Multi-objective optimization via evolutionary algorithm (MOVEA) for high-definition transcranial electrical stimulation of the human brain

11/10/2022
by   Mo Wang, et al.
0

Transcranial temporal interference stimulation (tTIS) has been reported to be effective in stimulating deep brain structures in experimental studies. However, a computational framework for optimizing the tTIS strategy and simulating the impact of tTIS on the brain is still lacking, as previous methods rely on predefined parameters and hardly adapt to additional constraints. Here, we propose a general framework, namely multi-objective optimization via evolutionary algorithm (MOVEA), to solve the nonconvex optimization problem for various stimulation techniques, including tTIS and transcranial alternating current stimulation (tACS). By optimizing the electrode montage in a two-stage structure, MOVEA can be compatible with additional constraints (e.g., the number of electrodes, additional avoidance regions), and MOVEA can accelerate to obtain the Pareto fronts. These Pareto fronts consist of a set of optimal solutions under different requirements, suggesting a trade-off relationship between conflicting objectives, such as intensity and focality. Based on MOVEA, we make comprehensive comparisons between tACS and tTIS in terms of intensity, focality and maneuverability for targets of different depths. Our results show that although the tTIS can only obtain a relatively low maximum achievable electric field strength, for example, the maximum intensity of motor area under tTIS is 0.42V /m, while 0.51V /m under tACS, it helps improve the focality by reducing 60 volume outside the target. We further perform ANOVA on the stimulation results of eight subjects with tACS and tTIS. Despite the individual differences in head models, our results suggest that tACS has a greater intensity and tTIS has a higher focality. These findings provide guidance on the choice between tACS and tTIS and indicate a great potential in tTIS-based personalized neuromodulation. Code will be released soon.

READ FULL TEXT

page 4

page 8

page 10

page 11

page 12

research
09/28/2020

A Review of Evolutionary Multi-modal Multi-objective Optimization

Multi-modal multi-objective optimization aims to find all Pareto optimal...
research
08/16/2021

MOSMA: Multi-objective Slime Mould Algorithm Based on Elitist Non-dominated Sorting

This paper proposes a multi-objective Slime Mould Algorithm (MOSMA), a m...
research
05/31/2023

Evolutionary Solution Adaption for Multi-Objective Metal Cutting Process Optimization

Optimizing manufacturing process parameters is typically a multi-objecti...
research
12/17/2022

Molecule optimization via multi-objective evolutionary in implicit chemical space

Machine learning methods have been used to accelerate the molecule optim...
research
03/28/2023

Scaling Multi-Objective Security Games Provably via Space Discretization Based Evolutionary Search

In the field of security, multi-objective security games (MOSGs) allow d...
research
02/08/2011

Evolutionary multiobjective optimization of the multi-location transshipment problem

We consider a multi-location inventory system where inventory choices at...
research
06/23/2023

Multi-objective optimization based network control principles for identifying personalized drug targets with cancer

It is a big challenge to develop efficient models for identifying person...

Please sign up or login with your details

Forgot password? Click here to reset