CORRELATION OF INFERIOR VENA CAVA COLLAPSIBILITY INDEX WITH LUNG ULTRASOUND AND STROKE VOLUME VARIABILITY IN HYPOTENSIVE CRITICAL CARE PATIENTS

Document Type : Original Article

Authors

Anesthesia and Intensive Care Department, Faculty of Medicine, Cairo, Al-Azhar University

Abstract

Background: Differentiating fluid responders from non-responders is the primary goal when assessing critical care hypotensive patients for fluid responsiveness.
Objectives: To assess the fluid responsiveness in critical care hypotensive patients using inferior vena cave (IVC) collapsibility index and correlating its effectiveness with lung ultrasound (US) and stroke volume variation (SVV) induced by passive leg raising (PLR) in prediction of fluid responsiveness.
Patients and Methods: After approval of scientific and ethical committees, One hundred critical care hypotrnsive patients who were admitted to the ICU of El-Hussein University Hospital from November 2018 to March 2021 were included in the study. The following were done: echocardiography on admission, routine hemodynamic monitoring, lung US for assessment for extra volume lung water (EVLW), assessment of IVC variability, assessment of SVV induced by passive leg raising. Patients were classified into fluid responders and non-responders based on SVV. Responders were patients with SVV ≥ 12%.
Results: Caval index for assessment of fluid responsiveness is strongly correlated with lung US for assessment of EVLW and SVV with highest sensitivity and specificity in mechanically ventilated patients on muscle relaxant, and lower sensitivity and specificity in spontaneously breathing patients.
Conclusion: Caval index can be used to predict fluid responsiveness, but with different values depending on mechanical ventilation status and use of muscle relaxation.

Keywords

Main Subjects


CORRELATION OF INFERIOR VENA CAVA COLLAPSIBILITY INDEX WITH LUNG ULTRASOUND AND STROKE VOLUME VARIABILITY IN HYPOTENSIVE CRITICAL CARE PATIENTS

By

Mohamad Mohamad Abd El-Hamed El-Ghonimy*, Emad Abd El-Hamed Shaaban and Sayed Ahmad Abd Alaly

Anesthesia and Intensive Care Department, Faculty of Medicine, Cairo, Al-Azhar University

*Corresponding author: Mohamad Mohamad Abd El-Hamed El-Ghonimy,

E-mail: dr_mohamadelghonimy@yahoo.com

ABSTRACT

Background: Differentiating fluid responders from non-responders is the primary goal when assessing critical care hypotensive patients for fluid responsiveness.

Objectives: To assess the fluid responsiveness in critical care hypotensive patients using inferior vena cave (IVC) collapsibility index and correlating its effectiveness with lung ultrasound (US) and stroke volume variation (SVV) induced by passive leg raising (PLR) in prediction of fluid responsiveness.

Patients and Methods: After approval of scientific and ethical committees, One hundred critical care hypotrnsive patients who were admitted to the ICU of El-Hussein University Hospital from November 2018 to March 2021 were included in the study. The following were done: echocardiography on admission, routine hemodynamic monitoring, lung US for assessment for extra volume lung water (EVLW), assessment of IVC variability, assessment of SVV induced by passive leg raising. Patients were classified into fluid responders and non-responders based on SVV. Responders were patients with SVV ≥ 12%.

Results: Caval index for assessment of fluid responsiveness is strongly correlated with lung US for assessment of EVLW and SVV with highest sensitivity and specificity in mechanically ventilated patients on muscle relaxant, and lower sensitivity and specificity in spontaneously breathing patients.

Conclusion: Caval index can be used to predict fluid responsiveness, but with different values depending on mechanical ventilation status and use of muscle relaxation.

Keywords: Inferior Vena Cave collapsibility index, Lung ultrasound, Stroke Volume Variation, Passive Leg Raising (PLR), Fluid responsiveness.

 

 

INTRODUCTION

     Fluid resuscitation of patients with acute circulatory failure aims to increase stroke volume (SV) and consequently improve cardiac output (CO) for better tissue oxygenation. However, this effect does not always occur. The evaluation of fluid responsiveness before their administration may help to identify patients who would benefit from fluid resuscitation and avoid the risk of fluid overload in the others. The dynamic parameters of fluid responsiveness evaluation are promising predictive factors. Of these, the echocardiographic measurement of the respiratory variation in the IVC diameter is easy to apply and has been used in the hemodynamic evaluation of intensive care patients (ICU) patients. However, the applicability of this technique has many limitations, and the present studies are heterogeneous and inconsistent across specific groups of patients. Assessment of the IVC using trans-thoracic echocardiography (TTE) is a conventional element of the echocardiographic study of critical patients. The physiological principle behind it is the lung-heart interaction. The variation in transpulmonary pressure during respiration is transmitted to the right heart cavities, which varies the venous return and the IVC diameter. This relationship depends on the ventilatory mode and IVC compliance of the patient (Furtado and Reis, 2019).

     In non-ventilated patients or those under invasive mechanical ventilation (IMV) with respiratory effort, there is a negative transpulmonary pressure at the beginning of inspiration that induces a variable degree of IVC collapse as a function of its compliance. For example, in patients with high right heart cavity pressure or elevated preload (during the flat phase of the Frank-Starling curve), IVC shows reduced compliance and limited collapse due to the negative transpulmonary pressure transmitted; in fact, collapse may be absent. Among patients with low right heart cavity pressure in hypovolemia (i.e., the ascending phase of the Frank-Starling curve), IVC compliance is high, and collapse is significant during inspiration. By contrast, positive pressure can be applied to the thorax during inspiration among patients under IMV without respiratory effort (in the controlled mode). This pressure is transmitted to the right heart cavities and the IVC, which stretches as a function of its compliance. Among patients without cardiac reserve due to poor cardiac function and/or those with high preload (i.e., during the flat phase of the Frank-Starling curve), the IVC shows reduced compliance and limited distention, and its diameter may not vary. Conversely, the IVC of patients with cardiac reserve who potentially benefit from the administration of fluids shows significant distension during inspiration (Funk et al., 2013, Lansdorp et al., 2014 and Widmaier et al., 2016).

     We aimed by our study to evaluate the correlation of IVC variability index with lung US and SVV in assessment of fluid responsiveness and fluid tolerance in critical care hypotensive patients.

PATIENTS AND METHODS

     This prospective study was carried out on 100 adult patients who were admitted to the ICU of El-Hussein University Hospital from November 2018 to March 2021.

Inclusion criteria: All hypotensive critical care patients, both sexes and hypotension was defined as mean arterial pressure (MAP) less than 65 mm Hg or systolic blood pressure (SBP) less than 90 mm Hg.

Exclusion criteria: Patient's refusal, uncooperative patients, patients with poor echo window patients with valvular heart disease, patients with atrial fibrillation, patients with increased intra-abdominal pressure, patients in whom the supine position was contraindicated, pontraindication to PLR including hip or spine surgery, post abdominal surgery.

Ethical approval: was obtained from the Faculty of Medicine Al-Azhar University Research/Ethics Committee on 8/10/2018.

     Informed consent was obtained from all patients or from their relatives and they received the fullest possible information about the study.

     All examinations were performed using an echocardiograph (Philips Affiniti 50, USA) with S4-2 Cardiac sector probe.

The following were done: Complete history taking, complete physical examination, laboratory investigation and arterial blood gases measurements as well as echocardiography and routine hemodynamic monitoring.

Pulmonary Assessment for EVLW: Lung US was performed according to a systematic protocol in supine patients. An increased amount of EVLW was diagnosed by multiple B-lines or comet tails. B-lines were defined as discrete laser-like vertical hyperechoic reverberation artifacts that arise from the pleural line and extended to the bottom of the screen without fading, and moved synchronously with lung sliding. They rrepresented a reverberation artifact through edematous interlobular septa or alveoli (Volpicelli et al., 2012). The echo comet score (ECS) was obtained by the 28-rib interspaces technique, which divided the chest wall into 12 areas on the left (from the 2nd to the 4th intercostal space) and 16 areas on the right (from the 2nd to the 5th intercostal space) anterior and lateral hemithorax (Volpicelli et al., 2012, Zieleskiewicz et al., 2014, and Bouhemad et al., 2015). The sum of the B-lines found on each of the 28 chest-wall areas yields the ECS, denoting the amount of EVLW.

Assessment of Inferior Vena Cava Variability: The patient was maintained in the supine position then the IVC was evaluated in the subcostal (SIVC) view. The IVC was first identified in a transverse plane, with the probe in a subxiphoid position perpendicular to the skin. Then the probe was moved to the right to visualize the IVC in the center of the field. The probe was then rotated by 90° to obtain a longitudinal plane. The in-plane view of the probe showed the IVC in its longitudinal axis draining into the right atrium. The right hepatic vein, the last tributary to join the IVC intra-abdominally was visualized in this view (De Backer and Fagnoul, 2014, Evans et al., 2014, Lang et al., 2015, and Levitov et al., 2016). After confirming the IVC using the PWD mode, the M mode was used to select a plane just distal to the right hepatic vein, approximately 2–3 cm from the junction of the IVC and right atrium. This was to make sure that the IVC caliber was measured intra-abdominally avoiding the intrathoracic region and also for standardization. M mode was used to capture a 10-s cine loop of the IVC over two or three respiratory cycles (De Backer and Fagnoul, 2014, Evans et al., 2014, Lang et al., 2015 and Levitov et al., 2016). Then the maximum IVC diameter (Dmax) and minimum IVC diameter (Dmin) were measured. Three measurements were averaged.

Caval index (dIVC) was calculated as [(Dmax − Dmin) / ((Dmax + Dmin)/2)] ×100%.

     The caval index was expressed as a percentage, where one end of the spectrum was 0% which indicated minimal collapse of the IVC meaning volume overload and the other end of the spectrum was 100% which indicates almost complete collapse of the IVC meaning volume depletion.

Assessment of Stroke Volume Variability: SVV induced by passive leg rising was assessed at the left ventricular outflow tract (LVOT). LVOT diameter first was measured in the parasternal long axis view (PLAX) view and hence LVOT area i.e., cross sectional area (CSA), then LVOT velocity time integral (VTI) was measured using pulsed wave Doppler PWD) in the apical five chamber (AP5) view, while the patient in a semi recumbent position 30°. SV was calculated as the product of the CSA of the LVOT and the LVOT VTI (Poth et al., 2014). PLR test was done by elevating the patient lower limbs to 45°(automatic bed elevation or wedge pillow) while at the same time placing the patient in the supine from a 30° semi recumbent position. After a minute of equilibration, while the transducer is in the same position, LVOT VTI was repeated and SV recalculated.

SVV was calculated as [(SVmax − SVmin) / ((SVmax + SVmin)/2)] ×100%.

     Patients were classified into fluid responders and non-responders based on SVV. Responders are patients with SVV ≥ 12% (Monnet et al., 2011, Brun et al., 2013, Vos et al., 2015, Monnet et al., 2016, Teboul et al., 2016 and Miller and Mandeville, 2016).

     Vital data were recorded before and after PLR test.

Statistical analysis: Recorded data were analysed using the statistical package for the social sciences, version 20.0 (SPSS Inc., Chicago, Illinois, USA). Quantitative data were expressed as mean± standard deviation (SD). Qualitative data were expressed as frequency and percentage.

The following tests were done: Independent-samples t-test of significance was used when comparing between two means. Mann Whitney (z) test: for two-group comparisons in non-parametric data. Chi-square (x2) test of significance was used in order to compare proportions between qualitative parameters. Pearson's correlation coefficient (r) test was used to assess the degree of association between two sets of variables. Receiver operating characteristic (ROC curve) analysis was used to find out the overall predictivity of parameter in and to find out the best cut-off value with detection of sensitivity and specificity at this cut-off value. The confidence interval was set to 95% and the margin of error accepted was set to 5%. So, the p-value was considered significant at < 0.05.


 

 

 

RESULTS

 

 

     We aimed by our study to evaluate the correlation of IVC variability index with lung US and SVV in assessment of fluid responsiveness and fluid tolerance in critical care hypotensive patients and we applied our study on 100 patients with the same inclusion and exclusion criteria.

     According to demographic data (age and sex), there was no statistically significant difference between fluid responders and non-responders (Table 1).


 

Table (1):  Comparison between fluid responder and non-responder according to their demographic data

Fluid

responsiveness

 

Demographic

data

Responders
(n=67)

Non-responders
(n=33)

Test

p-value

Age (years)

Mean±SD

49.12±13.64

49.73±13.31

t=0.045

0.833

Range

19-69

24-68

Sex

Male

39 (58.2%)

21 (63.6%)

x2=0.271

0.602

Female

28 (41.8%)

12 (36.4%)

 

 

     According to the use of mechanical ventilation and muscle relaxation, there was no statistically significant difference between fluid responders and non-responders (Table 2).

 

 

Table (2):  Comparison between fluid responder and non-responder according to their mechanical ventilation and muscle relaxantion

Fluid

responsiveness

 

Mechanical

ventilation

Responders
(n=67)

Non-responders
(n=33)

x2

p-value

Mechanical ventilation

Ventilated

43 (64.2%)

24 (72.7%)

0.731

0.393

Not ventilated

24 (35.8%)

9 (27.3%)

Muscle relaxation

Yes

30/43 (69.8%)

19/24 (79.2%)

0.693

0.405

No

13/43 (30.2%)

5/24 (20.8%)

 

 

 

 

 

 

 

 

 

     No statistically significant difference between fluid-responders and non-responders according to their blood pressure before & after PLR test, but for the changes in blood pressure with PLR, there were differences between pre and post SBP, DBP and MAP in fluid responder group with a mean of 6.28±1.95, 6.04±1.47 and 6.36±1.07 respectively and a mean of 0.00±2.66, 0.79±1.93 and 0.73±1.40 respectively in fluid non-responder group. There was highly statistically significant higher mean value in fluid responders compared to non-responders with (p-value <0.001 highly significant) (Table 3).

 

 

Table (3):  Comparison between fluid responder and not responder according to their blood pressure

Fluid

responsiveness

Blood

pressure

Responders

(n=67)

Non-responders

(n=33)

Test value

p-value

SBP before PLR

Mean±SD

90.76±9.38

93.24±7.94

t=1.706

0.195

Range

75-110

77-106

DBP before PLR

Mean±SD

51.70±8.96

54.33±9.09

t=1.889

0.172

Range

31-67

31-69

MAP before PLR

Mean±SD

64.55±8.38

67.12±8.17

t=2.113

0.149

Range

48-81

47-79

SBP after PLR

Mean±SD

97.04±9.57

93.24±7.85

t=3.907

0.051

Range

78-117

75-108

DBP after PLR

Mean±SD

57.75±9.46

55.12±9.85

t=1.658

0.201

Range

37-76

30-74

MAP after PLR

Mean±SD

70.91±8.81

67.85±8.55

t=2.723

0.102

Range

53-89

48-82

SBP change with PLR

Mean±SD

6.28±1.95

0.00±2.66

z=65.673

<0.001

Range

0 – 10

-9 – 5

DBP change with PLR

Mean±SD

6.04±1.47

0.79±1.93

z=23.418

<0.001

Range

4 – 9

-2 – 7

MAP change with PLR

Mean±SD

6.36±1.07

0.73±1.40

z=71.565

<0.001

Range

4 – 8

-2 – 4

 

 

 

 

 

 

 

     There was statistically significant positive correlation between SVV and blood pressure changes with PLR test (Difference between blood pressure before & after PLR test) (Table 4).

 

 

Table (4):  Correlation between patients SVV and blood pressure changes using Pearson Correlation Coefficient

Parameters

SVV

r

p-value

SBP change with PLR

0.814

<0.001

DBP change with PLR

0.876

<0.001

MAP change with PLR

0.949

<0.001

r-Pearson Correlation Coefficient

 


Figure (1): Statistically significant positive correlation between SVV and SBP change with PLR test (Difference between SBP before & after PLR test).

   

Figure (2): Statistically significant positive correlation between SVV and DBP change with PLR test (Difference between DBP before & after PLR test).

Figure (3): Statistically significant positive correlation between SVV and MAP change with PLR test (Difference between SBP before & after PLR test).

 

     There was statistically significant positive correlation between caval index and blood pressure changes with PLR test (Difference between blood pressure before & after PLR test) (Table 5).

 

 

Table (5):  Correlation between patients caval index and blood pressure changes using Pearson Correlation Coefficient

Parameters

SVV

r

p-value

SBP change with PLR

0.520

<0.001

DBP change with PLR

0.538

<0.001

MAP change with PLR

0.596

<0.001

r-Pearson Correlation Coefficient

 

   

Figure (4): Statistically significant positive correlation between Caval Index and SBP change with PLR test (Difference between SBP before & after PLR test)

Figure (5): Statistically significant positive correlation between Caval Index and DBP change with PLR test (Difference between DBP before & after PLR test)

 

Figure (6): Statistically significant Positive correlation between
Caval Index and MAP change with PLR test (Difference between MAP before & after PLR test).

 

     The Caval Index in fluid responder group ranged from 0.97-2.11l (mean 1.53±0.26). While the Caval Index in fluid non-responder group ranged from 1.78-2.26 (mean 1.96±0.14), there was highly statistically significant higher mean value in fluid responder compared to non-responder with (p-value <0.001 highly significant) (Table 6).

 

 

Table (6):  Comparison between fluid responders and non-responders according to their IVC parameters

Fluid responsiveness

 

IVC

Responders

(n=67)

Non-responders

(n=33)

Test value

p-value

Dmax

Mean±SD

1.53±0.26

1.96±0.14

t=78.060

<0.001

Range

0.97-2.11

1.78-2.26

Dmin

Mean±SD

1.17±0.18

1.67±0.08

t=226.877

<0.001

Rang

0.77-1.52

1.51-1.8

Caval index

Mean±SD

26.53±6.31

16.06±7.90

z=37.410

<0.001

Rang

19.2-36.7

7.8-31.1

 

 

     There was statistically significant positive correlation between patients SVV and their Caval index (Table 7).

 

Table (7):  Correlation between patients SVV and IVC parameters using Pearson Correlation Coefficient

IVC parameters

SVV

r

p-value

Dmax

-0.752

<0.001

Dmin

-0.924

<0.001

Caval index

0.616

<0.001

r-Pearson Correlation Coefficient

 
   

Figure (7):     Statistically significant positive correlation between SVV and Caval Index

 

     The ECS (No. of B lines) in fluid responder group was ranged from 2-20 (mean 11.51±3.92), while in the non-responder group it was ranged from 25-58 (mean 41.15±8.99), there was highly statistically significant lower mean value in fluid responder compared to non-responder with (p-value <0.001 (Table 8).

 

 

Table (8):  Comparison between fluid responders and non-responders according to their EVLW

Fluid responsiveness

 

Lung US

Responders
(n=67)

Non-responders
(n=33)

Test

p-value

N. of B lines

Mean±SD

11.51±3.92

41.15±8.99

z=24.125

<0.001

Range

2-20

25-58

 

 

     There was statistically significant correlation between SVV and echo comet score (number of B lines) for detection of EVLW (Table 9).

 

 

Table (9):  Correlation between patients SVV and EVLW using Pearson Correlation Coefficient

EVLW

SVV

r

p-value

N. of B lines

-0.990

<0.001

r-Pearson Correlation Coefficient

 


Figure (8):Statistically significant negative correlation between SVV and N. of B lines.

 

     There was statistically significant correlation between caval index and echo comet score (number of B lines) for detection of EVLW (Table 10).

 

 

Table (10): Correlation between patients Caval index and EVLW using Pearson Correlation Coefficient

EVLW

Caval index

r

p-value

N. of B lines

-0.627

<0.001

Semiquantitive score

-0.513

<0.001

r-Pearson Correlation Coefficient

 

Figure (9): Statistically significant Negative correlation between Caval Index and N. of B lines.

 


Prediction of fluid responsiveness using the Caval Index:

     Receiver operator characteristics (ROC) curves were constructed for Caval Index indices for prediction of fluid responsiveness in different patient’s categories. In all patient categories it was significant predictor as denoted by the significantly large area under the curves (AUCs); with Caval Index in ventilated patients with muscle relaxant being the most significant predictor (Figure 10).

 

 

 

Figure (10):  Receiver-operating characteristic (ROC) curve for prediction of fluid responsiveness using the Caval Index

 

 

 

 

     There were different values of Caval index for prediction of fluid responsiveness depending on mode of ventilation and use of muscle relaxation as shown in (Table 11).

 

 

Table (11): Caval index value for prediction of fluid responsiveness

Patient category

Ventilated patients

Not ventilated

All

With muscle relaxant

Without muscle relaxant

All

Cut-off value by Caval index

≥16.4

≥17.4

≥17.4

≥31.1

≥20.2

Sensitivity

95%

91%

93%

88%

73%

Specificity

94%

92%

92%

87%

71%

PPV

94.1%

91.9%

92.1%

87.1%

71.6%

NPV

94.9%

91.1%

92.9%

87.9%

72.4%

Accuracy

94.5%

91.5%

92.5%

87.5%

72.0%

 

 

DISCUSSION

     As to come to our knowledge, this was the first study to evaluate the effectiveness of IVC variability index for assessment of fluid responsiveness in correlation with lung US and SVV using PLR test.

     Patients were classified into fluid responders and non-responders based on SVV. Responders are patients with SVV ≥ 12% (Monnet et al., 2011, Brun et al., 2013, Vos et al., 2015, Monnet et al., 2016, Teboul et al., 2016 and Miller and Mandeville, 2016).

     There were 67 (67%) patients with SVV ≥ 12% and hence they are fluid responders and 33 (33%) patients with SVV < 12 (fluid non-responder). Of the fluid responder group there were 43 patients mechanically ventilated (40 mechanically ventilated with muscle relaxant and 13 without muscle relaxant) and 24 spontaneously breathing patients; while in the non-responder group there were 24 patients mechanically ventilated (19 mechanically ventilated with muscle relaxant and 5 without muscle relaxant) and 9 spontaneously breathing patients.

     There was strong positive correlation between SVV and Caval index in both responders and non-responders with highly significant p-value <0.001. Also, there was strong positive correlation between Caval index and EVLW in both responders and non-responders with highly significant p-value <0.001 and blood pressure changes with PLR test in both responders and non-responders with highly significant p-value <0.001 with highly significant p-value <0.001.

     There were different values of Caval index for prediction of fluid responsiveness depending on mode of ventilation and use of muscle relaxation:

     In mechanically ventilated patients with muscle relaxation: Caval index ≥ 16.4% is the value for prediction of fluid responsiveness with 95% sensitivity, 94% specificity, 94.1 positive predictive values and 94.9 negative predictive values. Other studies showed that a distensibility index (Dmax - Dmin)/Dmin) of > 19.4% is the value for prediction of fluid responsiveness with 79.17% sensitivity and 80% specificity with an AUC of 0.886 (Aboelnile et al., 2020).

     In a systematic review and meta-analysis done by Long et al. (Long et al., 2017), they found that pooled results of dIVC in mechanically ventilated patients had AUC of 0.79 with a sensitivity of 67% and a specificity of 68%, which is not in line with our results.

     In another recent systematic review and meta-analysis done by Huang et al. (Huang et al., 2018), dIVC has better performance in mechanically ventilated shocked patients with a pooled AUC of 0.82 (95% CI 0.79–0.85) with a specificity of 80% and a sensitivity of 69%.

     Additional studies had less consistent results, showing discriminatory powers of AUC = 0.43 (95%CI 0.25 - 0.61) and AUC = 0.69 (95%CI 0.48 - 0.89), respectively (Charbonneau et al., 2014) (Theerawit et al., 2016).

     One potential explanation of this discrepancy compared with previous studies is related to the fact that Charbonneau et al. found a higher percentage of patients receiving laparotomy 23% which might have conditioned the accuracy of the test casting doubts about its use among patients undergoing abdominal surgery (Charbonneau et al., 2014). In the case of Theerawit et al., (Theerawit et al., 2016) patients with severe sepsis were included, who might have increased intra-abdominal pressure in that context. Intra-abdominal pressure was not monitored and may have biased the results.

     Many factors can affect dIVC measurements and cause this difference between studies as respiratory compliance (Lakhal et al., 2011), and factors affecting intra-abdominal pressure (Bendjelid & Romand, 2012) and (Santa-Teresa et al., 2012).

In mechanically ventilated patients without muscle relaxantion: Caval index ≥ 17.4% is the value for prediction of fluid responsiveness with 91% sensitivity, 92% specificity, 91.9 positive predictive values and 91.1 negative predictive value.

In all ventilated patients: Caval index ≥ 17.4% is the value for prediction of fluid responsiveness with 93% sensitivity, 92% specificity, 91.1 positive predictive value and 92.9 negative predictive value

In spontaneously breathing patients: Caval index ≥ 31.1% is the value for prediction of fluid responsiveness with 88% sensitivity, 87% specificity, 87.1 positive predictive values and 87.9 negative predictive value.

     Other studies have shown that a collapsabolity index (Dmax - Dmin/Dmax) of > 40% among 40 non-ventilated patients with hemorrhagic, hypovolemic or septic shock had a specificity of 80% and a sensitivity of 70%, with an AUC of 0.77 (95%CI 0.60 - 0.88); however, the test was not reliable concerning these patients because the lower limit of the 95%CI of the AUC was < 0.75. An IVC collapsibility index below 40% does not allow us to exclude fluid responsiveness, and the probability of response increases when the index is above 40% (Muller et al., 2012).

     Airapetian et a. (Airapetian et al., 2015) found similar results among 59 non-intubated, non-ventilated patients, in which a collapsibility index (Dmax - Dmin/Dmax) of > 42% had a specificity of 97% and a positive predictive value of 90% but low sensitivity and negative predictive values, with an AUC of 0.62 (95%CI 0.49 - 0.74).

     In all patients (mechanically ventilated and spontaneously breathing): Caval index ≥ 20.2% is the value for prediction of fluid responsiveness with 73% sensitivity, 71% specificity, 71.6 positive predictive value and 72.4 negative predictive value.

     In a 2014 meta-analysis of eight studies including 235 patients, either non-ventilated or under IMV, the combined sensitivity was 76% (95% CI = 61 - 86) and the specificity was 86% (95%CI 69 - 95). The combined AUC was 0.84 (95%CI 0.79 - 0.89). The discriminatory value of IVC variation ranged between 12 and 40% across these studies. Of the patients under IMV, better sensitivity (81%; 95%CI 67 - 91) was found for similar specificity (87%; 95%CI 63 - 97) (Zhang et al., 2014).

     In a 2017 systematic review and meta-analysis (Long et al., 2017) of 17 studies including 533 patients with circulatory failure, the combined sensitivity and specificity values of the IVC variation index to predict fluid responsiveness were 63% (95%CI 56 - 69) and 73% (95%CI 67 - 78), respectively, with a combined AUC of 0.79 (standard error = 0.05). The subgroup of ventilated patients (combined sensitivity = 67% [95% CI = 58 - 75]; specificity = 68% [95%CI 60 - 76]) presented with better results than non-ventilated patients (combined sensitivity = 52% [95%CI 42 - 62]; specificity = 77% [95%CI 68 - 84]).

CONCLUSION

     Fluid therapy increases CO in only approximately two third of patients with acute circulatory failure. Ideally, patients with acute circulatory failure should be evaluated with regard to fluid responsiveness before its administration to avoid deleterious effects. In intensive care units, the use of IVC variation measured by TTE may play a role in this evaluation; however, it is necessary to guarantee the conditions under which the technique is validated and to consider its limitations, depending on the clinical context, for correct interpretation.

     Our study concludes that Caval index is strongly correlated with lung US for assessment of EVLW and SVV and it can be used to predict fluid responsiveness, but with different values depending on mechanical ventilation status and use of muscle relaxation.

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  3. Bendjelid K and Romand JA (2012): Fluid responsiveness in mechanically ventilated patients: a review of indices used in intensive care, In Applied Physiology in Intensive Care Medicine 2 (pp. 3-11). Springer, Berlin, Heidelberg.
  4. Bouhemad B, Mongodi S, Via G and Rouquette I (2015): Ultrasound for ‘‘lung monitoring’’ of ventilated patients. Anesthesiology, 122(2): 437-447.
  5. Brun C, Zieleskiewicz L, Textoris J, Muller L, Bellefleur JP, Antonini F, Tourret M, Ortega D, Vellin A, Lefrant JY, Boubli L, Bretelle F, Martin C and Leone M (2013): Prediction of fluid responsiveness in severe preeclamptic patients with oliguria. Intensive Care Med, 39(4): 593–600.
  6. Charbonneau H, Riu B, Faron M, Mari A, Kurrek MM, Ruiz J, Geeraerts T, Fourcade O, Genestal M and Silva S (2014): Predicting preload responsiveness using simultaneous recordings of inferior and superior vena cava diameters. Crit Care, 18(5):473.
  7. De Backer D and Fagnoul D (2014): Intensive care ultrasound: VI. Fluid responsiveness and shock assessment. Ann Am Thorac Soc, 11(1):129-36.
  8. Evans D, Ferraioli G, Snellings J and Levitov A (2014): Volume responsiveness in critically ill patients: use of sonography to guide management. J Ultrasound Med, 33(1):3-7.
  9. Funk DJ, Jacobsohn E and Kumar A (2013): The role of venous return in critical illness and shock - part I: physiology. Crit. Care Med. 41, 255–262 & part II - shock and mechanical ventilation. Crit. Care Med, 41(2):573–579.
  10. Furtado S and Reis L (2019): Inferior vena cava evaluation in fluid therapy decision making in intensive care: practical implications. Rev Bras Ter Intensiva, 31(2): 240–247.
  11. Huang H, Shen Q, Liu Y, Xu H and Fang Y (2018): Value of variation index of inferior vena cava diameter in predicting fluid responsiveness in patients with circulatory shock receiving mechanical ventilation: a systematic review and meta-analysis. Critical Care, 22(1):1–7.
  12. Lakhal K, Ehrmann S, Benzekri-Lefèvre D, Runge I, Legras A, Dequin PF, Mercier E, Wolff M, Régnier B, and Boulain T (2011): Respiratory pulse pressure variation fails to predict fluid responsiveness in acute respiratory distress syndrome. Critical Care, 15(2):R85.
  13. Lang RM, Badano LP, Mor-Avi V, Afilalo J, Armstrong A, Ernande L, Flachskampf FA, Foster E, Goldstein SA, Kuznetsova T, Lancellotti P, Muraru D, Picard MH, Rietzschel ER, Rudski L, Spencer KT, Tsang W and Voigt JU (2015): Recommendations for cardiac chamber quantification by echocardiography in adults: an update from the American Society of Echocardiography and the European Association of Cardiovascular Imaging. J Am Soc Echocardiogr, 28(1):1-39.e14.
  14. Lansdorp B, Hofhuizen C, van Lavieren M, Swieten H, Lemson J, Putten MJ, Hoeven JG and Pickkers P (2014): Mechanical ventilation-induced intrathoracic pressure distribution and heart-lung interactions. Crit Care Med, 42(9):1983-1990.
  15. Levitov A, Frankel HL, Blaivas M, Kirkpatrick A, Su E, Evans D, Summerfield D, Slonim A, Breitkreutz R, Price S, McLaughlin M, Marik P and Elbarbary M (2016): Guidelines for the appropriate use of bedside general and cardiac ultrasonography in the evaluation of critically ill patients - Part II: Cardiac ultrasonography. Crit Care Med, 44(6):1206-27.
  16. Long E, Oakley E, Duke T and Babl FE (2017): Paediatric Research in Emergency Departments International Collaborative (PREDICT) (2017) Does respiratory variation in inferior vena cava diameter predict fluid responsiveness: a systematic review and meta-analysis. Shock, 47(5):550–559.
  17. Miller A and Mandeville J (2016): Predicting and measuring fluid responsiveness with echocardiography. Echo Res Pract, 3(2):G1-12.
  18. Miller TE, Bunke M, Nisbet P and Brudney CS (2016): Fluid resuscitation practice patterns in intensive care units of the USA: a cross- sectional survey of critical care physicians. Perioper. Med. (Lond.) 5:15.
  19. Monnet X, Marik P and Teboul JL (2016): Prediction of fluid responsiveness: an update. Ann Intensive Care, 6:111.
  20. Monnet X and Teboul JL (2010): Passive leg Rising: keep it easy! Intensive Care Med, 36:1445.
  21. Monnet X, Teboul JL and Marik P (2011): Hemodynamic parameters to guide fluid therapy. Ann Intensive Care, 21;1(1):1.
  22. Muller L, Bobbia X, Toumi M, Louart G, Molinari N, Ragonnet B, Quintard H, Leone M, Zoric L, Lefrant JY and AzuRea (2012): Respiratory variations of inferior vena cava diameter to predict fluid responsiveness in spontaneously breathing patients with acute circulatory failure: need for a cautious use. Crit Care, 16(5):R188.
  23. Poth JM, Beck DR and Bartels K (2014): Ultrasonography for haemodynamic monitoring. Best Pract Res Clin Anaesthesiol, 28:337e351.
  24. Santa-Teresa P, Muñoz J, Montero I, Zurita M, Tomey M, Álvarez-Sala L and García P (2012): Incidence and prognosis of intra-abdominal hypertension in critically ill medical patients: a prospective epidemiological study. Annals of Intensive Care 2(S1):S3.
  25. Teboul JL, Saugel B, Cecconi M, De Backer D, Hofer CK, Monnet X, Perel A, Pinsky MR, Reuter DA, Rhodes A, Squara P, Vincent JL and Scheeren TW (2016): Less invasive hemodynamic monitoring in critically ill patients. Intensive Care Med, 42(9):1350–9.
  26. Theerawit P, Morasert T and Sutherasan Y (2016): Inferior vena cava diameter variation compared with pulse pressure variation as predictors of fluid responsiveness in patients with sepsis. J Crit Care, 36:246-51.
  27. Volpicelli G, Elbarbary M, Blaivas M, Lichtenstein DA, Mathis G, Kirkpatrick AW, Melniker L, Gargani L, Noble VE, Via G, Dean A, Tsung JW, Soldati G, Copetti R, Bouhemad B, Reissig A, Agricola E, Rouby JJ, Arbelot C, Liteplo A, Sargsyan A, Silva F, Hoppmann R, Breitkreutz R, Seibel A, Neri L, Storti E and Petrovic T (2012): International Liaison Committee on Lung Ultrasound (ILC-LUS) for International Consensus Conference on Lung Ultrasound (ICC-LUS). International evidence-based recommendations for point-of-care lung ultrasound. Intensive Care Med, 38:577-591.
  28. Vos JJ, Poterman M, Salm PP, Van Amsterdam K, Struys MM, Scheeren TW and Kalmar AF (2015): Noninvasive pulse pressure variation and stroke volume variation to predict fluid responsiveness at multiple thresholds: a prospective observational study. Can J Anaesth, 62(11):1153–60.
  29. Widmaier EP, Hershel R and Strang KT (2016): Vander's Human Physiology: The Mechanisms of Body Function (14th ed.). New York, NY: McGraw-Hill Education, 978-1-259-29409-9a.
  30. Zhang Z, Xu X, Ye S and Xu L (2014): Ultrasonographic measurement of the respiratory variation in the inferior vena cava diameter is predictive of fluid responsiveness in critically ill patients: systematic review and meta-analysis. Ultrasound Med Biol, 40(5):845-53.
  31. Zieleskiewicz L, Contargyris C, Brun C, Touret M, Vellin A, Antonini F, Muller L, Bretelle F, Martin C and Leone M (2014): Lung ultrasound predicts interstitial syndrome and hemodynamic profile in parturients with severe preeclampsia. Anesthesiology, 120: 906–914.


إرتباط مؤشر الطى للوريد الأجوف السفلى مع الموجات الصوتية للرئة ومعدل إختلاف حجم نفضة القلب فى مرضى الرعاية الحرجة الذين يعانون من إنخفاض ضغط الدم

محمد محمد عبد الحميد الغنيمى، عماد عبد الحميد شعبان، سيد أحمد عبد العلى

قسم التخدير والعناية المركزة، كلية الطب بنين، القاهرة، جامعة الأزهر

E-mail: dr_mohamadelghonimy@yahoo.com

خلفية البحث: تقييم حالة التحميل المسبق للقلب هو الهدف الأساسى قبل إعطاء أى سوائل لمرضى العنايه الحرجه اللذين يعانون من انفخاض ضغط الدم وذلك للتميز بين المستجيبين للسوائل وغير المستجيبين.

الهدف من البحث: تقييم حالة التحميل المسبق للقلب بإستخدام مؤشر الطى للوريد الأجوف السفلى وتقييم مدى ارتباطه مع الموجات الصوتيه للرئة ومعدل إختلاف حجم نفضة القلب فى مرضى الرعاية الحرجة الذين يعانون من انخفاض ضغط الدم فى مدى استجابتهم وتحملهم للسوائل

المرضي وطرق البحث: بعد موافقة اللجان العلمية والأخلاقية لجامعة الأزهر تم إختيار مائه من مرضى الرعاية الحرجة الذين يعانون من انخفاض ضغط الدم، ثم تم عمل التالى أخذ التاريخ المرضى الكامل للمرضى والفحص البدنى الكامل و التحاليل المخبرية وغازات الدم الشريانيه و تخطيط صدى القلب عند الدخول للعناية المركزة و المتابعة الروتينية للعلامات الحيوية و الموجات الصوتيه للرئه لتقييم كمية ترشح المياه الزائده و قياس مؤشر الطى للوريد الأجوف السفلى و قياس معدل إختلاف حجم نفضة القلب الناجم عن اختبار رفع الساق السلبى و تم تسجيل العلامات الحيوية قبل وبعد إختبار رفع الساق السلبى. تم تقسيم المرضى إلى مستجيبين للسوائل وغير مستجيبين بناءً على معدل اختلاف حجم نفضة القلب حيث ان المستجيبون هم المرضى الذين لديهم معدل اختلاف حجم نفضة القلب بنسبة ≤ ١٢%.

نتائج البحث: كشفت نتائج هذه الدراسة أنه  يمكن إستخدام مؤشر الطى الوريد الأجوف السفلى لتقييم حالة التحميل المسبق للقلب بحساسية وخصوصية عالية فى المرضى الخاضعين التهوية الميكانيكية باستخدام مرخى العضلات وبحساسبه وخصوصية أقل فى المرضى الذين يتنفسون تلقائيا، كما إنه يرتبط إرتباطا إيجابيا قوى مع معدل اختلاف حجم نفضة القلب في كلا من المستجيبين وغير المستجيبين، وارتباطا سلبىا قويا مع كمية الترشح الرئوى في كل من المستجيبين وغير المستجيبين.

الاستنتاج: يمكن استخدام مؤشر الطى للوريد الأجوف السفلى لتقيم حالة التحميل المسبق للقلب ولكن بتقييم مختلفه إعتمادا على طريقة التهوية واستخدام مرخى العضلات.

الكلمات الداله: مؤشر الطى للوريد الأجوف السفلى، الموجات الصوتيه للرئة، معدل إختلاف حجم نفضة القلب، اختبار رفع الساق السلبى.

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    7. De Backer D and Fagnoul D (2014): Intensive care ultrasound: VI. Fluid responsiveness and shock assessment. Ann Am Thorac Soc, 11(1):129-36.
    8. Evans D, Ferraioli G, Snellings J and Levitov A (2014): Volume responsiveness in critically ill patients: use of sonography to guide management. J Ultrasound Med, 33(1):3-7.
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    10. Furtado S and Reis L (2019): Inferior vena cava evaluation in fluid therapy decision making in intensive care: practical implications. Rev Bras Ter Intensiva, 31(2): 240–247.
    11. Huang H, Shen Q, Liu Y, Xu H and Fang Y (2018): Value of variation index of inferior vena cava diameter in predicting fluid responsiveness in patients with circulatory shock receiving mechanical ventilation: a systematic review and meta-analysis. Critical Care, 22(1):1–7.
    12. Lakhal K, Ehrmann S, Benzekri-Lefèvre D, Runge I, Legras A, Dequin PF, Mercier E, Wolff M, Régnier B, and Boulain T (2011): Respiratory pulse pressure variation fails to predict fluid responsiveness in acute respiratory distress syndrome. Critical Care, 15(2):R85.
    13. Lang RM, Badano LP, Mor-Avi V, Afilalo J, Armstrong A, Ernande L, Flachskampf FA, Foster E, Goldstein SA, Kuznetsova T, Lancellotti P, Muraru D, Picard MH, Rietzschel ER, Rudski L, Spencer KT, Tsang W and Voigt JU (2015): Recommendations for cardiac chamber quantification by echocardiography in adults: an update from the American Society of Echocardiography and the European Association of Cardiovascular Imaging. J Am Soc Echocardiogr, 28(1):1-39.e14.
    14. Lansdorp B, Hofhuizen C, van Lavieren M, Swieten H, Lemson J, Putten MJ, Hoeven JG and Pickkers P (2014): Mechanical ventilation-induced intrathoracic pressure distribution and heart-lung interactions. Crit Care Med, 42(9):1983-1990.
    15. Levitov A, Frankel HL, Blaivas M, Kirkpatrick A, Su E, Evans D, Summerfield D, Slonim A, Breitkreutz R, Price S, McLaughlin M, Marik P and Elbarbary M (2016): Guidelines for the appropriate use of bedside general and cardiac ultrasonography in the evaluation of critically ill patients - Part II: Cardiac ultrasonography. Crit Care Med, 44(6):1206-27.
    16. Long E, Oakley E, Duke T and Babl FE (2017): Paediatric Research in Emergency Departments International Collaborative (PREDICT) (2017) Does respiratory variation in inferior vena cava diameter predict fluid responsiveness: a systematic review and meta-analysis. Shock, 47(5):550–559.
    17. Miller A and Mandeville J (2016): Predicting and measuring fluid responsiveness with echocardiography. Echo Res Pract, 3(2):G1-12.
    18. Miller TE, Bunke M, Nisbet P and Brudney CS (2016): Fluid resuscitation practice patterns in intensive care units of the USA: a cross- sectional survey of critical care physicians. Perioper. Med. (Lond.) 5:15.
    19. Monnet X, Marik P and Teboul JL (2016): Prediction of fluid responsiveness: an update. Ann Intensive Care, 6:111.
    20. Monnet X and Teboul JL (2010): Passive leg Rising: keep it easy! Intensive Care Med, 36:1445.
    21. Monnet X, Teboul JL and Marik P (2011): Hemodynamic parameters to guide fluid therapy. Ann Intensive Care, 21;1(1):1.
    22. Muller L, Bobbia X, Toumi M, Louart G, Molinari N, Ragonnet B, Quintard H, Leone M, Zoric L, Lefrant JY and AzuRea (2012): Respiratory variations of inferior vena cava diameter to predict fluid responsiveness in spontaneously breathing patients with acute circulatory failure: need for a cautious use. Crit Care, 16(5):R188.
    23. Poth JM, Beck DR and Bartels K (2014): Ultrasonography for haemodynamic monitoring. Best Pract Res Clin Anaesthesiol, 28:337e351.
    24. Santa-Teresa P, Muñoz J, Montero I, Zurita M, Tomey M, Álvarez-Sala L and García P (2012): Incidence and prognosis of intra-abdominal hypertension in critically ill medical patients: a prospective epidemiological study. Annals of Intensive Care 2(S1):S3.
    25. Teboul JL, Saugel B, Cecconi M, De Backer D, Hofer CK, Monnet X, Perel A, Pinsky MR, Reuter DA, Rhodes A, Squara P, Vincent JL and Scheeren TW (2016): Less invasive hemodynamic monitoring in critically ill patients. Intensive Care Med, 42(9):1350–9.
    26. Theerawit P, Morasert T and Sutherasan Y (2016): Inferior vena cava diameter variation compared with pulse pressure variation as predictors of fluid responsiveness in patients with sepsis. J Crit Care, 36:246-51.
    27. Volpicelli G, Elbarbary M, Blaivas M, Lichtenstein DA, Mathis G, Kirkpatrick AW, Melniker L, Gargani L, Noble VE, Via G, Dean A, Tsung JW, Soldati G, Copetti R, Bouhemad B, Reissig A, Agricola E, Rouby JJ, Arbelot C, Liteplo A, Sargsyan A, Silva F, Hoppmann R, Breitkreutz R, Seibel A, Neri L, Storti E and Petrovic T (2012): International Liaison Committee on Lung Ultrasound (ILC-LUS) for International Consensus Conference on Lung Ultrasound (ICC-LUS). International evidence-based recommendations for point-of-care lung ultrasound. Intensive Care Med, 38:577-591.
    28. Vos JJ, Poterman M, Salm PP, Van Amsterdam K, Struys MM, Scheeren TW and Kalmar AF (2015): Noninvasive pulse pressure variation and stroke volume variation to predict fluid responsiveness at multiple thresholds: a prospective observational study. Can J Anaesth, 62(11):1153–60.
    29. Widmaier EP, Hershel R and Strang KT (2016): Vander's Human Physiology: The Mechanisms of Body Function (14th ed.). New York, NY: McGraw-Hill Education, 978-1-259-29409-9a.
    30. Zhang Z, Xu X, Ye S and Xu L (2014): Ultrasonographic measurement of the respiratory variation in the inferior vena cava diameter is predictive of fluid responsiveness in critically ill patients: systematic review and meta-analysis. Ultrasound Med Biol, 40(5):845-53.
    31. Zieleskiewicz L, Contargyris C, Brun C, Touret M, Vellin A, Antonini F, Muller L, Bretelle F, Martin C and Leone M (2014): Lung ultrasound predicts interstitial syndrome and hemodynamic profile in parturients with severe preeclampsia. Anesthesiology, 120: 906–914.