Of all the
objects in the universe, the human brain is the most complex: There are
as many neurons in the brain as there are stars in the Milky Way galaxy.
So it is no surprise that, despite the glow from recent advances in the
science of the brain and mind, we still find ourselves squinting in the
dark somewhat.
But we are
at least beginning to grasp the crucial mysteries of neuroscience and
starting to make headway in addressing them. Even partial answers to these
10 questions could restructure our understanding of the roughly three-pound
mass of gray and white matter that defines who we are.
1.
How is information coded in neural activity?
Neurons,
the specialized cells of the brain, can produce brief spikes of voltage
in their outer membranes. These electrical pulses travel along specialized
extensions called axons to cause the release of chemical signals elsewhere
in the brain. The binary, all-or-nothing spikes appear to carry information
about the world: What do I see? Am I hungry? Which way should I turn?
But what is the code of these millisecond bits of voltage? Spikes may
mean different things at different places and times in the brain. In parts
of the central nervous system (the brain and spinal cord), the rate of
spiking often correlates with clearly definable external features, like
the presence of a color or a face. In the peripheral nervous system, more
spikes indicates more heat, a louder sound, or a stronger muscle contraction.
As we delve
deeper into the brain, however, we find populations of neurons involved
in more complex phenomena, like reminiscence, value judgments, simulation
of possible futures, the desire for a mate, and so on—and here the
signals become difficult to decrypt. The challenge is something like popping
the cover off a computer, measuring a few transistors chattering between
high and low voltage, and trying to guess the content of the Web page
being surfed.
It is likely
that mental information is stored not in single cells but in populations
of cells and patterns of their activity. However, it is currently not
clear how to know which neurons belong to a particular group; worse still,
current technologies (like sticking fine electrodes directly into the
brain) are not well suited to measuring several thousand neurons at once.
Nor is it simple to monitor the connections of even one neuron: A typical
neuron in the cortex receives input from some 10,000 other neurons.
Although
traveling bursts of voltage can carry signals across the brain quickly,
those electrical spikes may not be the only—or even the main—way
that information is carried in nervous systems. Forward-looking studies
are examining other possible information couriers: glial cells (poorly
understood brain cells that are 10 times as common as neurons), other
kinds of signaling mechanisms between cells (such as newly discovered
gases and peptides), and the biochemical cascades that take place inside
cells.
2.
How are memories stored and retrieved?
When you
learn a new fact, like someone’s name, there are physical changes
in the structure of your brain. But we don’t yet comprehend exactly
what those changes are, how they are orchestrated across vast seas of
synapses and neurons, how they embody knowledge, or how they are read
out decades later for retrieval.
One complication
is that there are many kinds of memories. The brain seems to distinguish
short-term memory (remembering a phone number just long enough to dial
it) from long-term memory (what you did on your last birthday). Within
long-term memory, declarative memories (like names and facts) are distinct
from nondeclarative memories (riding a bicycle, being affected by
a subliminal message), and within these general categories are numerous
subtypes. Different brain structures seem to support different kinds of
learning and memory; brain damage can lead to the loss of one type without
disturbing the others.
Nonetheless,
similar molecular mechanisms may be at work in these memory types. Almost
all theories of memory propose that memory storage depends on synapses,
the tiny connections between brain cells. When two cells are active at
the same time, the connection between them strengthens; when they are
not active at the same time, the connection weakens. Out of such synaptic
changes emerges an association. Experience can, for example, fortify the
connections between the smell of coffee, its taste, its color, and the
feel of its warmth. Since the populations of neurons connected with each
of these sensations are typically activated at the same time, the connections
between them can cause all the sensory associations of coffee to be triggered
by the smell alone.
But looking
only at associations—and strengthened connections between neurons—may
not be enough to explain memory. The great secret of memory is that it
mostly encodes the relationships between things more than the details
of the things themselves. When you memorize a melody, you encode the relationships
between the notes, not the notes per se, which is why you can easily sing
the song in a different key.
Memory retrieval
is even more mysterious than storage. When I ask if you know Alex Ritchie,
the answer is immediately obvious to you, and there is no good theory
to explain how memory retrieval can happen so quickly. Moreover, the act
of retrieval can destabilize the memory. When you recall a past event,
the memory becomes temporarily susceptible to erasure. Some intriguing
recent experiments show it is possible to chemically block memories from
reforming during that window, suggesting new ethical questions that require
careful consideration.
3.
What does the baseline activity in the brain represent?
Neuroscientists
have mostly studied changes in brain activity that correlate with stimuli
we can present in the laboratory, such as a picture, a touch, or a sound.
But the activity of the brain at rest—its “baseline” activity—may
prove to be the most important aspect of our mental lives. The awake,
resting brain uses 20 percent of the body’s total oxygen, even though
it makes up only 2 percent of the body’s mass. Some of the baseline
activity may represent the brain restructuring knowledge in the background,
simulating future states and events, or manipulating memories. Most things
we care about—reminiscences, emotions, drives, plans, and so on—can
occur with no external stimulus and no overt output that can be measured.
One clue
about baseline activity comes from neuroimaging experiments, which show
that activity decreases in some brain areas just before a person performs
a goal-directed task. The areas that decrease are the same regardless
of the details of the task, hinting that these areas may run baseline
programs during downtime, much as your computer might run a disk-defragmenting
program only while the resources are not needed elsewhere.
In the traditional
view of perception, information from the outside world pours into the
senses, works its way through the brain, and makes itself consciously
seen, heard, and felt. But many scientists are coming to think that sensory
input may merely revise ongoing internal activity in the brain. Note,
for example, that sensory input is superfluous for perception: When your
eyes are closed during dreaming, you still enjoy rich visual experience.
The awake state may be essentially the same as the dreaming state, only
partially anchored by external stimuli. In this view, your conscious life
is an awake dream.
4.
How do brains simulate the future?
When a fire
chief encounters a new blaze, he quickly makes predictions about how to
best position his men. Running such simulations of the future—without
the risk and expense of actually attempting them—allows “our
hypotheses to die in our stead,” as philosopher Karl Popper put it.
For this reason, the emulation of possible futures is one of the key businesses
that intelligent brains invest in.
Yet we know
little about how the brain’s future simulator works because traditional
neuroscience technologies are best suited for correlating brain activity
with explicit behaviors, not mental emulations. One idea suggests that
the brain’s resources are devoted not only to processing stimuli
and reacting to them (watching a ball come at you) but also to constructing
an internal model of that outside world and extracting rules for how things
tend to behave (knowing how balls move through the air). Internal models
may play a role not only in motor acts, like catching, but also in perception.
For example, vision draws on significant amounts of information in the
brain, not just on input from the retina. Many neuroscientists have suggested
over the past few decades that perception arises not simply by building
up bits of data through a hierarchy but rather by matching incoming sensory
data against internally generated expectations.
But how does
a system learn to make good predictions about the world? It may be that
memory exists only for this purpose. This is not a new idea: Two millennia
ago, Aristotle and Galen emphasized memory as a tool in making successful
predictions for the future. Even your memories about your life may come
to be understood as a special subtype of emulation, one that is pinned
down and thus likely to flow in a certain direction.
5.
What are emotions?
We often
talk about brains as information-processing systems, but any account of
the brain that lacks an account of emotions, motivations, fears, and hopes
is incomplete. Emotions are measurable physical responses to salient stimuli:
the increased heartbeat and perspiration that accompany fear, the freezing
response of a rat in the presence of a cat, or the extra muscle tension
that accompanies anger. Feelings, on the other hand, are the subjective
experiences that sometimes accompany these processes: the sensations of
happiness, envy, sadness, and so on. Emotions seem to employ largely unconscious
machinery—for example, brain areas involved in emotion will respond
to angry faces that are briefly presented and then rapidly masked, even
when subjects are unaware of having seen the face. Across cultures the
expression of basic emotions is remarkably similar, and as Darwin observed,
it is also similar across all mammals. There are even strong similarities
in physiological responses among humans, reptiles, and birds when showing
fear, anger, or parental love.
Modern views
propose that emotions are brain states that quickly assign value to outcomes
and provide a simple plan of action. Thus, emotion can be viewed as a
type of computation, a rapid, automatic summary that initiates appropriate
actions. When a bear is galloping toward you, the rising fear directs
your brain to do the right things (determining an escape route) instead
of all the other things it could be doing (rounding out your grocery list).
When it comes to perception, you can spot an object more quickly if it
is, say, a spider rather than a roll of tape. In the realm of memory,
emotional events are laid down differently by a parallel memory system
involving a brain area called the amygdala.
One goal
of emotional neuroscience is to understand the nature of the many disorders
of emotion, depression being the most common and costly. Impulsive aggression
and violence are also thought to be consequences of faulty emotion regulation.
6.
What is intelligence?
Intelligence
comes in many forms, but it is not known what intelligence—in any
of its guises—means biologically. How do billions of neurons work
together to manipulate knowledge, simulate novel situations, and erase
inconsequential information? What happens when two concepts “fit”
together and you suddenly see a solution to a problem? What happens in
your brain when it suddenly dawns on you that the killer in the movie
is actually the unsuspected wife? Do intelligent people store knowledge
in a way that is more distilled, more varied, or more easily retrievable?
We all grew
up with the near-future promise of smart robots, but today we have little
better than the Roomba robotic vacuum cleaner. What went wrong? There
are two camps for explaining the weak performance of artificial intelligence:
Either we do not know enough of the fundamental principles of brain function,
or we have not simulated enough neurons working together. If the latter
is true, that’s good news: Computation gets cheaper and faster each
year, so we should not be far from enjoying life with Asimovian robots
who can effectively tend our households. Yet most neuroscientists recognize
how distant we are from that dream. Currently, our robots are little more
intelligent than sea slugs, and even after decades of clever research,
they can barely distinguish figures from a background at the skill level
of an infant.
Recent experiments
explore the possible relationship of intelligence to the capacity of short-term
memory, the ability to quickly resolve cognitive conflict, or the ability
to store stronger associations between facts; the results are not yet
conclusive. Many other possibilities—better restructuring of stored
information, more parallel processing, or superior emulation of possible
futures—have not yet been probed by experiments.
Intelligence
may not be underpinned by a single mechanism or a single neural area.
Whatever intelligence is, it lies at the heart of what is special about
Homo sapiens. Other species are hardwired to solve particular problems,
while our ability to abstract allows us to solve an open-ended series
of problems. This means that studies of intelligence in mice and monkeys
may be barking up the wrong family tree.
7.
How is time represented in the brain?
Hundred-yard
dashes begin with a gunshot rather than a strobe light because your brain
can react more quickly to a bang than to a flash. Yet as soon as we get
outside the realm of motor reactions and into the realm of perception
(what you report that you saw and heard), the story changes. When it comes
to awareness, the brain goes through a good deal of trouble to synchronize
incoming signals that are processed at very different speeds.
For example,
snap your fingers in front of you. Although your auditory system processes
information about the snap about 30 milliseconds faster than your visual
system, the sight of your fingers and the sound of the snap seem simultaneous.
Your brain is employing fancy editing tricks to make simultaneous events
in the world feel simultaneous to you, even when the different senses
processing the information would individually swear otherwise.
For a simple
example of how your brain plays tricks with time, look in the mirror at
your left eye. Now shift your gaze to your right eye. Your eye movements
take time, of course, but you do not see your eyes move. It is as if the
world instantly made the transition from one view to the next. What happened
to that little gap in time? For that matter, what happens to the 80 milliseconds
of darkness you should see every time you blink your eyes? Bottom line:
Your notion of the smooth passage of time is a construction of the brain.
Clarifying the picture of how the brain normally solves timing problems
should give insight into what happens when temporal calibration goes wrong,
as may happen in the brains of people with dyslexia. Sensory inputs that
are out of sync also contribute to the risk of falls in elderly patients.
8.
Why do brains sleep and dream?
One of the
most astonishing aspects of our lives is that we spend a third of our
time in the strange world of sleep. Newborn babies spend about twice that.
It is inordinately difficult to remain awake for more than a full day-night
cycle. In humans, continuous wakefulness of the nervous system results
in mental derangement; rats deprived of sleep for 10 days die. All mammals
sleep, reptiles and birds sleep, and voluntary breathers like dolphins
sleep with one brain hemisphere dormant at a time. The evolutionary trend
is clear, but the function of sleep is not.
The universality
of sleep, even though it comes at the cost of time and leaves the sleeper
relatively defenseless, suggests a deep importance. There is no universally
agreed-upon answer, but there are at least three popular (and nonexclusive)
guesses. The first is that sleep is restorative, saving and replenishing
the body’s energy stores. However, the high neural activity during
sleep suggests there is more to the story. A second theory proposes that
sleep allows the brain to run simulations of fighting, problem solving,
and other key actions before testing them out in the real world. A third
theory—the one that enjoys the most evidence—is that sleep plays
a critical role in learning and consolidating memories and in forgetting
inconsequential details. In other words, sleep allows the brain to store
away the important stuff and take out the neural trash.
Recently,
the spotlight has focused on REM sleep as the most important phase for
locking memories into long-term encoding. In one study, rats were trained
to scurry around a track for a food reward. The researchers recorded activity
in the neurons known as place cells, which showed distinct patterns of
activity depending upon the rats’ location on the track. Later, while
the rats dropped off into REM sleep, the recordings continued. During
this sleep, the rats’ place cells often repeated the exact same pattern
of activity that was seen when the animals ran. The correlation was so
close, the researchers claimed, that as the animal “dreamed,”
they could reconstruct where it would be on the track if it had been awake—and
whether the animal was dreaming of running or standing still. The emerging
idea is that information replayed during sleep might determine which events
we remember later. Sleep, in this view, is akin to an off-line practice
session. In several recent experiments, human subjects performing difficult
tasks improved their scores between sessions on consecutive days, but
not between sessions on the same day, implicating sleep in the learning
process.
Understanding
how sleeping and dreaming are changed by trauma, drugs, and disease—and
how we might modulate our need for sleep—is a rich field to harvest
for future clues.
9.
How do the specialized systems of the brain integrate with one another?
To the naked
eye, no part of the brain’s surface looks terribly different from
any other part. But when we measure activity, we find that different types
of information lurk in each region of the neural territory. Within vision,
for example, separate areas process motion, edges, faces, and colors.
The territory of the adult brain is as fractured as a map of the countries
of the world.
Now that
neuroscientists have a reasonable idea of how that territory is divided,
we find ourselves looking at a strange assortment of brain networks involved
with smell, hunger, pain, goal setting, temperature, prediction, and hundreds
of other tasks. Despite their disparate functions, these systems seem
to work together seamlessly. There are almost no good ideas about how
this occurs.
Nor is it
understood how the brain coordinates its systems so rapidly. The slow
speed of spikes (they travel about one foot per second in axons that lack
the insulating sheathing called myelin) is one hundred-millionth the speed
of signal transmission in digital computers. Yet a human can recognize
a friend almost instantaneously, while digital computers are slow—and
usually unsuccessful—at face recognition. How can an organ with such
slow parts operate so quickly? The usual answer is that the brain is a
parallel processor, running many operations at the same time. This is
almost certainly true, but what slows down parallel-processing digital
computers is the next stage of operations, where results need to be compared
and decided upon. Brains are amazingly fast at this. So while the brain’s
ability to do parallel processing is impressive, its ability to rapidly
synthesize those parallel processes into a single, behavior-guiding output
is at least as significant. An animal running must go left or right around
a tree; it cannot do both.
There is
no special anatomical location in the brain where information from all
the different systems converges; rather, the specialized areas all interconnect
with one another, forming a network of parallel and recurring links. Somehow,
our integrated image of the world emerges from this complex labyrinthine
network of brain structures. Surprisingly little study has been done on
large, loopy networks like the ones in the brain—probably in part
because it is easier to think about brains as tidy assembly lines than
as dynamic networks.
10.
What is consciousness?
Think back
to your first kiss. The experience of it may pop into your head instantly.
Where was that memory before you became conscious of it? How was it stored
in your brain before and after it came into consciousness? What is the
difference between those states
An explanation
of consciousness is one of the major unsolved problems of modern science.
It may not turn out to be a single phenomenon; nonetheless, by way of
a preliminary target, let’s think of it as the thing that flickers
on when you wake up in the morning that was not there, in the exact same
brain hardware, moments before.
Neuroscientists
believe that consciousness emerges from the material stuff of the brain
primarily because even very small changes to your brain (say, by drugs
or disease) can powerfully alter your subjective experiences. The heart
of the problem is that we do not yet know how to engineer pieces and parts
such that the resulting machine has the kind of private subjective experience
that you and I take for granted. If I give you all the Tinkertoys in the
world and tell you to hook them up so that they form a conscious machine,
good luck. We don’t have a theory yet of how to do this; we don’t
even know what the theory will look like.
One of the
traditional challenges to consciousness research is studying it experimentally.
It is probable that at any moment some active neuronal processes correlate
with consciousness, while others do not. The first challenge is to determine
the difference between them. Some clever experiments are making at least
a little headway. In one of these, subjects see an image of a house in
one eye and, simultaneously, an image of a cow in the other. Instead of
perceiving a house-cow mixture, people perceive only one of them. Then,
after some random amount of time, they will believe they’re seeing
the other, and they will continue to switch slowly back and forth. Yet
nothing about the visual stimulus changes; only the conscious experience
changes. This test allows investigators to probe which properties of neuronal
activity correlate with the changes in subjective experience.
The mechanisms
underlying consciousness could reside at any of a variety of physical
levels: molecular, cellular, circuit, pathway, or some organizational
level not yet described. The mechanisms might also be a product of interactions
between these levels. One compelling but still speculative notion is that
the massive feedback circuitry of the brain is essential to the production
of consciousness.
In the near
term, scientists are working to identify the areas of the brain that correlate
with consciousness. Then comes the next step: understanding why they correlate.
This is the so-called hard problem of neuroscience, and it lies at the
outer limit of what material explanations will say about the experience
of being human.
By
David Eagleman
Source:
Discover
Magazine