Applications of Brain-Model Technology to Study Neuro-developmental Disorders
Cleber Trujillo, Project Scientist, University of California San Diego
The complexity of the human brain permits the development of
sophisticated behavioral repertoires, such as language, tool use,
self-awareness, and consciousness. Understanding what produces neuronal
diversification during brain development has been a longstanding
challenge for neuroscientists and may bring insights into the evolution
of human cognition. We have been using stem cell-derived brain model
technology to gain insights into several biological processes, such as
human neurodevelopment and autism spectrum disorders. The reconstruction
of human synchronized network activity in a dish can help to understand
how neural network oscillations might contribute to the social brain.
Here, we developed cortical organoids that exhibit low-frequency
network-synchronized oscillations. Periodic and highly regularized
oscillatory network events emerged after 4 months, followed by a
transition to irregular and spatiotemporally complex activity by 8
months, mimicking features of late-stage preterm infant
electroencephalography. Furthermore, we found that the
Methyl-CpG-binding protein 2 (MECP2) is essential for the emergence of
network oscillations, suggesting that functional maturation might be
compromised at early stages of neurodevelopment in MECP2-related
disorders, such as Rett syndrome, autism, and schizophrenia. As evidence
of potential network maturation, oscillatory activity subsequently
transitioned to more spatiotemporally irregular patterns, capturing
features observed in preterm human electroencephalography (EEG). These
results show that the development of structured network activity in the
human neocortex may follow stable genetic programming, even in the
absence of external or subcortical inputs. Our model provides novel
opportunities for investigating and manipulating the role of network
activity in the developing human cortex.
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