Prediction of Behavioral Improvement Through Resting-State Electroencephalography and Clinical Severity in a Randomized Controlled Trial Testing Bumetanide in Autism Spectrum Disorder

Erika L Juarez-Martinez, Jan J Sprengers, Gianina Cristian, Bob Oranje, Dorinde M van Andel, Arthur-Ervin Avramiea, Sonja Simpraga, Simon J Houtman, Richard Hardstone, Cathalijn Gerver, Gert Jan van der Wilt, Huibert D Mansvelder, Marinus J C Eijkemans, Klaus Linkenkaer-Hansen, Hilgo Bruining

Research output: Contribution to JournalArticleAcademicpeer-review

Abstract

BACKGROUND: Mechanism-based treatments such as bumetanide are being repurposed for autism spectrum disorder. We recently reported beneficial effects on repetitive behavioral symptoms that might be related to regulating excitation-inhibition (E/I) balance in the brain. Here, we tested the neurophysiological effects of bumetanide and the relationship to clinical outcome variability and investigated the potential for machine learning-based predictions of meaningful clinical improvement.

METHODS: Using modified linear mixed models applied to intention-to-treat population, we analyzed E/I-sensitive electroencephalography (EEG) measures before and after 91 days of treatment in the double-blind, randomized, placebo-controlled Bumetanide in Autism Medication and Biomarker study. Resting-state EEG of 82 subjects out of 92 participants (7-15 years) were available. Alpha frequency band absolute and relative power, central frequency, long-range temporal correlations, and functional E/I ratio treatment effects were related to the Repetitive Behavior Scale-Revised (RBS-R) and the Social Responsiveness Scale 2 as clinical outcomes.

RESULTS: We observed superior bumetanide effects on EEG, reflected in increased absolute and relative alpha power and functional E/I ratio and in decreased central frequency. Associations between EEG and clinical outcome change were restricted to subgroups with medium to high RBS-R improvement. Using machine learning, medium and high RBS-R improvement could be predicted by baseline RBS-R score and EEG measures with 80% and 92% accuracy, respectively.

CONCLUSIONS: Bumetanide exerts neurophysiological effects related to clinical changes in more responsive subsets, in whom prediction of improvement was feasible through EEG and clinical measures.

Original languageEnglish
Pages (from-to)251-261
Number of pages11
JournalBiological Psychiatry : Cognitive Neuroscience and Neuroimaging
Volume8
Issue number3
Early online date8 Sept 2021
DOIs
Publication statusPublished - Mar 2023

Bibliographical note

Copyright © 2021 Society of Biological Psychiatry. Published by Elsevier Inc. All rights reserved.

Funding

This work was supported by the Netherlands Organization for Scientific Research (NWO) Physical Sciences (Grant No. 612.001.123 [to KL-H]), Netherlands Organization for Scientific Research (NWO) Social Sciences (Grant No. 406-15-256 [to A-EA and KL-H]), ZonMW Rational Pharmacotherapy Program, GGG project (Grant No. 836041015 [to HB and JJS]), and EU H2020 “Human Brain Project” (Grant No. 604102 [to HDM]). Neither the funders of the study nor Neurochlore, who provided the study medication, had a role in study design, data collection, data analysis, data interpretation, or writing of the report. Conceptualization: HB and KL-H; methodology: ELJ-M, JJS, GC, GJvdW, MJCE, KL-H, HB; investigation: ELJ-M, JJS, GC; visualization: ELJ-M, JJS, GC, SS, A-EA, SJH; acquisition, analysis, or interpretation of data: all authors; funding acquisition: KL-H, HB; administrative, technical, or material support: SS, A-EA, RH, SJH, BO; supervision: HDM, KL-H, HB; writing - original draft: ELJ-M, JJS, GC, KL-H, HB; and writing - reviewing and editing: all authors. We thank Simon-Shlomo Poil for contributions to the Neurophysiological Biomarker Toolbox. We thank Neurochlore for providing the study medication. Due to privacy regulations of human subjects, we cannot provide the electroencephalography files of the subjects included in our study. However, we provide the individual demographics and the mean of electroencephalography measures in Tables S1 and S2. Analysis scripts to reproduce the figures and statistics will be made available on figshare (https://figshare.com/). The code for the fE/I algorithm is publicly available at https://github.com/rhardstone/fEI. KL-H and Simon-Shlomo Poil are shareholders of NBT Analytics BV, which provides EEG analysis services for clinical trials. HB, KL-H, and Simon-Shlomo Poil are shareholders of Aspect Neuroprofiles BV, which develops physiology-informed prognostic measures for neurodevelopmental disorders. RH and KL-H have filed the patent claim (PCT/NL2019/050167) “Method of determining brain activity”; with priority date March 16, 2018. All other authors report no biomedical financial interests or potential conflicts of interest. EudraCT: EU Clinical Trials Register; https://www.clinicaltrialsregister.eu/ctr-search/trial/2014-001560-35/NL; 2014-001560-35. This work was supported by the Netherlands Organization for Scientific Research (NWO) Physical Sciences (Grant No. 612.001.123 [to KL-H]), Netherlands Organization for Scientific Research (NWO) Social Sciences (Grant No. 406-15-256 [to A-EA and KL-H]), ZonMW Rational Pharmacotherapy Program, GGG project (Grant No. 836041015 [to HB and JJS]), and EU H2020 “Human Brain Project” (Grant No. 604102 [to HDM]).

FundersFunder number
EU H2020
NBT Analytics BV
ZonMw836041015
NWO612.001.123, 406-15-256
Aspect Neuroprofiles BVPCT/NL2019/050167
European Commission2014-001560-35, 604102

    Fingerprint

    Dive into the research topics of 'Prediction of Behavioral Improvement Through Resting-State Electroencephalography and Clinical Severity in a Randomized Controlled Trial Testing Bumetanide in Autism Spectrum Disorder'. Together they form a unique fingerprint.

    Cite this