Dr. Joe Z. Tsien, neuroscientist
at the Medical College of Georgia at Augusta University, co-director of the
Augusta University Brain and Behavior Discovery Institute and Georgia Research
Alliance Eminent Scholar in Cognitive and Systems Neurobiology.
Our brains have a basic algorithm that enables us
to not just recognize a traditional Thanksgiving meal, but the intelligence to
ponder the broader implications of a bountiful harvest as well as good family
and friends.
"A
relatively simple mathematical logic underlies our complex brain
computations," said Dr. Joe Z. Tsien, neuroscientist at the Medical
College of Georgia at Augusta University, co-director of the Augusta University
Brain and Behavior Discovery Institute and Georgia Research Alliance Eminent Scholar
in Cognitive and Systems Neurobiology.
Tsien is
talking about his Theory of Connectivity, a fundamental principle for how our
billions of neurons assemble and align not just to acquire knowledge, but to
generalize and draw conclusions from it.
"Intelligence
is really about dealing with uncertainty and infinite possibilities,"
Tsien said. It appears to be enabled when a group of similar neurons form a
variety of cliques to handle each basic like recognizing food, shelter, friends
and foes. Groups of cliques then cluster into functional connectivity motifs,
or FCMs, to handle every possibility in each of these basics like extrapolating
that rice is part of an important food group that might be a good side dish at
your meaningful Thanksgiving gathering. The more complex the thought, the more
cliques join in.
That means, for
example, we cannot only recognize an office chair, but an office when we see
one and know that the chair is where we sit in that office.
"You know
an office is an office whether it's at your house or the White House,"
Tsien said of the ability to conceptualize knowledge, one of many things that
distinguishes us from computers.
Tsien first
published his theory in a 1,000-word essay in October 2015 in the journal Trends in
Neuroscience. Now he and his colleagues have documented the
algorithm at work in seven different brain regions involved with those basics
like food and fear in mice and hamsters. Their documentation is published in
the journal Frontiers
in Systems Neuroscience.
"For it to
be a universal principle, it needs to be operating in many neural circuits, so
we selected seven different brain regions and, surprisingly, we indeed saw this
principle operating in all these regions," he said.
Intricate
organization seems plausible, even essential, in a human brain, which has about
86 billion neurons and where each neuron can have tens of thousands of
synapses, putting potential connections and communications between neurons into
the trillions. On top of the seemingly endless connections is the reality of
the infinite things each of us can presumably experience and learn.
Neuroscientists
as well as computer experts have long been curious about how the brain is able
to not only hold specific information, like a computer, but -- unlike even the
most sophisticated technology -- to also categorize and generalize the
information into abstract knowledge and concepts.
"Many
people have long speculated that there has to be a basic design principle from
which intelligence originates and the brain evolves, like how the double helix
of DNA and genetic codes are universal for every organism," Tsien said.
"We present evidence that the brain may operate on an amazingly simple
mathematical logic."
"In my
view, Joe Tsien proposes an interesting idea that proposes a simple
organizational principle of the brain, and that is supported by intriguing and
suggestive evidence," said Dr. Thomas C. Südhof, Avram
Goldstein Professor in the Stanford University School of Medicine,
neuroscientist studying synapse formation and function and a winner of the 2013
Nobel Prize in Physiology or Medicine.
"This idea
is very much worth testing further," said Südhof, a
sentiment echoed by Tsien and his colleagues and needed in additional neural
circuits as well as other animal species and artificial intelligence systems.
At the heart of
Tsien's Theory of Connectivity is the algorithm, n=2i-1, which
defines how many cliques are needed for an FCM and which enabled the scientists
to predict the number of cliques needed to recognize food options, for example,
in their testing of the theory.
N is the number
of neural cliques connected in different possible ways; 2 means the neurons in
those cliques are receiving the input or not; i is the information they are receiving;
and -1 is just part of the math that enables you to account for all
possibilities, Tsien explained.
To test the
theory, they placed electrodes in the areas of the brain so they could
"listen" to the response of neurons, or their action potential, and
examine the unique waveforms resulting from each.
They gave the
animals, for example, different combinations of four different foods, such as
usual rodent biscuits as well as sugar pellets, rice and milk, and as the
Theory of Connectivity would predict, the scientists could identify all 15
different cliques, or groupings of neurons, that responded to the potential
variety of food combinations.
The neuronal
cliques appear prewired during brain development because they showed up
immediately when the food choices did. The fundamental mathematical rule even
remained largely intact when the NMDA receptor, a master switch for learning
and memory, was disabled after the brain matured.
The scientists
also learnefd that size does mostly matter, because while the human and animal
brain both have a six-layered cerebral cortex -- the lumpy outer layer of the
brain that plays a key role in higher brain functions like learning and memory
-- the extra longitudinal length of the human cortex provides more room for
cliques and FCMs, Tsien said. And while the overall girth of the elephant brain
is definitely larger than the human brain, for example, most of its neurons
reside in the cerebellum with far less in their super-sized cerebral cortex.
The cerebellum is more involved in muscle coordination, which may help explain
the agility of the huge mammal, particularly its trunk.
Tsien noted
exceptions to the brain's mathematical rule, such as in the reward circuits
where the dopamine neurons reside. These cells tend to be more binary where we
judge, for example, something as either good or bad, Tsien said.
The project
grew out of Tsien's early work in the creation of smart mouse Doogie 17 years
ago while on faculty at Princeton University, in studying how changes in
neuronal connections lay down memories in the brain.
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