A mechanism for sensory re-weighting in postural control

被引:0
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作者
Arash Mahboobin
Patrick Loughlin
Chris Atkeson
Mark Redfern
机构
[1] University of Pittsburgh,Department of Bioengineering
[2] Carnegie Mellon University,Robotics Institute
关键词
Balance; Posture; Sensory re-weighting; Feedback; Modeling;
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学科分类号
摘要
A key finding of human balance experiments has been that the integration of sensory information utilized for postural control appears to be dynamically regulated to adapt to changing environmental conditions and the available sensory information, a process referred to as “sensory re-weighting.” We propose a postural control model that includes automatic sensory re-weighting. This model is an adaptation of a previously reported model of sensory feedback that included manual sensory re-weighting. The new model achieves sensory re-weighting that is physiologically plausible and readily implemented. Model simulations are compared to previously reported experimental results to demonstrate the automated sensory re-weighting strategy of the modified model. On the whole, the postural sway time series generated by the model with automatic sensory re-weighting show good agreement with experimental data, and are capable of producing patterns similar to those observed experimentally.
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页码:921 / 929
页数:8
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