...
首页> 外文期刊>Studies in Health Technology and Informatics >Outcome Prediction after Moderate and Severe Head Injury Using an Artificial Neural Network
【24h】

Outcome Prediction after Moderate and Severe Head Injury Using an Artificial Neural Network

机译:使用人工神经网络预测中度和重度颅脑损伤后的结果

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Many studies have constructed predictive models for outcome after traumatic brain injury. Most of these attempts focused on dichotomous result, such as alive vs dead or good outcome vs poor outcome. If we want to predict more specific levels of outcome, we need more sophisticated models. We conducted this study to determine if artificial neural network modeling would predict outcome in five levels of Glasgow Outcome Scale (death, persistent vegetative state, severe disability, moderate disability, and good recovery) after moderate to severe head injury. The database was collected from a nation-wide epidemiological study of traumatic brain injury in Taiwan from July 1, 1995 to June 30, 1998. There were total 18583 records in this database and each record had thirty-two parameters. After pruning the records with minor cases (GCS 13) and missing data in the 132 variables, the number of cases decreased from 18583 to 4460. A step-wise logistic regression was applied to the remaining data set and 10 variables were selected as being statically significant in predicting outcome. These 10 variables were used as the input neurons for constructing neural network. Overall, 75.8% of predictions of this model were correct, 14.6% were pessimistic, and 9.6% optimistic. This neural network model demonstrated a significant difference of performance between different levels of Glasgow Outcome Scale. The prediction performance of dead or good recovery is best and the prediction of vegetative state is worst. An artificial neural network may provide a useful "second opinion" to assist neurosurgeon to predict outcome after traumatic brain injury.
机译:许多研究已经建立了脑外伤后预后的预测模型。这些尝试大多数集中在二分结果上,例如活着还是死了,还是好结果还是差结果。如果我们要预测更具体的结果水平,则需要更复杂的模型。我们进行了这项研究,以确定在中度至重度颅脑损伤后,人工神经网络建模是否可以预测格拉斯哥预后量表的五个水平(死亡,植物人持续状态,严重残疾,中度残疾和恢复良好)的结果。该数据库是从1995年7月1日至1998年6月30日在台湾进行的全国性颅脑损伤的流行病学研究中收集的。该数据库中共有18583条记录,每条记录都有32个参数。在删除了具有较小案例(GCS 13)且缺少132个变量的数据的记录后,案例数从18583减少到4460。对剩余数据集进行了逐步逻辑回归,并选择了10个变量作为静态变量在预测结果方面意义重大。这10个变量用作构建神经网络的输入神经元。总体而言,该模型的预测的75.8%是正确的,悲观的占14.6%,乐观的占9.6%。该神经网络模型证明了不同水平的格拉斯哥成果量表之间的性能差异。死亡或恢复良好的预测性能最好,而营养状态的预测最差。人工神经网络可以提供有用的“第二意见”,以协助神经外科医生预测颅脑外伤后的预后。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号