| Literature DB >> 34236622 |
Andrea I Luppi1,2, Joshua Cain3, Lennart R B Spindler4,5, Urszula J Górska6, Daniel Toker7, Andrew E Hudson8, Emery N Brown9,10, Michael N Diringer11, Robert D Stevens12, Marcello Massimini13,14, Martin M Monti7,15, Emmanuel A Stamatakis16,17, Melanie Boly18.
Abstract
AIM: In order to successfully detect, classify, prognosticate, and develop targeted therapies for patients with disorders of consciousness (DOC), it is crucial to improve our mechanistic understanding of how severe brain injuries result in these disorders.Entities:
Keywords: Brain injury; Coma; Consciousness; Electroencephalography; Magnetic resonance imaging; Mechanism; Neuroimaging
Mesh:
Year: 2021 PMID: 34236622 PMCID: PMC8266690 DOI: 10.1007/s12028-021-01281-6
Source DB: PubMed Journal: Neurocrit Care ISSN: 1541-6933 Impact factor: 3.210
Fig. 1Overview of white paper recommendations. In this article, we have subdivided the gaps that exist in the field of disorders of consciousness (DOC) research into subdisciplines while stressing their mutual interdependence. The term “subdiscipline” is used for each branch of knowledge that makes up the study of DOC. Specifically, we suggest that efforts should be made to integrate structural and functional correlates, micro- and macroscale phenomena, and data- and theory-driven perspectives. Within each discipline (e.g., structural correlates), specific gaps should be identified and novel methods should be selected to answer these gaps and to reach an improved state of the science. Throughout this process, iterative integration with other disciplines is desired (bottom; note disciplines “A” and “B” can be replaced by any given subdiscipline of DOC research). Collectively, improved integration between these subfields of DOC is likely to provide the best avenue toward the clinical goals of DOC science: improved diagnosis, prognosis, and treatment (center circle). Circular arrows represent iterative processes, whereas two-headed arrows represent bidirectionality, e.g., improved diagnosis is likely to allow for more fine-tuned structural and functional correlates of DOC and vice versa
Fig. 2Putative relationships between consciousness, environmental connectedness, and responsiveness (C-EC-R). Illustrative examples are shown pertaining to sleep (top ellipse), general anesthesia (bottom ellipse), and disorders of consciousness (middle ellipse). Note that this is not an exhaustive mapping of all possible states of altered consciousness; likewise, this framework does not directly address the question of quantifying residual cognitive function, as this can only be properly assessed in responsive patients. Also note that the relative size of the colored circles is not intended to reflect relative prevalence
Fig. 5Conceptual overview of levels of analysis to be considered in disorders of consciousness (DOC) research across the microscopic-to-macroscopic spectrum. Gradients indicate the capability of a technique to make measurements relevant to the level indicated above, thus highlighting gaps and possible translational interfaces. Human neuroimaging has produced macroscopic network biomarkers and certain regions/layers whose disruption is associated with DOC. For inquiries at more microscopic scale, animal models are indispensable, in which experimental manipulations (DREADD, optogenetics, lesion approaches, etc.) allow for direct mechanistic investigations, which can produce insights that can in turn be tested in humans in vivo (e.g., by using pharmacological approaches). The wider usage of high-field neuroimaging in both humans and animals will produce particularly relevant integrations of these levels, which will also serve to produce the type of data required to enable the generation of truly mechanistic computational approaches (e.g., whole-brain modeling). Altogether, these levels of analyses and models are complementary and synergistic for the discovery of the biological mechanisms of DOC
Future research needs for investigating mechanisms of consciousness toward improved diagnosis, prognosis, and treatment of DOC
| Research need: establish a framework for differentiating clinical subtypes of DOC with concepts of C-EC-R |
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| Form a complete mapping of DOC structural damage to functions of interest across multiple temporal and spatial scales |
| Identify structural correlates of relevant biomarkers of brain function in DOC patients derived from different approaches, e.g., information theory, graph theory, and dynamical systems theory |
| Develop clinically relevant animal models of DOC for translational research approaches |
| Identify the role of subcortical structures and their interplay with the cortex in heterogeneous DOC |
| Associate microscale (neuronal and nonneuronal), and subcellular (molecular and genetic) mediators, with in vivo manifestations in patients with DOC |
| Develop precise theoretical predictions and further biomarkers to address each dimension of the C-EC-R framework |
| Build a comprehensive set of data-driven and theory-driven biomarkers addressing different levels of analysis |
| Compare and develop existing theories in adversarial collaboration between theory leaders |
| Analyze multilevel and multimodal data from large-scale data sets to construct more realistic computational models of DOC |
| Develop personalized medicine models to guide treatment based on individual patients’ multimodal data |
C-EC-R consciousness, environmental connectedness, and responsiveness, DOC disorders of consciousness
| The term “functional connectivity” (FC) (Fig. |
| On the basis of these measurements of brain activity, the most common ways to quantify FC are measures of linear association between pairs of regional time series (primarily, Pearson correlation, but also methods based on phase coherence or spectral properties of the signals), which are therefore agnostic to interactions between more than two elements and ignore the direction of information flow between the two regions. However, more sophisticated measures also exist, capable of addressing various shortcomings of traditional FC (although often at the expense of computational feasibility) [ |
| Distinct sets of brain regions, termed “resting-state networks,” spontaneously organize into consistently cofluctuating assemblies during both tasks and also at rest. Prominent among these resting-state networks are the frontoparietal control network and the default mode network: these networks typically exhibit inversely correlated time courses at rest [ |
| Measures of effective connectivity have also been introduced to identify directed information flow (from region A to region B and not vice versa). Some effective connectivity approaches rely on probabilistic accounts to infer the direction of interactions from statistical relationships in the data (e.g., transfer entropy, Granger causality [ |
| Whether functional or structural, the interactions between brain regions can be conceived as a network (Fig. |
| Whole-brain computational models represent a powerful set of tools to study macroscale mechanistic questions in neuroscience [ |
| Importantly, in silico computational models offer several advantages: their parameters are fully available to inspection and manipulation by the researcher, and they can be perturbed in ways that would not be possible in either humans or animals [ |