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Predicting pelvic trauma severity using features extracted from records and X-ray and CT images

机译:使用从记录和X射线和CT图像中提取的功能预测骨盆创伤严重性

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Computer-aided decision making systems can assist physicians in prompt and accurate treatment of the high-energy pelvic trauma injuries by rapidly analyzing patient data and generating recommendations based on a large database of prior cases. However, no current system incorporates information contained in medical images. This paper presents a method which combines demographic information, standard medical measurements and features extracted from both X-ray images and Computed Tomography (CT) scans, to predict whether a patient will be sent to ICU after initial triage and stabilization. Predictions are presented in the form of rules, extracted from trees generated using the C4.5 algorithm. Results are promising and indicate that the image features are statistically significant in patient outcome prediction.
机译:计算机辅助决策系统可以通过快速分析患者数据和基于先前情况的大型数据库,提示医生提示和准确地治疗高能量盆腔创伤损伤。但是,没有当前系统包含医学图像中包含的信息。本文介绍了一种组合人口统计信息的方法,从X射线图像和计算机断层扫描(CT)扫描中提取的标准医疗测量和特征,以预测初始分类后是否将患者发送到ICU和稳定。预测以规则的形式呈现,从使用C4.5算法生成的树木中提取。结果是有前途的,表明图像特征在患者结果预测中具有统计学意义。

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