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Predictability of intracranial pressure level in traumatic brain injury: Features extraction, statistical analysis and machine learning-based evaluation

机译:脑外伤颅内压水平的可预测性:特征提取,统计分析和基于机器学习的评估

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摘要

This paper attempts to predict Intracranial Pressure (ICP) based on features extracted from non-invasively collected patient data. These features include midline shift measurement and textural features extracted from Computed axial Tomography (CT) images. A statistical analysis is performed to examine the relationship between ICP and midline shift. Machine learning is also applied to estimate ICP levels with a two-stage feature selection scheme. To avoid overfitting, all feature selections and parameter selections are performed using a nested 10-fold cross validation within the training data. The classification results demonstrate the effectiveness of the proposed method in ICP prediction.
机译:本文尝试根据从非侵入式收集的患者数据中提取的特征来预测颅内压(ICP)。这些功能包括中线偏移测量和从计算机轴向断层扫描(CT)图像中提取的纹理特征。进行统计分析以检查ICP和中线偏移之间的关系。机器学习还通过两阶段特征选择方案应用于估计ICP水平。为避免过度拟合,所有特征选择和参数选择均使用训练数据内的嵌套10倍交叉验证执行。分类结果证明了该方法在ICP预测中的有效性。

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