67 research outputs found
Visuo-motor transformations in the intraparietal sulcus mediate the acquisition of endovascular medical skill
Performing endovascular medical interventions safely and efficiently requires a diverse set of skills that need to be practised in dedicated training sessions. Here, we used multimodal magnetic resonance (MR) imaging to determine the structural and functional plasticity and core skills associated with skill acquisition. A training group learned to perform a simulator-based endovascular procedure, while a control group performed a simplified version of the task; multimodal MR images were acquired before and after training. Using a well-controlled interaction design, we found strong, multimodal evidence for the role of the intraparietal sulcus (IPS) in endovascular skill acquisition that is in line with previous work implicating the structure in simple visuo-motor and mental rotation tasks. Our results provide a unique window into the multimodal nature of rapid structural and functional plasticity of the human brain while learning a multifaceted and complex clinical skill. Further, our results provide a detailed description of the plasticity process associated with endovascular skill acquisition and highlight specific facets of skills that could enhance current medical pedagogy and be useful to explicitly target during clinical resident training
A Compact Model of Interface-Type Memristors Linking Physical and Device Properties
Memristors are an electronic device whose resistance depends on the voltage
history that has been applied to its two terminals. Despite its clear advantage
as a computational element, a suitable transport model is lacking for the
special class of interface-based memristors. Here, we adapt the widely-used
Yakopcic compact model by including transport equations relevant to
interface-type memristors. This model is able to reproduce the qualitative
behaviour measured upon Nb-doped SrTiO memristive devices. Our analysis
demonstrates a direct correlation between the devices' characteristic
parameters and those of our model. The model can clearly identify the charge
transport mechanism in different resistive states thus facilitating evaluation
of the relevant parameters pertaining to resistive switching in interface-based
memristors. One clear application of our study is its ability to inform the
design and fabrication of related memristive devices.Comment: 14 pages, 2 pages of Supplementary Data, 4 figures, 4 table
Traces of times past: Representations of temporal intervals in memory
Theories of time perception typically assume that some sort of memory represents time intervals. This memory component is typically underdeveloped in theories of time perception. Following earlier work that suggested that representations of different time intervals contaminate each other (Grondin, 2005; Jazayeri & Shadlen, 2010; Jones & Wearden, 2004), an experiment was conducted in which subjects had to alternate in reproducing two intervals. In two conditions of the experiment, the duration of one of the intervals changed over the experiment, forcing subjects to adjust their representation of that interval, while keeping the other constant. The results show that the adjustment of one interval carried over to the other interval, indicating that subjects were not able to completely separate the two representations. We propose a temporal reference memory that is based on existing memory models (Anderson, 1990). Our model assumes that the representation of an interval is based on a pool of recent experiences. In a series of simulations, we show that our pool model fits the data, while two alternative models that have previously been proposed do not
Distracting the Mind Improves Performance: An ERP Study
When a second target (T2) is presented in close succession of a first target (T1), people often fail to identify T2, a phenomenon known as the attentional blink (AB). However, the AB can be reduced substantially when participants are distracted during the task, for instance by a concurrent task, without a cost for T1 performance. The goal of the current study was to investigate the electrophysiological correlates of this paradoxical effect.Participants successively performed three tasks, while EEG was recorded. The first task (standard AB) consisted of identifying two target letters in a sequential stream of distractor digits. The second task (grey dots task) was similar to the first task with the addition of an irrelevant grey dot moving in the periphery, concurrent with the central stimulus stream. The third task (red dot task) was similar to the second task, except that detection of an occasional brief color change in the moving grey dot was required. AB magnitude in the latter task was significantly smaller, whereas behavioral performance in the standard and grey dots tasks did not differ. Using mixed effects models, electrophysiological activity was compared during trials in the grey dots and red dot tasks that differed in task instruction but not in perceptual input. In the red dot task, both target-related parietal brain activity associated with working memory updating (P3) as well as distractor-related occipital activity was significantly reduced.The results support the idea that the AB might (at least partly) arise from an overinvestment of attentional resources or an overexertion of attentional control, which is reduced when a distracting secondary task is carried out. The present findings bring us a step closer in understanding why and how an AB occurs, and how these temporal restrictions in selective attention can be overcome
Good vibrations, bad vibrations: Oscillatory brain activity in the attentional blink
The attentional blink (AB) is a deficit in reporting the second
(T2) of two targets (T1, T2) when presented in close temporal succession and
within a stream of distractor stimuli. The AB has received a great deal of
attention in the past two decades because it allows to study the mechanisms that
influence the rate and depth of information processing in various setups and
therefore provides an elegant way to study correlates of conscious perception in
supra-threshold stimuli. Recently evidence has accumulated suggesting that
oscillatory signals play a significant role in temporally coordinating
information between brain areas. This review focuses on studies looking into
oscillatory brain activity in the AB. The results of these studies indicate that
the AB is related to modulations in oscillatory brain activity in the theta,
alpha, beta, and gamma frequency bands. These modulations are sometimes
restricted to a circumscribed brain area but more frequently include several
brain regions. They occur before targets are presented as well as after the
presentation of the targets. We will argue that the complexity of the findings
supports the idea that the AB is not the result of a processing impairment in
one particular process or brain area, but the consequence of a dynamic interplay
between several processes and/or parts of a neural network
A nonlinear updating algorithm captures suboptimal inference in the presence of signal-dependent noise
Bayesian models have advanced the idea that humans combine prior beliefs and sensory observations to optimize behavior. How the brain implements Bayes-optimal inference, however, remains poorly understood. Simple behavioral tasks suggest that the brain can flexibly represent probability distributions. An alternative view is that the brain relies on simple algorithms that can implement Bayes-optimal behavior only when the computational demands are low. To distinguish between these alternatives, we devised a task in which Bayes-optimal performance could not be matched by simple algorithms. We asked subjects to estimate and reproduce a time interval by combining prior information with one or two sequential measurements. In the domain of time, measurement noise increases with duration. This property takes the integration of multiple measurements beyond the reach of simple algorithms. We found that subjects were able to update their estimates using the second measurement but their performance was suboptimal, suggesting that they were unable to update full probability distributions. Instead, subjects’ behavior was consistent with an algorithm that predicts upcoming sensory signals, and applies a nonlinear function to errors in prediction to update estimates. These results indicate that the inference strategies employed by humans may deviate from Bayes-optimal integration when the computational demands are high
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