With just their input cables, human neurons can perform difficult logic calculations previously only seen in entire neural networks. To restate: human neurons are far more powerful devices than originally thought. And if deep learning algorithmsthe AI method loosely based on the brain thats taken our world by stormtake note, they can be too.

Those are unconventional, fighting words.

For 70 years, neurons were considered the basic computational unit of the brain. Yet according to a new study published this month in Science, the neurons in our cortex, the outermost crust of our brain, seem to have uniquely evolved to sustain incredibly complex computations in their input cables. Its as if someone finally obtained proof that your computers electrical wiring is actually made up of mini-processors, each performing calculations before sending results to a CPU.

Its weird. Its controversial. But it has also just been seen for the first time in human neurons.

As the authors conclude: we long assumed that a neuron could only operate logical functions such as AND and OR, whereas more complex computations required entire networks. We find that activity in a neurons input cables can support complex logical operations using completely different rules than a single neuron.

So why should we care? Fundamentally, it has to do with intelligencewhy we stand out among the animal kingdom, and how we can potentially replicate that intelligence with AI.

Like the Earths crust, the cortex is also made up of multiple layers, with distinctive wiring patterns that link up neurons within layers and among different ones. Neuroscientists have long thought that our enormously intricate cortex contributes to our intellectual capabilitiesin fact, deep learning was inspired by computations embedded within cortical neurons.

But the new results, recorded from surgically-removed brain chunks from patients with brain tumors and epilepsy, suggest that current deep learning methods are only scratching the surface of replicating our brains computations. If AI systems can incorporate these newly discovered algorithms, they could potentially become far more powerful.

A textbook neuron looks like a leafless tree: massive roots, called dendrites, lead to a sturdy, bulbous basethe body. Like water and nutrients, incoming electrical signals shoot up dendritic roots into the body, where a hump-like structure synthesizes all the information. If the stimulation is sufficiently strong, it gets passed down a singular tree trunkthe output cable called an axonthen transmitted to another neuron by way of bubbles filled with chemical messengers or with electricity. If the input signals are too weak, the neuron kills the data. Its why neuroscientists often call single neurons binary or digital: they either fire or dont.

Simple, no?

Wellnot quite. For decades, a question nagged at the back of neuroscientists minds: why are dendritic trees, compared to a single lonely axon, so much more intricate?

By recording from single neurons in rodent brains, scientists recently began figuring out that dendritic trees arent just simple passive cables. Rather, theyre extremely active components underlying a hidden layer of neural computation. Some dendritic trees, for example, can generate electrical spikes five times larger and more frequently than classic neuronal firing. Just in rats, the discovery of active dendrites mean that the brain could have 100 times more processing capacity than previously thought.

The new study asks: does the same hold true for humans?

Compared to rodent brains, the multi-layered human cortex is much thicker and denser. Layers 2 and 3 (L2/3) especially stand out for their elaborate and densely-packed dendritic forests. Compared to other speciesor even the rest of the human brainthese layers contain a disproportionate amount of neuronal matter. The root cause of this strange thickening lies in our genes, which encode a brain development program to guide the characteristic. Some even believe that its fundamental to what makes us human.

If dendrite inputs help shape our neurons computationand our intelligencethen L2/3 is where we should be able to observe them, the authors reasoned.

Measuring electrical activity from dendrites, each 100 times smaller than the diameter of a human hair, is much easier said than done. Its partly why these enormously powerful calculations have been hard to capture using electrodes even in animalsthe process is similar to gently sucking on an ants back with a Roman column-sized straw without hurting the ant.

Rather than recording from a living, intact human brain, the team opted to look at fresh slices of the cortex removed due to epilepsy or tumors. Its a smart strategy: slices are much easier to examine using traditional neuroscience methodsfor example, something called a patch clamp that records directly from neuronal components. Slices can also be examined under the microscope using fluorescent dyes that glow during activity. Using brain tissue from two different types of patients can then help weed out signals unique to each brain disease to get to the root of human dendritic computations.

A bizarre signal immediately emerged. Human dendrites sparked with activity, but the electrical spikes quickly dissipated as they traveled towards the cell body. In contrast, a standard neural signal doesnt taper down as it gallops along the output cable towards its next destination. Even weirder, the dendritic signals relied strictly on calcium ions to generate their electricity, which massively differs from classic neural signaling.

Its like suddenly discovering a new species that consumes carbon dioxide, rather than oxygen, to sustain its activityexcept that species is part of you. These signals, dubbed dCaAPs, have never been observed in cortical cells from any mammals previously, the authors said.

There was a eureka moment when we saw the dendritic action potentials for the first time, said study co-author Dr. Matthew Larkum at Humboldt University of Berlin. The experiments were very challenging, so to push the questions past just repeating what has been done in rodents already was very satisfying.

But it gets weirder. Unlike a neurons all-or-none firing, human dendrites seem to go analogue. That is, their response is graded, but in an unintuitive way: the stronger their stimuli, the lower their response. This is in stark contrast to other neuronal computations, where stronger input, even from multiple sources, usually leads to stronger output. And while these dendritic spikes arent loners per sea few dCaAPs helped change the firing of its neuronmany of the dendrites electrical activity seemed to do their own thing.

Cataloging the secret lives of human dendrites is already interesting, but the authors went a step further to ask what it all means.

Using computational modeling, they recreated dCaAPs unique firing pattern and challenged it to solve a logic function called XOR. It compares two inputs, and if the bits are the same, the result is 0. If theyre different, it results in 1. Unlike the simpler AND and OR functions, XOR normally requires an entire neural network to perform.

However, human dendrites strange behavior, where one input only leads to one output, allowed them to effectively compute the XOR operation, the authors said. When stacked together with a neurons normal AND and OR functions, its then possible to condense entire network functions into that of a single neuron. However, for now the idea remains theoreticalthe authors werent able to model an entire neuron along with dendritic computations.

But keep your eye out for updates. The results, if validated in intact human brains, hold enormous possibilities for improving deep learning algorithms. For now, deep learning uses individual artificial neurons that link into multi-layered networkssimilar to our previous understanding of human brains. Adding dendritic computations could in theory massively expand deep learning capabilities. In a way, AI is now neurosciences theoretical playground, a collaboration made in heaven.

Regardless, the results peel back another onion layer towards understanding and replicating our intelligence. Dendrites make up 95 percent of the surface area of pyramidal cells in the cortex, but have remained unexplored territory in the human brain, said Dr. Michael Husser at University College London, who was not involved in the study. By hunting for similar signals in rodent brains, we may be able to determine whether the special electrical properties of human dendrites play a key role in making human brains special, he said.

Image Credit: Image by Gerd Altmann from Pixabay

Follow this link:
Scientists Discovered 'Mini-Computers' in Human Neuronsand That's Great News for AI - Singularity Hub

Related Posts
January 17, 2020 at 6:47 pm by Mr HomeBuilder
Category: Home Wiring