Department of Intensive Care Unit, Yijishan Hospital, First Affiliated Hospital of Wannan Medical College, Wuhu, 241001, Anhui, China.
Department of Nursing, Yijishan Hospital, First Affiliated Hospital of Wannan Medical College, Wuhu, 241001, Anhui, China.
BMC Anesthesiol. 2021 Feb 5;21(1):37. doi: 10.1186/s12871-021-01259-z.
The incidence of delirium in intensive care unit (ICU) patients is high and associated with a poor prognosis. We validated the risk factors of delirium to identify relevant early and predictive clinical indicators and developed an optimized model.
In the derivation cohort, 223 patients were assigned to two groups (with or without delirium) based on the CAM-ICU results. Multivariate logistic regression analysis was conducted to identify independent risk predictors, and the accuracy of the predictors was then validated in a prospective cohort of 81 patients.
A total of 304 patients were included: 223 in the derivation group and 81 in the validation group, 64(21.1%)developed delirium. The model consisted of six predictors assessed at ICU admission: history of hypertension (RR = 4.367; P = 0.020), hypoxaemia (RR = 3.382; P = 0.018), use of benzodiazepines (RR = 5.503; P = 0.013), deep sedation (RR = 3.339; P = 0.048), sepsis (RR = 3.480; P = 0.018) and mechanical ventilation (RR = 3.547; P = 0.037). The mathematical model predicted ICU delirium with an accuracy of 0.862 (P < 0.001) in the derivation cohort and 0.739 (P < 0.001) in the validation cohort. No significant difference was found between the predicted and observed cases of ICU delirium in the validation cohort (P > 0.05).
Patients' risk of delirium can be predicted at admission using the early prediction score, allowing the implementation of early preventive interventions aimed to reduce the incidence and severity of ICU delirium.
重症监护病房(ICU)患者发生谵妄的发病率较高,且与预后不良相关。我们验证了谵妄的危险因素,以确定相关的早期和预测性临床指标,并建立了一个优化模型。
在推导队列中,根据 CAM-ICU 的结果,将 223 名患者分为两组(有或无谵妄)。采用多变量逻辑回归分析识别独立的危险因素,然后在 81 名前瞻性队列患者中验证预测因子的准确性。
共纳入 304 名患者:推导组 223 名,验证组 81 名,64 名(21.1%)发生谵妄。该模型由 6 个入院时评估的预测因子组成:高血压病史(RR=4.367;P=0.020)、低氧血症(RR=3.382;P=0.018)、使用苯二氮䓬类药物(RR=5.503;P=0.013)、深度镇静(RR=3.339;P=0.048)、脓毒症(RR=3.480;P=0.018)和机械通气(RR=3.547;P=0.037)。该数学模型在推导队列中的 ICU 谵妄预测准确性为 0.862(P<0.001),在验证队列中的准确性为 0.739(P<0.001)。在验证队列中,预测和观察到的 ICU 谵妄病例之间没有发现显著差异(P>0.05)。
可以使用早期预测评分预测入院时患者发生谵妄的风险,从而实施早期预防干预措施,以降低 ICU 谵妄的发生率和严重程度。