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The TIMEBASE Study: IdenTifying dIgital bioMarkers of illnEss activity in BipolAr diSordEr. Preliminary results

Published online by Cambridge University Press:  01 September 2022

G. Anmella*
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
A. Mas
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
I. Pacchiarotti
Affiliation:
Hospital Clínic de Barcelona, Psychiatry And Psychology, Barcelona, Spain
T. Fernández
Affiliation:
Hospital Clínic de Barcelona, Psychiatry, Barcelona, Spain
A. Bastidas
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
I. Agasi
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
M. Garriga
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
N. Verdolini
Affiliation:
University of Barcelona, Bipolar And Depressive Disorders Unit, Institute Of Neuroscience, Hospital Clinic, Idibaps, Cibersam, Barcelona, Spain
N. Arbelo
Affiliation:
Hospital Clínic Barcelona, Psychiatry, Barcelona, Spain
D. Nicolás
Affiliation:
Hospital Clínic de Barcelona, Department Of Internal Medicine Psychology, Barcelona, Spain
V. Ruiz
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
M. Valentí
Affiliation:
Hospital Clinic of Barcelona, University of Barcelona, IDIBAPS, CIBERSAM, Barcelona Bipolar Disorders Program, Neuroscience Institute, Barcelona, Spain
A. Murru
Affiliation:
Hospital Clínic de Barcelona, Bipolar And Depressive Disorders Unit, Institute Of Neuroscience, Barcelona, Spain
E. Vieta
Affiliation:
Hospital Clinic, Psychiatry And Psychology, Barcelona, Spain
A. Solanes
Affiliation:
IDIBAPS, Imaging Of Mood-and Anxiety-related Disorders, Barcelona, Spain
F. Corponi
Affiliation:
University of Edinburgh, School Of Informatics, Edimburgh, United Kingdom
B. Li
Affiliation:
University of Edinburgh, School Of Informatics, Edimburgh, United Kingdom
D. Hidalgo-Mazzei
Affiliation:
Hospital Clínic de Barcelona, Department Of Psychiatry And Psychology, Barcelona, Spain
*
*Corresponding author.

Abstract

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Introduction

Mood episodes in bipolar disorder (BD) are still identified with subjective retrospective reports and scales. Digital biomarkers, such as actigraphy, heart rate variability, or ElectroDermal activity (EDA) have demonstrated their potential to objectively capture illness activity.

Objectives

To identify physiological digital signatures of illness activity during acute episodes of BD compared to euthymia and healthy controls (HC) using a novel wearable device (Empatica´s E4).

Methods

A pragmatic exploratory study. The sample will include 3 independent groups totalizing 60 individuals: 36 BD inpatients admitted due to severe acute episodes of mania (N=12), depression (N=12), and mixed features (N=12), will wear the E4-device at four timepoints: the acute phase (T0), treatment response (T1), symptoms remission (T2) and during euthymia (T3; outpatient follow-up). 12 BD euthymic outpatients and 12 HC will be asked to wear the E4-device once. Data pre-processing included average downsampling, channel time-alignment in 2D segments, 3D-array stacking of segments, and random shuffling for training/validation sets. Finally, machine learning algorithms will be applied.

Results

A total of 10 patients and 5 HC have been recruited so far. The preliminary results follow the first differences between the physiological digital biomarkers between manic and depressive episodes. 3 fully connected layers with 32 hidden units, ectified linear activation function (ReLU) activation, 25% dropout rate, significantly differentiated a manic from a depressive episode at different timepoints (T0, T1, T2).

Conclusions

New wearables technologies might provide objective decision-support parameters based on digital signatures of symptoms that would allow tailored treatments and early identification of symptoms.

Disclosure

No significant relationships.

Type
Abstract
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press on behalf of the European Psychiatric Association
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