Could a brain "growth chart" spot attention problems early? New study suggests so
News Apr 14, 2016
Brain imaging to measure development of a child's brain connectivity networks may help predict who is at risk -
Want to know if your child’s height and weight are on track? Check the growth chart that the doctor gives you after each yearly checkup.
Want to know if your child’s brain is on track for healthy attention abilities? Someday, your doctor might have a growth chart for that too.
See Also: Inside the adult ADHD brain
New research from the University of Michigan (U-M) Medical School suggests that it might be possible to create a growth chart of brain networks that could identify early signs of attention difficulties and, potentially, attention deficit hyperactivity disorder.
The team created the experimental growth chart by mapping the development of brain networks in more than 500 children and teens. They found networks are underdeveloped in those who have attention difficulties.
While it’s far too soon to start offering such charting to families, future development of the technique could mean better chances for children to get a firm diagnosis of ADHD sooner. It could also help track whether their ADHD treatment is improving their attention functioning, which can help them in school and life.
Growth Charts as Biomarkers
The research, published in JAMA Psychiatry, shows the potential for brain imaging “biomarkers” for attention problems. But the idea could extend to other psychological conditions.
Traditional growth charts show a child’s height and weight as points on curves that are based on data from hundreds of thousands of other children, and indicate normal, near-normal and problematic development.
Learn More: Utah study links rates of ADHD to altitude
“Growth charts enable a family and their physician to quickly spot problematic development, and when necessary, intervene appropriately,” said team leader and U-M psychiatrist Chandra Sripada, MD, PhD “In the future, we want to provide clinicians with the same sort of guidance about brain development that we can about things like height and weight.”
The researchers launched the growth-charting research after noticing a gap in the state of the science.
Lead author Daniel Kessler explains, “We knew that the ability to sustain attention for an extended time increases dramatically during childhood and adolescence. We also knew that over the same time period, there are big changes in brain networks involved in attention. We came up with the idea of growth charting as a way to test if these two patterns were related: Would children with underdeveloped brain networks also have more difficulty with attention?”
Along with colleague Michael Angstadt, MAS, the researchers used data from 519 children and teens who had genetic testing, brain imaging and tests of their cognitive development as part of the Philadelphia Neurodevelopmental Cohort based at the University of Pennsylvania.
The researchers created growth charts that reflected the configuration of what are called intrinsic connectivity networks—important units of functional brain organization. The way these networks interact may hold the key to healthy attention.
For example, one called the default mode network seems to be involved in daydreaming and inwardly focused thought, whereas another set of networks are involved in cognitively demanding tasks.
As we grow from children into adults, these two systems become more defined and separate, working in tandem like pistons: when one is on, the other turns off. But in children and those with attention difficulties, the “pistons” often misfire: the default mode network turns on and interrupts the other networks thereby interrupting attention.
The researchers who gathered the data that the growth chart is based on measured attention functioning using a standard test in which children had to respond to a sequence of letters and numbers on a computer screen. The Michigan researchers then compared the brain development seen on the scans to attention functioning.
It turned out they could actually predict how well a child would do on the attention test based on their place on (or off) the brain network growth chart. The children with ADHD symptoms, and those with the lowest performance for their age on the attention tests, were the furthest off the curve of brain network development.
“These brain network growth charts show real promise,” said Sripada, an assistant professor in the U-M Department of Psychiatry and Department of Philosophy. “But they are far away from being ready for clinical use.”
Future research paths
The research used advanced MRI imaging, but Sripada and his colleagues hope to develop ways to track network maturity using less-expensive techniques such as electroencephalography, or EEG.
They’re working with other U-M researchers, led by Mary Heitzeg, PhD, and Robert Zucker, PhD, to see if the growth charting method will be useful in the Adolescent Brain Cognitive Development study (ABCD for short) that will involve 10,000 teens over several years.
“The ABCD study is unprecedented in size and provides a real chance to develop definitive growth charts for brain networks,” explained Sripada. “We have the opportunity to understand how brain network development relates to a variety of outcomes, including cognition, emotion, personality, and behavior.”
Note: Material may have been edited for length and content. For further information, please contact the cited source.
Kessler D, Angstadt M, Sripada C. Growth Charting of Brain Connectivity Networks and the Identification of Attention Impairment in Youth. JAMA Psychiatry, Published Online April 13 2016. doi: 10.1001/jamapsychiatry.2016.0088
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