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      Correlating Grip Force Signals from Multiple Sensors Highlights Prehensile Control Strategies in a Complex Task-User System

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          Abstract

          Wearable sensor systems with transmitting capabilities are currently employed for the biometric screening of exercise activities and other performance data. Such technology is generally wireless and enables the non-invasive monitoring of signals to track and trace user behaviors in real time. Examples include signals relative to hand and finger movements or force control reflected by individual grip force data. As will be shown here, these signals directly translate into task, skill, and hand-specific (dominant versus non-dominant hand) grip force profiles for different measurement loci in the fingers and palm of the hand. The present study draws from thousands of such sensor data recorded from multiple spatial locations. The individual grip force profiles of a highly proficient left-hander (expert), a right-handed dominant-hand-trained user, and a right-handed novice performing an image-guided, robot-assisted precision task with the dominant or the non-dominant hand are analyzed. The step-by-step statistical approach follows Tukey’s “detective work” principle, guided by explicit functional assumptions relating to somatosensory receptive field organization in the human brain. Correlation analyses (Person’s product moment) reveal skill-specific differences in co-variation patterns in the individual grip force profiles. These can be functionally mapped to from-global-to-local coding principles in the brain networks that govern grip force control and its optimization with a specific task expertise. Implications for the real-time monitoring of grip forces and performance training in complex task-user systems are brought forward.

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          Most cited references33

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          Motor circuits in action: specification, connectivity, and function.

          Mammalian motor behavior is enabled by a hierarchy of interleaved circuit modules constructed by interneurons in the spinal cord, sensory feedback loops, and bilateral communication with supraspinal centers. Neuronal subpopulations are specified through a process of precisely timed neurogenesis, acquisition of transcriptional programs, and migration to spatially confined domains. Developmental and genetic programs instruct stereotyped and highly specific connectivity patterns, binding functionally distinct neuronal subpopulations into motor circuit modules at all hierarchical levels. Recent work demonstrates that spatial organization of motor circuits relates to precise connectivity patterns and that these patterns frequently correlate with specific behavioral functions of motor output. This Review highlights key examples of how developmental specification dictates organization of motor circuit connectivity and thereby controls movement. Copyright © 2012 Elsevier Inc. All rights reserved.
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            Exploratory data analysis

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              Detailed somatotopy in primary motor and somatosensory cortex revealed by Gaussian population receptive fields

              The relevance of human primary motor cortex (M1) for motor actions has long been established. However, it is still unknown how motor actions are represented, and whether M1 contains an ordered somatotopy at the mesoscopic level. In the current study we show that a detailed within-limb somatotopy can be obtained in M1 during finger movements using Gaussian population Receptive Field (pRF) models. Similar organizations were also obtained for primary somatosensory cortex (S1), showing that individual finger representations are interconnected throughout sensorimotor cortex. The current study additionally estimates receptive field sizes of neuronal populations, showing differences between finger digit representations, between M1 and S1, and additionally between finger digit flexion and extension. Using the Gaussian pRF approach, the detailed somatotopic organization of M1 can be obtained including underlying characteristics, allowing for the in-depth investigation of cortical motor representation and sensorimotor integration.
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                Author and article information

                Journal
                Bioengineering (Basel)
                Bioengineering (Basel)
                bioengineering
                Bioengineering
                MDPI
                2306-5354
                10 November 2020
                December 2020
                : 7
                : 4
                : 143
                Affiliations
                [1 ]ICube UMR 7357, Centre National de la Recherche Scientifique (CNRS), 75016 Paris, France
                [2 ]ICube UMR 7357 Robotics Department, University of Strasbourg, 67081 Strasbourg, France; nageotte@ 123456unistra.fr (F.N.); philippe.zanne@ 123456unistra.fr (P.Z.); demathelin@ 123456unistra.fr (M.d.M.)
                Author notes
                Author information
                https://orcid.org/0000-0002-2860-6472
                https://orcid.org/0000-0002-5904-6498
                Article
                bioengineering-07-00143
                10.3390/bioengineering7040143
                7711794
                33182694
                2afd1af3-04de-4da1-affc-aa83d6186de3
                © 2020 by the authors.

                Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 15 October 2020
                : 07 November 2020
                Categories
                Article

                wearable biosensors,wireless technology,human grip force,motor control,complex task-user systems,expertise,multivariate data,correlation analysis,functional analysis

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