Towards a network control theory of electroconvulsive therapy response

Author:

Hahn Tim1,Jamalabadi Hamidreza2,Nozari Erfan3ORCID,Winter Nils R1ORCID,Ernsting Jan14ORCID,Gruber Marius1,Mauritz Marco J1,Grumbach Pascal1,Fisch Lukas1,Leenings Ramona14,Sarink Kelvin1ORCID,Blanke Julian1,Vennekate Leon Kleine1,Emden Daniel1,Opel Nils1,Grotegerd Dominik1,Enneking Verena1,Meinert Susanne15,Borgers Tiana1,Klug Melissa1,Leehr Elisabeth J1,Dohm Katharina1,Heindel Walter6,Gross Joachim7,Dannlowski Udo1,Redlich Ronny18,Repple Jonathan1

Affiliation:

1. Institute for Translational Psychiatry, University of Münster , 48149 Münster , Germany

2. Department of Psychiatry and Psychotherapy, University of Tübingen , 72076 Tübingen , Germany

3. Department of Mechanical Engineering, University of California, 92521 Riverside , USA

4. Faculty of Mathematics and Computer Science, University of Münster , 48149 Münster , Germany

5. Institute for Translational Neuroscience, University of Münster , 48149 Münster , Germany

6. Institute of Clinical Radiology, University of Münster , 48149 Münster , Germany

7. Institute for Biomagnetism and Biosignalanalysis, University Hospital Münster , 48149 Münster , Germany

8. Department of Psychology, University of Halle , 06099 Halle (Saale) , Germany

Abstract

Abstract Electroconvulsive Therapy (ECT) is arguably the most effective intervention for treatment-resistant depression. While large interindividual variability exists, a theory capable of explaining individual response to ECT remains elusive. To address this, we posit a quantitative, mechanistic framework of ECT response based on Network Control Theory (NCT). Then, we empirically test our approach and employ it to predict ECT treatment response. To this end, we derive a formal association between Postictal Suppression Index (PSI)—an ECT seizure quality index—and whole-brain modal and average controllability, NCT metrics based on white-matter brain network architecture, respectively. Exploiting the known association of ECT response and PSI, we then hypothesized an association between our controllability metrics and ECT response mediated by PSI. We formally tested this conjecture in N = 50 depressive patients undergoing ECT. We show that whole-brain controllability metrics based on pre-ECT structural connectome data predict ECT response in accordance with our hypotheses. In addition, we show the expected mediation effects via PSI. Importantly, our theoretically motivated metrics are at least on par with extensive machine learning models based on pre-ECT connectome data. In summary, we derived and tested a control-theoretic framework capable of predicting ECT response based on individual brain network architecture. It makes testable, quantitative predictions regarding individual therapeutic response, which are corroborated by strong empirical evidence. Our work might constitute a starting point for a comprehensive, quantitative theory of personalized ECT interventions rooted in control theory.

Funder

German Research Foundation

Publisher

Oxford University Press (OUP)

Reference56 articles.

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