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A novel approach for establishing fitness standards for occupational task performance

机译:建立职业任务绩效健身标准的新方法

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PurposeTo identify strength and performance thresholds below which task performance is impaired.MethodsA new weighted suit system was used to manipulate strength-to-body-weight ratio during the performance of simulated space explorations tasks. Statistical models were used to evaluate various measures of muscle strength and performance on their ability to predict the probability that subjects could complete the tasks in an acceptable amount of time. Thresholds were defined as the point of greatest change in probability per change in the predictor variable. For each task, median time was used to define the boundary between acceptable and unacceptable completion times.ResultsFitness thresholds for four space explorations tasks were identified using 23 physiological input variables. Area under receiver operator characteristic curves varied from a low of 0.68 to a high of 0.92.ConclusionAn experimental analog for altering strength-to-body weight combined with a probability-based statistical model for success was suitable for identifying thresholds for task performance below which tasks could either not be completed or time to completion was unacceptably high. These results provide data for strength recommendations for exploration mission ambulatory task performance. Furthermore, the approach can be used to identify thresholds for other areas where occupationally relevant tasks vary considerably.
机译:Puposeto识别以下任务性能的强度和性能阈值。在模拟空间探索任务的性能期间,使用了新加权套装系统来操纵强度对体重比。统计模型用于评估肌肉力量的各种措施和性能,以便在预测受试者可以在可接受的时间内完成任务的可能性。阈值被定义为预测器变量的每个变化概率最大的最大变化点。对于每个任务,使用中值时间来定义可接受和不可接受完成时间之间的边界。使用23生理输入变量识别四个空间探索任务的阈值。接收器操作员的面积从低于0.68至高的0.92°。结合基于概率的统计模型的组合实验模型适用于成功的概率,适用于识别任务性能下方的任务性能的阈值可以尚未完成或完成时间不可接受。这些结果为勘探使命外国行动任务表现提供了实力建议的数据。此外,该方法可用于识别职业相关任务随着职业相关任务而变化的其他领域的阈值。

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