School of Nursing and Rehabilitation, Nantong University, 19th Qixiu Road, Nantong 226001, China; Department of Nursing, Affiliated Hospital of Nantong University, 20th Xisi Road, Nantong 226001, China.
Department of Nursing, Affiliated Hospital of Nantong University, 20th Xisi Road, Nantong 226001, China.
Clin Neurol Neurosurg. 2024 Nov;246:108612. doi: 10.1016/j.clineuro.2024.108612. Epub 2024 Oct 22.
Precisely identifying high-risk sleep disorder patients and implementing suitable measures are important for decreasing the incidence of sleep disorders. In this study, a nomogram method was adopted to construct a tool to predict sleep disorders in stroke based on four factors: individual characteristics, treatment-related factors, psychological factors, and family-related factors.
A total of 450 stroke patients were continuously diagnosed at the Affiliated Hospital of Nantong University, and the data on participants were randomly distributed into a training set (n = 315) and a validation set (n = 135). Within the training set, using LASSO regression and random forest methods, five optimal predictors of sleep disorders were identified. Five optimal predictors were used to develop a model. The calibration, discrimination, generalization, and clinical applicability of the model were evaluated using calibration curves, receiver operating characteristic (ROC) curves, internal validation, and decision curve analysis (DCA).
We found that the place of residence, average daily infusion time, the Hospital Anxiety and Depression Scale (HADS), the Type D Personality Scale-14 (DS14), and the Fatigue Severity Scale (FSS) were crucial factors associated with sleep disorders. The validation data showed an area under the curve (AUC) of 0.903 compared to 0.899 in the training set. There was an approach to the diagonal in the calibration curve of this model, and the results of DCA noted that it is clinically beneficial across a range of thresholds from 5 % to 99 %.
A model was developed to predict sleep disorders among stroke patients to help hospital staff evaluate the risk among patients and screen high-risk patients.
精确识别睡眠障碍高危患者并采取相应措施对于降低睡眠障碍发生率至关重要。本研究采用列线图方法,基于个体特征、治疗相关因素、心理因素和家庭相关因素 4 个方面构建预测脑卒中后睡眠障碍的工具。
连续纳入南通大学附属医院诊治的 450 例脑卒中患者,将患者数据随机分为训练集(n=315)和验证集(n=135)。在训练集中,采用 LASSO 回归和随机森林方法筛选出 5 个睡眠障碍的最优预测因子,并基于此构建模型。通过校准曲线、受试者工作特征(ROC)曲线、内部验证和决策曲线分析(DCA)评估模型的校准、判别、泛化和临床适用性。
我们发现居住地、平均日输液时间、医院焦虑抑郁量表(HADS)、D 型人格量表-14 项(DS14)和疲劳严重度量表(FSS)是与睡眠障碍相关的关键因素。验证数据显示,该模型的 AUC 为 0.903,优于训练集的 0.899。该模型的校准曲线接近对角线,DCA 结果表明,该模型在 5%至 99%的阈值范围内具有临床获益。
构建了预测脑卒中后睡眠障碍的模型,有助于医护人员评估患者的风险并筛选出高危患者。