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An integrated finite element method and machine learning algorithm for brain morphology prediction

  • Poorya Chavoshnejad
  • , Liangjun Chen
  • , Xiaowei Yu
  • , Jixin Hou
  • , Nicholas Filla
  • , Dajiang Zhu
  • , Tianming Liu
  • , Gang Li
  • , Mir Jalil Razavi
  • , Xianqiao Wang
  • State University of New York Binghamton University
  • University of North Carolina at Chapel Hill
  • University of Texas at Arlington
  • University of Georgia

Research output: Contribution to journalArticlepeer-review

7 Scopus citations

Abstract

The human brain development experiences a complex evolving cortical folding from a smooth surface to a convoluted ensemble of folds. Computational modeling of brain development has played an essential role in better understanding the process of cortical folding, but still leaves many questions to be answered. A major challenge faced by computational models is how to create massive brain developmental simulations with affordable computational sources to complement neuroimaging data and provide reliable predictions for brain folding. In this study, we leveraged the power of machine learning in data augmentation and prediction to develop a machine-learning-based finite element surrogate model to expedite brain computational simulations, predict brain folding morphology, and explore the underlying folding mechanism. To do so, massive finite element method (FEM) mechanical models were run to simulate brain development using the predefined brain patch growth models with adjustable surface curvature. Then, a GAN-based machine learning model was trained and validated with these produced computational data to predict brain folding morphology given a predefined initial configuration. The results indicate that the machine learning models can predict the complex morphology of folding patterns, including 3-hinge gyral folds. The close agreement between the folding patterns observed in FEM results and those predicted by machine learning models validate the feasibility of the proposed approach, offering a promising avenue to predict the brain development with given fetal brain configurations.

Original languageEnglish
Pages (from-to)9354-9366
Number of pages13
JournalCerebral Cortex
Volume33
Issue number15
DOIs
StatePublished - Aug 1 2023

Keywords

  • brain development
  • computational modeling
  • cortical folding
  • machine learning
  • surrogate model

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