TY - JOUR
T1 - Decentralized multisensory information integration in neural systems
AU - Zhang, Wen Hao
AU - Chen, Aihua
AU - Rasch, Malte J.
AU - Wu, Si
N1 - Publisher Copyright:
© 2016 Zhang et al.
PY - 2016/1/13
Y1 - 2016/1/13
N2 - How multiple sensory cues are integrated in neural circuitry remains a challenge. The common hypothesis is that information integration might be accomplished in a dedicated multisensory integration area receiving feedforward inputs from the modalities. However, recent experimental evidence suggests that it is not a single multisensory brain area, but rather many multisensory brain areas that are simultaneously involved in the integration of information. Why many mutually connected areas should be needed for information integration is puzzling. Here, we investigated theoretically how information integration could be achieved in a distributed fashion within a network of interconnected multisensory areas. Using biologically realistic neural network models, we developed a decentralized information integration system that comprises multiple interconnected integration areas. Studying an example of combining visual and vestibular cues to infer heading direction, we show that such a decentralized system is in good agreement with anatomical evidence and experimental observations. In particular, we show that this decentralized system can integrate information optimally. The decentralized system predicts that optimally integrated information should emerge locally from the dynamics of the communication between brain areas and sheds new light on the interpretation of the connectivity between multisensory brain areas.
AB - How multiple sensory cues are integrated in neural circuitry remains a challenge. The common hypothesis is that information integration might be accomplished in a dedicated multisensory integration area receiving feedforward inputs from the modalities. However, recent experimental evidence suggests that it is not a single multisensory brain area, but rather many multisensory brain areas that are simultaneously involved in the integration of information. Why many mutually connected areas should be needed for information integration is puzzling. Here, we investigated theoretically how information integration could be achieved in a distributed fashion within a network of interconnected multisensory areas. Using biologically realistic neural network models, we developed a decentralized information integration system that comprises multiple interconnected integration areas. Studying an example of combining visual and vestibular cues to infer heading direction, we show that such a decentralized system is in good agreement with anatomical evidence and experimental observations. In particular, we show that this decentralized system can integrate information optimally. The decentralized system predicts that optimally integrated information should emerge locally from the dynamics of the communication between brain areas and sheds new light on the interpretation of the connectivity between multisensory brain areas.
KW - Continuous attractor neural network
KW - Decentralized information integration
UR - https://www.scopus.com/pages/publications/84954310967
U2 - 10.1523/JNEUROSCI.0578-15.2016
DO - 10.1523/JNEUROSCI.0578-15.2016
M3 - 文章
C2 - 26758843
AN - SCOPUS:84954310967
SN - 0270-6474
VL - 36
SP - 532
EP - 547
JO - Journal of Neuroscience
JF - Journal of Neuroscience
IS - 2
ER -