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1.
Cell Rep ; 27(3): 872-885.e7, 2019 04 16.
Artigo em Inglês | MEDLINE | ID: mdl-30995483

RESUMO

Natural sounds have rich spectrotemporal dynamics. Spectral information is spatially represented in the auditory cortex (ACX) via large-scale maps. However, the representation of temporal information, e.g., sound offset, is unclear. We perform multiscale imaging of neuronal and thalamic activity evoked by sound onset and offset in awake mouse ACX. ACX areas differed in onset responses (On-Rs) and offset responses (Off-Rs). Most excitatory L2/3 neurons show either On-Rs or Off-Rs, and ACX areas are characterized by differing fractions of On and Off-R neurons. Somatostatin and parvalbumin interneurons show distinct temporal dynamics, potentially amplifying Off-Rs. Functional network analysis shows that ACX areas contain distinct parallel onset and offset networks. Thalamic (MGB) terminals show either On-Rs or Off-Rs, indicating a thalamic origin of On and Off-R pathways. Thus, ACX areas spatially represent temporal features, and this representation is created by spatial convergence and co-activation of distinct MGB inputs and is refined by specific intracortical connectivity.


Assuntos
Córtex Auditivo/fisiologia , Tálamo/fisiologia , Estimulação Acústica , Animais , Vias Auditivas/fisiologia , Potenciais Pós-Sinápticos Excitadores , Interneurônios/metabolismo , Camundongos , Camundongos Endogâmicos C57BL , Técnicas de Patch-Clamp , Células Piramidais/fisiologia
2.
Annu Int Conf IEEE Eng Med Biol Soc ; 2018: 25-28, 2018 Jul.
Artigo em Inglês | MEDLINE | ID: mdl-30440332

RESUMO

In a complex auditory scene comprising multiple sound sources, humans are able to target and track a single speaker. Recent studies have provided promising algorithms to decode the attentional state of a listener in a competing-speaker environment from non-invasive brain recordings sun exhibit poor performance at temporal resolutions suitable for real-time implementation, which hinders their utilization in emerging applications such as smart hearich as electroencephalography (EEG). These algorithms require substantial training datasets and ofteng aids. In this work, we propose a real-time attention decoding framework by integrating techniques from Bayesian filtering, $\ell_{1}$-regularization, state-space modeling, and Expectation Maximization, which is capable of producing robust and statistically interpretable measures of auditory attention at high temporal resolution. Application of our proposed algorithm to synthetic and real EEG data yields a performance close to the state-of-the-art offline methods, while operating in near real-time with a minimal amount of training data.


Assuntos
Atenção , Teorema de Bayes , Eletroencefalografia , Algoritmos , Percepção Auditiva , Encéfalo , Eletroencefalografia/métodos , Humanos
3.
Front Neurosci ; 12: 262, 2018.
Artigo em Inglês | MEDLINE | ID: mdl-29765298

RESUMO

Humans are able to identify and track a target speaker amid a cacophony of acoustic interference, an ability which is often referred to as the cocktail party phenomenon. Results from several decades of studying this phenomenon have culminated in recent years in various promising attempts to decode the attentional state of a listener in a competing-speaker environment from non-invasive neuroimaging recordings such as magnetoencephalography (MEG) and electroencephalography (EEG). To this end, most existing approaches compute correlation-based measures by either regressing the features of each speech stream to the M/EEG channels (the decoding approach) or vice versa (the encoding approach). To produce robust results, these procedures require multiple trials for training purposes. Also, their decoding accuracy drops significantly when operating at high temporal resolutions. Thus, they are not well-suited for emerging real-time applications such as smart hearing aid devices or brain-computer interface systems, where training data might be limited and high temporal resolutions are desired. In this paper, we close this gap by developing an algorithmic pipeline for real-time decoding of the attentional state. Our proposed framework consists of three main modules: (1) Real-time and robust estimation of encoding or decoding coefficients, achieved by sparse adaptive filtering, (2) Extracting reliable markers of the attentional state, and thereby generalizing the widely-used correlation-based measures thereof, and (3) Devising a near real-time state-space estimator that translates the noisy and variable attention markers to robust and statistically interpretable estimates of the attentional state with minimal delay. Our proposed algorithms integrate various techniques including forgetting factor-based adaptive filtering, ℓ1-regularization, forward-backward splitting algorithms, fixed-lag smoothing, and Expectation Maximization. We validate the performance of our proposed framework using comprehensive simulations as well as application to experimentally acquired M/EEG data. Our results reveal that the proposed real-time algorithms perform nearly as accurately as the existing state-of-the-art offline techniques, while providing a significant degree of adaptivity, statistical robustness, and computational savings.

4.
Proc Natl Acad Sci U S A ; 115(17): E3869-E3878, 2018 04 24.
Artigo em Inglês | MEDLINE | ID: mdl-29632213

RESUMO

Quantifying the functional relations between the nodes in a network based on local observations is a key challenge in studying complex systems. Most existing time series analysis techniques for this purpose provide static estimates of the network properties, pertain to stationary Gaussian data, or do not take into account the ubiquitous sparsity in the underlying functional networks. When applied to spike recordings from neuronal ensembles undergoing rapid task-dependent dynamics, they thus hinder a precise statistical characterization of the dynamic neuronal functional networks underlying adaptive behavior. We develop a dynamic estimation and inference paradigm for extracting functional neuronal network dynamics in the sense of Granger, by integrating techniques from adaptive filtering, compressed sensing, point process theory, and high-dimensional statistics. We demonstrate the utility of our proposed paradigm through theoretical analysis, algorithm development, and application to synthetic and real data. Application of our techniques to two-photon Ca2+ imaging experiments from the mouse auditory cortex reveals unique features of the functional neuronal network structures underlying spontaneous activity at unprecedented spatiotemporal resolution. Our analysis of simultaneous recordings from the ferret auditory and prefrontal cortical areas suggests evidence for the role of rapid top-down and bottom-up functional dynamics across these areas involved in robust attentive behavior.


Assuntos
Córtex Auditivo/fisiologia , Sinalização do Cálcio/fisiologia , Cálcio/metabolismo , Modelos Neurológicos , Rede Nervosa/fisiologia , Animais , Córtex Auditivo/diagnóstico por imagem , Camundongos , Rede Nervosa/diagnóstico por imagem
5.
Neuron ; 97(4): 885-897.e6, 2018 02 21.
Artigo em Inglês | MEDLINE | ID: mdl-29398362

RESUMO

Sensory detection tasks enhance representations of behaviorally meaningful stimuli in primary auditory cortex (A1). However, it remains unclear how A1 encodes decision-making. Neurons in A1 layer 2/3 (L2/3) show heterogeneous stimulus selectivity and complex anatomical connectivity, and receive input from prefrontal cortex. Thus, task-related modulation of activity in A1 L2/3 might differ across subpopulations. To study the neural coding of decision-making, we used two-photon imaging in A1 L2/3 of mice performing a tone-detection task. Neural responses to targets showed attentional gain and encoded behavioral choice. To characterize network representation of behavioral choice, we analyzed functional connectivity using Granger causality, pairwise noise correlations, and neural decoding. During task performance, small groups of four to five neurons became sparsely linked, locally clustered, and rostro-caudally oriented, while noise correlations both increased and decreased. Our results suggest that sensory-based decision-making involves small neural networks driven by the sum of sensory input, attentional gain, and behavioral choice.


Assuntos
Córtex Auditivo/fisiologia , Tomada de Decisões/fisiologia , Neurônios/fisiologia , Estimulação Acústica , Animais , Atenção , Percepção Auditiva , Feminino , Masculino , Camundongos Endogâmicos CBA , Vias Neurais/fisiologia
6.
Annu Int Conf IEEE Eng Med Biol Soc ; 2016: 3410-3413, 2016 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-28269035

RESUMO

We consider the problem of sparse adaptive neuronal system identification, where the goal is to estimate the sparse time-varying neuronal model parameters in an online fashion from neural spiking observations. We develop two adaptive filters based on greedy estimation techniques and regularized log-likelihood maximization. We apply the proposed algorithms to simulated spiking data as well as experimentally recorded data from the ferret's primary auditory cortex during performance of auditory tasks. Our results reveal significant performance gains achieved by the proposed algorithms in terms of sparse identification and trackability, compared to existing algorithms.


Assuntos
Algoritmos , Modelos Neurológicos , Animais , Córtex Auditivo/fisiologia , Furões/fisiologia
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