Pang Boon Chuan, Kuralmani Vellaisamy, Joshi Rohit, Hongli Yin, Lee Kah Keow, Ang Beng Ti, Li Jinyan, Leong Tze Yun, Ng Ivan
Acute Brain Injury Research Laboratory, Department of Neurosurgery, National Neuroscience Institute, 11 Jalan Tan Tock Seng, 308433 Singapore.
J Neurotrauma. 2007 Jan;24(1):136-46. doi: 10.1089/neu.2006.0113.
Numerous studies addressing different methods of head injury prognostication have been published. Unfortunately, these studies often incorporate different head injury prognostication models and study populations, thus making direct comparison difficult, if not impossible. Furthermore, newer artificial intelligence tools such as machine learning methods have evolved in the field of data analysis, alongside more traditional methods of analysis. This study targets the development of a set of integrated prognostication model combining different classes of outcome and prognostic factors. Methodologies such as discriminant analysis, logistic regression, decision tree, Bayesian network, and neural network were employed in the study. Several prognostication models were developed using prospectively collected data from 513 severe closed head-injured patients admitted to the Neurocritical Unit at National Neuroscience Institute of Singapore, from April 1999 to February 2003. The correlation between prognostic factors at admission and outcome at 6 months following injury was studied. Overfitting error, which may falsely distinguish different outcomes, was compared graphically. Tenfold cross-validation technique, which reduces overfitting error, was used to validate outcome prediction accuracy. The overall prediction accuracy achieved ranged from 49.79% to 81.49%. Consistently high outcome prediction accuracy was seen with logistic regression and decision tree. Combining both logistic regression and decision tree models, a hybrid prediction model was then developed. This hybrid model would more accurately predict the 6-month post-severe head injury outcome using baseline admission parameters.
众多关于头部损伤预后预测不同方法的研究已经发表。不幸的是,这些研究常常采用不同的头部损伤预后预测模型和研究人群,因此即使并非不可能,也使得直接比较变得困难。此外,在数据分析领域,诸如机器学习方法等更新的人工智能工具与更传统的分析方法一同得到了发展。本研究旨在开发一组整合的预后预测模型,该模型结合了不同类别的结局和预后因素。研究中采用了判别分析、逻辑回归、决策树、贝叶斯网络和神经网络等方法。利用1999年4月至2003年2月期间新加坡国立神经科学研究所神经重症监护病房收治的513例重度闭合性颅脑损伤患者的前瞻性收集数据,开发了几种预后预测模型。研究了入院时预后因素与伤后6个月结局之间的相关性。以图形方式比较了可能错误区分不同结局的过拟合误差。采用减少过拟合误差的十折交叉验证技术来验证结局预测准确性。所达到的总体预测准确性范围为49.79%至81.49%。逻辑回归和决策树的结局预测准确性一直很高。然后,结合逻辑回归和决策树模型,开发了一种混合预测模型。该混合模型将使用基线入院参数更准确地预测重度颅脑损伤后6个月的结局。