Literature DB >> 30856619

Developing a personalized closed-loop controller of medically-induced coma in a rodent model.

Yuxiao Yang1, Justin T Lee, Jennifer A Guidera, Ksenia Y Vlasov, JunZhu Pei, Emery N Brown, Ken Solt, Maryam M Shanechi.   

Abstract

OBJECTIVE: Personalized automatic control of medically-induced coma, a critical multi-day therapy in the intensive care unit, could greatly benefit clinical care and further provide a novel scientific tool for investigating how the brain response to anesthetic infusion rate changes during therapy. Personalized control would require real-time tracking of inter- and intra-subject variabilities in the brain response to anesthetic infusion rate while simultaneously delivering the therapy, which has not been achieved. Current control systems for medically-induced coma require a separate offline model fitting experiment to deal with inter-subject variabilities, which would lead to therapy interruption. Removing the need for these offline interruptions could help facilitate clinical feasbility. In addition, current systems do not track intra-subject variabilities. Tracking intra-subject variabilities is essential for studying whether or how the brain response to anesthetic infusion rate changes during therapy. Further, such tracking could enhance control precison and thus help facilitate clinical feasibility. APPROACH: Here we develop a personalized closed-loop anesthetic delivery (CLAD) system in a rodent model that tracks both inter- and intra-subject variabilities in real time while simultaneously controlling the anesthetic in closed loop. We tested the CLAD in rats by administrating propofol to control the electroencephalogram (EEG) burst suppression. We first examined whether the CLAD can remove the need for offline model fitting interruption. We then used the CLAD as a tool to study whether and how the brain response to anesthetic infusion rate changes as a function of changes in the depth of medically-induced coma. Finally, we studied whether the CLAD can enhance control compared with prior systems by tracking intra-subject variabilities. MAIN
RESULTS: The CLAD precisely controlled the EEG burst suppression in each rat without performing offline model fitting experiments. Further, using the CLAD, we discovered that the brain response to anesthetic infusion rate varied during control, and that these variations correlated with the depth of medically-induced coma in a consistent manner across individual rats. Finally, tracking these variations reduced control bias and error by more than 70% compared with prior systems. SIGNIFICANCE: This personalized CLAD provides a new tool to study the dynamics of brain response to anesthetic infusion rate and has significant implications for enabling clinically-feasible automatic control of medically-induced coma.

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Year:  2019        PMID: 30856619     DOI: 10.1088/1741-2552/ab0ea4

Source DB:  PubMed          Journal:  J Neural Eng        ISSN: 1741-2552            Impact factor:   5.379


  9 in total

1.  A simulation-based comparative analysis of PID and LQG control for closed-loop anesthesia delivery.

Authors:  Sourish Chakravarty; Ayan S Waite; John H Abel; Emery N Brown
Journal:  Proc IFAC World Congress       Date:  2021-04-14

Review 2.  Brain-machine interfaces from motor to mood.

Authors:  Maryam M Shanechi
Journal:  Nat Neurosci       Date:  2019-09-24       Impact factor: 24.884

3.  Machine learning reveals interhemispheric somatosensory coherence as indicator of anesthetic depth.

Authors:  Dominik Schmidt; Gwendolyn English; Thomas C Gent; Mehmet Fatih Yanik; Wolfger von der Behrens
Journal:  Front Neuroinform       Date:  2022-09-12       Impact factor: 3.739

4.  Constructing a control-ready model of EEG signal during general anesthesia in humans.

Authors:  John H Abel; Marcus A Badgeley; Taylor E Baum; Sourish Chakravarty; Patrick L Purdon; Emery N Brown
Journal:  Proc IFAC World Congress       Date:  2021-04-14

5.  Modeling behaviorally relevant neural dynamics enabled by preferential subspace identification.

Authors:  Omid G Sani; Hamidreza Abbaspourazad; Yan T Wong; Bijan Pesaran; Maryam M Shanechi
Journal:  Nat Neurosci       Date:  2020-11-09       Impact factor: 24.884

6.  Modelling and prediction of the dynamic responses of large-scale brain networks during direct electrical stimulation.

Authors:  Yuxiao Yang; Shaoyu Qiao; Omid G Sani; J Isaac Sedillo; Breonna Ferrentino; Bijan Pesaran; Maryam M Shanechi
Journal:  Nat Biomed Eng       Date:  2021-02-01       Impact factor: 25.671

7.  Multiscale low-dimensional motor cortical state dynamics predict naturalistic reach-and-grasp behavior.

Authors:  Hamidreza Abbaspourazad; Mahdi Choudhury; Yan T Wong; Bijan Pesaran; Maryam M Shanechi
Journal:  Nat Commun       Date:  2021-01-27       Impact factor: 14.919

8.  A Comparison of Brain-State Dynamics across Common Anesthetic Agents in Male Sprague-Dawley Rats.

Authors:  Rachel Ward-Flanagan; Alto S Lo; Elizabeth A Clement; Clayton T Dickson
Journal:  Int J Mol Sci       Date:  2022-03-25       Impact factor: 5.923

9.  Path-dependent connectivity, not modularity, consistently predicts controllability of structural brain networks.

Authors:  Shubhankar P Patankar; Jason Z Kim; Fabio Pasqualetti; Danielle S Bassett
Journal:  Netw Neurosci       Date:  2020-11-01
  9 in total

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