4.7 Article

Accounting for motion in resting-state fMRI: What part of the spectrum are we characterizing in autism spectrum disorder?

期刊

NEUROIMAGE
卷 257, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.119296

关键词

Causal inference; Confounding; Functional connectivity; Missing data; Sampling bias; Super learner; Targeted minimum loss based estimation; Motion quality control; Autism spectrum disorder

资金

  1. National Institute of Mental Health [R01 MH078160, R01 MH085328]
  2. National Institute of Neurological Disorders and Stroke [R01 NS048527, R01 NS096207-05]
  3. NIMH [K01 MH109766]
  4. Eunice Kennedy Shriver National Institute of Child Health & Human Develop-ment [U54 HD079123]
  5. NIH [1S10OD021648]
  6. National Institute of Biomedi-cal Imaging and Bioengineering [P41 EB015909]
  7. National Heart, Lung, and Blood Institute [R01 HL137808]

向作者/读者索取更多资源

Excluding high-motion participants can reduce the impact of motion in fMRI data, but it may introduce biases in the sample. This study aims to document the biases introduced by motion exclusion practices and propose a framework to address these biases. The results show that excluding high-motion autistic children leads to a sample with older age and less severe clinical profiles, and these children also exhibit differences in functional connectivity strength.
The exclusion of high-motion participants can reduce the impact of motion in functional Magnetic Resonance Imaging (fMRI) data. However, the exclusion of high-motion participants may change the distribution of clinically relevant variables in the study sample, and the resulting sample may not be representative of the population. Our goals are two-fold: 1) to document the biases introduced by common motion exclusion practices in functional connectivity research and 2) to introduce a framework to address these biases by treating excluded scans as a missing data problem. We use a study of autism spectrum disorder in children without an intellectual disability to illustrate the problem and the potential solution. We aggregated data from 545 children (8-13 years old) who participated in resting-state fMRI studies at Kennedy Krieger Institute (173 autistic and 372 typically developing) between 2007 and 2020. We found that autistic children were more likely to be excluded than typically developing children, with 28.5% and 16.1% of autistic and typically developing children excluded, respectively, using a lenient criterion and 81.0% and 60.1% with a stricter criterion. The resulting sample of autistic children with usable data tended to be older, have milder social deficits, better motor control, and higher intellectual ability than the original sample. These measures were also related to functional connectivity strength among children with usable data. This suggests that the generalizability of previous studies reporting naive analyses (i.e., based only on participants with usable data) may be limited by the selection of older children with less severe clinical profiles because these children are better able to remain still during an rs-fMRI scan. We adapt doubly robust targeted minimum loss based estimation with an ensemble of machine learning algorithms to address these data losses and the resulting biases. The proposed approach selects more edges that differ in functional connectivity between autistic and typically developing children than the naive approach, supporting this as a promising solution to improve the study of heterogeneous populations in which motion is common.

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