Surgery can lead to hypothermia. which client is at greatest risk for hypothermia?

1 Introduction

Unintentional hypothermia is defined as an accidental low body temperature.[1] The National Institute for Health and Care Excellence [NICE] estimates that 70% of patients admitted to the anaesthetic recovery room suffer from hypothermia.[2] The risk for ischaemic cardiac events [cardiac arrest, instable angina pectoris, cardiac infarction] is increased by threefold in patients with intraoperative hypothermia.[3] Furthermore, perioperative hypothermia hinders wound healing and hemostasis resulting in higher postoperative transfusion rates.[4,5]

General as well as epidural anaesthesia decreases the vasoconstriction and shivering threshold. Hence a combination of both—epidural and general anaesthesia—can promote perioperative hypothermia.[6,7] Other risk factors are the extent and the length of the surgical procedure.[8,9]

So far there are no large studies investigating the questions described above.

We reviewed all thoracic surgical patients undergoing either video-assisted minimally invasive surgery [VATS] or thoracotomy between 2006 and 2011 to determine the incidence and extent and risk factors of hypothermia. Further we set out to determine the influence of epidural anesthesia on the incidence of hypothermia.

The data gained may show how perioperative management positively or negatively influences hypothermia and how to improve the prevention of hypothermia.

2 Methods

2.1 Data extraction

This retrospective study analyzed the anaesthetic files of all patients undergoing a surgical intervention of the lung at the University Medical Center Göttingen between July 19, 2006 and February 10, 2011. All operations were documented electronically. For identifying suitable data sets we did an enquiry of the electronic documentation system AnDOK live [DATAPEC, Pliezhausen, Germany]. 419 cases that complied with the criteria of pneumectomy, lobectomy or other kinds of lung resection were identified. We had to exclude data sets of 22 secondary operations. These cases were also excluded if the patients were temporally discharged between the interventions. Another 58 cases were excluded as no data on temperature was found. Finally, we were able to include 339 patients in this study. Information of postoperative LOS at the ICU, hospital LOS, and in hospital mortality were retrieved by an enquiry of the patient data management system [SAP Deutschland SE & Co. KG, Walldorf, Germany]. The length of postoperative mechanical ventilation was calculated using the time of extubation, which is documented in our patient data management system ICIP [Philips Healthcare, BG Eindhoven, Netherlands].

From the anaesthetic documentation we obtained the following data:

Preoperative data such as age, ASA-Score, BMI, and comorbidities [e.g., lung impairment]. Intraoperative data were obtained on anaesthetic induction time, length of anaesthesia, operation time, use of epidural anaesthesia, use of totally intravenous anesthesia [TIVA], lowest intraoperative temperature, incidence of hypothermia, warming measures, amount of intraoperative IV infusion, number of transfused packed red blood cells, platelet concentrates, and number of fresh frozen plasma concentrates. Postoperative data were documented as well: postoperative mechanical ventilation, length of postoperative mechanical ventilation, hospital LOS, ICU LOS, and hospital mortality.

The retrospective study was conducted after obtaining a positive vote from the local ethics committee Göttingen.

2.2 Statistics

2.2.1 Descriptive statistics

Relative frequency of dichotomous variables was compared using the Pearson χ2-test. Ordinal variables are described as median including interquartile range and average rank and then reviewed using the Wilcoxon–Mann–Whitney test. Normally distributed metric variables are described with mean and standard deviation using the Student's t test.

2.2.2 Logistic regression

Factors influencing the development of hypothermia and the lowest intraoperative temperature measured were analyzed by multivariate logistic regression including backward elimination using the Wald significance test, which excludes stepwise variables of the lowest informative value until only essential determining factors remain. We considered a P-value < .05 as significant.

3 Results

3.1 Descriptive statistics

The descriptive statistical analysis of patients undergoing a combination of general anaesthesia and epidural anaesthesia compared to patient undergoing only general anaesthesia is listed in and Table 1 and in the Supplementary Information, //links.lww.com/MD/C219.

Table 1:

Comparison of metric parameters with respect to the anesthetic procedure.

Patients undergoing general and epidural anaesthesia were more often smokers and received more frequently premedication. We detected less renal insufficiency in this group. These patients received significantly more intraoperative intravenous infusions. However, there is no difference in the preoperative ASA-Score between both the groups. These patients were also in average 5 years older than patients that underwent only general anaesthesia. Furthermore, the average induction time was 12 minutes longer in the first group as well as operation time and length of anaesthesia.

Altogether 218 of 339 patients showed perioperative hypothermia. This equals a percentage of 64.3%.

After multivariate logistic regression we identified body surface area [P-value = .006], induction time [P-value = .004], and impaired lung function [P-value = .006] as significant factors influencing the incidence hypothermia. The odds ratio for estimating the relative risk is depicted in Table 2.

Table 2:

Odds ratio of significant factors influencing the incidence of hypothermia.

Multivariate logistic regression showed a small body surface area as factor promoting the incidence of perioperative hypothermia, while a preoperative existing lung impairment and larger body surface area were associated with a decreased incidence of perioperative hypothermia.

As factors significantly influencing the lowest perioperative body temperature we identified BMI [P-value < .001], induction time [P-value = .01], intraoperative fluid substitution [P-value = .005], impaired lung function [P-value = .008], epidural anaesthesia [P-value = .002], and thoracoscopy [P-value = .011]

The estimated quantitative effect of these significant factors is listed in Table 3.

Table 3:

Estimated quantitative effect of significant factors influencing the lowest body temperature measured. Multivariate logistic regression.

3.1.1 Intraoperative blood transfusion need

Overall 16 of 339 required at least 1 packed red blood cell unit. This equals a transfusion rate of 4.72%. Only 3 patients were treated with fresh frozen plasma [0.88%]. No patient required transfusion of platelet concentrates. The intraoperative blood transfusion need was analyzed using the Wilcoxon–Mann–Whitney test as the data were not normally distributed [supplementary information, //links.lww.com/MD/C219].

No difference concerning blood transfusion need between both groups was detected.

3.1.2 Frequency and length of postoperative respiratory mechanical ventilation

There was no difference between normothermia and hypothermia concerning frequency [P = .959] and length of postoperative mechanical ventilation [P = .932, refer to Supplementary Information, //links.lww.com/MD/C219]. Length of postoperative respiratory mechanical ventilation was analyzed using the Wilcoxin–Mann–Whitney test [Fig. 1]

Figure 1:

Length of postoperative respiratory assistance, normothermia compared to hypothermia. Kaplan–Meier curve.

We detected no correlation between perioperative hypothermia and frenquence and length of postoperative mechanical ventilation.

3.1.3 ICU and hospital LOS

ICU and hospital LOS were analyzed using the Wilcoxon–Mann–Whitney test. Results are depicted in Table 4 and Fig. 2. We could not detect any difference between both groups concerning ICU LOS. However, patients suffering from hypothermia were significantly earlier discharged from hospital.

Table 4:

Influence of ICU and hospital LOS on perioperative hypothermia. Wilcoxon–Mann–Whitney test.

Figure 2:

Hospital LOS. Normothermia compared to hypothermia. Kaplan–Meier curve. LOS = length of stay.

3.1.4 In hospital mortality

Perioperaitve hypothermia did not influence in hospital mortality [P = .773, Pearson χ2-test].

4 Discussion

The accidental perioperative hypothermia is a common event during surgical interventions and increases itself perioperative morbidity impairing haemostasis, wound healing, and increasing cardiac events.[10] Little is known regarding to the surgical interventions of the lung and the anaesthetic procedures described in our study, their relevance, and factors influencing hypothermia.

Our analysis of 339 cases showed an incidence of hypothermia of 64.3%. This percentage is higher than the 46% to 50% described in the literature.[10,11] However, it should be considered that most of patients included were warmed by a forced-air warming blanket laying under or above the patient. The effectivity of this procedure was shown by previous studies.[2,12] Furthermore, “hypothermia” was diagnosed in the literature by measuring body temperature at the arrival at the ICU.[10] The patients included in this study were already diagnosed with hypothermia, if intraoperative hypothermia was noted. Due to intraoperative warming procedures and the influence of operation time some of these patients might have reached normothermia already when being admitted to the ICU or anaesthetic recovery room.

4.1 Risk factors for the development and depth of hypothermia

A larger body surface [P = .008] decreased the frequency of hypothermia. There is evidence for the hypothesis that the fat tissue of overweight patients has an isolating function. Furthermore, it has been shown that these patients have a higher vasoconstriction threshold.[13,14]

Lung impairment [P = ,007] decreased the frequency of hypothermia as well. There are no studies that have found such a correlation. A possible explanation might be a more invasive ventilation or the existence of an intrinsic positive end expiratory pressure [PEEP] in patients with COPD that may influence thermoregulatory thresholds indirectly.[15]

Multivariate analysis showed that induction time [P = .004] was a hypothermia promoting factor. The effect is estimated −0.00298°C per minute in a time-dependent multivariate logistic regression model. This is plausible as patients did not receive prewarming during this time. Warming was started only after the patient arrived in the operation theatre. We could detect no influence of length of anaesthesia on the incidence of hypothermia, which mirrors the results of Abelha and Frank.[3,8] Furthermore, we observed that additional epidural anesthesia to general anesthesia did not increase the incidence of hypothermia but decreased body core temperature to an—albeit not clinically significant—degree. The decrease in body temperature during VATS might be explained by irrigation used during the procedure.

Operation time had neither an influence on the incidence of hypothermia nor on the [lowest] body temperature measured in our study. Kongsayreepong et al[9] showed that the incidence of hypothermia [

Chủ Đề