4.7 Article

Resting-state magnetoencephalography source magnitude imaging with deep-learning neural network for classification of symptomatic combat-related mild traumatic brain injury

Journal

HUMAN BRAIN MAPPING
Volume 42, Issue 7, Pages 1987-2004

Publisher

WILEY
DOI: 10.1002/hbm.25340

Keywords

delta rhythm; gamma rhythm; machine learning; military service members; neuropsychology; resting-state MEG; traumatic brain injury; Veterans

Funding

  1. U.S. Department of Veterans Affairs [I01-CX002035-01, NURC-007-19S, I01-CX000499, MHBA-010-14F, I01-RX001988, B1988-I, NURC-022-10F, NEUC-044-06S, I01-CX000146]
  2. Naval Medical Research Center's Advanced Medical Development program (Naval Medical Logistics Command) [N62645-11-C-4037]
  3. Congressionally Directed Medical Research Programs / Department of Defense [W81XWH-16-1-0015]
  4. University of California Research Initiatives Grant [MRP-17-454755]

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Combat-related mild traumatic brain injury is a major cause of disabilities in Veterans and military personnel. A novel deep-learning neural network method, 3D-MEGNET, was developed and applied to resting-state magnetoencephalography data, showing excellent diagnostic accuracy in distinguishing cmTBI individuals from healthy controls. The all-frequency model outperformed individual band models, indicating the importance of optimal combinations of regions and frequencies in neuroimaging for behavioral relevance.
Combat-related mild traumatic brain injury (cmTBI) is a leading cause of sustained physical, cognitive, emotional, and behavioral disabilities in Veterans and active-duty military personnel. Accurate diagnosis of cmTBI is challenging since the symptom spectrum is broad and conventional neuroimaging techniques are insensitive to the underlying neuropathology. The present study developed a novel deep-learning neural network method, 3D-MEGNET, and applied it to resting-state magnetoencephalography (rs-MEG) source-magnitude imaging data from 59 symptomatic cmTBI individuals and 42 combat-deployed healthy controls (HCs). Analytic models of individual frequency bands and all bands together were tested. The All-frequency model, which combined delta-theta (1-7 Hz), alpha (8-12 Hz), beta (15-30 Hz), and gamma (30-80 Hz) frequency bands, outperformed models based on individual bands. The optimized 3D-MEGNET method distinguished cmTBI individuals from HCs with excellent sensitivity (99.9 +/- 0.38%) and specificity (98.9 +/- 1.54%). Receiver-operator-characteristic curve analysis showed that diagnostic accuracy was 0.99. The gamma and delta-theta band models outperformed alpha and beta band models. Among cmTBI individuals, but not controls, hyper delta-theta and gamma-band activity correlated with lower performance on neuropsychological tests, whereas hypo alpha and beta-band activity also correlated with lower neuropsychological test performance. This study provides an integrated framework for condensing large source-imaging variable sets into optimal combinations of regions and frequencies with high diagnostic accuracy and cognitive relevance in cmTBI. The all-frequency model offered more discriminative power than each frequency-band model alone. This approach offers an effective path for optimal characterization of behaviorally relevant neuroimaging features in neurological and psychiatric disorders.

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