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Molecular Mechanisms of Opioid Receptor-dependent Signaling and Novel Therapeutics,
Using Adversarial Collaboration to Harness Collective Intelligence
There are many mysteries in the universe. One of the most significant, often considered the final frontier in science, is understanding how our subjective experience, or consciousness, emerges from the collective action of neurons in biological systems. While substantial progress has been made over the past decades, a unified and widely accepted explanation of the neural mechanisms underpinning consciousness remains elusive. The field is rife with theories that frequently provide contradictory explanations of the phenomenon. To accelerate progress, we have adopted a new model of science: adversarial collaboration in team science. Our goal is to test theories of consciousness in an adversarial setting. Adversarial collaboration offers a unique way to bolster creativity and rigor in scientific research by merging the expertise of teams with diverse viewpoints. Ideally, we aim to harness collective intelligence, embracing various perspectives, to expedite the uncovering of scientific truths. In this talk, I will highlight the effectiveness (and challenges) of this approach using selected case studies, showcasing its potential to counter biases, challenge traditional viewpoints, and foster innovative thought. Through the joint design of experiments, teams incorporate a competitive aspect, ensuring comprehensive exploration of problems. This method underscores the importance of structured conflict and diversity in propelling scientific advancement and innovation.
Toward an open science ecosystem for neuroimaging
It is now widely accepted that openness and transparency are keys to improving the reproducibility of scientific research, but many challenges remain to adoption of these practices. I will discuss the growth of an ecosystem for open science within the field of neuroimaging, focusing on platforms for open data sharing and open source tools for reproducible data analysis. I will also discuss the role of the Brain Imaging Data Structure (BIDS), a community standard for data organization, in enabling this open science ecosystem, and will outline the scientific impacts of these resources.
The role of population structure in computations through neural dynamics
Neural computations are currently investigated using two separate approaches: sorting neurons into functional subpopulations or examining the low-dimensional dynamics of collective activity. Whether and how these two aspects interact to shape computations is currently unclear. Using a novel approach to extract computational mechanisms from networks trained on neuroscience tasks, here we show that the dimensionality of the dynamics and subpopulation structure play fundamentally com- plementary roles. Although various tasks can be implemented by increasing the dimensionality in networks with fully random population structure, flexible input–output mappings instead require a non-random population structure that can be described in terms of multiple subpopulations. Our analyses revealed that such a subpopulation structure enables flexible computations through a mechanism based on gain-controlled modulations that flexibly shape the collective dynamics. Our results lead to task-specific predictions for the structure of neural selectivity, for inactivation experiments and for the implication of different neurons in multi-tasking.
Efficient Random Codes in a Shallow Neural Network
Efficient coding has served as a guiding principle in understanding the neural code. To date, however, it has been explored mainly in the context of peripheral sensory cells with simple tuning curves. By contrast, ‘deeper’ neurons such as grid cells come with more complex tuning properties which imply a different, yet highly efficient, strategy for representing information. I will show that a highly efficient code is not specific to a population of neurons with finely tuned response properties: it emerges robustly in a shallow network with random synapses. Here, the geometry of population responses implies that optimality obtains from a tradeoff between two qualitatively different types of error: ‘local’ errors (common to classical neural population codes) and ‘global’ (or ‘catastrophic’) errors. This tradeoff leads to efficient compression of information from a high-dimensional representation to a low-dimensional one. After describing the theoretical framework, I will use it to re-interpret recordings of motor cortex in behaving monkey. Our framework addresses the encoding of (sensory) information; if time allows, I will comment on ongoing work that focuses on decoding from the perspective of efficient coding.
Artificial Intelligence and Racism – What are the implications for scientific research?
As questions of race and justice have risen to the fore across the sciences, the ALBA Network has invited Dr Shakir Mohamed (Senior Research Scientist at DeepMind, UK) to provide a keynote speech on Artificial Intelligence and racism, and the implications for scientific research, that will be followed by a discussion chaired by Dr Konrad Kording (Department of Neuroscience at University of Pennsylvania, US - neuromatch co-founder)
Representations of abstract relations in infancy
Abstract relations are considered the pinnacle of human cognition, allowing analogical and logical reasoning, and possibly setting humans apart from other animal species. Such relations cannot be represented in a perceptual code but can easily be represented in a propositional language of thought, where relations between objects are represented by abstract discrete symbols. Focusing on the abstract relations same and different, I will show that (1) there is a discontinuity along ontogeny with respect to the representations of abstract relations, but (2) young infants already possess representations of same and different. Finally, (3) I will investigate the format of representation of abstract relations in young infants, arguing that those representations are not discrete, but rather built by juxtaposing abstract representations of entities.
Neurotoxicity is a major health problem in Africa: focus on Parkinson's / Parkinsonism
Parkinson's disease (PD) is the second most present neurodegenerative disease in the world after Alzheimer's. It is due to the progressive and irreversible loss of dopaminergic neurons of the substantia nigra Pars Compacta. Alpha synuclein deposits and the appearance of Lewi bodies are systematically associated with it. PD is characterized by four cardinal motor symptoms: bradykinesia / akinesia, rigidity, postural instability and tremors at rest. These symptoms appear when 80% of the dopaminergic endings disappear in the striatum. According to Braak's theory, non-motor symptoms appear much earlier and this is particularly the case with anxiety, depression, anhedonia, and sleep disturbances. In 90 to 95% of cases, the causes of the appearance of the disease remain unknown, but polluting toxic molecules are incriminated more and more. In Africa, neurodegenerative diseases of the Parkinson's type are increasingly present and a parallel seems to exist between the increase in cases and the presence of toxic and polluting products such as metals. My Web conference will focus on this aspect, i.e. present experimental arguments which reinforce the hypothesis of the incrimination of these pollutants in the incidence of Parkinson's disease and / or Parkinsonism. Among the lines of research that we have developed in my laboratory in Rabat, Morocco, I have chosen this one knowing that many of our PhD students and IBRO Alumni are working or trying to develop scientific research on neurotoxicity in correlation with pathologies of the brain.
Towards therapeutics for Autism Spectrum Disorder using Syngap1 heterozygous mouse model
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