The human brain is responsible for critical functions, including perception, memory, language, thinking, consciousness, and emotions.
To understand how the brain works, scientists often use neuroimaging to record participants鈥 brain activity when the brain is performing a task or at rest. Brain functions are systematically organized on the cerebral cortex, the outer layer of the human brain. Researchers often use what is called a 鈥渃ortical surface model鈥 to analyze neuroimaging data and study the functional organization of the human brain.
Each brain has a different shape. To analyze neuroimaging data of multiple individuals, researchers need to register the data to the same brain template, which enables identifying the same anatomical location on different brains, even though brains have different shapes. These locations are known as 鈥渧ertices.鈥
Over the past 25 years, there have been several iterations of such templates, and the most commonly used cortical surface templates today are based on data collected from 40 brains.
Now, 天美麻豆 researchers have created a new cortical surface template called 鈥淥penNeuro Average,鈥 or 鈥渙navg鈥 for short, which provides greater accuracy and efficiency in analyzing neuroimaging data.
The findings are published in .
鈥淥ur cortical surface template, onavg, is the first to sample different parts of the brain uniformly,鈥 says lead author , a postdoctoral fellow and member of the in the at 天美麻豆. 鈥淚t鈥檚 a less biased map that is more computationally efficient.鈥
The team built the template based on the cortical anatomy of 1,031 brains from 30 datasets in OpenNeuro, a free and open-source platform for sharing neuroimaging data. According to the co-authors, it is also the first cortical surface template based on the geometric shape of the brain.
In contrast, previous templates sampled different parts of the cortex unevenly and were based on a sphere-like shape to define the location of cortical vertices, which resulted in biases in the distribution of vertices.
With the onavg template, less data is required for analysis.
鈥淚t鈥檚 very expensive to obtain data through neuroimaging and for some clinical populations鈥 such as if you鈥檙e studying a rare disease鈥攊t can be difficult or impossible to acquire a large amount of data, so the ability to access better results with less data is an asset,鈥 says Feilong. 鈥淲ith more efficient data usage, our template can potentially increase the replicability and reproducibility of results in academic studies.鈥
鈥淚 think that onavg represents a methodological advancement that has broad applications across all aspects of cognitive and clinical neuroscience,鈥 says co-author, a psychological and brain sciences professor and former director of the Center for Cognitive Neuroscience at 天美麻豆.
He says their cortical surface template could be used for studies on vision, hearing, language, and individual differences, as well as on disorders such as autism and neurodegenerative diseases like Alzheimer鈥檚 and Parkinson鈥檚.
鈥淲e think it鈥檚 going to have a broad and deep impact in the field,鈥 says Haxby.
Jiahui Guo, a former postdoctoral fellow in psychological and brain sciences at 天美麻豆 and assistant professor in the School of Behavioral and Brain Sciences at the University of Texas at Dallas, and Maria Ida Gobbini, an associate professor in the Department of Medical and Surgical Sciences at the University of Bologna, also contributed to the study.