Altern Ther Health Med. 2023 Nov;29(8):278-285.
Peripherally inserted central catheters (PICCs) have a high incidence of catheter occlusion, but research exploring the risk factors for such an occlusion for patients in intensive care units (ICUs) is lacking.
The study intended to examine the impact of multiple risk factors on the occurrence of PICC catheter occlusion to find evidence that can help clinical medical staff identify patients at an early stage who are at high risk of a catheter occlusion.
The research team performed a retrospective, observational clinical study.
The study took place at a tertiary general hospital, the Second Affiliated Hospital and Yuying Children's Hospital of Wenzhou Medical University in Wenzhou, China.
Participants were 300 patients with a PICC who received treatment in the hospital's adult ICU between January 2019 and April 2022.
According to the time of catheterization, the research team numbered the 1~300 participants and then selected one starting number to divided them into two groups according to the random number table. These two groups were: (1) a training group with 225 participants and (2) validation group with 75 participants.
The main outcome measure was the evaluation of the factors impacting patients who had had a PICC occlusion during catheter retention, including complete and incomplete occlusions, to build a risk prediction model of PICC occlusion. A secondary outcome measure was the occurrence of extubation of the PICC discharge of the ICU patient. The research team performed a univariate analysis of the training group's data and a multivariate logistic regression analysis of the risk factors. The team: (1) built a risk prediction model of PICC occlusion using the independent risk factors for catheter occlusion for PICC patients in an ICU and (2) used the Hosmer-Lemeshow goodness-of-fit test to test the prediction model. A two tailed using p>0.05 indicated that the model had a good fit. Then, the team applied the model to the validation group and evaluated the model's predictive ability using a receiver operating characteristic (ROC) curve. The team considered an area under the curve (AUC) >0.5 to have predictive value. The larger the area was, the better the predicted value was. The incidence of PICC occlusion in the training group was 18.22%, including 10 participants with complete occlusion and 31 with partial occlusion. The team used the SPSS 22.0 and R software for statistical analysis.
The univariate analysis showed that 13 factors were associated with PICC occlusion, including: (1) an age ≥65 years (P < .001), a BMI of ≥24 kg/m2 (P < .001), (2) a BMI of ≥24kg/m2 (P = .002), (3) diabetes (P < .001), (4) stroke (P < .001), (5) hypertension (P < .001), (6) malignant tumors (P < .001), (7) a history of deep vein thrombosis (P < .001), (8) limb activity (P < .001), (10) flushing and sealing pipe frequency of Q8h (P = .035), (11) retention time (P < .001), (12) an increased platelet count (P = .036), (13) blood transfusions (P < .001), and (14) intravenous nutrition (P < .001). The independent risk factors for PICC occlusion included: (1) age ≥65 years-OR=1.224, P = .028; (2) BMI ≥24 kg/m2-OR=1.679, P = .004; (3) diabetes-OR=1.343, P = .017; (4) malignant tumors-OR=2.736, P < .001; (5) blood transfusions-OR=1.947, P < .001), and (6) intravenous nutrition-OR=2.021, P < .001. The frequency of flushing and sealing the pipe (Q8h)-OR=-2.145, P = .002-was a protective factor. In the training group, the area under the curve (AUC) for predicting a PICC occlusion was 0.917. The Hosmer-Lemeshow test of the prediction model showed that no significant differences existed in the test results within the model (χ2 = 5.830, P = .666), indicating that the model passed the internal validation. The ideal and calibration curves of the prediction model were highly coincident, and the model was well calibrated. The Hosmer-Lemeshow test of the validation group showed that no significant differences existed in the test results outside the model, suggesting that the model had high consistency.
Age ≥65 years, BMI ≥24 kg/m2, diabetes, malignant tumors, blood transfusions, and intravenous nutrition were independent risk factors for PICC occlusion, while the frequency of flushing and sealing pipe (Q8h) was a protective factor. This prediction model had an outstanding ability to discriminate in identifying patients with a high-risk of PICC occlusion in the ICU.
外周静脉置入中心静脉导管(PICC)的导管阻塞发生率较高,但针对重症监护病房(ICU)患者 PICC 导管阻塞的危险因素的研究还很缺乏。
本研究旨在探讨多种危险因素对 PICC 导管阻塞发生的影响,以期找到有助于临床医护人员早期识别发生导管阻塞风险较高的患者的证据。
本研究团队进行了一项回顾性、观察性临床研究。
该研究在一家三级综合医院,即温州医科大学附属第二医院和育英儿童医院的成人 ICU 进行。
300 名接受医院成人 ICU 中 PICC 治疗的 PICC 患者参与了研究。
根据置管时间,研究团队将 300 名参与者编号为 1~300,并随后从编号中选择一个起始数,根据随机数表将他们分为两组。这两组是:(1)训练组,有 225 名参与者;(2)验证组,有 75 名参与者。
主要观察指标是评估导管保留期间发生 PICC 阻塞的患者的因素,包括完全和不完全阻塞,以建立 PICC 阻塞的风险预测模型。次要观察指标是 ICU 患者的 PICC 拔管和出院情况。研究团队对训练组的数据进行单因素分析,并对 ICU 患者 PICC 阻塞的危险因素进行多因素 logistic 回归分析。团队:(1)使用 ICU 患者 PICC 导管阻塞的独立危险因素,建立 PICC 导管阻塞的风险预测模型;(2)使用 Hosmer-Lemeshow 拟合优度检验来检验预测模型。双侧 p>0.05 表示模型拟合良好。然后,团队将该模型应用于验证组,并使用受试者工作特征(ROC)曲线评估模型的预测能力。ROC 曲线的曲线下面积(AUC)>0.5 被认为具有预测价值。面积越大,预测值越好。训练组 PICC 阻塞的发生率为 18.22%,包括 10 名完全阻塞和 31 名部分阻塞患者。研究团队使用 SPSS 22.0 和 R 软件进行统计分析。
单因素分析显示,13 个因素与 PICC 阻塞有关,包括:(1)年龄≥65 岁(P<0.001),BMI≥24kg/m2(P<0.001);(2)BMI≥24kg/m2(P=0.002);(3)糖尿病(P<0.001);(4)中风(P<0.001);(5)高血压(P<0.001);(6)恶性肿瘤(P<0.001);(7)深静脉血栓形成史(P<0.001);(8)肢体活动(P<0.001);(9)导管尖端位置异常(P=0.001);(10)Q8h 冲管封管频率(P=0.035);(11)留置时间(P<0.001);(12)血小板计数增加(P=0.036);(13)输血(P<0.001)和(14)静脉营养(P<0.001)。PICC 阻塞的独立危险因素包括:(1)年龄≥65 岁-OR=1.224,P=0.028;(2)BMI≥24kg/m2-OR=1.679,P=0.004;(3)糖尿病-OR=1.343,P=0.017;(4)恶性肿瘤-OR=2.736,P<0.001;(5)输血-OR=1.947,P<0.001)和(6)静脉营养-OR=2.021,P<0.001)。冲管封管频率(Q8h)-OR=-2.145,P=0.002-是保护因素。在训练组中,预测 PICC 阻塞的曲线下面积(AUC)为 0.917。预测模型的 Hosmer-Lemeshow 检验显示,模型内的检验结果无显著差异(χ2=5.830,P=0.666),表明该模型通过了内部验证。预测模型的理想和校准曲线高度吻合,模型校准良好。验证组的 Hosmer-Lemeshow 检验显示,模型外的检验结果无显著差异,提示该模型具有较高的一致性。
年龄≥65 岁、BMI≥24kg/m2、糖尿病、恶性肿瘤、输血和静脉营养是 PICC 阻塞的独立危险因素,而 Q8h 冲管封管频率是保护因素。该预测模型在识别 ICU 中发生 PICC 阻塞风险较高的患者方面具有出色的区分能力。