RSS Feed: TS-Si News Service. RSS Feed: TS-Si Research Service. TS-Si Reader Comments. Delicious: TS-Si News Service. Digg: TS-Si News Service.
Pinterest.
StumbleUpon. Facebook: TS-Si News Service.
GooglePlus: TS-Si News Service.
Twitter: Follow TS-Si News Service.
Leave a comment.
xkcd
Campaigns


is dedicated to the acceptance, medical
treatment, and legal
protection of individuals correcting the misalignment
of their brains and their anatomical sex, while supporting their transition
into society as hormonally reconstituted and surgically corrected citizens.
Computer Chip Models Human Neuron Communication Print E-mail
SciMed - Neuroscience
TS-Si News Service   
Wednesday, 16 November 2011 16:00
Fabricated analog very-large-scale integration (VLSI) chip used to mimic neuronal processes involved in memory and learning. Image courtesy of Guy Rachmuth.Cambridge, MA, USA. A technical advance moves research toward building a computer system that replicates the human capability for learning new tasks, with potential impacts on neural simulations and intelligent robots.

The new computer chip mimics how the brain's neurons adapt in response to new information, a phenomenon known as plasticity, that is believed to underlie many brain functions, including learning and memory.


With about 400 transistors, the silicon chip can simulate the activity of a single brain synapse — a connection between two neurons that allows information to flow from one to the other. The researchers anticipate this chip will help neuroscientists learn much more about how the brain works, and could also be used in neural prosthetic devices such as artificial retinas.

Modeling Synapses

Chi-Sang Poon, PhD.

Chi-Sang Poon, PhD, is a principal research scientist in the Harvard-MIT Division of Health Sciences and Technology, and the senior author.

Guy Rachmuth, a former postdoc in Poon's lab, is the lead author, joined by Mark Bear, the Picower Professor of Neuroscience at the Massachusetts Institute of Technology (MIT), and Harel Shouval of the University of Texas Medical School at Houston.

The paper describing the chip appears in the Proceedings of the National Academy of Sciences (PNAS).
There are about 100 billion neurons in the brain, each of which forms synapses with many other neurons. A synapse is the gap between two neurons (known as the presynaptic and postsynaptic neurons). The presynaptic neuron releases neurotransmitters, such as glutamate and GABA, which bind to receptors on the postsynaptic cell membrane, activating ion channels. Opening and closing those channels changes the cell's electrical potential. If the potential changes dramatically enough, the cell fires an electrical impulse called an action potential.

All of this synaptic activity depends on the ion channels, which control the flow of charged atoms such as sodium, potassium and calcium. Those channels are also key to two processes known as long-term potentiation (LTP) and long-term depression (LTD), which strengthen and weaken synapses, respectively.

The MIT researchers designed their computer chip so that the transistors could mimic the activity of different ion channels. While most chips operate in a binary, on/off mode, current flows through the transistors on the new brain chip in analog, not digital, fashion. A gradient of electrical potential drives current to flow through the transistors just as ions flow through ion channels in a cell.

"We can tweak the parameters of the circuit to match specific ion channels," Poon says. "We now have a way to capture each and every ionic process that's going on in a neuron." Previously, researchers had built circuits that could simulate the firing of an action potential, but not all of the circumstances that produce the potentials. Accirding to Poon, "If you really want to mimic brain function realistically, you have to do more than just spiking. You have to capture the intracellular processes that are ion channel-based."

The new chip represents a "significant advance in the efforts to incorporate what we know about the biology of neurons and synaptic plasticity onto CMOS [complementary metal-oxide-semiconductor] chips," says Dean Buonomano, a professor of neurobiology at the University of California at Los Angeles, adding that "the level of biological realism is impressive.

The MIT researchers plan to use their chip to build systems to model specific neural functions, such as the visual processing system. Such systems could be much faster than digital computers. Even on high-capacity computer systems, it takes hours or days to simulate a simple brain circuit. With the analog chip system, the simulation is even faster than the biological system itself.

Another potential application is building chips that can interface with biological systems. This could be useful in enabling communication between neural prosthetic devices such as artificial retinas and the brain. Further down the road, these chips could also become building blocks for artificial intelligence devices, Poon says.

Debate Resolved

The MIT researchers have already used their chip to propose a resolution to a longstanding debate over how long-term depression (LTD) occurs. One theory holds that LTD and long-term potentiation (LTP) depend on the frequency of action potentials stimulated in the postsynaptic cell, while a more recent theory suggests that they depend on the timing of the action potentials' arrival at the synapse.

Both require the involvement of ion channels known as NMDA receptors, which detect postsynaptic activation. Recently, it has been theorized that both models could be unified if there were a second type of receptor involved in detecting that activity. One candidate for that second receptor is the endo-cannabinoid receptor.

Endo-cannabinoids, similar in structure to marijuana, are produced in the brain and are involved in many functions, including appetite, pain sensation and memory. Some neuroscientists had theorized that endo-cannabinoids produced in the postsynaptic cell are released into the synapse, where they activate presynaptic endo-cannabinoid receptors. If NMDA receptors are active at the same time, LTD occurs.

When the researchers included NMDA on their chip transistors that model endo-cannabinoid receptors, they were able to accurately simulate both LTD and LTP. Although previous experiments supported this theory, until now, "nobody had put all this together and demonstrated computationally that indeed this works, and this is how it works," Poon says.

CitationA biophysically-based neuromorphic model of spike rate- and timing-dependent plasticity. Guy Rachmuth, Harel Z. Shouval, Mark F. Bear, Chi-Sang Poon.Proceedings of the National Academy of Sciences (PNAS) 2011. doi:10.1073/pnas.1106161108

Abstract

Current advances in neuromorphic engineering have made it possible to emulate complex neuronal ion channel and intracellular ionic dynamics in real time using highly compact and power-efficient complementary metal-oxide-semiconductor (CMOS) analog very-large-scale-integrated circuit technology. Recently, there has been growing interest in the neuromorphic emulation of the spike-timing-dependent plasticity (STDP) Hebbian learning rule by phenomenological modeling using CMOS, memristor or other analog devices. Here, we propose a CMOS circuit implementation of a biophysically grounded neuromorphic (iono-neuromorphic) model of synaptic plasticity that is capable of capturing both the spike rate-dependent plasticity (SRDP, of the Bienenstock-Cooper-Munro or BCM type) and STDP rules. The iono-neuromorphic model reproduces bidirectional synaptic changes with NMDA receptor-dependent and intracellular calcium-mediated long-term potentiation or long-term depression assuming retrograde endocannabinoid signaling as a second coincidence detector. Changes in excitatory or inhibitory synaptic weights are registered and stored in a nonvolatile and compact digital format analogous to the discrete insertion and removal of AMPA or GABA receptor channels. The versatile Hebbian synapse device is applicable to a variety of neuroprosthesis, brain-machine interface, neurorobotics, neuromimetic computation, machine learning, and neural-inspired adaptive control problems.

Keywords: iono-neuromorphic modeling, rate-based synaptic plasticity, silicon neuron, subthreshold microelectronics, VLSI circuit.

TS-Si News Service.The TS-Si News Service is a collaborative effort by TS-Si.org editors, contributors, and corresponding institutions. Sources can include the cited individuals and organizations, as well as TS-Si.org staff contributions. Articles and news reports do not necessarily convey official positions of TS-Si, its partners, or affiliates. We welcome your comments. Use the form below to leave a public comment or send private correspondence via the TS-Si Contact Page. We will not divulge any personal details or place you on a mailing list without your permission.


TS-Si is dedicated to the acceptance, medical treatment, and legal protection of individuals correcting the misalignment of their brains and their anatomical sex, while supporting their transition into society as hormonally reconstituted and surgically corrected citizens.


Comments (0)Add Comment

Write comment
smaller | bigger

busy
Last Updated on Thursday, 17 November 2011 09:29