Machine Learning and Prediction in Fetal, Infant, and Toddler Neuroimaging: A Review and Primer.

Journal: Biological psychiatry
Published Date:

Abstract

Predictive models in neuroimaging are increasingly designed with the intent to improve risk stratification and support interventional efforts in psychiatry. Many of these models have been developed in samples of children school-aged or older. Nevertheless, despite growing evidence that altered brain maturation during the fetal, infant, and toddler (FIT) period modulates risk for poor mental health outcomes in childhood, these models are rarely implemented in FIT samples. Applications of predictive modeling in children of these ages provide an opportunity to develop powerful tools for improved characterization of the neural mechanisms underlying development. To facilitate the broader use of predictive models in FIT neuroimaging, we present a brief primer and systematic review on the methods used in current predictive modeling FIT studies. Reflecting on current practices in more than 100 studies conducted over the past decade, we provide an overview of topics, modalities, and methods commonly used in the field and under-researched areas. We then outline ethical and future considerations for neuroimaging researchers interested in predicting health outcomes in early life, including researchers who may be relatively new to either advanced machine learning methods or using FIT data. Altogether, the last decade of FIT research in machine learning has provided a foundation for accelerating the prediction of early-life trajectories across the full spectrum of illness and health.

Authors

  • Dustin Scheinost
    Department of Biomedical Engineering, Yale University, New Haven, CT.
  • Angeliki Pollatou
    Department of Psychiatry, Columbia University Irving Medical Center, New York, New York.
  • Alexander J Dufford
    Department of Radiology and Biomedical Imaging, Yale School of Medicine, New Haven, Connecticut.
  • Rongtao Jiang
    Department of Radiology & Biomedical Imaging, Yale School of Medicine, New Haven, CT.
  • Michael C Farruggia
    Interdepartmental Neuroscience Program, Yale University, New Haven, Connecticut.
  • Matthew Rosenblatt
    Department of Biomedical Engineering, Yale University, New Haven, CT.
  • Hannah Peterson
  • Raimundo X Rodriguez
    Interdepartmental Neuroscience Program, Yale University, New Haven, Connecticut.
  • Javid Dadashkarimi
    Department of Computer Science, Yale University, New Haven, Connecticut.
  • Qinghao Liang
    Department of Biomedical Engineering, Yale University, New Haven, Connecticut.
  • Wei Dai
    Department of Intensive Care Unit, The First Affiliated Hospital of Jiangxi Medical College, Shangrao, Jiangxi, China.
  • Maya L Foster
    Department of Biomedical Engineering, Yale University, New Haven, Connecticut.
  • Chris C Camp
    Interdepartmental Neuroscience Program, Yale University, New Haven, Connecticut.
  • Link Tejavibulya
    Interdepartmental Neuroscience Program, Yale University, New Haven, CT.
  • Brendan D Adkinson
    Interdepartmental Neuroscience Program, Yale University, New Haven, Connecticut.
  • Huili Sun
    Department of Biomedical Engineering, Yale University, New Haven, Connecticut.
  • Jean Ye
    Interdepartmental Neuroscience Program, Yale University, New Haven, Connecticut.
  • Qi Cheng
    Institute of Intelligent System and Bioinformatics, College of Intelligent Systems Science and Engineering, Harbin Engineering University, Harbin, China.
  • Marisa N Spann
    Department of Psychiatry, Columbia University Irving Medical Center, New York, New York.
  • Max Rolison
    Child Study Center, Yale School of Medicine, New Haven, Connecticut.
  • Stephanie Noble
    Department of Radiology & Biomedical Imaging, Yale School of Medicine, New Haven, CT.
  • Margaret L Westwater
    Department of Radiology and Biomedical Imaging, Yale School of Medicine, New Haven, Connecticut.