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Free, publicly-accessible full text available December 1, 2025
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Abstract As one of the most complex systems known to science, modeling brain behavior and function is both fascinating and extremely difficult. Empirical data is increasingly available fromex vivohuman brain organoids and surgical samples, as well asin vivoanimal models, so the problem of modeling the behavior of large-scale neuronal systems is more relevant than ever. The statistical physics concept of a mean-field model offers a tractable way to bridge the gap between single-neuron and population-level descriptions of neuronal activity, by modeling the behavior of a single representative neuron and extending this to the population. However, existing neural mean-field methods typically either take the limit of small interaction sizes, or are applicable only to the specific neuron models for which they were derived. This paper derives a mean-field model by fitting a transfer function called Refractory SoftPlus, which is simple yet applicable to a broad variety of neuron types. The transfer function is fitted numerically to simulated spike time data, and is entirely agnostic to the underlying neuronal dynamics. The resulting mean-field model predicts the response of a network of randomly connected neurons to a time-varying external stimulus with a high degree of accuracy. Furthermore, it enables an accurate approximate bifurcation analysis as a function of the level of recurrent input. This model does not assume large presynaptic rates or small postsynaptic potential size, allowing mean-field models to be developed even for populations with large interaction terms.more » « less
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Abstract Experimental neuroscience techniques are advancing rapidly, with major recent developments in high-density electrophysiology and targeted electrical stimulation. In combination with these techniques, cortical organoids derived from pluripotent stem cells show great promise asin vitromodels of brain development and function. Although sensory input is vital to neurodevelopmentin vivo, few studies have explored the effect of meaningful input toin vitroneural cultures over time. In this work, we demonstrate the first example of goal-directed learning in brain organoids. We developed a closed-loop electrophysiology framework to embody mouse cortical organoids into a simulated dynamical task (the inverted pendulum problem known as ‘Cartpole’) and evaluate learning through high-frequency training signals. Longitudinal experiments enabled by this framework illuminate how different methods of selecting training signals enable improvement on the tasks. We found that for most organoids, training signals chosen by artificial reinforcement learning yield better performance on the task than randomly chosen training signals or the absence of a training signal. This systematic approach to studying learning mechanismsin vitroopens new possibilities for therapeutic interventions and biological computation.more » « lessFree, publicly-accessible full text available December 12, 2025
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ABSTRACT The considerably slow pace of human brain development correlates with an evolutionary increase in brain size, cell numbers, and expansion of neuronal structures, with axon tracts undergoing an even greater evolutionary increase than other neuronal domains. However, whether tempo is responsible for these differences in magnitude, and how, remains to be determined. Here, we used brain organoids to investigate this and observed that human axon tracts spend more time growing and extend farther compared to those of mice, independent of their tissue environment. Single cell RNA sequencing analysis pointed to a subset of calcium-permeable ion channels expressed throughout neuron development, including during axon tract outgrowth. Calcium imaging during early neuron development consistently revealed a reduced calcium influx in human neurons compared to mouse neurons. Stimulating calcium influx and increasing cAMP levels resulted in premature halting of axon tract outgrowth and shorter axon tracts, mimicking the mouse phenotype, while abrogating calcium influx led to an even longer phase of axon tract outgrowth and longer axon tracts in humans. Thus, evolutionary differences in calcium regulation set the tempo of neuronal development, by extending the time window to foster the more elaborated human neuron morphology.more » « lessFree, publicly-accessible full text available December 28, 2025
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Abstract How seizures begin at the level of microscopic neural circuits remains unknown. High-density CMOS microelectrode arrays provide a new avenue for investigating neuronal network activity, with unprecedented spatial and temporal resolution. We use high-density CMOS-based microelectrode arrays to probe the network activity of human hippocampal brain slices from six patients with mesial temporal lobe epilepsy in the presence of hyperactivity promoting media. Two slices from the dentate gyrus exhibited epileptiform activity in the presence of low magnesium media with kainic acid. Both slices displayed an electrophysiological phenotype consistent with a reciprocally connected circuit, suggesting a recurrent feedback loop is a key driver of epileptiform onset. Larger prospective studies are needed, but these findings have the potential to elucidate the network signals underlying the initiation of seizure behavior.more » « lessFree, publicly-accessible full text available November 14, 2025
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Abstract Despite many interventions, science education remains highly inequitable throughout the world. Internet-enabled experimental learning has the potential to reach underserved communities and increase the diversity of the scientific workforce. Here, we demonstrate the use of lab-on-a-chip (LoC) technologies to expose Latinx life science undergraduate students to introductory concepts of computer programming by taking advantage of open-loop cloud-integrated LoCs. We developed a context-aware curriculum to train students at over 8000 km from the experimental site. Through this curriculum, the students completed an assignment testing bacteria contamination in water using LoCs. We showed that this approach was sufficient to reduce the students’ fear of programming and increase their interest in continuing careers with a computer science component. Altogether, we conclude that LoC-based internet-enabled learning can become a powerful tool to train Latinx students and increase the diversity in STEM.more » « less
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Hilgen, Gerrit (Ed.)For a transparent well with a known volume capacity, changes in fluid level result in predictable changes in magnification of an overhead light source. For a given well size and fluid, the relationship between volume and magnification can be calculated if the fluid’s index of refraction is known or in a naive fashion with a calibration procedure. Light source magnification can be measured through a camera and processed using computer vision contour analysis with OpenCV. This principle was applied in the design of a 3D printable sensing device using a raspberry pi zero and a camera.more » « less
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