The effect of cranioplasty on outcomes and complications of unresponsive wakefulness syndrome and minimally responsive state.
Elena AidinoffHiela LehrerIlana GelernterIlil DayanAdi KfirLilach FrontAna OksamitnyAmiram CatzPublished in: Brain impairment : a multidisciplinary journal of the Australian Society for the Study of Brain Impairment (2024)
Background Studies that have shown neurological improvement following cranioplasty (CP) after decompressive craniectomy (DC) in patients with unresponsive wakefulness syndrome (UWS) and minimally conscious state (MCS) did not include control groups. The aim of this study was to assess the justification of CP for these patients. Methods Data were collected from medical records of inpatients with UWS and MCS admitted between 2002 and 2018. Results Of the 144 participants (mean age 40 years, 76% males, 75% in UWS), 37% had CP following DC. The Loewenstein Communication Scale (LCS) gain was 12±17 and 16±17 for the control and study patients, respectively. The corresponding consciousness recovery rate (based on Coma Recovery Scale-Revised scores) was 51% and 53%, respectively. One-year survival rates were 0.80 and 0.93, and 5-year survival rates were 0.67 and 0.73, respectively. Mean outcome values were higher for the study group, but the differences between the groups did not reach statistical significance. Conclusions The study did not demonstrate that CP increases brain recovery or survival. Nevertheless, it showed that CP did not decrease them either, and it did not increase complications rate. The findings, therefore, support offering CP to patients with UWS and MCS as CP does not increase risks and can achieve additional goals for these patients.
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