Detection of Mild Traumatic Brain Injury by Machine Learning Classification Using Resting State Functional Network Connectivity and Fractional Anisotropy

被引:94
|
作者
Vergara, Victor M. [1 ,2 ]
Mayer, Andrew R. [1 ,2 ,3 ]
Damaraju, Eswar [1 ,2 ,4 ]
Kiehl, Kent A. [1 ,2 ,5 ]
Calhoun, Vince [1 ,2 ,4 ]
机构
[1] Mind Res Network, 1101 Yale Blvd NE, Albuquerque, NM 87106 USA
[2] Lovelace Biomed & Environm Res Inst, Albuquerque, NM USA
[3] Univ New Mexico, Sch Med, Dept Neurol, Albuquerque, NM 87131 USA
[4] Univ New Mexico, Dept ECE, Albuquerque, NM 87131 USA
[5] Univ New Mexico, Dept Psychol, Albuquerque, NM 87131 USA
基金
美国国家科学基金会;
关键词
diffusion tensor imaging; magnetic resonance imaging; traumatic brain injury; STRUCTURAL CONNECTIVITY; MRI; FMRI; SCHIZOPHRENIA; ABNORMALITIES; DISRUPTION; COGNITION; DISORDER; THERAPY; TIME;
D O I
10.1089/neu.2016.4526
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Traumatic brain injury (TBI) may adversely affect a person's thinking, memory, personality, and behavior. While mild TBI (mTBI) diagnosis is challenging, there is a risk for long-term psychiatric, neurologic, and psychosocial problems in some patients that motivates the search for new and better biomarkers. Recently, diffusion magnetic resonance imaging (dMRI) has shown promise in detecting mTBI, but its validity is still being investigated. Resting state functional network connectivity (rsFNC) is another approach that is emerging as a promising option for the diagnosis of mTBI. The present work investigated the use of rsFNC for mTBI detection compared with dMRI results on the same cohort. Fifty patients with mTBI (25 males) and age-sex matched healthy controls were recruited. Features from dMRI were obtained using all voxels, the enhanced Z-score microstructural assessment for pathology, and the distribution corrected Z-score. Features based on rsFNC were obtained through group independent component analysis and correlation between pairs of resting state networks. A linear support vector machine was used for classification and validated using leave-one-out cross validation. Classification achieved a maximum accuracy of 84.1% for rsFNC and 75.5% for dMRI and 74.5% for both combined. A t test analysis revealed significant increase in rsFNC between cerebellum versus sensorimotor networks and between left angular gyrus versus precuneus in subjects with mTBI. These outcomes suggest that inclusion of both common and unique information is important for classification of mTBI. Results also suggest that rsFNC can yield viable biomarkers that might outperform dMRI and points to connectivity to the cerebellum as an important region for the detection of mTBI.
引用
收藏
页码:1045 / 1053
页数:9
相关论文
共 50 条
  • [1] Multiple resting state network functional connectivity abnormalities in mild traumatic brain injury
    Michael C. Stevens
    David Lovejoy
    Jinsuh Kim
    Howard Oakes
    Inam Kureshi
    Suzanne T. Witt
    Brain Imaging and Behavior, 2012, 6 : 293 - 318
  • [2] Multiple resting state network functional connectivity abnormalities in mild traumatic brain injury
    Stevens, Michael C.
    Lovejoy, David
    Kim, Jinsuh
    Oakes, Howard
    Kureshi, Inam
    Witt, Suzanne T.
    BRAIN IMAGING AND BEHAVIOR, 2012, 6 (02) : 293 - 318
  • [3] Atypical resting state functional connectivity in mild traumatic brain injury
    Amir, Joelle
    Nair, Jay Kumar Raghavan
    Del Carpio-O'Donovan, Raquel
    Ptito, Alain
    Chen, Jen-Kai
    Chankowsky, Jeffrey
    Tinawi, Simon
    Lunkova, Ekaterina
    Saluja, Rajeet Singh
    BRAIN AND BEHAVIOR, 2021, 11 (08):
  • [4] Exploring Variations in Functional Connectivity of the Resting State Default Mode Network in Mild Traumatic Brain Injury
    Nathan, Dominic E.
    Oakes, Terrence R.
    Yeh, Ping Hong
    French, Louis M.
    Harper, Jamie F.
    Liu, Wei
    Wolfowitz, Rachel D.
    Wang, Bin Quan
    Graner, John L.
    Riedy, Gerard
    BRAIN CONNECTIVITY, 2015, 5 (02) : 102 - 114
  • [5] Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
    Vedaei, Faezeh
    Mashhadi, Najmeh
    Zabrecky, George
    Monti, Daniel
    Navarreto, Emily
    Hriso, Chloe
    Wintering, Nancy
    Newberg, Andrew B.
    Mohamed, Feroze B.
    FRONTIERS IN NEUROSCIENCE, 2023, 16
  • [6] Dynamic functional network connectivity discriminates mild traumatic brain injury through machine learning
    Vergara, Victor M.
    Mayer, Andrew R.
    Kiehl, Kent A.
    Calhoun, Vince D.
    NEUROIMAGE-CLINICAL, 2018, 19 : 30 - 37
  • [7] Detecting Mild Traumatic Brain Injury Using Resting State Magnetoencephalographic Connectivity
    Vakorin, Vasily A.
    Doesburg, Sam M.
    da Costa, Leodante
    Jetly, Rakesh
    Pang, Elizabeth W.
    Taylor, Margot J.
    PLOS COMPUTATIONAL BIOLOGY, 2016, 12 (12)
  • [8] ALTERATIONS IN RESTING-STATE FUNCTIONAL CONNECTIVITY AFTER MILD TRAUMATIC BRAIN INJURY
    Shumskaya, E.
    Andriessen, T. M. J. C.
    Norris, D. G.
    Vos, P. E.
    JOURNAL OF NEUROTRAUMA, 2009, 26 (08) : A52 - A52
  • [9] Resting State Functional Connectivity Correlates of Fatigue Following Mild Traumatic Brain Injury
    Lewis, Jeffrey
    Knutson, Kristine
    Gotts, Stephen
    Wassermann, Eric
    NEUROLOGY, 2018, 90
  • [10] Resting-state functional connectivity as a biomarker of aggression in mild traumatic brain injury
    Dailey, Natalie S.
    Smith, Ryan
    Vanuk, John R.
    Raikes, Adam C.
    Killgore, William D. S.
    NEUROREPORT, 2018, 29 (16) : 1413 - 1417