Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Jitka Annen is active.

Publication


Featured researches published by Jitka Annen.


Brain | 2017

Brain networks predict metabolism, diagnosis and prognosis at the bedside in disorders of consciousness

Srivas Chennu; Jitka Annen; Sarah Wannez; Aurore Thibaut; Camille Chatelle; Helena Cassol; Géraldine Martens; Caroline Schnakers; Olivia Gosseries; David K. Menon; Steven Laureys

Recent advances in functional neuroimaging have demonstrated novel potential for informing diagnosis and prognosis in the unresponsive wakeful syndrome and minimally conscious states. However, these technologies come with considerable expense and difficulty, limiting the possibility of wider clinical application in patients. Here, we show that high density electroencephalography, collected from 104 patients measured at rest, can provide valuable information about brain connectivity that correlates with behaviour and functional neuroimaging. Using graph theory, we visualize and quantify spectral connectivity estimated from electroencephalography as a dense brain network. Our findings demonstrate that key quantitative metrics of these networks correlate with the continuum of behavioural recovery in patients, ranging from those diagnosed as unresponsive, through those who have emerged from minimally conscious, to the fully conscious locked-in syndrome. In particular, a network metric indexing the presence of densely interconnected central hubs of connectivity discriminated behavioural consciousness with accuracy comparable to that achieved by expert assessment with positron emission tomography. We also show that this metric correlates strongly with brain metabolism. Further, with classification analysis, we predict the behavioural diagnosis, brain metabolism and 1-year clinical outcome of individual patients. Finally, we demonstrate that assessments of brain networks show robust connectivity in patients diagnosed as unresponsive by clinical consensus, but later rediagnosed as minimally conscious with the Coma Recovery Scale-Revised. Classification analysis of their brain network identified each of these misdiagnosed patients as minimally conscious, corroborating their behavioural diagnoses. If deployed at the bedside in the clinical context, such network measurements could complement systematic behavioural assessment and help reduce the high misdiagnosis rate reported in these patients. These metrics could also identify patients in whom further assessment is warranted using neuroimaging or conventional clinical evaluation. Finally, by providing objective characterization of states of consciousness, repeated assessments of network metrics could help track individual patients longitudinally, and also assess their neural responses to therapeutic and pharmacological interventions.


Human Brain Mapping | 2016

Function-structure connectivity in patients with severe brain injury as measured by MRI-DWI and FDG-PET.

Jitka Annen; Lizette Heine; Erik Ziegler; Gianluca Frasso; Mohamed Ali Bahri; C. Di Perri; Johan Stender; Charlotte Martial; Sarah Wannez; K. D'ostilio; Enrico Amico; Georgios Antonopoulos; Claire Bernard; F. Tshibanda; Roland Hustinx; Steven Laureys

A vast body of literature exists showing functional and structural dysfunction within the brains of patients with disorders of consciousness. However, the function (fluorodeoxyglucose FDG‐PET metabolism)–structure (MRI‐diffusion‐weighted images; DWI) relationship and how it is affected in severely brain injured patients remains ill‐defined. FDG‐PET and MRI‐DWI in 25 severely brain injured patients (19 Disorders of Consciousness of which 7 unresponsive wakefulness syndrome, 12 minimally conscious; 6 emergence from minimally conscious state) and 25 healthy control subjects were acquired here. Default mode network (DMN) function–structure connectivity was assessed by fractional anisotropy (FA) and metabolic standardized uptake value (SUV). As expected, a profound decline in regional metabolism and white matter integrity was found in patients as compared with healthy subjects. Furthermore, a function–structure relationship was present in brain‐damaged patients between functional metabolism of inferior‐parietal, precuneus, and frontal regions and structural integrity of the frontal‐inferiorparietal, precuneus‐inferiorparietal, thalamo‐inferioparietal, and thalamofrontal tracts. When focusing on patients, a stronger relationship between structural integrity of thalamo‐inferiorparietal tracts and thalamic metabolism in patients who have emerged from the minimally conscious state as compared with patients with disorders of consciousness was found. The latter finding was in line with the mesocircuit hypothesis for the emergence of consciousness. The findings showed a positive function–structure relationship within most regions of the DMN. Hum Brain Mapp 37:3707–3720, 2016.


Neuropsychological Rehabilitation | 2018

Prevalence of coma-recovery scale-revised signs of consciousness in patients in minimally conscious state

Sarah Wannez; Olivia Gosseries; Deborah Azzolini; Charlotte Martial; Helena Cassol; Charlène Aubinet; Jitka Annen; Géraldine Martens; Olivier Bodart; Lizette Heine; Vanessa Charland-Verville; Aurore Thibaut; Camille Chatelle; Audrey Vanhaudenhuyse; Athena Demertzi; Caroline Schnakers; Anne-Françoise Donneau; Steven Laureys

ABSTRACT Different behavioural signs of consciousness can distinguish patients with an unresponsive wakefulness syndrome from patients in minimally conscious state (MCS). The Coma Recovery Scale-Revised (CRS-R) is the most sensitive scale to differentiate the different altered states of consciousness and eleven items detect the MCS. The aim of this study is to document the prevalence of these items. We analysed behavioural assessments of 282 patients diagnosed in MCS based on the CRS-R. Results showed that some items are particularly frequent among patients in MCS, namely fixation, visual pursuit, and reproducible movement to command, which were observed in more than 50% of patients. These responses were also the most probably observed items when the patients only showed one sign of consciousness. On the other hand, some items were rarely or never observed alone, e.g., object localisation (reaching), object manipulation, intelligible verbalisation, and object recognition. The results also showed that limiting the CRS-R assessment to the five most frequently observed items (i.e., fixation, visual pursuit, reproducible movement to command, automatic motor response and localisation to noxious stimulation) detected 99% of the patients in MCS. If clinicians have only limited time to assess patients with disorders of consciousness, we suggest to evaluate at least these five items of the CRS-R.


Annals of Neurology | 2018

Regional brain volumetry and brain function in severely brain-injured patients: Regional Brain Volumetry and Function in DOC

Jitka Annen; Gianluca Frasso; Julia Sophia Crone; Lizette Heine; Carol Di Perri; Charlotte Martial; Helena Cassol; Athena Demertzi; Lionel Naccache; Steven Laureys

The relationship between residual brain tissue in patients with disorders of consciousness (DOC) and the clinical condition is unclear. This observational study aimed to quantify gray (GM) and white matter (WM) atrophy in states of (altered) consciousness.


Archive | 2016

Measuring consciousness through imaging

Carol Di Perri; Jitka Annen; Georgios Antonopoulos; Enrico Amico; Carlo Cavaliere; Steven Laureys

At present, the global hallmark of impaired consciousness appears to be a reduced metabolism in a widespread frontoparietal network and a multifaceted dysfunctional connectivity architecture characterized by intra-/internetwork altered connectivity, both in the sense of decrease and increase.


Human Brain Mapping | 2018

Multifaceted brain networks reconfiguration in disorders of consciousness uncovered by co-activation patterns

Carol Di Perri; Enrico Amico; Lizette Heine; Jitka Annen; Charlotte Martial; Stephen Karl Larroque; Andrea Soddu; Daniele Marinazzo; Steven Laureys

Given that recent research has shown that functional connectivity is not a static phenomenon, we aim to investigate the dynamic properties of the default mode networks (DMN) connectivity in patients with disorders of consciousness.


Brain | 2018

Robust EEG-based cross-site and cross-protocol classification of states of consciousness

Denis A. Engemann; Federico Raimondo; Jean-Rémi King; Benjamin Rohaut; Gilles Louppe; Frédéric Faugeras; Jitka Annen; Helena Cassol; Olivia Gosseries; Diego Fernández-Slezak; Steven Laureys; Lionel Naccache; Stanislas Dehaene; Jacobo Sitt

Determining the state of consciousness in patients with disorders of consciousness is a challenging practical and theoretical problem. Recent findings suggest that multiple markers of brain activity extracted from the EEG may index the state of consciousness in the human brain. Furthermore, machine learning has been found to optimize their capacity to discriminate different states of consciousness in clinical practice. However, it is unknown how dependable these EEG markers are in the face of signal variability because of different EEG configurations, EEG protocols and subpopulations from different centres encountered in practice. In this study we analysed 327 recordings of patients with disorders of consciousness (148 unresponsive wakefulness syndrome and 179 minimally conscious state) and 66 healthy controls obtained in two independent research centres (Paris Pitié-Salpêtrière and Liège). We first show that a non-parametric classifier based on ensembles of decision trees provides robust out-of-sample performance on unseen data with a predictive area under the curve (AUC) of ~0.77 that was only marginally affected when using alternative EEG configurations (different numbers and positions of sensors, numbers of epochs, average AUC = 0.750 ± 0.014). In a second step, we observed that classifiers based on multiple as well as single EEG features generalize to recordings obtained from different patient cohorts, EEG protocols and different centres. However, the multivariate model always performed best with a predictive AUC of 0.73 for generalization from Paris 1 to Paris 2 datasets, and an AUC of 0.78 from Paris to Liège datasets. Using simulations, we subsequently demonstrate that multivariate pattern classification has a decisive performance advantage over univariate classification as the stability of EEG features decreases, as different EEG configurations are used for feature-extraction or as noise is added. Moreover, we show that the generalization performance from Paris to Liège remains stable even if up to 20% of the diagnostic labels are randomly flipped. Finally, consistent with recent literature, analysis of the learned decision rules of our classifier suggested that markers related to dynamic fluctuations in theta and alpha frequency bands carried independent information and were most influential. Our findings demonstrate that EEG markers of consciousness can be reliably, economically and automatically identified with machine learning in various clinical and acquisition contexts.


The New England Journal of Medicine | 2018

Brain Tissue–Volume Changes in Cosmonauts

Angelique Van Ombergen; Steven Jillings; Ben Jeurissen; E. S. Tomilovskaya; R. Maxine Rühl; Alena Rumshiskaya; Inna Nosikova; Liudmila Litvinova; Jitka Annen; Ekaterina Pechenkova; I. B. Kozlovskaya; Stefan Sunaert; Paul M. Parizel; Valentin Sinitsyn; Steven Laureys; Jan Sijbers; Peter zu Eulenburg; Floris L. Wuyts

Changes in Brain Volume in Cosmonauts Ten cosmonauts, who spent an average of 189 days in space, had changes in brain volumes — mainly decreased cortical volume and increased CSF subarachnoid and v...


Frontiers in Neuroscience | 2018

BCI performance and brain metabolism profile in severely brain-injured patients without response to command at bedside

Jitka Annen; Séverine Blandiaux; Nicolas Lejeune; Mohamed Ali Bahri; Aurore Thibaut; Woosang Cho; Christophe Guger; Camille Chatelle; Steven Laureys

Detection and interpretation of signs of “covert command following” in patients with disorders of consciousness (DOC) remains a challenge for clinicians. In this study, we used a tactile P3-based BCI in 12 patients without behavioral command following, attempting to establish “covert command following.” These results were then confronted to cerebral metabolism preservation as measured with glucose PET (FDG-PET). One patient showed “covert command following” (i.e., above-threshold BCI performance) during the active tactile paradigm. This patient also showed a higher cerebral glucose metabolism within the language network (presumably required for command following) when compared with the other patients without “covert command-following” but having a cerebral glucose metabolism indicative of minimally conscious state. Our results suggest that the P3-based BCI might probe “covert command following” in patients without behavioral response to command and therefore could be a valuable addition in the clinical assessment of patients with DOC.


Brain Stimulation | 2018

Theta network centrality correlates with tDCS response in disorders of consciousness

Aurore Thibaut; Srivas Chennu; Camille Chatelle; Géraldine Martens; Jitka Annen; Helena Cassol; Steven Laureys

If you believe this document infringes copyright then please contact the KAR admin team with the take-down information provided at http://kar.kent.ac.uk/contact.html Citation for published version Thibaut, Aurore and Chennu, Srivas and Chatelle, Camille and Martens, Géraldine and Annen, Jitka and Cassol, Helena and Laureys, Steven (2018) Theta network centrality correlates with tDCS response in disorders of consciousness. Brain Stimulation . ISSN 1935-861X.

Collaboration


Dive into the Jitka Annen's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge