Multimodal assessment improves neuroprognosis performance in clinically unresponsive critical-care patients with brain injury.

B Rohaut, C Calligaris, B Hermann, P Perez,F Faugeras,F Raimondo, J-R King, D Engemann, C Marois,L Le Guennec, L Di Meglio, A Sangaré, E Munoz Musat, M Valente, A Ben Salah,A Demertzi,L Belloli,D Manasova, L Jodaitis,M O Habert,V Lambrecq, N Pyatigorskaya, D Galanaud, L Puybasset, N Weiss,S Demeret,F X Lejeune,J D Sitt, L Naccache

Nature medicine(2024)

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Abstract
Accurately predicting functional outcomes for unresponsive patients with acute brain injury is a medical, scientific and ethical challenge. This prospective study assesses how a multimodal approach combining various numbers of behavioral, neuroimaging and electrophysiological markers affects the performance of outcome predictions. We analyzed data from 349 patients admitted to a tertiary neurointensive care unit between 2009 and 2021, categorizing prognoses as good, uncertain or poor, and compared these predictions with observed outcomes using the Glasgow Outcome Scale-Extended (GOS-E, levels ranging from 1 to 8, with higher levels indicating better outcomes). After excluding cases with life-sustaining therapy withdrawal to mitigate the self-fulfilling prophecy bias, our findings reveal that a good prognosis, compared with a poor or uncertain one, is associated with better one-year functional outcomes (common odds ratio (95% CI) for higher GOS-E: OR = 14.57 (5.70-40.32), P < 0.001; and 2.9 (1.56-5.45), P < 0.001, respectively). Moreover, increasing the number of assessment modalities decreased uncertainty (OR = 0.35 (0.21-0.59), P < 0.001) and improved prognostic accuracy (OR = 2.72 (1.18-6.47), P = 0.011). Our results underscore the value of multimodal assessment in refining neuroprognostic precision, thereby offering a robust foundation for clinical decision-making processes for acutely brain-injured patients. ClinicalTrials.gov registration: NCT04534777 .
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