Author:
Seider Nicole A,Adeyemo Babatunde,Miller Ryland,Newbold Dillan J,Hampton Jacqueline M,Scheidter Kristen M,Rutlin Jerrel,Laumann Timothy O,Roland Jarod L,Montez David F,Van Andrew N,Zheng Annie,Marek Scott,Kay Benjamin P,Bretthorst G Larry,Schlaggar Bradley L,Greene Deanna J,Wang Yong,Petersen Steven E,Gordon Evan M,Snyder Abraham Z,Shimony Joshua S,Dosenbach Nico U F
Abstract
AbstractDiffusion tensor imaging (DTI) aims to non-invasively characterize the anatomy and integrity of the brain’s white matter fibers. To establish individual-specific precision approaches for DTI, we defined its reliability and accuracy as a function of data quantity and analysis method, using both simulations and highly sampled individual-specific data (927-1442 diffusion weighted images [DWIs] per individual). DTI methods that allow for crossing fibers (BedpostX [BPX], Q-Ball Imaging [QBI]) estimated excess fibers when insufficient data was present and when the data did not match the model priors. To reduce such overfitting, we developed a novel crossing-fiber diffusion imaging method, Bayesian Multi-tensor Model-selection (BaMM), that is designed for high-quality repeated sampling data sets. BaMM was robust to overfitting, showing high reliability and the relatively best crossing-fiber accuracy with increasing amounts of diffusion data. Thus, the choice of diffusion imaging analysis method is important for the success of individual-specific diffusion imaging. Importantly, for potential clinical applications of individual-specific precision DTI, such as deep brain stimulation (DBS), other forms of neuromodulation or neurosurgical planning, the data quantities required to achieve DTI reliability are lower than for functional MRI measures.
Publisher
Cold Spring Harbor Laboratory
Cited by
1 articles.
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