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Artificial neural network based intracranial pressure mean forecast algorithm for medical decision support

机译:基于人工神经网络的颅内压均值预测算法在医学决策支持中的应用

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Although the future mean of intracranial pressure (ICP) is of critical concern of many clinicians for timely medical treatment, the problem of forecasting the future ICP mean has not been addressed yet. In this paper, we present a nonlinear autoregressive with exogenous input artificial neural network based mean forecast algorithm (ANNNARX-MFA) to predict the ICP mean of the future windows based on features extracted from past windows and segmented sub-windows. We compare its performance with nonlinear autoregressive artificial neural network algorithm (ANNNAR) without features extracted from window segmentation. Experimental results showed that, ANNNARX-MFA algorithm outperforms ANNNAR algorithm in prediction accuracy, because additional features extracted from finer segmented sub-windows help to catch the subtle changes of ICP trends. This verifies the effectiveness of decomposing the whole window into sub-windows to obtain features in making predictions on future windows. Based on the forecast of ICP mean, medical treatments can be planned in advance to control ICP elevation, in order to maximize recovery and optimize outcome.
机译:尽管颅内压(ICP)的未来均值是许多临床医生及时治疗的关键问题,但尚未解决预测ICP均值的问题。在本文中,我们提出了一种基于外来输入人工神经网络的非线性自回归均值预测算法(ANN NARX -MFA),该算法基于从过去的窗口中提取并分割的特征来预测未来窗口的ICP均值子窗口。我们将其性能与非线性自回归人工神经网络算法(ANN NAR )进行了比较,而没有从窗口分割中提取特征。实验结果表明,ANN NARX -MFA算法在预测准确度方面优于ANN NAR 算法,因为从细分的细分子窗口中提取的其他功能有助于捕获ICP的细微变化趋势。这验证了将整个窗口分解为子窗口以获得在将来的窗口中进行预测的功能的有效性。根据ICP平均值的预测,可以预先计划药物治疗以控制ICP升高,以最大程度地提高康复效果并优化结果。

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