首页> 外文会议>2010 IEEE International Conference on Bioinformatics and Biomedicine >Intracranial pressure level prediction in traumatic brain injury by extracting features from multiple sources and using machine learning methods
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Intracranial pressure level prediction in traumatic brain injury by extracting features from multiple sources and using machine learning methods

机译:通过从多个来源提取特征并使用机器学习方法来预测颅脑外伤的颅内压水平

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This paper proposes a non-intrusive method to predict/estimate the intracranial pressure (ICP) level based on features extracted from multiple sources. Specifically, these features include midline shift measurement and texture features extracted from CT slices, as well as patient's demographic information, such as age. Injury Severity Score is also considered. After aggregating features from slices, a feature selection scheme is applied to select the most informative features. Support vector machine (SVM) is used to train the data and build the prediction model. The validation is performed with 10 fold cross validation. To avoid overfitting, all the feature selection and parameter selection are done using training data during the 10 fold cross validation for evaluation. This results an nested cross validation scheme implemented using Rapidminer. The final classification result shows the effectiveness of the proposed method in ICP prediction.
机译:本文提出了一种基于多种来源的特征来预测/估计颅内压(ICP)水平的非侵入性方法。具体来说,这些特征包括从CT切片中提取的中线偏移测量值和纹理特征,以及患者的人口统计信息(例如年龄)。还考虑了伤害严重性评分。从切片中聚合特征后,将应用特征选择方案来选择信息最丰富的特征。支持向量机(SVM)用于训练数据并建立预测模型。验证通过10倍交叉验证进行。为避免过拟合,在10倍交叉验证进行评估时,使用训练数据完成所有特征选择和参数选择。这导致使用Rapidminer实现的嵌套交叉验证方案。最终的分类结果表明了该方法在ICP预测中的有效性。

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