Post-hepatectomy liver failure after major hepatic surgery: not only size matters
Post-hepatectomy liver failure after major hepatic surgery: not only size matters
Ulrika Asenbaum 0 1 2
Klaus Kaczirek 0 1 2
Ahmed Ba-Ssalamah 0 1 2
Helmut Ringl 0 1 2
Christoph Schwarz 0 1 2
Fredrik Waneck 0 1 2
Fabian Fitschek 0 1 2
Christian Loewe 0 1 2
Richard Nolz 0 1 2
Abbreviations AUC CI 0 1 2
0 Department of Surgery, Medical University of Vienna - Vienna General Hospital , Waehringer Guertel 18-20, A-1090 Vienna , Austria
1 Department of Bio-medical Imaging and Image-guided Therapy, Medical University of Vienna - Vienna General Hospital , Waehringer Guertel 18-20, A-1090 Vienna , Austria
2 Richard Nolz
Objectives To compare the value of functional future liver remnant (functFLR) to established clinical and imaging variables in prediction of post-hepatectomy liver failure (PHLF) after major liver resection. Methods This retrospective, cross-sectional study included 62 patients, who underwent gadoxetic acid enhanced MRI and MDCT within 10 weeks prior to resection of ≥ 4 liver segments. Future liver remnant (FLR) was measured in MDCT using semi-automatic software. Relative liver enhancement for each FLR segment was calculated as the ratio of signal intensity of parenchyma before and 20 min after i.v. administration of gadoxetic acid and given as mean (remnantRLE). Established variables included indocyanine green clearance, FLR, proportion of FLR, weight-adapted FLR and remnantRLE. functFLR was calculated as FLR multiplied by remnantRLE and divided by patient's weight. The association of measured variables and PHLF was tested with univariate and multivariate logistic regression analysis and receiver operator characteristics (ROC) curves compared with the DeLong method. Results Sixteen patients (25.8%) experienced PHLF. Univariate logistic regression identified FLR (p = 0.015), proportion of FLR (p = 0.004), weight-adapted FLR (p = 0.003), remnantRLE (p = 0.002) and functFLR (p = 0.002) to be significantly related to the probability of PHLF. In multivariate logistic regression analysis, a decreased functFLR was independently associated with the probability of PHLF (0.561; p = 0.002). Comparing ROC curves, functFLR showed a significantly higher area under the curve (0.904; p < 0.001) than established variables. Conclusions functFLR seems to be superior to established variables in prediction of PHLF after major liver resection. Key Points functFLR is a parameter combining volumetric and functional imaging information, derived from MDCT and gadoxetic acid enhanced MRI. In comparison to other established methods, functFLR is superior in prediction of post-hepatectomy liver failure. functFLR could help to improve patient selection prior major hepatic surgery.
Magnetic resonance imaging; Gadolinium ethoxybenzyl DTPA; Hepatectomy; Liver function tests; Liver failure
Area under the curve Confidence interval
functFLR
FLR
ICG
ICG-R15
MDCT
MRI
PDR
PHLF
remnantRLE
RLE
ROC
Functional future liver remnant
Future liver remnant
Indocyanine green
Indocyanine green 15-min retention rate
Multidetector computed tomography
Magnetic resonance imaging
Plasma-disappearance rate
Post-hepatectomy liver failure
Mean RLE of the FLR
Relative liver enhancement
Receiver operator characteristics
Introduction
Liver resection is now an established method to prolong
patient survival and which possibly results in a curative
treatment option in selected patients with primary and metastatic
liver tumours [
1, 2
]. The possibility of liver resection is
determined by the technical feasibility of radical surgery and the
capacity of the future liver remnant (FLR) to functionally
compensate for tissue loss. The assessment of a patient’s
eligibility for liver resection is, therefore, a delicate trade-off
between oncologic radicalism and functional outcome.
While an overly conservative approach might exclude
individuals from curative surgery, a more aggressive strategy
might put others at risk of post-hepatectomy liver failure
(PHLF), which remains the major cause of perioperative
morbidity and mortality [3]. Recent clinical guidelines base the
indication for surgery on volume analysis and recommend that
the FLR should be at least one-third of the total liver volume
and 40–50% in patients with parenchymal liver disease [
4, 5
].
However, the relationship between liver volume and
functional capacity is unpredictable and substantiates the inclusion of
functional tests into the preoperative work-up. Serum markers
and indocyanine green (ICG) clearance [5] cannot capture
loco-regional differences in liver function, which might be
crucial in the pre-hepatectomy setting. Scintigraphy-based
tests (e.g. with 99mTc-mebrofenin) expose patients to ionising
radiation and are not widely available [
5
]. From a functional
perspective, liver disease negatively affects the hepatobiliary
uptake of gadoxetic acid, and the degree of relative
parenchymal enhancement (RLE) may be used as an imaging
biomarker of liver functionality [
6–9
]. Previous exploratory work
suggested this marker as a potential predictor of PHLF [
10–14
].
On the basis of these observations, we hypothesised that
the combination of FLR volume and RLE on gadoxetic acid
enhanced MRI (i.e. functional future liver remnant,
functFLR), adapted to a patient’s weight, might provide a
more specific estimation of the FLR’s functional reserve.
The aim of the present study was to benchmark this imaging
biomarker against established clinical and imaging variables
for the prediction of PHLF in a population that was
undergoing major liver resection.
Materials and methods
Patient population
This was a single-centre, retrospective, cross-sectional study
that was approved by the local institutional review board
(No.1136/2017), which waived the need to obtain written,
informed consent for data analysis. All patients who
underwent pretreatment with gadoxetic acid (Primovist®/
Eovist®, Bayer Health Care) enhanced 3-Tesla MRI and
MDCT within 10 weeks prior to major liver surgery (i.e. at
least four Couinaud liver segments), between January 2007
and December 2016, were eligible for analysis.
Exclusion criteria were (1) treatment between imaging and
l i v e r r e s e c t i o n ( i . e . c h e m o t h e r a p y, t r a n s a r t e r i a l
chemoembolisation (n = 5) and portal vein embolisation (n
= 39)); (2) signs of post-hepatic biliary obstruction (n = 19);
(3) atypical resections or intraoperative ablation in the FLR (n
= 17); (4) previous liver resections or hepaticojejunostomies
(n = 5) and (5) MR imaging artefacts (n = 2). In addition, we
had to exclude one patient who suffered from an iatrogenic
portal vein injury with subsequent occlusion and liver failure
(Fig. 1). Of the included patients, 22 subjects were part of a
previously described cohort [
10
]. Compared to our study,
analysis referred on the mean RLE of the whole liver without
consideration of any volumetric data.
Age, sex, height, weight and body mass index were noted.
In addition, plasma levels of bilirubin, creatinine, albumin,
total protein, alkaline phosphatase, aspartate
aminotransferase, alanine aminotransferase, gamma-glutamyltransferase,
prothrombin time, haemoglobin, platelet count and leukocytes
were noted preoperatively and at least until the 5th
postoperative day or longer in case of PHFL.
Fig. 1 Flow diagram shows patient selection
Multidetector CT protocols and volumetry
All MDCT examinations were performed within our hospital.
The minimum requirements for the imaging protocol included
the following: (1) MDCT scanner with a patient size-adapted
tube voltage (80–120 kVp); (2) active tube current modulation
and (3) i.v. injection of 70–120 ml (depending on the body
weight) of iodinated contrast agents (300–400 mg/ml iodine
concentration) at a flow rate of 4–5 ml/s, followed by a saline
flush of 20 ml using a power injector. Liver volumetry (Fig.
2a–d) was performed on transverse images using a soft-tissue
kernel (B30F), section thickness and reconstruction interval
was 3 mm/2 mm (n = 55) or 5 mm/4 mm (n = 7).
T h e s y n g o . C T l i v e r a n a ly s i s s o f t w a r e ( S i e m e n s
Healthineers) was used in a semi-automatic workflow for the
following steps: loading and assignment of the unenhanced,
arterial and venous phases (F.W., board-certified radiologist
with 10 years of experience in abdominal imaging); automatic
liver border segmentation with the option of manual
correction was performed by the software for the venous phase only;
automatic exclusion of the main portal vein, the hepatic
venous confluence and the retrohepatic inferior vena cava from
volume calculation. Focal liver lesions were marked by the
reader, semi-automatically segmented and consecutively
excluded from further volume analysis. The liver resection plane
was determined on the basis of postoperative imaging studies
or, if not available, on surgical reports of the particular patient
(n = 13). All preoperative assessed liver volume
measurements were blinded to the reader.
MRI protocol and image analysis
MRI examinations were performed on a 3-Tesla unit
(Magnetom Trio Tim®, Siemens Healthineers) equipped with
a phased-array coil (placed ventrally on the upper abdomen)
and a spine coil (for the dorsal part). Among others, the MR
imaging protocol included unenhanced and enhanced
fatsaturated T1-weighted sequences. These were conventional,
three-dimensional, T1-weighted, spoiled gradient-echo
volumetric interpolated breath-hold sequences with spectrally
adiabatic inversion recovery fat saturation (VIBE SPAIR®,
Siemens Healthineers) in the transversal plane (repetition time
ms/echo time ms, 2.67/0.9; flip angle, 13°; bandwidth, 700
Hz/pixel; slice thickness, 1.5–2.0 mm, depending on patient
size; average acquisition time, 19 s). Parallel imaging with an
acceleration factor of 2 was used. The field of view was 350–
400 × 350 mm for all transverse sequences, with individual
adjustments depending on patient size. The enhanced
T1weighted sequences were performed after intravenous
administration of 0.025 mmol/kg gadoxetic acid, using a power
injector at a rate of 1.0 ml/s, and followed by a 20-ml saline
flush with a bolus-tracking system. The hepatobiliary phase
was performed 20 min after contrast injection [
15
].
Fig. 2 Imaging example of a 62-year-old male patient (weight 100 kg)
with colorectal liver metastases in the right liver lobe, scheduled for a
right hepatectomy. Volume analysis (a–d) exhibited a future liver remnant
(FLR) of 757 ml. MRI revealed a mean relative enhancement of the future
liver remnant (remnantRLE)—extracted from axial T1-weighted gradient
echo MRI scans with fat suppression before (e) and 20 min (f) after
intravenous injection of gadoxetic acid—of 0.66. As a result of the
reduced uptake of the gadoxetic acid with reduced remnantRLE, the
calculated functionalFLR was only 5 ml/kg. Postoperatively, the patient
suffered from post-hepatectomy liver failure grade A, according to the
grading system of the International Study Group of Liver Surgery
(ISGLS)
MRI scans were retrospectively evaluated by a
boardcertified radiologist with 9 years of experience in
abdominal imaging (R.N.), who was blinded to all clinical
data. Images were reviewed on an IMPAX EE
workstation (Agfa Healthcare). The signal intensity of the liver
parenchyma was measured by manually placing a
circular region of interest (area 2.0 cm2) in the middle of
each Couinaud liver segment of the FLR, avoiding
vessels, focal liver lesions and artefacts on the unenhanced
and the hepatobiliary phase images (Fig. 2e, f). The
RLE was calculated as the relative increase of liver
parenchymal signal intensity according to the following
formula:
RLE ¼
ðSIHB−SIunenhancedÞ
SIunenhanced
where SIHB is the signal intensity in the hepatobiliary
phase and SIunenhanced is the signal intensity on the
unenhanced scan. Subsequently, a mean RLE for all
segments of the FLR (remnantRLE) was generated and
used for further analysis.
Variables used to predict PHLF
Established clinical parameters (plasma disappearance rate,
PDR; median retention rate at 15 min, ICG-R15) were derived
from indocyanine green (ICG) clearance testing, as described
previously [
16
]. Imaging parameters provided by MDCT were
FLR (ml), proportion of FLR (%) in relation to the whole liver
volume and weight-adapted FLR (ml/kg). The remnantRLE,
reflecting the mean RLE of the FLR, was derived from MRI.
Finally, we created a combined imaging parameter defined as
functional FLR (functFLR). The functFLR was calculated by
the following formula:
functFLR ¼
FLR x remnantRLE
patient0 s weight
Liver surgery, PHLF, mortality and morbidity
Liver resection was performed or assisted by visceral surgeons
with more than 10 years of experience in hepatobiliary surgery
(K.K. and others), as described previously [
17
], using either a
stapler or the Cavitron™ ultrasonic aspirator (CUSA™).
PHLF was classified by the grading system of the
International Study Group of Liver Surgery (ISGLS) [
18
].
Median hospital stay and cause of death within the hospital
stay were noted. Postoperative morbidity was noted and rated
according to the Clavien–Dindo classification [
19
].
Statistics
Discrete variables were described with absolute and relative
numbers and by using contingency tables; possible differences
in discrete variables between groups were tested with the x2
test, and the Fisher exact test as appropriate. Continuous
variables were described as medians and interquartile ranges
(IQRs). Possible differences in continuous variables between
groups were tested by the Wilcoxon test, the t test or the
Kruskal–Wallis test, as appropriate. The association between
established clinical and imaging variables and functFLR with
outcome (presence of liver failure), defined as the reference
variable, was tested by using logistic regression analysis with
the calculation of odds ratios with 95% confidence intervals.
Multivariate logistic regression analysis was conducted by
using a stepwise selection of parameters, with a limit of p =
0.1 to enter and to stay in the model. The association of
continuous variables was tested in a general linear
model. In addition, the diagnostic ability of measured
variables was described by using areas under the receiver
operator characteristic (ROC) curves. The areas under
the dependent ROC curves were compared according
to the DeLong method [
20
]. No formal Bonferroni
correction was applied in this exploratory study. P values
are given as calculated and should be interpreted with
care, considering alpha error accumulation. Cut-off
values were defined with the Youden J statistics. Odds
ratios were calculated to assess the association between
the defined cut-off value and the presence of PHLF.
Results were regarded as statistically significant if the
probability of a type 1 error was less than 5% (p <
0.05). Statistical analyses were performed using SPSS
for Windows (version 20.0; IBM Corporation) and
MedCalc 12 (MedCalc Software).
Results
Study population
A total of 62 patients (31 female; 50%) with a median age of
59.8 (IQR 53.3–67.9) years were analysed. The median time
from MRI and MDCT to liver resection was 0.4 (IQR 0.1–3.1)
weeks and 3.6 (IQR 0.3–8.3) weeks, respectively. Detailed
demographic and clinical data about the study population are
given in Tables 1 and 2. Sixteen (25.8%) patients experienced
PHLF according to the ISGLS criteria. Of these, nine (14.5%)
patients did not need specific treatment, representing grade A
liver failure, whereas six (9.7%) patients required changes in
non-invasive clinical management (grade B). One patient
subsequently needed invasive treatment and was classified as
grade C liver failure, which accounts for 1.6% of all patients
who undergo major liver resection.
Patient characteristics separated for patients with and without PHLF (n = 62)
Analysis of variables used to predict PHLF
The median values of variables that predict PHLF are given in
Table 3. MDCT variables, remnantRLE and functFLR
demonstrated significant differences between patients with and
without PHLF. The comparison of established clinical
variables (PDR and R15) in patients with and without PHLF did
not show significant differences. These results were reflected
in the univariate logistic regression analysis, where
established MDCT variables, remnantRLE and functFLR
were significantly related to the probability of PHLF
(Table 4).
Results of multivariate logistic regression analysis revealed
that a decreased functFLR was independently associated with
Table 2 Indications for major
liver surgery (n = 62)
Malignant disease
Colorectal liver metastasis
Hepatocellular carcinoma
Intrahepatic cholangiocellular carcinoma
Haemangioendothelioma
Other liver metastasis
Benign lesions
Echinococcosis
Liver adenoma
Giant haemangioma
NC not calculable
a higher probability of PHLF (0.561, 95% CI 0.389–0.807, p
= 0.002). PDR, MDCT variables and remnantRLE also
entered the model, but were rejected during stepwise selection.
Comparing ROC curves, functFLR demonstrated a
significantly higher area under the curve of 0.904 (95% CI 0.803–
0.977; p < 0.001) than all other established variables (Fig. 3),
followed by weight-adapted FLR, with an AUC of 0.825
(95% CI 0.714–0.935).
Median functFLR of patients without evidence of liver
failure was 12.93 (IQR 8.69–22.2) ml/kg compared to 6.29
(IQR 5.20–7.50) ml/kg in patients with grade A liver failure
and 6.34 (IQR 3.78–8.28) ml/kg in patients with grade B liver
failure (p < 0.001). The only patient with grade C liver failure
showed a preoperative functFLR of 6.59 ml/kg.
Number
51 (82.3%)
33 (53.2%)
4 (6.5 %)
6 (9.7%)
1 (1.6%)
7 (11.2%)
11 (17.7%)
6 (9.7%)
2 (3.2%)
3 (4.8%)
No PHFL
36 (58.1%)
24 (38.7%)
3 (4.8%)
5 (8.1%)
1 (1.6%)
3 (4.8%)
10 (16.1%)
5 (8.1%)
2 (3.2%)
3 (4.8%)
PHFL
Data are presented as median and interquartile ranges (IQR)
PHLF post-hepatectomy liver failure, PDR plasma disappearance rate, R15 median retention rate at 15 min, MDCT multidetector CT, FLR future liver
remnant, remnantRLE mean relative enhancement of the FLR, functFLR functional future liver remnant
By means of functFLR and weight-adapted FLR, Youden’s J
statistic revealed optimal cut-off points of 8.73 ml/kg and 9.49
ml/kg to separate patients with and without PHLF. PHLF was
observed in 15 (57.7%) patients with a functFLR below the
applied threshold and only one (2.8%) patient over the applied
threshold, resulting in a sensitivity and specificity of 94% and
76%, respectively. The odds ratio for developing a PHLF was
47.7 (95% CI 5.7–403.5) higher in patients with a functFLR less
than 8.73 ml/kg compared to a functFLR greater than 8.73 ml/kg.
Postoperative in-hospital morbidity and mortality
During a median hospital stay of 11 (IQR 8–13.5) days, there
were no deaths in our collective, resulting in an in-hospital
mortality rate of 0%. Postoperative complications occurred
in 24 (38.7%) patients. Using the Clavien–Dindo
classification [
19
], we rated three (4.8%) patients as grade I, nine
(14.5%) as grade II, six (9.7%) as grade IIIa and six (9.7%)
as grade IIIb.
Discussion
The present study demonstrated that the functFLR may
provide a more accurate prediction of PHLF in comparison to
ICG clearance, different established volumetric analyses, as
well as the RLE in a population undergoing major hepatic
resection. In multivariate analysis the functFLR was
CI confidence interval, AUC area under the curve, PDR plasma disappearance rate, R15 median retention rate at
15 min, MDCT multidetector CT, FLR future liver remnant, remnantRLE mean relative enhancement of the FLR,
functFLR functional future liver remnant
*Significant difference
Fig. 3 Receiver operating
characteristic curves for the
prediction of PHLF, comparing
functFLR to a established clinical
variables, b established MDCT
variables and c an established
gadoxetic acid enhanced variable.
Corresponding p values are given
in parentheses. d Optimal cut-off
point defined as a functFLR of
8.73 ml/kg, demonstrated a
sensitivity and specificity of 94%
and 76%
independently associated with a higher probability of PHLF
and its area under the ROC curve was significantly higher than
for the other established clinical and imaging parameters.
Currently, FLR volumetry is the method of choice for risk
stratification in postoperative liver failure. Some authors have
attempted to specify the demand of the FLR by calculating
body surface area or body weight [21–25]. In this context, the
FLR to body weight ratio was found to be superior to the ratio
of FLR to liver volume in prediction of PHLF [25]. However,
the quality of the parenchyma is not appraisable [26].
Although the most common preoperatively used quantitative
liver function test in clinical practice [
16, 27
]—the
indocyanine green clearance (ICG)—is able to reflect the global liver
function [28, 29], it has been shown that there is no obligatory
correlation with clinical outcome [30]. In our study, ICG
clearance was not able to compete with other FLR estimation
methods with regard to the prediction of PHLF.
Various studies have shown that gadoxetic acid uptake
reflects liver function [
8, 9, 31, 32
]. The less the uptake, the
more likely patients will suffer from PHLF [
10, 13, 14
].
Wibmer et al. demonstrated that a decreased RLE was
independently associated with a higher probability of PHLF
in patients undergoing liver resection of at least three
segments [
10
]. Compared to our study, only the mean RLE of
the whole liver was used for calculations, without
consideration of any volumetric data. Several authors revealed that
combining gadoxetic acid enhanced MRI parameters and
volumetric data seems to be a promising tool in the preoperative
work-up for liver surgery. Yoon and colleagues calculated a
predicted liver remnant by multiplying the hepatic extraction
fraction by the remnant volume, and correlated these results
with post-treatment ICG-R15 [
11
]. They found a negative
correlation, and concluded that gadoxetic acid enhanced
MRI enables prediction of postoperative liver function. For
the assessment of hepatic extraction fraction [33], dedicated
software is mandatory, which made this method impracticable
[34]. In addition, some authors used an indirect test for liver
function (ICG-R15) as an outcome variable because none of
their patients suffered from PHLF [
11
].
Itoh et al. assessed the functional liver remnant by MDCT
volumetry—normalised to the body surface area—and the
liver enhancement in gadoxetic acid enhanced MRI [
12
].
Compared to our study, instead of remnantRLE, the remnant
function was calculated as the ratio of the liver to the psoas
muscle on the hepatobiliary phase and on the pre-contrast
phase. Additionally, in their collective more than 80% of
patients underwent resection of less than two liver
segments, and only three patients suffered from PHLF. In
multivariate analysis, the calculated functional liver
remnant volume was an independent predictor for
liverrelated morbidity, albeit not specifically for PHLF [
12
].
For patients undergoing major liver resection, the
applicability of functFLR is supported by our results, where
functFLR was the only independent predictor of PHLF
in the multivariate analysis. In addition, the superiority
of functFLR in terms of the prediction of PHLF was
supported by a significantly higher AUC (0.904) compared to
all other tested clinical and imaging parameters.
The favoured cut-off value for the FLR is given with a
weight-adapted FLR (i.e. FLR to body weight ratio) of at most
0.5% (i.e. 5 ml/kg), with a sensitivity and specificity of 100%
and 84.1% for the prediction of death from PHLF [24]. In our
study, the cut-off value for weight-adapted FLR was higher
(9.49 ml/kg), presumably because our definition of PHLF
includes all grades of liver dysfunction. However, in our study
the weight-adapted FLR volume revealed a significantly
lower AUC compared to functFLR.
In contrast to the common definition of major
hepatectomy (at least three Couinaud liver segments), we
included only patients with resection of at least four liver
segments, since these patients present a higher risk of PHLF.
The incidence of PHLF, at about 26%, is higher than the
described 0.7–9.1% in the literature [
3
], as most of our
patients (nine of 16 patients) had a minor PHLF (grade
A). The in-hospital mortality rate in our collective was
0%. However, we excluded one patient who died because
of an intraoperative iatrogenic portal vein injury. Apart
from that, postoperative complications occurred in about
39% of our included patients, which is consistent with the
described 44% [35].
The major limitation of our study was its
retrospective design. Second, compared to other studies [36], our
collective consisted mostly of patients with colorectal
liver metastases. Hence, we did not assess the Child–
Pugh score and the model for end-stage liver disease
score, which is reasonable because only one of our
patients suffered from chronic liver disease. The reason for
the low hepatocellular carcinoma (HCC) incidence in
our collective may be because most patients with HCC
have a limited functional liver reserve and, consequently,
often need preoperative liver volume augmentation
before major liver surgery. Thus, the results of our study
cannot be applied to patients with liver cirrhosis and
HCC, where preoperative assessment of liver function
is especially important.
Conclusion
A decreased functFLR is independently associated with a
higher risk of liver failure after major liver resection.
Compared to established preoperative methods, the
functFLR seems to be more accurate in the prediction of
PHLF. This combination of volumetric and functional
information could help to optimise preoperative patient selection.
Acknowledgements Open access funding provided by Medical
University of Vienna.
Funding The authors state that this work has not received any funding.
Compliance with ethical standards
Guarantor The scientific guarantor of this publication is Dr. Richard
Nolz.
Conflict of interest The authors of this manuscript declare no
relationships with any companies whose products or services may be related to
the subject matter of the article.
No complex statistical methods were necessary
Statistics and biometry
for this paper.
Informed consent
tional review board.
Written informed consent was waived by the
instituEthical approval Institutional review board approval was obtained.
Study subjects or cohorts overlap Some study subjects or cohorts have
been previously reported by Wibmer et al. (Radiology 269:130210, 2013;
https://doi.org/10.1148/radiology.13130210).
Methodology
retrospective
cross-sectional study
performed at one institution
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