The invention relates to transcranial stimulation.
It is known in the art that transcranial stimulation can be used to treat patients or to achieve cognitive enhancement in healthy individuals. Optimal parameters for the stimulation may differ between different individuals but need to be selected from a large range of possible combinations. As a consequence, a practical approach has been to use a one-size-fits-all methodology in which the same set of parameters are used for multiple different subjects.
It is an object of the invention to improve transcranial stimulation.
According to one aspect of the invention, there is provided a computer-implemented method for obtaining personalized parameters for transcranial stimulation, comprising: receiving baseline data about a test subject, the baseline data comprising information about the test subject acquired prior to any transcranial stimulation applied to the test subject; and using a Gaussian process model of performance of one or more training subjects to obtain personalized parameters for transcranial stimulation for the test subject based on the received baseline data, wherein: the Gaussian process jointly models subject performance during and/or after transcranial stimulation as a function of both i) parameters defining the transcranial stimulation; and ii) baseline data for the one or more training subjects.
Thus, a probabilistic model is provided that intrinsically takes account of variations between different people by means of baseline data. By taking account of the baseline data in this way the inventors have found that the model is better able to predict optimal parameters for the transcranial stimulation even where past data from no or very few subjects with the same or similar baseline data is available. The method is able to provide personalized parameters that vary between different subjects and, on average, perform better than a one-size-fits-all methodology which ignores the fact that people differ from each other, and that the individual brain is plastic and changes over time as well. The present method makes it possible to effectively tailor the stimulation protocol to provide the best outcome. The stimulation may be used for various clinical and non-clinical purposes, including for example improving tremor in Parkinson’s, improving people’s sustained attention/concentration, memory, mathematical performance, emotions, training capabilities, and learning (e.g., language, maths, IT, factual information).
In an embodiment, the baseline data represents a performance (e.g. cognitive performance and/or motor performance, subjective report) without influence from transcranial stimulation. The inventors have found that using baseline data of this type makes it possible to obtain personalized parameters particularly effectively.
In an embodiment, the obtaining of the personalized parameters further comprises: obtaining test data representing performances (e.g. cognitive performance and/or motor performance, subjective report) of the test subject during and/or after application of transcranial stimulation with multiple respective combinations of parameters; refining the Gaussian process model using the obtained test data; and using the refined Gaussian process model to obtain the personalized parameters. In an embodiment, the Gaussian process model is refined in an iterative Bayesian optimization process that in each step chooses to sample next where a combination of parameters for stimulation optimizes an acquisition function. Using an acquisition function in this way allows the Gaussian process model to explore the most relevant parts of the available parameter space in an efficient manner, thereby promoting rapid and reliable convergence to optimal personalized parameters for the test subject.
Embodiments of the invention will now be described, by way of example only, with reference to the accompanying drawings in which corresponding reference symbols indicate corresponding parts, and in which:
Transcranial alternating current stimulation (tACS) and similar techniques are believed to be able to promote oscillatory activity via transcranial stimulation. Such techniques may modulate brain oscillations that subserve cognitive processes. It is possible to enhance or disrupt the effects of the stimulation by changing parameters of the stimulation (e.g., current and frequency), for example to target a specific neural population. However, exploring the effects of every combination of parameters individually on a test subject (e.g., on cognitive performance) is not practical. It has therefore been difficult to use transcranial stimulation techniques such as tACS optimally. Embodiments of the present disclosure address this issue.
In step S1 of
Performance may be measured in various ways, providing a corresponding variety of possibilities for a format of the baseline data (in embodiments where the baseline data comprises information about performance). For example, measurements of accuracy and/or reaction times during tests may be made. In some embodiments, the baseline data comprises a scalar numerical value that may optionally vary continuously as a function of cognitive performance (e.g., a test score or IQ score). In some embodiments, the baseline data comprises a drift rate value obtained by applying a diffusion decision model to the results of tests performed by the subject. The tests may comprise any suitable activity that provides information about performance. In some embodiments, as exemplified below, the tests comprise mathematical tests, such as arithmetic tests. In some embodiments, arithmetic tests comprising single-digit times multi-digit multiplications are used. Modelling human behaviour using a diffusion decision model facilitates pinpointing of cognitive processes of interest in preference to more peripheral processes such as stimulus encoding or motor-related activity. This approach makes it possible to dissect different components in the chain of information processing by modelling the decision process and targeting the component that reflects ability/task difficulty (e.g., the drift rate, which combines response time and accuracy), rather than auxiliary components. Additionally, the approach allows simultaneous characterisation of changes in accuracy and reaction time in the form of a single metric value.
Skills needed for solving arithmetic problems vary greatly, not only between people with learning deficits but also in the general population. Similarly, a recent study highlighted the importance of individual differences in both neural and behavioural correlates that differ between people with high and low arithmetic skills. The left frontoparietal network has been implicated to play an important role in arithmetic processing and can be easily targeted by transcranial stimulation techniques such as tACS. A recent tACS study indicated the importance of this network in the left hemisphere in the memory domain which is also thought to underly stepwise calculation of arithmetic problems. The present method can improve targeting of this network by providing personalized parameters for the stimulation.
In step S2 of
In an embodiment, the obtaining of the personalized parameters comprises an iterative refining of the Gaussian process model using measurements of performance (e.g. cognitive and/or motor performance, subjective report) of the test subject during application of transcranial stimulation with multiple combinations of parameters. In some embodiments, the parameters include one or more of the following: frequency, frequencies, current, phase, duration, dose, brain region. Different combinations of currents in the range 0.4-2 mA and frequencies in the range of 0.1-100 Hz may be considered, for example. Where the stimulation comprises waveforms that are more complex than pure sinusoids, other parameters may be included to define relevant additional features of the waveforms (e.g., to define aspects of the frequency spectrum of the waveforms such as central frequency and bandwidth, band shape, pulse length, etc.). In the example procedure depicted in
In the example shown, in an initial instance of sub-step S21, initial parameters for stimulation for the test subject are obtained using only the pretrained Gaussian process model and the baseline data. In this embodiment, the initial operating parameters are thus obtained without yet having performed any measurements of performance (e.g. cognitive performance and/or motor performance, subjective report) during and/or after application of transcranial stimulation to the test subject. The pretrained Gaussian process model may be trained on range of previously collected data. This data can come from the random assignment of stimulation parameters. Technically the Gaussian process (GP) does not explore the different combinations, it just models the existing data and provides estimates of the response to the variety of stimulation parameters as well as an estimate of uncertainty. The exploration is done by the acquisition function which is the next stage of the Bayesian optimisation process.
In subsequent sub-step S22, a performance (e.g. cognitive performance and/or motor performance, subjective report) of the test subject during and/or after transcranial stimulation is measured. The transcranial stimulation is applied using the parameters provided by sub-step S21. The measured performance forms test data. During iteration, sub-step 22 is repeated, thereby obtaining test data that represents measurements of performance during and/or after application of transcranial stimulation with multiple respective combinations of operating parameters (e.g., the operating parameters have different combinations of values during each iteration).
In subsequent sub-step S23, the test data obtained in sub-step S22 is used to adjust the Gaussian process model that was used in the preceding instance of sub-step S21. Sub-steps S21, S22 and S23 are then iteratively repeated until the measured performance (e.g. cognitive performance and/or motor performance, subjective report) obtained in sub-step S22 converges to an optimal value (e.g., when a rate of improvement falls below a predetermined threshold value) and/or a predetermined number of iterations has been performed. Thus, the Gaussian process model is refined using the obtained test data (obtained over multiple iterations of sub-steps S21, S22 and S23 in the example shown). This optimization process may be performed across multiple different users (with each user using the process at least once) and/or multiple uses by each of one or more individual users.
The refined Gaussian process model at convergence provides a prediction of how subject performance (e.g. cognitive performance and/or motor performance, subjective report) is expected to vary as a function of parameters for stimulation for the test subject. The combination of parameters that are predicted by the refined Gaussian process model to give the maximum performance may thus be output as the personalized parameters for the test subject. The refined Gaussian process model is thus used to obtain the personalized parameters.
The Gaussian process model may be refined in an iterative Bayesian optimization (BO) process, as depicted schematically in
As depicted in
The Gaussian process model can be refined by providing further data points. In methods of the present disclosure, the further data points may comprise measurements of performance (e.g. cognitive performance and/or motor performance, subjective report) of the test subject during and/or after application of transcranial stimulation with different combinations of parameters, such as is provided by the test data generated during each iteration of the sub-step S22 in
In each step the iterative BO process may be configured to choose to sample next where x optimizes (e.g., maximizes) an acquisition function 10, as depicted in
As depicted in
The procedure described above for iteratively refining a Gaussian process model may also be used for providing the Gaussian process model that is initially input to step S21 in
As depicted schematically in
A function ƒ may be used to denote an unknown black-box function for which we do not have a closed-form expression, but we could have an infinite number of queries. Furthermore, this black-box function is expensive and time costly to evaluate. Formally, let ƒ: X → ℝ (a set of real numbers representing the values from - ∞ to + ∞) be a well-behaved function defined on a subset X ⊆ ℝd whereby d is the number of dimensions. In the case where ƒ represents cognitive performance, solving the following global optimisation problem could provide improved optimal parameters x*for applying transcranial stimulation
The BO algorithm can be used for example to find the global optimum of arithmetic performance, as indicated by drift rates, of the black-box function ƒ(x) by making a series of evaluations x1, x2, ..., xT. This approach does not, however, yet take optimal account of variations in baseline ability (e.g., baseline cognitive performance) between different subjects.
Each subject has individual baseline data, representing for example a baseline cognitive performance (e.g., arithmetic ability), which may be represented by a baseline data value c. The baseline data value c is provided separately for every subject. The inventors have found that optimal parameters to use for transcranial stimulation vary significantly between subjects with different baselines. That is, the optimal parameter x* is not unique for different baseline data values c. The inventors have recognised that methods of obtaining parameters for stimulation can be improved by adapting the global optimisation problem described above to intrinsically take account of the baseline data.
Taking account of the baseline data can be done by recasting the global optimization problem so as to be defined formally as:
where c is the baseline data value. The optimal parameter x* is not defined globally, but specifically to the variable c.
The traditional BO (without considering baseline data values c) reasons about f by building a Gaussian process (GP) through evaluations ƒ~GP(m,k), where m is the prior mean function and k is the covariance function. This flexible distribution allows us to associate a normally distributed random variable at every point in the continuous input space. Therefore, we get the predictive distribution for a new observation that also follows a Gaussian distribution and its mean (µ) and variance (σ2) are given by:
where K(U; V) is a covariance matrix whose element (i;j) is calculated as ki,j = k(xi, xj) with xi ∈ U and xj ∈ V. Behavioural observations are typically associated with noise that can be accommodated in a Gaussian process model. Namely, every ƒ(x) has an extra covariance with itself since the noise is assumed to be independent including a magnitude equal to the noise variance:
When considering noise, the output follows the Gaussian process as
where δi,j = 1 if i = j is the Kronecker’s delta. The covariance function for a noisy process becomes the sum of the signal covariance and the noise covariance. Particularly, the covariance function between two observations can be computed as:
To take account of the baseline data values c, one possible approach would be to build a Gaussian process and optimisation for each baseline data value c, respectively. However, such an approach suffers a critical problem of data efficiency. To elaborate, the number of data samples is not sufficient to estimate each baseline data value c separately. In embodiments of the present disclosure, this shortcoming is overcome by extending the Gaussian process surrogate to jointly model our target function ƒ and the additional baseline data value dimension c. In this case, the GP covariance becomes:
where k(xi, xj) is defined above and
These covariance functions correspond to the parameters for stimulation and baseline data values respectively. The length scale parameter
used in k(ci,cj) is different from
used in k(xi,xj). For example, if the baseline data length-scale
is extremely large, it means the performance function is not changing with respect to the baseline data (e.g., baseline performance). On the other hand, if
is small, it means the performance function is changing rapidly with the baseline data. We later use the maximum marginal likelihood to estimate these length scale parameters from the data directly. Under our modification for the GP to take account of baseline data values c, we can estimate the predictive mean and predictive variance as follows:
where we denote Z = [X, C], and the contextualised covariance matrix k is defined above.
To select the next point to evaluate, the acquisition function a(x) will be chosen to construct a utility function that is based on the Gaussian process model mentioned above. Instead of maximizing the expensive original function ƒ, we maximize the cheaper acquisition function to select the next most optimum point:
In this auxiliary maximisation problem, the acquisition function form is known and can be easily optimised by standard numerical techniques. One option for the acquisition function is the Gaussian process upper confidence bound (GP-UCB):
where µ(x,c) and σ(x,c) are the GP predictive mean and variance defined above. In the above formula, κ is the parameter controlling the exploration and exploitation tradeoff. The value of κ can be theoretically chosen following the approach presented in Srinivas, Niranjan, Andreas Krause, Sham Kakade, and Matthias Seeger. “Gaussian process optimization in the bandit setting: no regret and experimental design.” In Proceedings of the 27th International Conference on International Conference on Machine Learning, pp. 1015-1022. 2010.
In examples performed in the present study, the following acquisition function α(x) was used:
where Vstim is the drift rate during the 50 trials of an arithmetic multiplication block that is normalized by the Vbase which is the drift rate calculated over 25 trials from the baseline task. To determine improvement between the baseline and the stimulation block, a second Vbase was calculated over the other 25 trials from the baseline task. A Pearson correlation was calculated to determine if the two drift rates used as improvement index did not differ (r=0.57, p<0.001). Acquisition functions were designed to trade-off between exploration of the search space and exploitation of current promising regions. A burn-in phase of 60 random tACS frequency-current combinations was used that were assigned to the first 20 participants of the BO design to determine the amount of variation induced by stimulation. We decided to use a large burn-in in our paradigm to reliably design a Bayesian Optimisation algorithm that is based on a high amount of data.
To pick the hyperparameters (estimated parameters without using observed data) of the next stimulation block, one can optimize the expected improvement (EI) over the current best result or the GP-UCB. In short, it is more likely that the UCB selects evaluations with both a high mean and high variance. EI and UCB have been shown to be efficient in the number of function evaluations required to find the global optimum of many multimodal black-box functions. During the present study, the EI was applied to find the optimum in arithmetic performance. Lastly, we decided to remove one drift rate value of 3.6 during the experimental procedure due to possible ceiling effects the BO. In addition, due to technical problems one data point was not included in the BO procedure. In total, we acquired + iterations.
To the inventors’ knowledge, the current study is the first to attempt to optimise complex human behaviour by means of a personalized BO approach to obtaining parameters for transcranial stimulation, with the BO being configured to jointly model parameters for stimulation and baseline data representing personal information about a subject that is independent of any transcranial stimulation, such as baseline cognitive performance. In the particular example application studied, arithmetic performance was improved by applying different frequency-current tACS combinations over the left frontoparietal network.
Previous literature suggests a positive relationship between frontoparietal theta (4-7.5 Hz) connectivity and arithmetic baseline ability due to the importance of this frequency band in high-level cognitive processing including arithmetic. However, none was found when running a regression model for connectivity in the 4-8 Hz range (all p>0.3). The same applied to beta (13-40 Hz) connectivity (all p>0.1) and frontal theta power (p=0.88). However, our findings from the BO models highlights a strong performance effect in the beta frequency range (14-30 Hz) for subjects with average and high baseline abilities. We therefore examined the relationship between baseline ability and baseline beta power in an exploratory manner. We found a positive relationship between the two (non-parametric (spearman) correlation: rs =0.29, p =0.03). In other words, subjects with higher arithmetic baseline abilities have higher beta power in comparison to subjects with lower arithmetic baseline skills which corroborates the group-level BO model results discussed above with reference to
Fifty subjects gave written consent before the start of the study. Each individual received a financial compensation of 50 pounds. In addition to this compensation, subjects had the chance of winning an additional 50 pounds based on their performance. Behavioural data from all 50 participants, aged between 18-30 years old, were used for the Bayesian Optimisation (mean age = 22.52 ± standard deviation (SD)=4.09, 31 females, all right-handed, finished education level; 1 GCSEs, 14 A-level, 17 Undergraduates and 18 Postgraduates; In the UK educational system GCSE refers to secondary education and A-level refers to advanced level that can lead to university). All subjects reported no counterindications to electrical stimulation (see supplementary data for full screening list) as well as no history of dyscalculia, dyslexia or attentional deficits. The proposed study received the ethical approval by The University of Oxford Medical Sciences Interdivisional Research Ethics Committee (protocol number: MSD-IDREC-C2-2014-033).
Over the course of the experiment, participants completed four blocks of fifty multiplication problems, consisting of one baseline block (e.g., for obtaining a baseline metric value) and three stimulation blocks (e.g., for obtaining test data for refining the Gaussian process model). After an initial 4-minute resting-state EEG (rs-EEG) was recorded, the task was explained to the subjects and they completed 10 practice trials, followed by the baseline block during which no tACS was administered. Participants then underwent three blocks of multiplications in which they received tACS. Prior to each tACS block, the BO algorithm was run to determine the stimulation parameters (current intensity and frequency) to be delivered during the upcoming experimental block, based on the individual participant’s performance in the baseline block (i.e. based on the baseline data value for that subject). The stimulation parameters were automatically selected by the algorithm and administered whilst maintaining blinding in both the participant and experimenter. Rs-EEG was again recorded after each stimulation block.
Arithmetic performance was tested using an arithmetic calculation paradigm, consisting of problems involving a single-digit number multiplied by a two-digit number, with a three-digit outcome. A calculation paradigm was used instead of a retrieval paradigm since calculation has been associated with an increased activation in the frontoparietal network. None of the multiplications included operands with the digits 0, 1, 2, to account for variations in difficulty. In addition, the two-digit operand was not smaller than 15 and did not exist out of identical digits. Subjects were visually presented with a multiplication problem on a screen with a correct and incorrect answer positioned under the multiplication problem on the left and right side. The position of the correct and incorrect answer was randomly allocated to the right and left sides of the screen and they always differed by 10 digits. Lastly, every arithmetic multiplication problem consisted of a novel problem.
An arithmetic baseline task containing 50 different arithmetic multiplications was presented to measure individual arithmetic ability in terms of response times and accuracy. Subsequently, baseline drift rates were calculated for each subject according to the two-choice EZ-diffusion model. This model was chosen to reliably combine response time and accuracy in one outcome that can be optimised through the Bayesian Optimisation procedure. The 50 trials completed in the baseline block were randomly divided into two, and two separate drift rates were calculated. One was used as a measure of participant’s baseline ability, whilst the other was used to normalise the drift rates calculated during the optimisation phase (e.g., during the experimental procedure of the Bayesian Optimisation). This was done to eliminate dependency between participant’s baseline ability score and the normalised score in each stimulation block. To reduce fatigue, subjects had a break of 30 s after every 10 trials. After completing the baseline task, subjects had a short break (~3 minutes) where after they continued with the experimental procedure of the Bayesian Optimisation.
Prior to each stimulation block, the Bayesian Optimisation procedure was run in order to determine the stimulation parameters to use. In total, 150 diverse multiplication problems (three blocks of 50 trials) were administered during the experimental procedure. The combination of tACS parameters (frequency and current) were changed for every subject and between every block depending on the Bayesian optimisation. In addition, performance from the baseline task was entered as a contextual variable (e.g., as the baseline metric value c). Thus, behavioural performance optimisation relied on the frequency and current of tACS together with the baseline cognitive ability, as indicated for example by the drift rate as a baseline metric value. Every subject received three different frequency- current tACS combinations whilst mentally calculating arithmetic problems. Subsequently, subjects had to indicate which answer was correct as fast as possible. Indication of the correct answer was done by pressing either a left or right button on a response box situated in front of the participant corresponding to the position of the answer on the screen. It was explained to the participant that they must answer as accurately and as quickly as possible. After every block, performance drift rates were calculated immediately, and another rs-EEG was measured for four minutes.
The alternating current stimulation was always administered to the left frontoparietal network. The tACS procedures included two stimulation (3.14 mm diameter) NG Pistim Ag/AgCl electrodes (F3 and P3) with one return electrode (Cz) using the Starstim 32 (Neuroelectrics, Barcelona). The impedances of the electrodes were held at <10 kQ. The stimulation intensity ranged between 0.1 mA - 1.6 mA peak-to- peak in steps of 0.1 for the burn-in phase of the study. For the optimisation, 0 mA was also added to control for possible sham influences. We chose this maximum stimulation intensity based on a small pilot study on 3 subjects to determine the maximum comfortable intensity.
Stimulation was administered in a double-blind manner during the three experimental blocks with a maximum of 10 minutes for each block. Stimulation started 45 s before the start of the block and changed after every block. If the subjects received a stimulation intensity of 0 mA during a block (sham stimulation), a ramp-up and a ramp-down of 30 s was initiated to provide the initial skin sensations during stimulation to ensure blinding. When the subject completed a block within 10 minutes, stimulation was ramped down for 30 s and the subject proceeded to the four-minute rs-EEG. Note that in cases where subjects completed the task faster than 10 minutes, they did not receive the full length of stimulation (24 of 150 stimulation blocks had a duration less than 10 minutes but more than 7.84 min and 126 stimulation blocks had a duration more than 10 minutes). This poses no problem since the current study only investigated the online effects of tACS. After completing a block related to one tACS combination the participant filled out a questionnaire in which they were asked several questions designed to gauge the level of sensations experienced during stimulation (see supplementary information for the full questionnaire). We used this data to assess the relationship between intensity rating of every sensation and tACS amplitude.
Several simulations were run to validate the cBO procedure during arithmetic performance and tACS. This analysis aimed to show that BO can outperform random sampling of different frequency-current tACS combinations. In addition, we wanted to compare the effects of the different acquisition functions (EI and UCB) and different dimensions ranging from 3 to 6. Note that the current study contained three dimensions, namely frequency, current, and individualised baseline ability (baseline metric value). Therefore, we ran 60 iterations using the Hartmann function that included four local minima for three dimensions similar to our experimental procedure of the BO in which we have three dimensions. The same was done for the Hartmann functions using 6 dimensions, the Ackley function using 5 dimensions, and the G-function using 4 dimensions. These simulations were noise free as BO is used mainly in noise free contexts. In contrast, human studies are prone to noisy evaluations. Therefore, we decided to introduce noise in the simulation by running the same Hartmann 3-Dimensional function for different noise variation values
Performance in these simulations were compared in terms of the distance from the known optimiser location with the Euclidean distance as metric. Lastly, we used the Hartmann function to compare the BO that models only parameters for stimulation with the BO that jointly models parameters for stimulation and baseline data.
The rs-EEG data of the remaining datasets were separated in 2 second segments with an overlap of 1 second and windowed with a Hann window. Subsequently, data were transformed into the frequency domain via Fast Fourier Transformation (FFT). Theta (4-7.5 Hz) and beta (14-30 Hz) frequency bands were calculated according to their relative power (µV2) and normalised by means of dividing the absolute frequency power of each frequency band by the average absolute power in the 1.5-30 Hz range. In addition, we decided to normalise the power by means of dividing the absolute frequency power of the applied tACS frequency value by the average absolute power in the 4-50 Hz range. Weighted phase lag index (wPLI) in the theta and beta range was computed to determine the phase lag synchronisation between the left frontal and parietal areas at baseline and after every tACS block. This computation was done for the complementary channels F3 and P3. Theta wPLI was calculated for 4-8 Hz in steps of 1 Hz and beta wPLI was calculated from 14 - 30 Hz in steps of 4 Hz. Furthermore, we normalised wPLI by calculating the wPLI at the specific tACS frequency divided by the baseline wPLI at the same frequency.
First, outliers were removed with Cook’s distance before running statistical models. In order to focus on the relation between arithmetic baseline ability and spectral power, separate regression models were run with theta and beta power as dependent factor. Likewise, we tested if there was a relation between frontoparietal theta and beta connectivity scores by running several regression models in steps of 1 Hz for theta wPLI and steps of 4 Hz.
The following describes work demonstrating the effectiveness of the disclosed method of obtaining personalized parameters for transcranial electrical stimulation (referred to below as “tES”) when applied to treating Attention Deficit Hyperactivity Disorder (ADHD).
A simulated function was designed to demonstrate the utility of taking into account ADHD heterogeneity in order to tailor optimal tES parameters using personalized Bayesian optimization. The simulated function was set up with two input dimensions: (1) tES Current Intensity (mA) ranging from 0.1 to 2.0 and (2) Neurophysiology (TBR) ranging from 0.6 to 3.0. The Neurophysiology was considered as the personalized variable, which is specific to each participant. The output of the simulated function was the clinical outcome, which for illustrative purposes ranged from -1 (poor outcome) to 1 (desired outcome).
The simulated function is visualized in
Three approaches were run and compared: 1) Random search, 2) non-personalized Bayesian optimization (hereafter, Bayesian optimization), and 3) personalized Bayesian optimization (which may be implemented using any of the methods for obtaining personalized parameters described above), over 30 iterations including 6 randomly chosen points at the beginning. The program was implemented in Python. Each iteration took two seconds to suggest a new parameter.
The true optimal parameter for each value of Neurophysiology, which is unknown to the scientist/clinician, are shown as black dots in
The best parameter estimated at the final iteration by Bayesian optimization and personalized Bayesian optimization are visualized in
Number | Date | Country | Kind |
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2000874.4 | Jan 2020 | GB | national |
Filing Document | Filing Date | Country | Kind |
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PCT/GB2021/050123 | 1/20/2021 | WO |