New research, based on earlier results in mice, suggests that our brains are never at rest, even when we are not learning anything about the world around us.

Finding coherent patterns in this large assembly of cells is challenging, much like trying to determine the behaviour of a swarm of insects by watching a random sample of individuals

Timothy O'Leary

Our brains are often likened to computers, with learned skills and memories stored in the activity patterns of billions of nerve cells. However, new research shows that memories of specific events and experiences may never settle down. Instead, the activity patterns that store information can continually change, even when we are not learning anything new.

Why does this not cause the brain to forget what it has learned? 探花直播study, from the 探花直播 of Cambridge, Harvard Medical School and Stanford 探花直播, reveals how the brain can reliably access stored information despite drastic changes in the brain signals that represent it.

探花直播research, led by from Cambridge鈥檚 Department of Engineering, shows that different parts of our brain may need to relearn and keep track of information in other parts of the brain as it moves around. Their , published in the open-access journal eLife, provides some of the first evidence that constant changes in neural activity are compatible with long term memories of learned skills.

探花直播researchers came to this conclusion through modelling and analysis of data taken from an experiment in which mice were trained to associate a visual cue at the start of a 4.5-metre-long virtual reality maze with turning left or right at a T-junction, before navigating to a reward. 探花直播results of the showed that single nerve cells in the brain continually changed the information they encoded about this learned task, even though the behaviour of the mice remained stable over time.

探花直播experimental data consisted of activity patterns from hundreds of nerve cells recorded simultaneously in a part of the brain that controls and plans movement, recorded at a resolution that is not yet possible in humans.

鈥淔inding coherent patterns in this large assembly of cells is challenging, much like trying to determine the behaviour of a swarm of insects by watching a random sample of individuals,鈥 said 翱鈥橪别补谤测. 鈥淗owever, in some respects the brain itself needs to solve a similar task, because other brain areas need to extract and process information from this same population.鈥

Nerve cells connect to hundreds or even thousands of their neighbours and extract information by weighting and pooling it. This has a direct analogy with the methods used by pollsters in the run-up to an election: survey results from multiple sources are collected and 鈥榳eighted鈥 according to their consistency. In this way, a steady pattern can emerge even when individual measurements vary wildly.

探花直播Cambridge group used this principle to construct a decoding algorithm that extracted consistent, hidden patterns within the complex activity of hundreds of cells. They found two things. First, that there was indeed a consistent hidden pattern that could accurately predict the animal鈥檚 behaviour. Second, this consistent pattern itself gradually changes over time, but not so drastically that the decoding algorithm couldn鈥檛 keep up. This suggests that the brain continually modifies the internal code that relays information between different internal circuits.

Science fiction explores the possibility of transferring our memories and experiences into hardware devices directly from our brains. If future technology eventually allows us to upload and download our thoughts and memories, we may find that our brain cannot interpret its own activity patterns if they are replayed many years later. 探花直播concept of an apple - its colour, flavour, taste and the memories associated with it - may remain consistent, but the patterns of activity it evokes in the brain may change completely over time.

Such conundrums will likely remain speculative for the immediate future, but experimental technology that achieves a limited version of such mind reading is already a reality, as this study shows. Brain-machine interfaces are a rapidly maturing technology, and human neural interfaces that can control prosthetics and external hardware have been in clinical use for over a decade. 探花直播work from the Cambridge group highlights a major open challenge in extracting reliable information from the brain.

鈥淓ven though we can now monitor brain activity and relate it directly to memories and experiences, the activity patterns themselves continually change over a period of several days,鈥 said , who is a Lecturer in Information Engineering and Medical Neuroscience. 鈥淥ur study shows that in spite of this change, we can construct and maintain a relatively stable 鈥榙ictionary鈥 to read out what an animal is thinking as it navigates a familiar environment.

鈥 探花直播work suggests that our brains are never at rest, even when we are not learning anything about the external world. This has major implications for our understanding of the brain and for brain-machine interfaces and neural prosthetics.鈥

References:
Michael E. Rule et al. 鈥鈥. eLife (2020). DOI: 10.7554/eLife.51121



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