2020
DOI: 10.3390/brainsci10100707
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Regression Networks for Neurophysiological Indicator Evaluation in Practicing Motor Imagery Tasks

Abstract: Motor Imagery (MI) promotes motor learning in activities, like developing professional motor skills, sports gestures, and patient rehabilitation. However, up to 30% of users may not develop enough coordination skills after training sessions because of inter and intra-subject variability. Here, we develop a data-driven estimator, termed Deep Regression Network (DRN), which jointly extracts and performs the regression analysis in order to assess the efficiency of the individual brain networks in practicing MI ta… Show more

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Cited by 4 publications
(4 citation statements)
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References 54 publications
(68 reference statements)
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“…Pre-training indicator: We estimate the pre-training prediction ability of the activation maps extracted from the pre-cue interval (τ 1 ) for anticipating the subject's accuracy produced by the D&W CNN classifier in distinguishing either MI class. Thus, we obtain an r-squared value of r2 = 0.36 comparable with the one reported in [61] implemented via a similar D&W Neural-Network regression, implying that the activation maps may help in pre-screening participants for the ability to learn regulation of brain activity.…”
Section: Prediction Ability Of Extracted Gradcam++supporting
confidence: 72%
See 1 more Smart Citation
“…Pre-training indicator: We estimate the pre-training prediction ability of the activation maps extracted from the pre-cue interval (τ 1 ) for anticipating the subject's accuracy produced by the D&W CNN classifier in distinguishing either MI class. Thus, we obtain an r-squared value of r2 = 0.36 comparable with the one reported in [61] implemented via a similar D&W Neural-Network regression, implying that the activation maps may help in pre-screening participants for the ability to learn regulation of brain activity.…”
Section: Prediction Ability Of Extracted Gradcam++supporting
confidence: 72%
“…However, the short-time window selected to encode the latency of brain responses must be adjusted to extract temporal EEG dynamics accurately [69]. For example, as [61] suggests, using shorter window values may increase the performance of poor-performing subjects.…”
Section: Discussion and Concluding Remarksmentioning
confidence: 99%
“…datasets that are also used by Lee et al (2020) and Velasquez-Martinez et al (2020). Merging public datasets with similar BCI paradigms could be a cost-effective way of examining the relationships between and within studies even further.…”
Section: Contribution To the Fieldmentioning
confidence: 99%
“…These metrics, widely recognized for evaluating predictive model performance, confirmed the robustness of our models in distinguishing between TNBC and non-TNBC cases. Our models demonstrated exemplary performance across these parameters, indicating their potential to significantly contribute to the field of TNBC subtyping diagnosis and treatment 42 .…”
Section: Discussionmentioning
confidence: 86%