Department of Computer Science & Information Engineering, National Central University, Taiwan.
Department of Computer Science & Information Engineering, National Central University, Taiwan.
Comput Biol Med. 2014 Apr;47:13-9. doi: 10.1016/j.compbiomed.2013.12.012. Epub 2014 Jan 15.
This paper presents a computational-intelligence-based model to predict the survival rate of critically ill patients who were admitted to an intensive care unit (ICU). The prediction input variables were based on the first 24 h admission physiological data of ICU patients to forecast whether the final outcome was survival or not. The prediction model was based on a particle swarm optimization (PSO)-based Fuzzy Hyper-Rectangular Composite Neural Network (PFHRCNN) that integrates three computational intelligence tools including hyper-rectangular composite neural networks, fuzzy systems and PSO. It could help doctors to make appropriate treatment decisions without excessive laboratory tests. The performance of the proposed prediction model was evaluated on the data set collected from 300 ICU patients in the Cathy General Hospital in 2012. There were 10 input variables in total for the prediction model. Nine of these variables (e.g. systolic arterial blood pressures, systolic non-invasive blood pressures, respiratory rate, heart rate, and body temperature) were routinely available for 24 h in ICU and the last variable is patient's age. The proposed model could achieve a 96% and 86% accuracy rate for the training data and testing data, respectively.
本文提出了一种基于计算智能的模型,用于预测入住重症监护病房(ICU)的危重病患者的生存率。预测输入变量基于 ICU 患者入院后 24 小时的生理数据,以预测最终结果是存活还是死亡。预测模型基于基于粒子群优化(PSO)的模糊超矩形复合神经网络(PFHRCNN),它集成了三种计算智能工具,包括超矩形复合神经网络、模糊系统和 PSO。它可以帮助医生在不进行过多实验室测试的情况下做出适当的治疗决策。该预测模型的性能在 2012 年从 Cathy 总医院的 300 名 ICU 患者中收集的数据集中进行了评估。预测模型共有 10 个输入变量。其中 9 个变量(例如收缩压动脉血压、收缩压无创血压、呼吸频率、心率和体温)是 ICU 中常规 24 小时可用的,最后一个变量是患者的年龄。该模型在训练数据和测试数据上的准确率分别达到了 96%和 86%。