distinct patterns of thought and functional connectivity patterns, highlighting the potential need to account for these effects when examining resting-state fMRI data.
Next, I sought to investigate how to leverage connectivity information to boost brain-behavior predictions. I employed a new technique to compute ‘edge time series’ from traditional ROI time series to capture the co-fluctuation between any given pair of nodes at each point in time across the whole scan. Then, to summarize these co-fluctuations overtime, we computed multiple summary metrics, including time-insensitive metrics, such as mean, and time-sensitive metrics, such as autocorrelation and dynamic entropy, to form new ROIxROI matrices for each subject and evaluated their predictive ability. We found that mean co-fluctuation, i.e. static functional connectivity, proves to be the best predictor of cognitive traits using this dataset, so far!
You can find more information about my research in the Poster Presentations and Publications tabs.