Literature DB >> 36272984

Feasibility of the optimal cerebral perfusion pressure value identification without a delay that is too long.

Mantas Deimantavicius1, Edvinas Chaleckas1, Katherine Boere1, Vilma Putnynaite1, Tomas Tamosuitis2, Arimantas Tamasauskas2, Mindaugas Kavaliauskas3, Saulius Rocka4, Aidanas Preiksaitis4, Saulius Vosylius5, Solventa Krakauskaite1, Kristina Berskiene6, Vytautas Petkus7, Arminas Ragauskas1.   

Abstract

Optimal cerebral perfusion pressure (CPPopt)-targeted treatment of traumatic brain injury (TBI) patients requires 2-8 h multi-modal monitoring data accumulation to identify CPPopt value for individual patient. Minimizing the time required for monitoring data accumulation is needed to improve the efficacy of CPPopt-targeted therapy. A retrospective analysis of multimodal physiological monitoring data from 87 severe TBI patients was performed by separately representing cerebrovascular autoregulation (CA) indices in relation to CPP, arterial blood pressure (ABP), and intracranial pressure (ICP) to improve the existing CPPopt identification algorithms. Machine learning (ML)-based algorithms were developed for automatic identification of informative data segments that were used for reliable CPPopt, ABPopt, ICPopt and the lower/upper limits of CA (LLCA/ULCA) identification. The reference datasets of the informative data segments and, artifact-distorted segments, and the datasets of different clinical situations were used for training the ML-based algorithms, allowing us to choose the appropriate individualized CPP-, ABP- or ICP-guided management for 79% of the full monitoring time for the studied population. The developed ML-based algorithms allow us to recognize informative physiological ABP/ICP variations within 24 min intervals with an accuracy up to 79% (compared to the initial accuracy of 74%) and use these segments for timely optimal value identification or CA limits determination in CPP, ABP or ICP data. Prospective clinical studies are needed to prove the efficiency of the developed algorithms.
© 2022. The Author(s).

Entities:  

Year:  2022        PMID: 36272984     DOI: 10.1038/s41598-022-22566-6

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.996


  3 in total

1.  Survey in expert clinicians on the validity of automated calculation of optimal cerebral perfusion pressure.

Authors:  Romy Steijn; Roy Stewart; Marek Czosnyka; Joseph Donnelly; Ari Ercole; Antony Absalom; Jan W Elting; Christina Haubrich; Peter Smielewski; Marcel Aries
Journal:  Minerva Anestesiol       Date:  2017-06-22       Impact factor: 3.051

2.  Low-resolution pressure reactivity index and its derived optimal cerebral perfusion pressure in adult traumatic brain injury: a CENTER-TBI study.

Authors:  Lennart Riemann; Erta Beqiri; Peter Smielewski; Marek Czosnyka; Nino Stocchetti; Oliver Sakowitz; Klaus Zweckberger; Andreas Unterberg; Alexander Younsi
Journal:  Crit Care       Date:  2020-05-26       Impact factor: 9.097

3.  Prediction of in-hospital mortality in patients with post traumatic brain injury using National Trauma Registry and Machine Learning Approach.

Authors:  Ahmad Abujaber; Adam Fadlalla; Diala Gammoh; Husham Abdelrahman; Monira Mollazehi; Ayman El-Menyar
Journal:  Scand J Trauma Resusc Emerg Med       Date:  2020-05-27       Impact factor: 2.953

  3 in total

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