Head Motion in Diffusion Magnetic Resonance Imaging: Quantification, Mitigation, and Structural Associations in Large, Cross-Sectional Datasets Across the Lifespan.

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Tác giả: Marilyn Albert, Derek Archer, Konstantinos Arfanakis, Lisa L Barnes, Laura Barquero, Lori L Beason-Held, David A Bennett, Laurie Cutting, Micah D'archangel, Chenyu Gao, Timothy Hohman, Nazirah Mohd Khairi, Michael E Kim, Bennett A Landman, Daniel Moyer, Nancy Newlin, Tin Nguyen, Karthik Ramadass, Susan M Resnick, Francois Rheault, Viljami Sairanen, Kurt G Schilling, Julie Schneider, Ema Topolnjak, Sophia Vinci-Booher

Ngôn ngữ: eng

Ký hiệu phân loại: 571.88 Miscellaneous topics in reproduction

Thông tin xuất bản: United States : Human brain mapping , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 65039

 Head motion during diffusion magnetic resonance imaging (MRI) scans can cause numerous artifacts and biases subsequent quantification. However, a thorough characterization of motion across multiple scans, cohorts, and consortiums has not been performed. To address this, we designed a study with three aims. First, we aimed to characterize subject motion across several large cohorts, utilizing 13 cohorts comprised of 16,995 imaging sessions (age 0.1-100 years, mean age = 63 years
  7220 females
  3175 cognitively impaired adults
  471 developmentally delayed children) to describe the magnitude and directions of subject movement. Second, we aimed to investigate whether state-of-the-art diffusion preprocessing pipelines mitigate biases in quantitative measures of microstructure and connectivity by taking advantage of datasets with scan-rescan acquisitions and ask whether there are detectable differences between the same subjects when scans and rescans have differing levels of motion. Third, we aimed to investigate whether there are structural connectivity differences between movers and non-movers. We found that (1) subjects typically move 1-2 mm/min with most motion as translation in the anterior-posterior direction and rotation around the right-left axis
  (2) Modern preprocessing pipelines can effectively mitigate motion to the point where biases are not detectable with current analysis techniques
  and (3) There are no apparent differences in microstructure or macrostructural connections in participants who exhibit high motion versus those that exhibit low motion. Overall, characterizing motion magnitude and directions, as well as motion correlates, informs and improves motion mitigation strategies and image processing pipelines.
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