首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >Traumatic Pelvic Injury Outcome Prediction by Extracting Features from Relevant Medical Records and X-Ray Images
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Traumatic Pelvic Injury Outcome Prediction by Extracting Features from Relevant Medical Records and X-Ray Images

机译:通过从相关病历和X射线图像中提取特征来预测创伤性骨盆损伤的结果

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摘要

Traumatic pelvic injuries are complex and difficult to treat, due to the high risk of complications. Prompt and accurate medical treatment is therefore vital. Computer-aided decision-making systems can assist physicians in this task, but none of those proposed so far incorporate features extracted from medical images. The study in this paper uses demographic information, standard medical measurements, and features extracted from X-ray images to predict a patient's length of stay in ICU via rules extracted from decision trees generated by the CART algorithm. The X-ray features are extracted by using a spline/ASM segmentation technique to detect structure position, then calculating measures of displacement. The results are promising and compare well with SVM and C4.5 algorithms, indicating that the rules represent true data patterns. Significantly, an X-ray feature is selected as highly important to injury severity, indicating that medical image features are important in providing accurate recommendations and predictions.
机译:由于并发症的高风险,创伤性骨盆损伤很复杂且难以治疗。因此,及时和准确的医疗至关重要。计算机辅助决策系统可以协助医生完成这项任务,但是到目前为止,这些提议中没有一个包含从医学图像中提取的特征。本文的研究使用人口统计学信息,标准医学测量结果以及从X射线图像提取的特征,通过从CART算法生成的决策树中提取的规则,预测患者在ICU的住院时间。通过使用样条线/ ASM分割技术提取X射线特征以检测结构位置,然后计算位移量度。结果令人鼓舞,并且可以与SVM和C4.5算法很好地比较,表明规则代表了真实的数据模式。重要的是,选择了X射线特征对伤害严重性非常重要,这表明医学图像特征对提供准确的建议和预测很重要。

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