4.7 Article

A Machine Learning Enhanced Mechanistic Simulation Framework for Functional Deficit Prediction in TBI

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fbioe.2021.587082

关键词

traumatic brain injury; resting state functional magnetic resonance imaging; default mode network; finite element simulation; machine learning

资金

  1. University of Oxford
  2. EPSRC [EP/N020987/1]
  3. NIHR Oxford Biomedical Research Centre
  4. University of Oxford Wellcome Centre for Integrative Neuroimaging
  5. EPSRC [EP/N020987/1] Funding Source: UKRI

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Resting state functional magnetic resonance imaging (rsfMRI) and underlying brain networks offer a promising avenue for evaluating functional deficits without active patient participation. A numerical framework has been proposed to predict resting state network disruption following head impact, utilizing precalculated cases and machine learning layer for accurate prediction. Although more clinical data is required for full validation, this approach opens the door to on-the-fly prediction of rsfMRI alterations and reverse-engineered accident reconstruction through rsfMRI measurements.
Resting state functional magnetic resonance imaging (rsfMRI), and the underlying brain networks identified with it, have recently appeared as a promising avenue for the evaluation of functional deficits without the need for active patient participation. We hypothesize here that such alteration can be inferred from tissue damage within the network. From an engineering perspective, the numerical prediction of tissue mechanical damage following an impact remains computationally expensive. To this end, we propose a numerical framework aimed at predicting resting state network disruption for an arbitrary head impact, as described by the head velocity, location and angle of impact, and impactor shape. The proposed method uses a library of precalculated cases leveraged by a machine learning layer for efficient and quick prediction. The accuracy of the machine learning layer is illustrated with a dummy fall case, where the machine learning prediction is shown to closely match the full simulation results. The resulting framework is finally tested against the rsfMRI data of nine TBI patients scanned within 24 h of injury, for which paramedical information was used to reconstruct in silico the accident. While more clinical data are required for full validation, this approach opens the door to (i) on-the-fly prediction of rsfMRI alterations, readily measurable on clinical premises from paramedical data, and (ii) reverse-engineered accident reconstruction through rsfMRI measurements.

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