7 research outputs found
Improved discriminability of spatiotemporal neural patterns in rat motor cortical areas as directional choice learning progresses
abstract: Animals learn to choose a proper action among alternatives to improve their odds of success in food foraging and other activities critical for survival. Through trial-and-error, they learn correct associations between their choices and external stimuli. While a neural network that underlies such learning process has been identified at a high level, it is still unclear how individual neurons and a neural ensemble adapt as learning progresses. In this study, we monitored the activity of single units in the rat medial and lateral agranular (AGm and AGl, respectively) areas as rats learned to make a left or right side lever press in response to a left or right side light cue. We noticed that rat movement parameters during the performance of the directional choice task quickly became stereotyped during the first 2–3 days or sessions. But learning the directional choice problem took weeks to occur. Accompanying rats' behavioral performance adaptation, we observed neural modulation by directional choice in recorded single units. Our analysis shows that ensemble mean firing rates in the cue-on period did not change significantly as learning progressed, and the ensemble mean rate difference between left and right side choices did not show a clear trend of change either. However, the spatiotemporal firing patterns of the neural ensemble exhibited improved discriminability between the two directional choices through learning. These results suggest a spatiotemporal neural coding scheme in a motor cortical neural ensemble that may be responsible for and contributing to learning the directional choice task.View the article as published at http://journal.frontiersin.org/article/10.3389/fnsys.2015.00028/ful
Model Based Automatic and Robust Spike Sorting for Large Volumes of Multi-channel Extracellular Data
abstract: Spike sorting is a critical step for single-unit-based analysis of neural activities extracellularly and simultaneously recorded using multi-channel electrodes. When dealing with recordings from very large numbers of neurons, existing methods, which are mostly semiautomatic in nature, become inadequate.
This dissertation aims at automating the spike sorting process. A high performance, automatic and computationally efficient spike detection and clustering system, namely, the M-Sorter2 is presented. The M-Sorter2 employs the modified multiscale correlation of wavelet coefficients (MCWC) for neural spike detection. At the center of the proposed M-Sorter2 are two automatic spike clustering methods. They share a common hierarchical agglomerative modeling (HAM) model search procedure to strategically form a sequence of mixture models, and a new model selection criterion called difference of model evidence (DoME) to automatically determine the number of clusters. The M-Sorter2 employs two methods differing by how they perform clustering to infer model parameters: one uses robust variational Bayes (RVB) and the other uses robust Expectation-Maximization (REM) for Student’s -mixture modeling. The M-Sorter2 is thus a significantly improved approach to sorting as an automatic procedure.
M-Sorter2 was evaluated and benchmarked with popular algorithms using simulated, artificial and real data with truth that are openly available to researchers. Simulated datasets with known statistical distributions were first used to illustrate how the clustering algorithms, namely REMHAM and RVBHAM, provide robust clustering results under commonly experienced performance degrading conditions, such as random initialization of parameters, high dimensionality of data, low signal-to-noise ratio (SNR), ambiguous clusters, and asymmetry in cluster sizes. For the artificial dataset from single-channel recordings, the proposed sorter outperformed Wave_Clus, Plexon’s Offline Sorter and Klusta in most of the comparison cases. For the real dataset from multi-channel electrodes, tetrodes and polytrodes, the proposed sorter outperformed all comparison algorithms in terms of false positive and false negative rates. The software package presented in this dissertation is available for open access.Dissertation/ThesisDoctoral Dissertation Electrical Engineering 201
De animais a máquinas : humanos tecnicamente melhores nos imaginários de futuro da convergência tecnológica
Dissertação (mestrado)—Universidade de Brasília, Instituto de Ciências Sociais, Departamento de Sociologia, 2020.O tema desta investigação é discutir os imaginários sociais de ciência e tecnologia que emergem
a partir da área da neuroengenharia, em sua relação com a Convergência Tecnológica de quatro
disciplinas: Nanotecnologia, Biotecnologia, tecnologias da Informação e tecnologias Cognitivas -
neurociências- (CT-NBIC). Estas áreas desenvolvem-se e são articuladas por meio de discursos
que ressaltam o aprimoramento das capacidades físicas e cognitivas dos seres humanos, com
o intuito de construir uma sociedade melhor por meio do progresso científico e tecnológico, nos
limites das agendas de pesquisa e desenvolvimento (P&D).
Objetivos:
Os objetivos nesse cenário, são discutir as implicações éticas, econômicas, políticas e sociais
deste modelo de sistema sociotécnico. Nos referimos, tanto as aplicações tecnológicas, quanto
as consequências das mesmas na formação dos imaginários sociais, que tipo de relações se
estabelecem e como são criadas dentro desse contexto.
Conclusão:
Concluímos na busca por refletir criticamente sobre as propostas de aprimoramento humano
mediado pela tecnologia, que surgem enquanto parte da agenda da Convergência Tecnológica
NBIC. No entanto, as propostas de melhoramento humano vão muito além de uma agenda de
investigação. Há todo um quadro de referências filosóficas e políticas que defendem o
aprimoramento da espécie, vertentes estas que se aliam a movimentos trans-humanistas e pós-
humanistas, posições que são ao mesmo tempo éticas, políticas e econômicas. A partir de nossa
análise, entendemos que ciência, tecnologia e política estão articuladas, em coprodução, em
relação às expectativas de futuros que são esperados ou desejados. Ainda assim, acreditamos
que há um espaço de diálogo possível, a partir do qual buscamos abrir propostas para o debate
público sobre questões de ciência e tecnologia relacionadas ao aprimoramento da espécie
humana.Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq)The subject of this research is to discuss the social imaginaries of science and technology that
emerge from the area of neuroengineering in relation with the Technological Convergence of four
disciplines: Nanotechnology, Biotechnology, Information technologies and Cognitive technologies
-neurosciences- (CT-NBIC). These areas are developed and articulated through discourses that
emphasize the enhancement of human physical and cognitive capacities, the intuition it is to build
a better society, through the scientific and technological progress, at the limits of the research
and development (R&D) agendas.
Objectives:
The objective in this scenery, is to discuss the ethic, economic, politic and social implications of
this model of sociotechnical system. We refer about the technological applications and the
consequences of them in the formation of social imaginaries as well as the kind of social relations
that are created and established in this context.
Conclusion:
We conclude looking for critical reflections about the proposals of human enhancement mediated
by the technology. That appear as a part of the NBIC technologies agenda. Even so, the
proposals of human enhancement go beyond boundaries that an investigation agenda. There is
a frame of philosophical and political references that defend the enhancement of the human
beings. These currents that ally to the transhumanism and posthumanism movements, positions
that are ethic, politic and economic at the same time. From our analysis, we understand that
science, technology and politics are articulated, are in co-production, regarding the expected and
desired futures. Even so, we believe that there is a space of possible dialog, from which we look
to open proposals for the public discussion on questions of science and technology related to
enhancement of human beings