The aims of this study were to talent transfer, rapidly develop, and qualify an Australian female athlete in the skeleton event at the 2006 Torino Winter Olympic Games and quantify the volume of skeleton-specific training and competition that would enable this to be achieved. Initially, 26 athletes were recruited through a talent identification programme based on their 30-m sprint time. After attending a selection camp, 10 athletes were invited to undertake an intensified skeleton training programme. Four of these athletes were then selected to compete for Australia on the World Cup circuit. All completed runs and simulated push starts were documented over a 14-month period. The athlete who eventually represented Australia at the Torino Winter Olympic Games did so following approximately 300 start simulations and about 220 training/competition runs over a period of 14 months. Using a deliberate programming model, these findings provide a guide to the minimum exposure required for a novice skeleton athlete to reach Olympic representative standard following intensified sport-specific training. The findings of this study are discussed in the context of the deliberate practice theory and offer the term "deliberate programming" as an alternative way of incorporating all aspects of expert development.
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http://dx.doi.org/10.1080/02640410802549751 | DOI Listing |
Heliyon
January 2025
College of Physical Education of Chengdu University, 610106, Chengdu, Sichuan, China.
With the vigorous development of football, research on youth football has garnered significant attention from scholars, leading to an increase in published findings. However, there is currently no comprehensive retrospective study that examines the status, hotspots, and trends of research in this field. This study employed Cite Space, a visual bibliometric software, to systematically review and analyze 1637 articles from the Web of Science (WOS) and China Knowledge Infrastructure Project (CNKI) databases up to January 2024.
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Precision Medicine Laboratory, School of Medical Technology and Engineering, Henan University of Science and Technology, Luoyang, China.
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Neurobrucellosis is a neurological disorder caused by Brucella infection. It typically occurs as part of the multisystem involvement of brucellosis, or may also present as brucellosis. The existing clinical practice guidelines and expert consensus on human brucellosis are outdated and provide limited guidance specific to the diagnosis and management of neurobrucellosis, failing to meet the evolving needs of healthcare providers and patients.
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Xi'an Institute of Space Radio Technology, Xi'an 710100, China.
The deformation monitoring of integrated truss structures (ITSs) is essential for ensuring the reliable performance of mounted equipment in complex space environments. Reconstruction methods based on local strain information have been proven effective, yet the identification faces significant challenges due to variable thermal-mechanical loads, interactions among structural components, and special boundary conditions. This paper proposes a deformation reconstruction strategy tailored for ITSs under combined thermal-mechanical load scenarios wherein deformations of both the primary truss structures and the attached panel systems are investigated.
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January 2025
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