Huang Wenjie, Song Xiuxiu, Gao Yang, Zhou Linjun, Xiao Xiaojuan, Xu Hong, Deng Jinhao, Wu Juan
Medical School of Nantong University, Nantong, China.
Affiliated Hospital of Xuzhou Medical University, Xuzhou, China.
Nurs Crit Care. 2025 Mar;30(2):e13292. doi: 10.1111/nicc.13292.
Sleep disturbance is one of the clinical manifestations of post-intensive care syndrome (PICS) in ICU. Sleep disorders can cause changes in patients' emotional, cognitive, memory, immune, and motor systems, resulting in delayed wound healing, increased infection rate, readmission rate, mortality rate and complication rate. However, developing prediction models for sleep disorders in post-ICU patients is an understudied problem.
To explore the risk factors of sleep disorders, establish the prediction model, and verify its prediction efficiency internally and externally, providing a scientific basis for clinical staff to prevent the occurrence of sleep disorder in patients transferred out of ICU in the early stages.
A total of 405 patients transferred from the intensive care department of the Affiliated Hospital of Nantong University in China from May 2022 to December 2022 were selected as the study subjects by convenience sampling method and were divided into a modelling group of 270 patients and an internal verification group of 135 patients. A total of 67 ICU patients admitted to the same hospital from July 2023 to September 2023 were selected as the external validation group. General data and clinical data questionnaires were used to collect information on the influencing factors. The Pittsburgh Sleep Quality Index (PSQI) was used for follow-up 2 weeks after ICU transfer. According to the follow-up results, the patients were divided into a non-sleep disorder group and a sleep disorder group. Univariate analysis was used to analyse the risk factors of sleep disorders in ICU patients. To avoid multicollinearity, LASSO regression was used to filter variables. Through binary logistic regression, the forward step method and likelihood ratio test were selected to further screen the variables. R language was used to establish a riskprediction model and draw a column graph. Receiver operating characteristic (ROC) and Hosmer-Lemeshow (H-L) tests were used to verify the prediction effect of the model.
The influencing factors for sleep disorders in patients transferred out of ICU were pre-hospital sleep disturbance [Odds Ratio: 4.467, 95% CI (1.191-16.749), p = .026], APACHE II score ≥15 [Odds Ratio: 6.452, 95% CI (1.777-23.434), p = .005], moderate comorbidities [Odds Ratio: 18.045, 95% CI (1.568-66.731), p = .015], severe comorbidities [Odds Ratio:12.083, 95% CI (2.785-116.911), p = .002], remifentanil use [Odds Ratio: 12.083, 95% CI (2.716-53.756), p = .001], RCSQ total score <45 [Odds Ratio: 18.037, 95% CI (4.907-66.300), p < .001], moderate depression [Odds Ratio: 70.659, 95% CI (8.195-609.219), p < .001] and severe depression [Odds Ratio: 8.563, 95% CI (1.165-62.936), p = .035]. The prediction model was as follows: Logit (P) = -10.529 + 1.497* (pre-hospital sleep disorder) +1.864* (APACHE II score ≥15) +2.325* (moderate complication) +2.893* (severe complication) +2.492* (remifentanil use) +2.892* (RCSQ) Total score <45 +0.574* (mild depression) +4.258* (moderate depression) +2.147* (major depression). The area under the ROC curve of the prediction model was 0.916, the sensitivity was 81.9%, and the specificity was 96.0%. The H-L test showed that χ = 4.301, p = .829 (p > .05). The area under the internal verified ROC curve (AUC) was 0.896, and the H-L test revealed that χ = 3.683 and p = .885 (p > .05). The area under the external verified ROC curve was 0.739, the sensitivity was 72.7%, and the specificity was 64.7%. The H-L test results showed that χ = 4.683, p = .699 (p > .05), indicating that the model had a good prediction effect.
The risk histogram of sleep disorders in ICU patients can predict the risk of sleep disorders in ICU patients, and can be used to assess the high risk of sleep disorders in ICU patients, and can help nurses to formulate corresponding intervention measures.
The dynamic nomogram can be used to systematically monitor various factors associated with sleep disorders, and the prevention of sleep disorders can improve outcomes and quality of life for patients discharged from the ICU. Furthermore, nurses need to develop and accurately apply nursing interventions, taking into account all relevant variables, thereby reducing the occurrence of sleep disorders.
睡眠障碍是重症监护病房(ICU)中重症监护后综合征(PICS)的临床表现之一。睡眠障碍可导致患者的情绪、认知、记忆、免疫和运动系统发生变化,从而导致伤口愈合延迟、感染率、再入院率、死亡率和并发症发生率增加。然而,开发ICU后患者睡眠障碍的预测模型是一个研究较少的问题。
探讨睡眠障碍的危险因素,建立预测模型,并在内部和外部验证其预测效率,为临床工作人员在早期预防转出ICU患者发生睡眠障碍提供科学依据。
采用便利抽样法,选取2022年5月至2022年12月从南通大学附属医院重症监护科转出的405例患者作为研究对象,分为建模组270例和内部验证组135例。选取2023年7月至2023年9月在同一医院收治的67例ICU患者作为外部验证组。采用一般资料和临床资料问卷收集影响因素信息。在ICU转出后2周采用匹兹堡睡眠质量指数(PSQI)进行随访。根据随访结果,将患者分为非睡眠障碍组和睡眠障碍组。采用单因素分析ICU患者睡眠障碍的危险因素。为避免多重共线性,采用LASSO回归筛选变量。通过二元逻辑回归,选择向前逐步法和似然比检验进一步筛选变量。使用R语言建立风险预测模型并绘制柱状图。采用受试者工作特征(ROC)和Hosmer-Lemeshow(H-L)检验验证模型的预测效果。
转出ICU患者睡眠障碍的影响因素为院前睡眠障碍[比值比:4.467,95%可信区间(1.191-16.749),p = 0.026]、急性生理与慢性健康状况评分系统(APACHE)II评分≥15[比值比:6.452,95%可信区间(1.777-23.434),p = 0.005]、中度合并症[比值比:18.045,95%可信区间(1.568-66.731),p = 0.015]、重度合并症[比值比:12.083,95%可信区间(2.785-116.911),p = 0.002]、瑞芬太尼使用[比值比:12.083,95%可信区间(2.716-53.756),p = 0.001]、Richmond躁动-镇静评分量表(RCSQ)总分<45[比值比:18.037,95%可信区间(4.907-66.300),p < 0.001]、中度抑郁[比值比:70.659,95%可信区间(8.195-609.219),p < 0.001]和重度抑郁[比值比:8.563,95%可信区间(1.165-62.936),p = 0.035]。预测模型如下:Logit(P)= -10.529 + 1.497×(院前睡眠障碍)+1.864×(APACHE II评分≥15)+2.325×(中度并发症)+2.893×(重度并发症)+2.492×(瑞芬太尼使用)+2.892×(RCSQ总分<45)+0.574×(轻度抑郁)+4.258×(中度抑郁)+2.147×(重度抑郁)。预测模型的ROC曲线下面积为0.916,灵敏度为81.9%,特异度为96.0%。H-L检验显示χ = 4.301,p = 0.829(p > 0.05)。内部验证的ROC曲线下面积(AUC)为0.896,H-L检验显示χ = 3.683,p = 0.885(p > 0.05)。外部验证的ROC曲线下面积为0.739,灵敏度为72.7%,特异度为64.7%。H-L检验结果显示χ = 4.683,p = 0.699(p > 0.05),表明模型具有良好的预测效果。
ICU患者睡眠障碍风险直方图可预测ICU患者睡眠障碍风险,可用于评估ICU患者睡眠障碍的高风险,并可帮助护士制定相应的干预措施。
动态列线图可用于系统监测与睡眠障碍相关的各种因素,预防睡眠障碍可改善ICU出院患者的结局和生活质量。此外,护士需要制定并准确应用护理干预措施,考虑所有相关变量,从而减少睡眠障碍的发生。