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Individualized performance prediction of sleep-deprived individuals with the two-process model

机译:两过程模型预测睡眠不足个体的个性化表现

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We present a new method for developing individualized biomathematical models that predict performance impairment for individuals restricted to total sleep loss. The underlying formulation is based on the two-process model of sleep regulation, which has been extensively used to develop group-average models. However, in the proposed method, the parameters of the two-process model are systematically adjusted to account for an individual's uncertain initial state and unknown trait characteristics, resulting in individual-specific performance prediction models. The method establishes the initial estimates of the model parameters using a set of past performance observations, after which the parameters are adjusted as each new observation becomes available. Moreover, by transforming the nonlinear optimization problem of finding the best estimates of the two-process model parameters into a set of linear optimization problems, the proposed method yields unique parameter estimates. Two distinct data sets are used to evaluate the proposed method. Results of simulated data ( with superimposed noise) show that the model parameters asymptotically converge to their true values and the model prediction accuracy improves as the number of performance observations increases and the amount of noise in the data decreases. Results of a laboratory study (82 h of total sleep loss), for three sleep-loss phenotypes, suggest that individualized models are consistently more accurate than group-average models, yielding as much as a threefold reduction in prediction errors. In addition, we show that the two-process model of sleep regulation is capable of representing performance data only when the proposed individualized model is used.
机译:我们提出了一种新的方法来开发个性化的生物数学模型,该模型可以预测受限于总睡眠丧失的个体的性能损害。基本的表述基于睡眠调节的两个过程模型,该模型已被广泛用于开发组平均模型。然而,在所提出的方法中,对两过程模型的参数进行了系统性的调整,以解决个人不确定的初始状态和未知的性状特征,从而产生了针对个人的绩效预测模型。该方法使用一组过去的性能观测值来建立模型参数的初始估计,然后在每个新观测值可用时调整参数。此外,通过将找到两个过程模型参数的最佳估计的非线性优化问题转换为一组线性优化问题,该方法产生了唯一的参数估计。使用两个不同的数据集来评估所提出的方法。仿真数据的结果(带有叠加噪声)显示,模型参数渐近收敛到其真实值,并且随着性能观察次数的增加和数据中噪声量的减少,模型预测精度也会提高。一项针对三种睡眠丧失表型的实验室研究(总睡眠丧失82小时)的结果表明,个体化模型始终比群体平均模型更准确,预测误差降低了三倍之多。此外,我们表明,只有在使用建议的个性化模型时,睡眠调节的两个过程模型才能够表示性能数据。

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