Dang Hui, Su Wenlong, Tang Zhiqing, Yue Shouwei, Zhang Hao
Cheeloo College of Medicine, Shandong University, Jinan, Shandong, China.
China Rehabilitation Research Center, Beijing, China.
Front Neurosci. 2023 Jan 19;16:1031712. doi: 10.3389/fnins.2022.1031712. eCollection 2022.
Traumatic brain injury (TBI) is one of the leading causes of death and disability worldwide. In this study, the characteristics of the patients, who were admitted to the China Rehabilitation Research Center, were elucidated in the TBI database, and a prediction model based on the Fugl-Meyer assessment scale (FMA) was established using this database.
A retrospective analysis of 463 TBI patients, who were hospitalized from June 2016 to June 2020, was performed. The data of the patients used for this study included the age and gender of the patients, course of TBI, complications, and concurrent dysfunctions, which were assessed using FMA and other measures. The information was collected at the time of admission to the hospital and 1 month after hospitalization. After 1 month, a prediction model, based on the correlation analyses and a 1-layer genetic algorithms modified back propagation (GA-BP) neural network with 175 patients, was established to predict the FMA. The correlations between the predicted and actual values of 58 patients (prediction set) were described.
Most of the TBI patients, included in this study, had severe conditions (70%). The main causes of the TBI were car accidents (56.59%), while the most common complication and dysfunctions were hydrocephalus (46.44%) and cognitive and motor dysfunction (65.23 and 63.50%), respectively. A total of 233 patients were used in the prediction model, studying the 11 prognostic factors, such as gender, course of the disease, epilepsy, and hydrocephalus. The correlation between the predicted and the actual value of 58 patients was = 0.95.
The genetic algorithms modified back propagation neural network can predict motor function in patients with traumatic brain injury, which can be used as a reference for risk and prognosis assessment and guide clinical decision-making.
创伤性脑损伤(TBI)是全球范围内死亡和残疾的主要原因之一。在本研究中,在中国康复研究中心收治的患者特征在TBI数据库中得以阐明,并使用该数据库建立了基于Fugl-Meyer评估量表(FMA)的预测模型。
对2016年6月至2020年6月住院的463例TBI患者进行回顾性分析。本研究使用的患者数据包括患者的年龄、性别、TBI病程、并发症和并发功能障碍,这些通过FMA和其他测量方法进行评估。信息在入院时和住院1个月后收集。1个月后,基于相关性分析和具有175例患者的1层遗传算法改进反向传播(GA-BP)神经网络建立预测模型,以预测FMA。描述了58例患者(预测集)预测值与实际值之间的相关性。
本研究纳入的大多数TBI患者病情严重(70%)。TBI的主要原因是车祸(56.59%),而最常见的并发症和功能障碍分别是脑积水(46.44%)以及认知和运动功能障碍(分别为65.23%和63.50%)。共有233例患者用于预测模型,研究了11个预后因素,如性别、病程、癫痫和脑积水。58例患者预测值与实际值之间的相关性为 = 0.95。
遗传算法改进反向传播神经网络可预测创伤性脑损伤患者的运动功能,可为风险和预后评估提供参考并指导临床决策。