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Data-driven modelling of fatigue in pelvic floor muscles when performing Kegel exercises

机译:骨盆楼肌肉疲劳疲劳的数据驱动建模

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This paper studies how to describe, using a piecewise linear dynamical model, the short-term effects of fatigue and recovery on the strength of pelvic floor muscles. Specifically, we first adapt a known model that describes short-term fatigue in skeletal muscles to the specific problem of describing fatigue in pelvic floor muscles when performing Kegel exercises, and then propose a strategy to learn the modelrs parameters from field data. In details, we estimate the model parameters using a least squares approach starting from measurement data that has been obtained from three healthy women using a dedicated vaginal pressure sensor array and a connected mobile app which gamifies the Kegel exercising experience. We show that describing the pelvic floor muscles behaviour in terms of short-term fatigue and recovery factors plus learning the associated parameters from data from healthy women leads to the possibility of precisely forecasting how much pressure the players will exert while playing the game. By cross-learning and cross-testing individual models from the three volunteers we also discover that the models need to be individualized: indeed, the numerical results indicate that, generically, using data from one player to model another leads to potentially drastically lower forecasting capabilities.
机译:本文研究了如何描述,使用分段线性动力学模型,疲劳的短期影响和骨盆造型强度的恢复。具体而言,我们首先适应一种已知的模型,该模型描述了骨骼肌中的短期疲劳,以在执行Kegel练习时描述骨盆地板肌肉中的疲劳的具体问题,然后提出一种从现场数据学习ModelRS参数的策略。详细信息,我们使用从使用专用阴道压力传感器阵列和连接的移动应用程序从三个健康女性获得的测量数据开始的测量数据开始的模型参数估计了从三个健康女性获得的测量数据。我们展示了在短期疲劳和恢复因素方面描述盆底肌肉行为加上来自健康女性的数据的相关参数导致精确预测玩家在玩游戏时施加多少压力的可能性。通过三个志愿者的跨学习和交叉测试各个模型,我们还发现模型需要个性化:实际上,数值结果表明,从一般而地说,使用来自一个玩家的数据来模拟另一个播放器的数据导致潜在的预测能力潜在地较低。

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