Summary: A new brain mapping study allows for individual predictions of the progression of frontotemporal dementia.
In a new study, UC San Francisco scientists used maps of brain connections to predict how brain atrophy would spread in individual patients with frontotemporal dementia (FTD), adding to growing evidence that the loss of brain cells associated with dementia spreads via the synaptic connections between established brain networks. The results advance scientists’ knowledge of how neurodegeneration spreads and could lead to new clinical tools to evaluate how well novel treatments slow or block the predicted trajectory of these diseases.
“Knowing how dementia spreads opens a window onto the biological mechanisms of the disease — what parts of our cells or neural circuits are most vulnerable,” said study lead author Jesse Brown, PhD, an assistant professor of neurology at the UCSF Memory and Aging Center and UCSF Weill Institute for Neurosciences. “You can’t really design a treatment until you know what you’re treating.”
FTD, the most common form of dementia in people under the age of 60, comprises a group of neurodegenerative conditions with diverse linguistic and behavioral symptoms. As in Alzheimer’s disease, the diversity of FTD symptoms reflects significant differences in how the neurodegenerative disease spreads through patients’ brains. This variability makes it difficult for scientists searching for cures to pin down the biological drivers of brain atrophy and for clinical trials to evaluate whether a novel treatment is making a difference in the progression of a patient’s disease.
Previous research by the study’s senior author, William Seeley, MD, a professor of neurology and pathology at the Memory and Aging Center and Weill Institute, set off a sea change in dementia research by showing that patterns of brain atrophy in many forms of dementia map closely onto well-known brain networks — groups of functionally related brain regions that work cooperatively via their synaptic connections, sometimes over long distances. In other words, Seeley’s work proposed that neurodegenerative diseases don’t spread evenly in all directions like a tumor, but can jump from one part of the brain to another along the anatomical circuits that wire these networks together.
In their new study — published October 14 in Neuron — Brown, Seeley and colleagues provided further evidence supporting this idea by examining how well neural network maps based on brain scans in healthy individuals could predict the spread of brain atrophy in FTD patients over the course of a year.
The researchers recruited 42 patients at the UCSF Memory and Aging Center with behavioral variant fronto-temporal dementia (bvFTD), a form of FTD that causes patients to exhibit inappropriate social behaviors, and 30 patients with semantic variant primary progressive aphasia (svPPA), a form of FTD that mainly impacts patients’ language abilities. In their first visits to UCSF, each of these patients underwent a “baseline” MRI scan to assess the extent of existing brain degeneration and then had a follow-up scan about a year later to measure how their disease had progressed.
The researchers first estimated where the brain atrophy seen in each patient’s baseline scans had begun, based on the hypothesis that brain degeneration begins in some particularly vulnerable location, then spreads out to anatomically connected brain regions. To do this, the researchers built standardized maps of the main functional partners of 175 different brain regions based on functional MRI (fMRI) scans of 75 healthy adults. They then identified which of these networks best matched the pattern of brain atrophy seen in a given FTD patient’s baseline brain scans, and defined that network’s central hub as the likely epicenter of the patient’s degeneration.
They then used the same standardized connectivity maps to predict where the patient’s brain atrophy was most likely to have spread in the follow-up scans done one year later, and compared the accuracy of these predictions to others that didn’t take functional network connectivity into account.
They found that two particular connectivity measures significantly improved their predictions of a given brain region’s chances of developing brain atrophy between the baseline and follow-up brain scans. One, called “shortest path to the epicenter,” captured the number of synaptic “steps” that region was from the estimated disease epicenter — essentially the number of links in the neural chain connecting the two areas — while the other, called “nodal hazard,” represented how many regions connected to a given region were already experiencing significant atrophy.
“It’s like with an infectious disease, where your chances of becoming infected can be predicted by how many degrees of separation you have from ‘Patient Zero’ but also by how many people in your immediate social network are already sick,” Brown said.
The researchers showed that on average these two measures of network connectivity did better at predicting the spread of disease to a new brain region than its simple straight-line distance from a patient’s existing atrophy. In many cases the disease completely bypassed brain areas that were adjacent but not anatomically connected to already-atrophied regions, instead jumping to more functionally linked regions.
Although this method shows great promise, the researchers emphasize that it is not yet ready for clinical use. They hope to improve the accuracy of their predictions by — among other approaches — using individualized network maps for each patient rather than using average connectivity maps, and by developing more specialized prediction models for particular subtypes of FTD.
In addition to the biological insights the discovery provides about the mechanisms of spreading brain atrophy in FTD, which will inform ongoing efforts to develop treatments, the researchers also hope the findings will lead to improved metrics for evaluating therapies already entering clinical trials — for instance by giving trial scientists early insights into whether the treatment is altering a predicted course of disease progression. Researchers could also use better predictions of how atrophy will spread through the brain to help prepare patients and their families for the symptoms they are likely to experience as their disease progresses.
“We are excited about this result because it represents an important first step toward a more precision medicine type of approach to predicting progression and measuring treatment effects in neurodegenerative disease,” Seeley said.
In the future, Brown said, scientists might be able to develop therapies that specifically target the likely next site of disease and perhaps prevent atrophy from spreading from one region to another.
“Just like epidemiologists rely on models of how infectious diseases spread to develop interventions targeted to key hubs or choke points,” Brown said. “Neurologists need to understand the underlying biological mechanisms of neurodegeneration to develop ways of slowing or halting the spread of the disease.”
Authors: Jesse Brown, PhD, an assistant professor of neurology at the UCSF Memory and Aging Center was the study’s lead author. William Seeley, MD, a professor of neurology and pathology at the UCSF Memory and Aging Center, was the study’s senior and corresponding author.
Other study authors were Jersey Deng, John Neuhaus, Isabel Sible, Ana Sias, Suzee Lee, John Kornak, Gabe Marx, Anna Karydas, Salvatore Spina, Lea Grinberg, Joel Kramer, Maria Luisa Gorno-Tempini, Bruce Miller, Howard Rosen, of UCSF; and Giovanni Coppola, and Dan Geschwind of UCLA.
Funding: The research was supported by the National Institutes of Health (NIH) (K01AG055698, P50AG023501, P01AG019724), the Tau Consortium, the Bluefield Project to Cure FTD, and the Larry L. Hillblom Network Grant for the Prevention of Age-Associated Cognitive Decline (2014-A-004-NET).
Disclosures: The authors declare no competing interests.
Nick Weiler – UCSF
The image is in the public domain.
Original Research: Closed access
“Patient-Tailored, Connectivity-Based Forecasts of Spreading Brain Atrophy”. William Seeley et al.
Patient-Tailored, Connectivity-Based Forecasts of Spreading Brain Atrophy
• Patient-tailored “epicenters” identified
• Connectivity-based model can predict longitudinal spread of atrophy
• Generalized additive model shows nonlinear spatial and temporal progression
Neurodegenerative diseases appear to progress by spreading via brain connections. Here we evaluated this transneuronal degeneration hypothesis by attempting to predict future atrophy in a longitudinal cohort of patients with behavioral variant frontotemporal dementia (bvFTD) and semantic variant primary progressive aphasia (svPPA). We determined patient-specific “epicenters” at baseline, located each patient’s epicenters in the healthy functional connectome, and derived two region-wise graph theoretical metrics to predict future atrophy: (1) shortest path length to the epicenter and (2) nodal hazard, the cumulative atrophy of a region’s first-degree neighbors. Using these predictors and baseline atrophy, we could accurately predict longitudinal atrophy in most patients. The regions most vulnerable to subsequent atrophy were functionally connected to the epicenter and had intermediate levels of baseline atrophy. These findings provide novel, longitudinal evidence that neurodegeneration progresses along connectional pathways and, further developed, could lead to network-based clinical tools for prognostication and disease monitoring.