TY - JOUR
T1 - Modeling Brain–Heart Crosstalk Information in Patients with Traumatic Brain Injury
AU - Dimitri, Giovanna Maria
AU - Beqiri, Erta
AU - Placek, Michal M.
AU - Czosnyka, Marek
AU - Stocchetti, Nino
AU - Ercole, Ari
AU - Smielewski, Peter
AU - Lió, Pietro
AU - Anke, Audny
AU - Beer, Ronny
AU - Bellander, Bo Michael
AU - Buki, Andras
AU - Cabeleira, Manuel
AU - Carbonara, Marco
AU - Chieregato, Arturo
AU - Citerio, Giuseppe
AU - Clusmann, Hans
AU - Czeiter, Endre
AU - Depreitere, Bart
AU - Frisvold, Shirin
AU - Helbok, Raimund
AU - Jankowski, Stefan
AU - Kondziella, Daniel
AU - Koskinen, Lars Owe
AU - Kowark, Ana
AU - Menon, David K.
AU - Meyfroidt, Geert
AU - Moeller, Kirsten
AU - Nelson, David
AU - Piippo-Karjalainen, Anna
AU - Radoi, Andreea
AU - Ragauskas, Arminas
AU - Raj, Rahul
AU - Rhodes, Jonathan
AU - Rocka, Saulius
AU - Rossaint, Rolf
AU - Sahuquillo, Juan
AU - Sakowitz, Oliver
AU - Sundström, Nina
AU - Takala, Riikka
AU - Tamosuitis, Tomas
AU - Tenovuo, Olli
AU - Unterberg, Andreas
AU - Vajkoczy, Peter
AU - Vargiolu, Alessia
AU - Vilcinis, Rimantas
AU - Wolf, Stefan
AU - Younsi, Alexander
AU - Zeiler, Frederick A.
AU - the CENTER-TBI collaborators
N1 - Publisher Copyright:
© 2021, The Author(s).
PY - 2022
Y1 - 2022
N2 - Background: Traumatic brain injury (TBI) is an extremely heterogeneous and complex pathology that requires the integration of different physiological measurements for the optimal understanding and clinical management of patients. Information derived from intracranial pressure (ICP) monitoring can be coupled with information obtained from heart rate (HR) monitoring to assess the interplay between brain and heart. The goal of our study is to investigate events of simultaneous increases in HR and ICP and their relationship with patient mortality. Methods: In our previous work, we introduced a novel measure of brain–heart interaction termed brain–heart crosstalks (ctnp), as well as two additional brain–heart crosstalks indicators [mutual information (mict) and average edge overlap (ωct)] obtained through a complex network modeling of the brain–heart system. These measures are based on identification of simultaneous increase of HR and ICP. In this article, we investigated the relationship of these novel indicators with respect to mortality in a multicenter TBI cohort, as part of the Collaborative European Neurotrauma Effectiveness Research in TBI high-resolution work package. Results: A total of 226 patients with TBI were included in this cohort. The data set included monitored parameters (ICP and HR), as well as laboratory, demographics, and clinical information. The number of detected brain–heart crosstalks varied (mean 58, standard deviation 57). The Kruskal–Wallis test comparing brain–heart crosstalks measures of survivors and nonsurvivors showed statistically significant differences between the two distributions (p values: 0.02 for mict, 0.005 for ctnp and 0.006 for ωct). An inverse correlation was found, computed using the point biserial correlation technique, between the three new measures and mortality: − 0.13 for ctnp (p value 0.04), − 0.19 for ωct (p value 0.002969) and − 0.09 for mict (p value 0.1396). The measures were then introduced into the logistic regression framework, along with a set of input predictors made of clinical, demographic, computed tomography (CT), and lab variables. The prediction models were obtained by dividing the original cohort into four age groups (16–29, 30–49, 50–65, and 65–85 years of age) to properly treat with the age confounding factor. The best performing models were for age groups 16–29, 50–65, and 65–85, with the deviance of ratio explaining more than 80% in all the three cases. The presence of an inverse relationship between brain–heart crosstalks and mortality was also confirmed. Conclusions: The presence of a negative relationship between mortality and brain–heart crosstalks indicators suggests that a healthy brain–cardiovascular interaction plays a role in TBI.
AB - Background: Traumatic brain injury (TBI) is an extremely heterogeneous and complex pathology that requires the integration of different physiological measurements for the optimal understanding and clinical management of patients. Information derived from intracranial pressure (ICP) monitoring can be coupled with information obtained from heart rate (HR) monitoring to assess the interplay between brain and heart. The goal of our study is to investigate events of simultaneous increases in HR and ICP and their relationship with patient mortality. Methods: In our previous work, we introduced a novel measure of brain–heart interaction termed brain–heart crosstalks (ctnp), as well as two additional brain–heart crosstalks indicators [mutual information (mict) and average edge overlap (ωct)] obtained through a complex network modeling of the brain–heart system. These measures are based on identification of simultaneous increase of HR and ICP. In this article, we investigated the relationship of these novel indicators with respect to mortality in a multicenter TBI cohort, as part of the Collaborative European Neurotrauma Effectiveness Research in TBI high-resolution work package. Results: A total of 226 patients with TBI were included in this cohort. The data set included monitored parameters (ICP and HR), as well as laboratory, demographics, and clinical information. The number of detected brain–heart crosstalks varied (mean 58, standard deviation 57). The Kruskal–Wallis test comparing brain–heart crosstalks measures of survivors and nonsurvivors showed statistically significant differences between the two distributions (p values: 0.02 for mict, 0.005 for ctnp and 0.006 for ωct). An inverse correlation was found, computed using the point biserial correlation technique, between the three new measures and mortality: − 0.13 for ctnp (p value 0.04), − 0.19 for ωct (p value 0.002969) and − 0.09 for mict (p value 0.1396). The measures were then introduced into the logistic regression framework, along with a set of input predictors made of clinical, demographic, computed tomography (CT), and lab variables. The prediction models were obtained by dividing the original cohort into four age groups (16–29, 30–49, 50–65, and 65–85 years of age) to properly treat with the age confounding factor. The best performing models were for age groups 16–29, 50–65, and 65–85, with the deviance of ratio explaining more than 80% in all the three cases. The presence of an inverse relationship between brain–heart crosstalks and mortality was also confirmed. Conclusions: The presence of a negative relationship between mortality and brain–heart crosstalks indicators suggests that a healthy brain–cardiovascular interaction plays a role in TBI.
KW - CENTER-TBI
KW - Intracranial pressure
KW - Raised heart rate
KW - Raised intracranial pressure
KW - Traumatic brain injury
UR - http://www.scopus.com/inward/record.url?scp=85127633732&partnerID=8YFLogxK
U2 - 10.1007/s12028-021-01353-7
DO - 10.1007/s12028-021-01353-7
M3 - Journal article
C2 - 34642842
AN - SCOPUS:85127633732
VL - 36
SP - 738
EP - 750
JO - Neurocritical Care
JF - Neurocritical Care
SN - 1541-6933
IS - 3
ER -