Literature DB >> 21318585

Non-contrasted computed tomography for the accurate measurement of liver steatosis in obese patients.

Nathan J Shores1, Kerry Link, Adolfo Fernandez, Kim R Geisinger, Matt Davis, Tam Nguyen, Janet Sawyer, Larry Rudel.   

Abstract

BACKGROUND: Hepatic macrosteatosis (HMS) is prevalent among high BMI patients, but a lack of validation of non-invasive measures of liver fat hampers non-alcoholic liver disease (NAFLD) investigation in general. Recent work suggests BMI adjusted, non-contrasted computed tomography (nc-CT) attenuation data (Hounsfield units) reflects liver fat accumulation in a normal weight population. However, this and other CT-based HMS studies have only approximated macrosteatosis (%) histologically, but have not validated findings with chemical liver triglyceride (TG) concentrations (mg/gram protein). Also, all previous CT based steatosis studies excluded high BMI subjects, whose habitus may affect properties of the scan. We hypothesized that in high BMI patients nc-CT attenuation measurements expressed in Hounsfield units (HU) accurately estimate liver triglyceride concentrations as well as histological macrosteatosis.
METHODS: With informed consent, 15 patients underwent nc-CT scan of the abdomen prior to weight loss surgery with intraoperative wedge and core needle liver biopsy. Mean left lobe nc-CT Hounsfield units (CT(L)), liver TG (mg/g Pr), HMS (%), BMI (kg/m(2)), liver-spleen index (CT(L/S) = hepatic HU/splenic HU), and liver-spleen difference (CT(L-S) = hepatic HU - splenic HU) were a priori outcomes.
RESULTS: In 15 patients (11 female) with a BMI of 44.4 ± 1.1 (mean ± SEM), CT(L/S), CT(L-S), and CT(L) measures were significantly associated with liver TG concentrations (r = -0.80, P < 0.001; r = -0.80, P < 0.001; and r = -0.71, P < 0.01, respectively; Table 1). Macrosteatosis (%) and liver triglyceride concentration were positively associated (r = 0.83; P < 0.0001). BMI did not correlate strongly to liver triglyceride (r = 0.44, P = NS).
CONCLUSION: Estimates of liver fat obtained by nc- CT scans (esp. CT(L/S), CT(L-S)) correlate to chemical measurement of liver triglyceride concentrations, suggesting non-contrasted CT may be a suitable non-invasive "gold standard" for hepatic steatosis quantification in these patients.

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Year:  2011        PMID: 21318585      PMCID: PMC3112485          DOI: 10.1007/s10620-011-1602-5

Source DB:  PubMed          Journal:  Dig Dis Sci        ISSN: 0163-2116            Impact factor:   3.199


Introduction

Non-alcoholic fatty liver disease (NAFLD) is an emerging epidemic in the United States and other industrialized countries [1]. Abnormal fat deposition in the liver has a significant rate of transition to cirrhosis [2] and hepatocellular carcinoma [3] and worsens patient response to viral hepatitis therapy [4]. It is estimated that one-third of Americans—and 80% of patients undergoing weight-loss surgery—have fatty liver, and that the sequelae of NAFLD will eventually supplant hepatitis C virus liver disease as the number one indication for liver transplant [5]. Unfortunately, fatty liver disease likely has even farther reaching human health implications. Simple hepatic macrosteatosis (HMS), defined as macrosteatosis regardless of inflammation, ballooning, or fibrosis, has been linked to insulin resistance, obesity, hyperlipidemia [6], and atherosclerotic heart disease in humans [6, 7]. Currently, human clinical investigation of hepatic steatosis and its response to therapy is limited by dependence upon liver biopsy, an invasive and sometimes unpleasant procedure that carries a very small risk of serious complication [8]. Several studies have evaluated noninvasive methods for estimation of HMS, including ultrasound, CT, and MRI [9, 10]. Generally, magnetic resonance imaging techniques seem to be preferred, especially when it is desirable to accurately estimate lower levels of hepatic macrosteatosis and liver triglyceride, since proton NMR is generally believed to better assess the actual liver triglyceride concentration. However, heavily cited MRI studies have extrapolated triglyceride concentration from animal models [11] or a small sample of ex vivo liver MRI results collected in a single study [12], so this assumption remains incompletely tested. Multiple studies have attempted to correlate computed tomography (CT) findings of non-obese subjects to the degree of HMS demonstrated histologically on hematoxylin and eosin (H&E) stained liver sections with mixed results [13-15]. Groups have employed an array of attenuation indices, usually comparing liver Hounsfield units (HU) against that of a low adipose internal standard (e.g., the spleen, portal vein, left ventricle, etc.). A very recent report by Liu et al. [16] has proposed an equation to modify CT attenuation data with subject BMI to better correlate HU with HMS in patients with >5% macrosteatosis. However, H&E assisted liver biopsy interpretation of steatosis may only be semiquantitative and susceptible to interobserver variability [17] and sampling error [18]. Computer and Oil Red O stain have been proposed to improve precision, but have not been validated chemically either. As a result, histology as a “gold standard” may confound the evaluation of a CT scan’s ability to accurately reflect liver fat. Since no group has correlated CT findings with actual laboratory quantification of hepatic triglyceride per gram of liver protein, our aim is to discern whether or not unenhanced CT determination of hepatic macrosteatosis based on image attenuation data (Hounsfield units) is significantly correlated to chemical measurement of liver triglyceride (mg/g protein) in high BMI patients, a growing, unstudied demographic often unsuitable for MRI. Verified correlation of these radiologic and laboratory parameters may facilitate the development of a reliable and non-invasive standard measurement of liver steatosis for both clinical and research objectives.

Methods

This work was an IRB approved prospective, cross sectional pilot study. From 2009 to 2010, 15 patients scheduled to undergo elective weight loss surgery (laparoscopic gastric banding or Roux-en-Y gastric bypass surgery) at Wake Forest University Baptist Hospital, Winston-Salem, NC, USA agreed to a preoperative non-contrasted abdominal CT scan, as well as the intraoperative collection of a wedge liver biopsy, a core needle liver biopsy, and 10 ml of whole blood. Previous experiments in obese patients indicated a small sample size provided sufficient variations in HMS to test non-contrasted CT’s ability to discern HMS across a broad spectrum [19]. Patients were excluded for a history of chronic liver disease other than NAFLD (macrosteatosis in the setting of hepatic ballooning, inflammation or fibrosis), a history of malignancy other than non-melanomatous skin cancer, an INR greater than 1.8, the need for therapeutic anticoagulation after surgery, a history of chronic inflammatory diseases including but not limited to rheumatoid arthritis, psoriasis, systemic lupus erythematosis, sarcoidosis, inflammatory bowel disease, greater than or equal to 105 g of ethanol per week, greater than or equal to 45 g in a given day per week, and refusal to participate.

Liver Biopsy

For lipid analysis, wedge biopsies from the lateral left hepatic lobe ranging from 250–500 mg were rinsed with saline and snap frozen in liquid nitrogen in the operating room before subsequent storage at −80°F. At the time of analysis, all lipids from minced pieces of liver (50–100 mg) were extracted in 2:1 chloroform:methanol overnight [20]. All lipid quantification assays were performed on aliquots of the chloroform extract. Measurement of triglycerides was determined after the addition of Triton-×100 to solubilize lipids; after removal of the chloroform by evaporation, lipids were suspended in water and quantified with enzymatic assays (triglyceride [TG] and cholesterol by Roche Diagnostics and unesterified cholesterol by Wako Chemicals USA) [21]. A single intraoperative core needle liver biopsy was taken from the lateral left lobe of each subject with an 18-gauge spring-loaded MC1820 Bard™ biopsy device. These core needle samples were immediately placed in 10% buffered formalin and submitted for histologic evaluation of steatosis, necroinflammation, ballooning, and fibrosis by a single expert pathologist using standardized scoring methods [22, 23]. Hematoxylin and eosin and trichrome slide preparations were performed per center standards. A semiquantitative measure of HMS was made by point counting hepatocytes at 400× optical magnification. An overlying grid of 35 μm2 boxes was used to assist counting. The hepatocytes of five, non-overlapping fields that did not include a portal tract were hand counted, yielding percentages of hepatocytes as macrosteatotic (lipid droplets large enough to displace the nucleus and/or ≥15 μm), microsteatotic (multiple lipid droplets all smaller than the nucleus), and normal (no evidence of lipid droplets) [24]. Degrees of HMS were graded according to convention established by Kleiner et al. [23]: minimal, <5%; grade 1, 5–33%; grade 2, 33–66%; and grade 3, >66%. In order to better clinically describe our cohort, the NASH activity score (NAS) ranging from 0–8 was calculated on a standardized grading system: HMS (scale of 0–3), lobular inflammation (0–3), and hepatocellular ballooning (0–2), with higher scores indicating increasing severity of NASH. NAS scores ≥5 have been validated as diagnostic of NASH. Separately, fibrosis was staged 0–4 as described by Brunt et al. [22].

Computed Tomography

The non-contrasted computed tomography (Lightspeed 16; GE Medical Systems, Milwaukee, WI) was performed on a helical scanner set to scan and reconstruct as follows: 0.8 s rotation time, full 8 detector rows, 2.5 slice thickness, 0.875:1 beam pitch, 8.75 table speed, interval 2.5, SFOV large, DFOV 35, 140 kV, amperage 350 mA. Images were reviewed by a single, expert radiologist blinded to biopsy data who determined hepatic attenuation with Hounsfield units (HU) in hepatic regions corresponding to the subsequent left liver biopsy site. CT attenuation of three distinct circular areas was measured in the liver biopsy site (lateral left lobe) as well as the spleen to generate mean values. Care was taken to avoid inclusion of visually distinct vasculature and biliary structures in the regions of interest. In addition to simple mean left lobe hepatic attenuation (CTL), four other indices derived from left lobe CT data were recorded for comparison to biopsy proven hepatic macrosteatosis and to chemical measures of hepatic triglyceride concentration. Splenic attenuation was used to calculate a liver–spleen Index (CTL/S = mean hepatic HU/mean splenic HU) as well as liver–spleen attenuation difference (CTL-S = mean hepatic HU − mean splenic HU). Also, liver attenuation data from the region of interest was transformed using the equation CTLiu = 47.7 + 1.48BMI − 1.18CT Hounsfield units [16]. Liu et al. describe CTLiu as correlating strongly to macrosteatosis in living liver donor candidates with HMS >5%. Mean CT attenuation from the non-biopsied, right lobe (CTr) was also averaged from three distinct areas and compared to the biopsied (lateral left) lobe’s chemical, histological, and CT data to gauge the applicability of findings throughout the entire liver.

Statistical Analysis

Data were analyzed using descriptive statistical analysis, including mean with standard error for continuous variables and proportions for categorical variables. Comparisons between groups were done using chi-square or Fisher’s exact tests for proportions and the Student’s t tests for continuous variables. Pearson product-moment correlation coefficients were calculated for continuous variables to determine strength of the correlation statistic. The significance of correlations were calculated from the t-statistic using the formula t = (vr 2/1−r 2)½ where v = n−2 and r = correlation coefficient. Log transformations were used to normalize the distributions of data when needed.

Results

After informed consent, 15 patients (11 females) with a mean BMI of 44.4 ± 1.1 m/kg2 (range of 38.3–51.5) underwent liver biopsy (Table 1). Although the dataset is small, a wide variation in HMS was observed so that regression analysis can be appropriately used to compare liver triglyceride concentration (mg/g liver protein) after log transformation to both CTL/S (r = −0.80, P < 0.001, y = −0.6326× + 2.5451) (Fig. 1) and CTL-S (r = −0.80, P < 0.001) (data not shown). The correlations were strong but statistically significant. Histological macrosteatosis (%) was similarly correlated to the chemical measurement of liver triglyceride (r = 0.83, P < 0.0001) and CTL/S (r = −0.89, P < 0.0001) (Fig. 2a, b). Neither CTL (r = −0.71, P < 0.01) nor BMI-adjusted nc-CT data as proposed by Liu et al. (r = 0.80, P = 0.001) reflected liver triglyceride (mg/g liver protein) any more closely than CTL/S.
Table 1

Characteristics of subjects who underwent CT scan and subsequent liver biopsy to evaluate the correlation of un-enhanced CT liver attenuation to chemically derived liver triglyceride data

CharacteristicsSubject number
123456789101112131415
SexFemaleFemaleFemaleFemaleMaleMaleFemaleFemaleMaleMaleFemaleFemaleFemaleFemaleFemale
Age (years)583430463221456227595654514432
BMI (kg/m2)48.539.438.342.547.040.651.540.545.546.646.738.249.742.148.4
Diabetes mellitus NoYesNoNoYesNoNoNoNoYesNoYesNoNoYes
Liver TG (mg/g PR)227178542,2034652174941403022221,08041279192322
Plasma TG (mg/dl)12619316620822618615889621252525815792118
Plasma total chol (mg/dl)1862131692111681261781531061,23065156119149136
Plasma LDL Chol (mg/dl)14615211617112874125109739327886611195
Plasma HDL chol (mg/dl)273541292031353931273738423231
Plasma VLDL chol (mg/dl)13261211212117521013011610
Macrosteatosis grade (0–4)000311111121101
Inflammatory grade (0–4)011200310022101
Ballooning (0–4)000210110021102
Nash activity score (NAS)011721531164304
Fibrosis stage (1–4)000101301231003

TG triglyceride, chol cholesterol

Fig. 1

Correlation of liver spleen index to liver triglyceride. Liver spleen index [liver attenuation (HU)/splenic attenuation (HU)] correlates strongly with chemical measurement of liver triglyceride (mg/gPR) (r = −0.80, P < 0.001, n = 15)

Fig. 2

Correlation of liver macrosteatosis (%) to liver triglyceride (a) and liver spleen index (CTL/S) (b). Histological macrosteatosis (HMS) correlates strongly with chemical measurement of liver triglyceride (mg/g PR) (r = 0.83, P < 0.0001, n = 15) and CTL/S (r = −0.89, P < 0.0001, n = 15)

Characteristics of subjects who underwent CT scan and subsequent liver biopsy to evaluate the correlation of un-enhanced CT liver attenuation to chemically derived liver triglyceride data TG triglyceride, chol cholesterol Correlation of liver spleen index to liver triglyceride. Liver spleen index [liver attenuation (HU)/splenic attenuation (HU)] correlates strongly with chemical measurement of liver triglyceride (mg/gPR) (r = −0.80, P < 0.001, n = 15) Correlation of liver macrosteatosis (%) to liver triglyceride (a) and liver spleen index (CTL/S) (b). Histological macrosteatosis (HMS) correlates strongly with chemical measurement of liver triglyceride (mg/g PR) (r = 0.83, P < 0.0001, n = 15) and CTL/S (r = −0.89, P < 0.0001, n = 15) Mean CT liver–spleen index from the right (non-biopsied) liver lobe (CTrL/S) also correlated strongly to log transformed liver triglyceride (r = −0.79, P < 0.01) and HMS (r = −0.88, P < 0.001), while mean biopsied left liver lobe attenuation (CTL) and non-biopsied liver attenuation (CTr) was even more similar (r = 0.96, P < 0.0001, n = 15). BMI was only marginally and nonsignificantly correlated with liver triglyceride concentration, the definitive measure of hepatic fat (r = 0.44, P > 0.05) (Fig. 3).
Fig. 3

Correlation of BMI to liver triglyceride. Subject BMI (kg/m2) does not correlate significantly with liver triglyceride (mg/g protein) (r = 0.44, P > 0.05, n = 15)

Correlation of BMI to liver triglyceride. Subject BMI (kg/m2) does not correlate significantly with liver triglyceride (mg/g protein) (r = 0.44, P > 0.05, n = 15) Seventy-three percent of subjects demonstrated at least mild HMS by surgical pathology evaluation (n = 11). Sixty percent and 53% of participants were found to have necroinflammation (n = 9) and/or at least stage 1 fibrosis (n = 11), respectively. Four biopsies revealed stage 3 fibrosis, and no subjects had cirrhosis. Mean percentage of histological macrosteatosis was 27 ± 5.9%. Three subjects met the predetermined criteria for steatohepatitis with a NASH activity score (NAS) ≥5. Individual NAS ranged from 0–6. The liver triglyceride concentrations distributed widely from 54–2,203 mg/g of liver protein with a mean (±sem) value of 480 ± 142 mg/g Pr (n = 15).

Discussion

This study has confirmed the utility of using nc-CT scanning to noninvasively evaluate the extent of liver triglyceride and hepatic macrosteatosis (HMS) in very high BMI patients, a growing population previously not studied with CT. The Hounsfield units obtained from the CT scan were significantly and directly correlated to the chemical assessment of hepatic triglyceride and to a standardized histologic estimation of HMS. While the number of patients examined in this study was small, the correlation extended across a quite wide range of liver triglyceride concentrations (Fig. 1) so that the measurements are reasonably robust and provide good estimates of triglyceride concentrations across the range of minimal to very high macrosteatosis. CT assessment of hepatic steatosis in earlier studies was criticized on the basis that the modality provided limited accuracy to estimate hepatic fat concentration accurately where this was low [15]. However, such criticism cannot be leveled at our dataset. A strength of this study is that it is the first direct comparison of CT attenuation to chemical hepatic triglyceride concentrations of which we are aware. Multiple groups have reported that non-contrasted hepatic CT findings significantly correlate to HMS estimated by a single observer [14-16]. When reviewed together, these studies provide the impression that nc-CT scan may be of value in measuring liver fat above 30% HMS or when adjusted for individual BMI. However, all of these studies rely on the assumption that estimation of HMS from a core liver biopsy accurately represents in vivo liver triglyceride concentration. Until now this assumption has not been tested in humans. Additionally, CT data of the non-biopsied right liver lobe (CTr) correlated strongly to liver TG, HMS, and CT attenuation of the biopsied lobe. In the context of previously published strong correlations in HMS between paired liver biopsies, such findings suggest our liver fat measures (HMS, TG, CT) apply broadly to most of the liver, thereby allaying a common concern in non-invasive hepatic diagnostic studies [18]. Lastly, this work chemically validates the use of a CT “Liver Spleen Index” (or ratio) to control for an individual subjects’ scanning characteristics. Our study has important limitations including small cohort size and the inclusion of only very high BMI subjects. However, in designing our study we believe that the existing data supporting nc-CT and our knowledge of the wide spectrum of HMS within a bariatric surgery cohort justified a small sample size both from a statistical and an ethical standpoint, not least given the potential risks associated with wedge liver biopsies and radiation exposure for non-clinical purposes. Also, we must acknowledge that a liver biopsy still remains essential for the determination of histological features of hepatocyte ballooning, inflammation and fibrosis that are of considerable importance in the full characterization of fatty liver disease. Finally, we are aware that the lifetime risk of medical radiation exposure is an emerging concern for clinicians [25]. The radiation exposure of the CT measures used here is relatively modest, however, and is confined to an abdominal region not involving the entire body, so the risk for such a procedure remains low. In summary, we believe the novel observation that nc-CT hepatic attenuation closely reflects both hepatic macrosteatosis and chemically measured liver triglyceride across a wide range of steatosis (54–2,203 mg/g Pr), eliminating interobserver variability, offers many interesting possibilities for the care of liver patients and liver donors. A convenient, validated measure of HMS alone would be a boon to clinicians and researchers, attempting to unravel the complex interplay between liver lipid burden and human metabolism as a whole. Based on our results, unenhanced computed tomography may represent liver triglyceride accurately enough to fill such a role. Confirmation of our results by a larger study would ultimately serve to elucidate the risk and benefits of this proposed use of computed tomography in obese and non-obese patients alike.
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