Tractography-Based Score for Learning Effective Connectivity From Multimodal Imaging Data Using Dynamic Bayesian Networks

被引:13
|
作者
Dang, Shilpa [1 ]
Chaudhury, Santanu [1 ,2 ]
Lall, Brejesh [1 ]
Roy, Prasun K. [3 ]
机构
[1] Indian Inst Technol Delhi, Dept Elect Engn, New Delhi 110016, India
[2] Cent Elect Engn Res Inst, Pilani, Rajasthan, India
[3] Natl Brain Res Ctr, Gurugram, India
关键词
Anatomical connectivity; DTI; effective connectivity; dynamic Bayesian networks; fMRI; scoring function; structure learning; tractography; DEFAULT MODE NETWORK; PROBABILISTIC DIFFUSION TRACTOGRAPHY; STATE FUNCTIONAL CONNECTIVITY; STRUCTURAL CONNECTIVITY; FMRI DATA; VENTRAL HIPPOCAMPUS; BRAIN CONNECTIVITY; GRANGER CAUSALITY; MRI DATA; ARCHITECTURE;
D O I
10.1109/TBME.2017.2738035
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective: Effective connectivity (EC) is the methodology for determining functional-integration among the functionally active segregated regions of the brain. By definition [1] EC is "the causal influence exerted by one neuronal group on another" which is constrained by anatomical connectivity (AC) (axonal connections). AC is necessary for EC but does not fully determine it, because synaptic communication occurs dynamically in a context-dependent fashion. Although there is a vast emerging evidence of structure-function relationship using multimodal imaging studies, till date only a few studies have done joint modeling of the two modalities: functional MRI (fMRI) and diffusion tensor imaging (DTI). We aim to propose a unified probabilistic framework that combines information from both sources to learn EC using dynamic Bayesian networks (DBNs). Method: DBNs are probabilistic graphical temporal models that learn EC in an exploratory fashion. Specifically, we propose a novel anatomically informed (AI) score that evaluates fitness of a given connectivity structure to both DTI and fMRI data simultaneously. The AI score is employed in structure learning of DBN given the data. Results: Experiments with synthetic-data demonstrate the face validity of structure learning with our AI score over anatomically uninformed counterpart. Moreover, real-data results are cross-validated by performing classification-experiments. Conclusion: EC inferred on real fMRI-DTI datasets is found to be consistent with previous literature and show promising results in light of the AC present as compared to other classically used techniques such as Granger-causality. Significance: Multimodal analyses provide a more reliable basis for differentiating brain under abnormal/diseased conditions than the single modality analysis.
引用
收藏
页码:1057 / 1068
页数:12
相关论文
共 50 条
  • [21] Effective deep learning based multimodal sentiment analysis from unstructured big data
    Jwalanaiah, Swasthika Jain Thandaga
    Jacob, Israel Jeena
    Mandava, Ajay Kumar
    [J]. EXPERT SYSTEMS, 2023, 40 (01)
  • [22] Learning Bayesian networks from data: An information-theory based approach
    Cheng, J
    Greiner, R
    Kelly, J
    Bell, D
    Liu, WR
    [J]. ARTIFICIAL INTELLIGENCE, 2002, 137 (1-2) : 43 - 90
  • [23] Identification and validation of effective connectivity networks in functional magnetic resonance imaging using switching linear dynamic systems
    Smith, Jason F.
    Pillai, Ajay
    Chen, Kewei
    Horwitz, Barry
    [J]. NEUROIMAGE, 2010, 52 (03) : 1027 - 1040
  • [24] Disease Progression Score Estimation From Multimodal Imaging and MicroRNA Data Using Supervised Variational Autoencoders
    Kmetzsch, Virgilio
    Becker, Emmanuelle
    Saracino, Dario
    Rinaldi, Daisy
    Camuzat, Agnes
    Le Ber, Isabelle
    Colliot, Olivier
    [J]. IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2022, 26 (12) : 6024 - 6035
  • [25] Learning the Dynamics of Arterial Traffic From Probe Data Using a Dynamic Bayesian Network
    Hofleitner, Aude
    Herring, Ryan
    Abbeel, Pieter
    Bayen, Alexandre
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2012, 13 (04) : 1679 - 1693
  • [26] Structural learning of Bayesian networks from complete data using the scatter search documents
    Djan-Sampson, PO
    Sahin, F
    [J]. 2004 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN & CYBERNETICS, VOLS 1-7, 2004, : 3619 - 3624
  • [27] Learning effective connectivity from fMRI using autoregressive hidden Markov model with missing data
    Dang, Shilpa
    Chaudhury, Santanu
    Lall, Brejesh
    Roy, Prasun Kumar
    [J]. JOURNAL OF NEUROSCIENCE METHODS, 2017, 278 : 87 - 100
  • [28] Learning Bayesian networks from data: An efficient approach based on extended evolutionary programming
    Li, XL
    Li, SY
    He, XD
    Yuan, SM
    [J]. Progress in Intelligence Computation & Applications, 2005, : 363 - 368
  • [29] Learning Effective Connectivity Network Structure from fMRI Data Based on Artificial Immune Algorithm
    Ji, Junzhong
    Liu, Jinduo
    Liang, Peipeng
    Zhang, Aidong
    [J]. PLOS ONE, 2016, 11 (04):
  • [30] Learning Bayesian networks structures from incomplete data based on extending evolutionary programming
    Li, XL
    He, XD
    Yuan, SM
    [J]. Proceedings of 2005 International Conference on Machine Learning and Cybernetics, Vols 1-9, 2005, : 2039 - 2043