The technology underlying brain computer interfaces has recently undergone rapid development, though a variety of issues remain that are currently preventing it from becoming a viable clinical assistive tool. Though decoding of motor output has been shown to be particularly effective when using spikes, these decoders tend to degrade with the loss of subsets of these signals. One potential solution to this problem is to include features derived from LFP signals in the decoder to mitigate these negative effects. We explored this solution and found that the decline in decoding performance that accompanies spiking unit dropout was significantly reduced when LFP power features were included in the decoder. Additionally, high frequency LFP features in the 100-170 Hz band were more effective than low frequency LFP features in the 2-4 Hz band at protecting the decoder from a dropoff in performance. LFP power appears to be an effective signal to improve the robustness of spiking unit decoders. Future studies will explore online classification and performance improvements in chronic implants by the proposed method.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4301727PMC
http://dx.doi.org/10.1109/EMBC.2014.6943836DOI Listing

Publication Analysis

Top Keywords

decoding performance
8
spiking unit
8
lfp power
8
frequency lfp
8
lfp features
8
lfp
5
local field
4
field potentials
4
potentials mitigate
4
mitigate decline
4

Similar Publications

Background: The prohibitive costs of drug development for Alzheimer's Disease (AD) emphasize the need for alternative in silico drug repositioning strategies. Graph learning algorithms, capable of learning intrinsic features from complex network structures, can leverage existing databases of biological interactions to improve predictions in drug efficacy. We developed a novel machine learning framework, the PreSiBOGNN, that integrates muti-modal information to predict cognitive improvement at the subject level for precision medicine in AD.

View Article and Find Full Text PDF

Gaussianmorph: deformable medical image registration with Gaussian noise constraints.

Biomed Eng Lett

January 2025

School of Information Science and Engineering, LinYi University, Linyi, 276000 Shandong China.

Deep learning-based image registration methods offer advantages of time efficiency and registration outcomes by automatically extracting enough image features. Currently, more and more scholars choose to use cascaded networks to achieve coarse-to-fine registration. Although cascaded networks take a lot of time in the training and inference stages, they can improve registration performance.

View Article and Find Full Text PDF

Innovative breast cancer detection using a segmentation-guided ensemble classification framework.

Biomed Eng Lett

January 2025

Electronics and Communication Engineering, IFET College of Engineering, Villupuram, Tamilnadu India.

Unlabelled: Breast cancer (BC) remains a significant global health issue, necessitating innovative methodologies to improve early detection and diagnosis. Despite the existence of intelligent deep learning models, their efficacy is often limited due to the oversight of small-sized masses, leading to false positive and false negative outcomes. This research introduces a novel segmentation-guided classification model developed to increase BC detection accuracy.

View Article and Find Full Text PDF

Decoding Periorbital Aging: A Multilayered Analysis of Anatomical Changes.

Aesthetic Plast Surg

January 2025

Division of Plastic and Maxillofacial Surgery, Department of Surgery, Ramathibodi Hospital, Mahidol University, Bangkok, Thailand.

Background: Periorbital aging is a complex phenomenon that involves multiple layers of facial anatomy, including bone, fat, and globe. While previous studies have predominantly focused on age-related changes in facial fat compartments, this research aims to provide a comprehensive understanding of all periorbital components, including upper and lower orbital fat, orbital cavity volume, globe volume, and globe position, in the context of aging.

Methods: We conducted a retrospective study involving 118 patients (236 subjects) aged 18-99 years who underwent brain MRI using a 3 Tesla MR system.

View Article and Find Full Text PDF

Background: Selective attention is a fundamental cognitive mechanism that allows people to prioritise task-relevant information while ignoring irrelevant information. Previous research has suggested key roles of parietal event-related potentials (ERPs) and alpha oscillatory responses in attention tasks. However, the informational content of these signals is less clear, and their causal effects on the coding of multiple task elements are yet unresolved.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!