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Our understanding of the mechanisms by which nonalcoholic fatty liver disease (NAFLD) progresses from simple steatosis to steatohepatitis (NASH) is still very limited. Despite the growing number of studies linking the disease with altered serum metabolite levels, an obstacle to the development of metabolome-based NAFLD predictors has been the lack of large cohort data from biopsy-proven patients matched for key metabolic features such as obesity. We studied 467 biopsied individuals with normal liver histology (n=90) or diagnosed with NAFLD (steatosis, n=246; NASH, n=131), randomly divided into estimation (80% of all patients) and validation (20% of all patients) groups. Qualitative determinations of 540 serum metabolite variables were performed using ultra-performance liquid chromatography coupled to mass spectrometry (UPLC-MS). The metabolic profile was dependent on patient body-mass index (BMI), suggesting that the NAFLD pathogenesis mechanism may be quite different depending on an individual’s level of obesity.

A BMI-stratified multivariate model based on the NAFLD serum metabolic profile was used to separate patients with and without NASH. The area under the receiver operating characteristic curve was 0.87 in the estimation and 0.85 in the validation group. The cutoff (0.54) corresponding to maximum average diagnostic accuracy (0.82) predicted NASH with a sensitivity of 0.71 and a specificity of 0.92 (negative/positive predictive values = 0.82/0.84). The present data, indicating that a BMI-dependent serum metabolic profile may be able to reliably distinguish NASH from steatosis patients, have significant implications for the development of NASH biomarkers and potential novel targets for therapeutic intervention. INTRODUCTION Most body fat is stored as triacylglycerides (TAG) in white adipose tissue. Impaired lipid buffering within the enlarged adipocyte leads to the exposure of nonadipose tissues such as the liver to an increased influx of nonesterified fatty acids (NEFA).

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Such metabolic stress can lead to an imbalance between NEFA supply and hepatic NEFA disposal pathways, causing excess lipids to accumulate in the form of TAG, a condition known as nonalcoholic fatty liver disease (NAFLD). Further lipid excess in the sensitized fatty liver is metabolized through alternative pathways that result in the production of toxic reactive species, increased oxidative stress, and disturbances in membrane phospholipid composition - all of which are processes that may contribute to the progression of NAFLD through nonalcoholic steatohepatitis (NASH),,, which can then lead to cirrhosis and hepatocellular carcinoma. While obesity is well established as the main cause of NAFLD, we do not know why fatty liver also develops in lean subjects. Our understanding of why only a relatively small proportion of NAFLD patients develop NASH is also very limited. Modern wide-coverage metabolite profiling technologies provide access to portions of biomolecular space that sample genetic, environmental and lifestyle factors which may help to explain some of these observations.

The technique is particularly well suited to liver injury assessment applications, where serum or urine are the most common types of sample made available for laboratory tests, as opposed to other disease scenarios, such as cancer, where tissue is readily made available for transcriptomic and proteomic analysis. A recent study by Kalhan et al. Compared the plasma metabolome in nonbiopsied lean controls with that found in obese NAFLD patients, showing no discernible differentiation between steatosis and NASH plasma. Analyzed a similar set of patients, focusing on the plasma lipidome by quantifying derivatized fatty acids after lipid hydrolysis to reveal new evidence for the role of fatty acid traffic directed away from TAG synthesis in disease pathogenesis. Our group has set up multiple ultra-performance liquid chromatography coupled to mass spectrometry (UPLC-MS) based platforms able to qualitatively analyze fatty acid derived moieties in their intact form as serum lipids, covering a wide range of molecular species also including bile acids, nonesterified fatty acids, and amino acids. The techniques are particularly useful for profiling subtle molecular diversity, over species such as for example ether-/acyl- linked glycerophospholipids, or the various subclasses of sphingolipids.

These specific elements of the lipidome are potentially important role-players in the context of modern lipotoxic models of metabolic syndrome related disease pathogenesis, which may not be captured efficiently by the lipid hydrolysis/fatty acid analysis methodology. This approach was used recently to describe common serum metabolic alterations observed in a NAFLD knock-out animal model and a small-scale cohort of morbidly obese human NAFLD patients, closely matched in key clinical features such as gender, age, and body-mass index (BMI). Encouraged by these results we have implemented recently published analytical processing methods that allow qualitative LC-MS metabolite profiling to be performed over multiple analysis batches, thus permitting the inclusion of large cohorts of human patient samples suitable for clinical studies. The aim of the current study was to characterize the serum NAFLD metabolic profile as a function of patient BMI, exploring the differences among histological groups of patients with different grades of obesity. Patients A total of 467 biopsied patients seen at 11 participating hospitals were recruited for the study using the following inclusion criteria: (1) age 18–75 years; (2) no known acute or chronic disease except for obesity or type 2 diabetes based on medical history, physical examination, and standard laboratory tests; (3) alcohol consumption was less than 20 g/day for women and 30 g/day for men. Exclusion criteria included viral- and drug-induced causes of liver disease. All of the subjects were of Caucasian origin.

The institutional review board at each of the participating hospitals approved the study and written informed consent was obtained from all patients. For all subjects diagnoses were established histologically in liver biopsy specimens. The reason for liver biopsy was either incidental (during laparoscopic cholecystectomy, n=69; or bariatric surgery, n=311) or suspected NAFLD, n=87. Currently there are no established guidelines on when to perform a liver biopsy in either adult or pediatric patients with suspected NAFLD.

In the current population the decision was made on an individual basis by the treating gastroenterologist, independent of the present study. In most cases, the decision for biopsy indication was based on the presence of persistently abnormal liver enzymes or radiological evidence of a fatty liver along with negative testing for other common etiologies of liver disease.

The histological diagnosis of NAFLD was established according to the criteria of a single liver pathologist in each participating hospital, guided by the scoring system defined by Kleiner et al.. Following assessment, patients were classified by the pathologists into three histological groups: (1) Normal liver, (2) Steatosis (hepatic steatosis alone), and (3) NASH (presence as determined by the pathologist). For all subjects blood was drawn on the morning a liver biopsy was performed, following a minimum 8 hour, overnight fast. Serum was separated and stored at −80 °C until analysis. Clinical data () were collected retrospectively using patient records and laboratory values obtained at the time of surgery. Sample preparation and UPLC-MS analysis A UPLC-single quadrupole-MS amino acid analysis system was combined with two separate UPLC-time-of-flight (TOF)-MS based platforms analyzing methanol and chloroform/methanol serum extracts. Identified ion features in the methanol extract platform included NEFA, acyl carnitines, bile acids, monoacylglycerophospholipids, monoetherglycerophospholipids, free sphingoid bases, and oxidized fatty acids.

The chloroform/methanol extract platform provided coverage over glycerolipids, cholesterol esters, sphingolipids, diacylglycerophospholipids, and acyl-ether-glycerophospholipids. The metabolite extraction procedure was as follows for each platform (lipid nomenclature follows the LIPID MAPS convention – ): •.

Platform 1 – Methanol extract. Proteins were precipitated from the defrosted serum samples (75 μL) by adding 4 volumes of methanol in 1.5 mL microtubes at room temperature. The methanol used for extraction was spiked with the following compounds, chosen to encompass most of the retention time- m/z space covered by the method, while being undetected in nonspiked human serum extracts: tryptophan-d 5(indole-d 5), PC(13:0/0:0), NEFA(19:0), and dehydrocholic acid.

After brief vortex mixing the samples were incubated overnight at −20 °C. Supernatants (300 μL) were collected after centrifugation at 16,000 x g for 15 minutes, dried and reconstituted in 75 μL methanol, before being transferred to vials for UPLC-MS analysis on an Acquity-LCTXE premier system (Waters Corp., Milford, MA). Platform 3 – Chloroform/Methanol extract: 10 μL serum extracts were mixed with 10 μL sodium chloride (50 mM) and 110 μL of chloroform/methanol (2:1) in 1.5 mL microtubes at room temperature. The extraction solvent was spiked with the following compounds not detected in nonspiked human serum extracts: SM(d18:1/6:0), PE(17:0/17:0), PC(19:0/19:0), DAG(14:0/12:0), TAG(13:0/13:0/13:0), TAG(17:0/17:0/17:0), Cer(d18:1/17:0), ChoE(12:0). After brief vortex mixing the samples were incubated for 1 hour at −20 °C.

After centrifugation at 16,000 x g for 15 minutes, 70 μL of the lower organic phase was collected and the solvent removed. The dried extracts were then reconstituted in 100 μL acetronitrile/isopropanol (50:50), centrifuged (16,000 x g for 5 minutes), and transferred to vials for UPLC-MS analysis on an Acquity-SYNAPT G2 system (Waters Corp.).

Chromatographic separation and mass spectrometric detection conditions employed for each platform are summarized in. Representative base peak ion chromatograms corresponding to the UPLC-TOF platforms are shown in. Online tandem mass spectrometry (MS/MS) experiments for metabolite identification were performed on a Waters QTOF Premier (Waters Corp.) and a Waters SYNAPT G2 instrument, operating in both the positive and negative ion electrospray modes, as described in detail previously. Metabolite identification LCMS features (as defined by retention time, mass-to-charge ratio pairs, Rt- m/z), were associated with NEFA, bile acids, oxidized fatty acids, free sphingoid bases, and amino acids by comparison of their accurate mass spectra and chromatographic retention times in commercial serum metabolite extracts (Promocell inc., Germany) with those obtained using available reference standards. A metabolite with m/z value between 400 and 1000 Da was considered unambiguously identified when Rt difference with respect to the standard was smaller than 3 s and the deviation from its m/z value (δ m/z) smaller than 3 ppm.

For metabolites with m/z values smaller than 400 Da, the criterion followed with respect to Rt was the same, but δ m/z limit was set to 1.2 mDa. For all other species [acyl carnitines (AC), diacylglycerides (DAG), TAG, cholesterol esters (ChoE), glycerophosphocholine (PC), glycerophosphoethanolamine (PE), glycerophosphoinositol (PI), sphingomyelin (SM), ceramides (Cer), and monohexosylceramides (CMH)] a theoretical m/z database was first generated for all possible combinations of fatty acid derived moieties. The association of detected Rt- m/z pairs with lipid species contained in the theoretical database was subsequently established either by comparison of their accurate mass spectra and chromatographic retention times with those obtained using available reference standards or, where these were not available, by accurate mass MS/MS fragment ion analysis, as described in detail previously, (mass fragment accuracy was. Data processing and normalization All data were processed using the TargetLynx application manager for MassLynx 4.1 (Waters Corp.). The complete set of predefined Rt- m/z pairs was fed into the software, which generated associated extracted ion chromatograms (mass tolerance window = 0.05 Da), peak-detected and noise-reduced in both the LC and MS domains.

A list of chromatographic peak areas was then generated for each sample injection, using the Rt- m/z pairs (retention time tolerance = 6 s) as identifiers. Intra- and inter-batch normalization followed the procedure first described by van der Kloet et al.. This process involved (i) multiple internal standard response correction (intra-batch normalization) and (ii) variable specific inter-batch single point external calibration using repeat extracts of a commercial serum sample (inter-batch normalization).

Each of the 6 analysis batches contained a maximum of 80 study samples that were accompanied by 10 repeat extracts of a commercial serum sample (Promocell inc.) used for single point inter-batch calibration (QC Calibration Sample ) and 5 repeat extracts of a second commercially obtained serum sample (Sigma Aldrich, St. Louis, MO) used to monitor the reproducibility of the overall analysis process (QC Validation Sample ). For each of the three analytical platforms, randomized duplicate sample injections (maximum number of study sample injections per batch = 160) were performed, with each of the QC calibration and validation extracts uniformly interspersed throughout the entire batch run (maximum total number of injections per batch = 176). Each batch run was preceded by a series of repeat full-loop of injections of a QC calibration extract, used to equilibrate the UPLC-MS systems (×10, or ×50 if the batch followed system maintenance). Van der Kloet et al. Defined the optimal internal standard (IS) for each variable, p, as that which resulted in a minimum relative standard deviation (RSD) of the corrected response, X′, calculated using all QC calibration samples over multiple batches ().

(1) However, for most single point, chemically similar internal standard correction MS-based methods, the average corrected response,, would be expected to differ from batch to batch, even if identical concentrations of internal standards were to be used in each batch. A number of experimental factors could cause these, generally small, differences - such as for example changes in source pressure that may alter the m/z transmission profile, or differences in relative adduct formation propensities as a consequence of source maintenance, mobile phase composition, or glassware alkali metal content. Here we have taken into account this variability by defining a scaled average internal standard corrected response (), calculated for each batch, b. (3) does then not depend on the magnitude of batch to batch differences in average corrected response, and is equivalent to the RSD calculation defined by van der Kloet et al. For a single batch study, or for a multi-batch study showing identical batch averaged corrected responses, as may be expected for example when using spectroscopic techniques. Optimal internal standards found for each variable using are listed in.

Linear regression (internal standard corrected response as a function of sample injection order) was used to estimate for each variable in the QC calibration samples any intra-batch drift not corrected for by internal standard correction, as described by van der Kloet et al.. For all variables, internal standard corrected response in each batch was divided by its corresponding intra-batch drift function, such that normalized variable abundance values in the study samples were expressed with respect to the batch averaged QC calibration serum samples (arbitrarily set to 1). Following normalization, the concordance between duplicate sample injection response values was assessed. It was found that less than 0.1% of the repeat injections values where disparate (%CV >30). In these cases, the corresponding sample injection data were returned for manual inspection of the automated integration performed by the TargetLynx software, and modifications performed where appropriate. For identified metabolites, representative detector response curves were generated using a standard compound for each chemical class included in the analysis. By assuming similar detector response functions for all metabolites belonging to a given chemical class, a linear detection range could be defined for each variable.

Minimum values were taken as those for which a signal-to-blank noise ratio of at least 5:1 was obtained, while maximum values were defined as those at which the detector response became nonlinear with respect to the concentration of the standard compound. Variable study data points lying outside their corresponding linear detection range were replaced with missing values and did not figure in subsequent statistical analyses. Displays response curves for the 18 representative standard compounds, showing on separate axes for each chemical class, the response distribution of all included study data points. Variables were not considered for further analysis where more than 5% of data points were found outside their corresponding linear detection range (these data are not shown in ). Lists for each variable the percentage number of study data points that were replaced with missing values.

As expected, variables that were excluded from further analysis at this stage (29/540) were the most abundant species detected by their respective platforms, e.g. ChoE(18:2) [blood concentration ~ 2mM ()]. The reproducibility of the analysis process was assessed using the 5 QC validation serum extracts included in each batch.

These gave a measure of the combined analytical variation over all process components including metabolite extraction, recovery, derivatization, LC/MS injection, and data processing. Corresponding intra- and inter-batch (calculated over batch averaged QC validation serum extracts)%CVs are listed for all variables included in the analysis in. Additionally, the cumulative distribution of%CV is provided in, being the median inter-batch%CV values 5.0, 6.1, 11.9 for platforms 1, 2, and 3 respectively. Statistical analysis A number of recent studies have shown evidence for a strong correlation between BMI and the serum levels of several groups of metabolites included in the current analysis, including amino acids, ether phospholipids, NEFA, and glycerolipids –.

In order to control the confounding BMI variable all patients were classified into three cohorts for subsequent analyses, as defined by the world health organization (WHO): lean/pre-obese, 40 kg/m 2; hereafter referred to as lean, obese and morbidly obese patient cohorts respectively. Following this stratification, patients’ BMI (global mean 43.6±11.5 kg/m 2) did not differ significantly between the histological groups in any of the three cohorts (lean, Kruskal-Wallis statistic (K-W)=3.02, p-value=0.22; obese, K-W=3.36, p-value=0.19; morbidly obese, K-W=4.37, p-value=0.11). All subjects were randomly divided into estimation (80% of all subjects, n=374) and validation (20% of all subjects, n=93) groups such that in each group there was an equal proportional representation of individuals belonging to each BMI/histology cohort. To assess the relationship between metabolites (or other clinical variables) and NAFLD patient histological groups, two-tailed Wilcoxon rank sum tests were used for two-sample tests: steatosis/normal liver, NASH/normal liver, and NASH/steatosis. Kruskal-Wallis rank sum tests were used for three-way comparisons: normal liver/steatosis/NASH. The threshold for significance was p. Results Clinical, biochemical, and liver histology data obtained from the study participants are summarized in.

Patients included in the study were within a similar age group (43.8±11.8 years), with a predominance of female subjects (76%). Comparing within each BMI cohort, there were no significant differences between the histology groups in fasting serum total cholesterol (lean, K-W=1.38, p-value=0.50; obese, K-W=4. Discrete Mathematics Ensley Pdf Free. 14, p-value=0.13; morbidly obese, K-W=3.84, p-value=0.15). Fasting glucose concentrations were higher in obese NAFLD patients as compared to normal liver subjects, reaching statistical significance in the obese class I–II cohort (lean, K-W=0.89, p-value=0.64; obese, K-W=9.75, p-value=0.01; morbidly obese, K-W=5.79, p-value=0.06). Patients with NAFLD had increased TAG levels as compared to normal liver subjects, though these did not reach statistical significance in any of the three BMI cohorts (lean, K-W=4.58, p-value=0.10; obese, K-W=0.55, p-value=0.76; morbidly obese, K-W=0.02, p-value=0.99).

Transaminase levels were elevated in NAFLD patients as compared to normal liver subjects in all three BMI cohorts (aspartate aminotransferase: lean, K-W=22.66, p-value. NAFLD serum metabolic profile In addition to the above serum metabolite alterations found mainly in the morbidly obese group of NAFLD patients, we also observed considerable changes among some groups of metabolites that were exclusive to the lean patient cohort. Most sphingolipids were decreased in lean NASH patients as compared to individuals diagnosed with steatosis, with the most significant changes being observed amongst sphingomyelin species. No similar trend was found among the obese patient groups; indeed, several sphingolipids were significantly increased in morbidly obese NASH as compared to steatosis patients.

Details the groups of biomarkers which showed the most contrasting trends when comparing NASH to steatosis patients among the three BMI cohorts. Obesity dependent NASH biomarkers Besides the strongly obesity dependent changes already mentioned, a number of relative differences were found to be similar across all of the patients included in the study. As expected, all glycerolipid (including di- and triacylglyceride moieties) species were elevated in steatosis patients, as compared to normal liver subjects. We also observed that most of these species have reduced abundance levels in NASH as compared to steatosis patients, with the most significant changes being found among polyunsaturated fatty acyl (PUFA) containing species (). Further groups of compounds that were found similarly altered in all three BMI patient cohorts include monoetherglycerophosphoethanolamine and monoetherglycerophosphocholine (including plasmalogen species – see ).

These species were found decreased in steatosis patients as compared to normal liver subjects, with elevated levels in NASH. Finally, we also found that most bile acids included in the analysis were increased in NASH as compared to steatosis patients, with all species reaching statistical significance in the case of the morbidly obese individuals. In order to ascertain the predictive value of the serum metabolic profile for distinguishing between steatosis and NASH patients a random forest model was developed for each BMI cohort, using all Rt-m/z pairs significantly differentiating between the two groups. In total, 292 confirmed metabolites and 51 unidentified variables were significant, being 15, 9, and 237 of them specific to the lean, obese, and morbidly obese patient cohorts respectively. Significant variables are summarized in. ROC curves calculated for each model are shown in for the lean, obese, and morbidly obese patient groups respectively.

In the estimation group of patients the AUC was 0.82±0.04, 0.83±0.03, and 0.87±0.02 for the lean, obese and morbidly obese groups of patients respectively. Defining the optimum cutoff point as that at which maximum average diagnostic accuracy (number of patients correctly classified/total number of patients) was obtained, estimation group sensitivity/specificity values were 0.67/0.89, 0.66/0.95 and 0.69/0.96 for the lean (cutoff=0.53, accuracy=0.82), obese (cutoff=0.51, accuracy=0.83) and morbidly obese (cutoff=0.57, accuracy=0.87) cohorts respectively.

Very similar AUC and sensitivity/specificity values were obtained for the validation group and the full cross-validated dataset, as is also shown in. Obesity dependent metabolic discrimination between steatosis and NASH patients Next, the overall diagnostic accuracy of the BMI-dependent metabolic profile was assessed for all patients included in the study.

This was achieved by feeding each test sample metabolic profile dataset into its corresponding BMI model and assessing the output with a global, BMI-stratified ROC analysis. Average model accuracy for classifying NAFLD patients (NASH/steatosis) is plotted as a function of cutoff value in; at maximum average accuracy the model predicted NASH with sensitivity/specificity 0.71/0.92 in the estimation cohort (cutoff=0.54, accuracy=0.82), 0.56/0.89 in the validation cohort (cutoff=0.43, accuracy=0.77), and 0.62/0.97 in the full cross-validated dataset (cutoff=0.57, accuracy=0.85). Corresponding BMI-stratified AUCs were 0.87±0.02 in the estimation group, 0.85±0.04 in the validation group, and 0.84±0.01 in the full cross-validated dataset. At maximum average accuracy the model was therefore able to correctly predict in the estimation group the absence of NASH in 186/198 patients, while of the 228 patients classified as steatosis 42 patients were incorrectly assigned. Hence the absence of NASH as predicted by the model was correct in 186/228 cases (negative predictive value=0.82). The same cutoff criterion correctly predicted NASH in 62/104 patients, while of the 74 patients classified as NASH 12 were incorrectly assigned. The presence of NASH as predicted by the model was therefore correct on 62/74 occasions (positive predictive value=0.84).

Two additional cut-off points were selected to achieve sensitivity of 0.95 (probability that NASH patients are correctly classified) or specificity of 0.95 (probability that subjects that do not have NASH are correctly classified) in the estimation group. Applying the low cutoff point (0.73), 67/104 of NASH patients were correctly identified, whereas 4/71 were incorrectly classified. Using this cutoff point therefore, NASH could be established in 67/71 of patients (positive predictive value=0.94).

Discussion According to the WHO, in 2008 more than 500 million adults were obese (BMI >30 kg/m 2). Editor X Ray Photoshop Download. WHO further projects that by 2015 this number will have increased to approximately 700 million. Obesity is a major risk factor for chronic conditions such as cardiovascular disease, diabetes and NAFLD. The prevalence of NAFLD is currently estimated to be between 20% and 30% in Western adults, rising to 90% in the morbidly obese. Fortunately, only a small fraction of NAFLD patients develop cirrhosis and hepatocellular carcinoma,,, although rising obesity prevalence may result in a corresponding increase in these more severe conditions, representing a major health risk.

The histological manifestation of early stage NAFLD is the accumulation of readily visible droplets of TAG fat in hepatocytes, produced as a consequence of increased hepatic NEFA influx that cannot be matched by β-oxidation or very low density lipoprotein (VLDL) secretion removal pathways. An accumulating body of evidence suggests that TAG stored in this way is biologically inert and as such harmless. Indeed, hepatic TAG in NAFLD may have an adaptive, protective role in buffering toxic fatty acids that would otherwise be substrates for lipid peroxidation and oxidative stress, leading to hepatocyte damage, inflammation, cell death, and fibrogenesis. This premise would seem to be supported by the fact that histological TAG may fade during NAFLD progression through NASH to cirrhosis.

The current data show further evidence for this effect, indicating that circulating TAG levels are decreased in NASH as compared to steatosis patients. In all three BMI cohorts, the most significant of these changes were found among polyunsaturated fatty acid (PUFA) containing TAG. Moreover, no significant differences were registered among any of the 12 TAG species containing exclusively saturated acyl chains. The contribution of TAGs derived from de novo lipogenesis is significantly increased in fatty liver individuals.

Decreased amounts of serum PUFA containing TAG observed in NASH in the current work may reflect accelerated hepatic de novo lipogenesis in these patients, leading to increased incorporation of saturated and monounsaturated fatty acids into VLDL particles, in turn producing decreased relative quantities of PUFA species in VLDL TAG. While triacylglyceride accumulation is now understood as a beneficial, adaptive response to the increased exposure of the liver to fatty acids, emerging evidence points to other fatty acid metabolites as being directly injurious to hepatocytes. Oxidation represents a key mechanism for the removal of fatty acids through three different pathways: mitochondrial β-oxidation, peroxisomal β-oxidation, and endoplasmic reticulum (microsomal) cytochrome P450 enzymatic routes. Under normal circumstances most NEFA are metabolized through mitochondrial β-oxidation, though the extramitochondrial pathways become more important in conditions of NEFA overload or mitochondrial dysfunction, as is often associated with NASH. Elevated serum levels of acyl carnitines are indicative of mitochondrial β-oxidation disorders.

Although the analytical platforms applied in the current work were not optimal for the coverage of the entire acyl carnitine profile, 3 out of 4 species observed as formate adducts in the methanol serum extract (platform 1) were significantly increased in morbidly obese NASH as compared to steatosis patients (). Peroxisomal β-oxidation may be adaptive when mitochondria are dysfunctional; loss of the peroxisomal pathway in rodents causes NASH, while its stimulation has been found to be protective –. The current data show further evidence for altered peroxisomal activity in NASH patients, indicated by their significantly increased serum levels of monoetherphospholipids (including plasmalogens, synthesized in peroxisomes), as compared to individuals with steatosis.

The clearest increases in these groups of compounds were also observed in the morbidly obese subject cohort where all but 2 of the 28 monoetherglycerophosphocholine and monoetherglycerophosphoethanolamine species profiled were significantly increased in NASH as compared to steatosis patients. Since plasmalogens can serve as antioxidants against reactive oxygen species, elevated serum levels in NASH may also reflect increased activity of protective mechanisms against oxidative stress. Further evidence for altered extramitochondrial oxidative activity, almost exclusively among morbidly obese patients, was found in the levels of oxidized fatty acids that were significantly higher in NASH as compared to steatosis patients for all 7 species identified using commercial standards. These included both enzymatic (15- and 12-hydroxyeicosatetraenoic acid, pro-inflammatory lipoxygenase products) and nonenzymatic (5-, 9-, and 11-hydroxyeicosatetraenoic acid) oxidation products of arachidonic acid (). Perhaps partly as a consequence of the aforementioned elevated NEFA oxidative activity, most NEFA species were found significantly deregulated in morbidly obese NASH as compared to steatosis patients, except in the cases of arachidonic and eicosapentaenoic acid, where the reverse trends were found. A recent lipidomics study of human acquired obesity found increased adipose tissue levels of eicosapentaenoic acid, a precursor of anti-inflammatory related docosahexaenoic acid (DHA).

Elevated serum levels of eicosapentaenoic acid observed in the current work may similarly reflect its restricted conversion to anti-inflammatory DHA-derived lipid mediators in obese NASH. Further changes mainly exclusive to the morbidly obese subject cohort were observed among essential amino acids, which were all significantly elevated in NASH as compared to steatosis patients except for tryptophan (not significant) and methionine that followed the reverse trend.

Similar increases in serum essential amino acids have previously been related to a higher rate of whole-body protein turnover in NASH, modulated by co-factors such as cytokines, inflammation and insulin resistance. While in the morbidly obese cohort of patients the clearest NASH metabolic abnormalities seem to be associated with the overloading of oxidative free fatty acid disposal routes, NASH is reflected in the lean cohort by significant alterations of a series of potentially lipotoxic intermediates that have been previously associated with NAFLD progression. The clearest evidence for this was found among the sphingolipid species where most ceramide and sphingomyelin species were found decreased in lean NASH as compared to steatosis patients ().

Ceramides are thought to play a major role in lipotoxic cellular injury, while sphingomyelin species have been previously associated with stress- and ligand-induced hepatocellular death, which contributes to the progression of several liver diseases including NASH. Methionine is also found increased in lean NASH as compared to steatosis patients, mirroring the trend observed in lean rodent NAFLD models with disrupted one-carbon metabolism genes, methionine adenosyltransferase 1A (MAT1A-KO) and glycine N-methyltransferase knock-out (GNMT-KO). Besides providing platforms for the better understanding of disease pathogenesis, groups of serum metabolite biomarkers identified in the current study may be used to develop noninvasive tools for clinical NAFLD assessment. Evaluating this possibility, we built separate BMI-dependent multivariate models, showing that overall diagnostic accuracy (AUC) was greater than 0.8 in all three BMI cohorts. Feeding these data into an overall BMI-stratified model provided a maximum average diagnostic accuracy of 0.82, at which point more than 90% of all NAFLD patients included in the study that did not have NASH could be correctly identified. The high accuracy of the model in ruling out the presence of NASH is particularly important, considering the fact that most NAFLD patients seen in clinical practice do not have advanced forms of the disease.

In summary we have studied the detailed serum metabolic profile of 467 liver-biopsied subjects, of which 377 were diagnosed with NAFLD. The measured NAFLD metabolic profile was dependent on BMI, an observation which indicates that the mechanism of NAFLD pathogenesis may be quite different depending on an individual’s level of obesity. An imbalance between the supply to the liver of NEFA and their nontoxic disposal promotes lipotoxic injury that has been closely related to the pathogenesis of NAFLD progression –. This scenario may be reflected in the serum metabolome of obese NAFLD patients, where high serum NEFA abundances in steatosis patients are reverted in NASH in conjunction with elevated acyl carnitines indicating mitochondrial β-oxidation dysfunction, altered ether phospholipids reflecting disturbed peroxisomal function, and increased levels of proinflammatory eicosanoids providing further evidence of extramitochondrial oxidative activity. The alteration of enzymatic pathways that generate lipotoxic intermediates from NEFA or inhibition of pathways that dispose of them may also be speculated to promote lipotoxicity. The lean NAFLD serum metabolome as characterized in the current work may carry the influence of this effect where species that have been previously linked to lipotoxicity, such as ceramides or sphingomyelin are found altered in NASH as compared to steatosis patients. The detailed mechanistic implications of the current data are likely to be complex and will require further study in future hypothesis-driven studies.

In particular, it is unclear as to what extent metabolic changes occurring during NAFLD evolution are important in promoting progression of the disease or are manifestations of secondary phenomena. The use in the current work of state-of-the-art technology able to profile hundreds of individual metabolite species in parallel from large patient cohorts will help to provide the impetus for such work. A drawback of the current approach is that we have not been able to provide absolute quantitation of the analytes, although we did monitor the reproducibility of our assays, while taking steps to ensure that all data points included in the analysis were within the linear detection range of the platforms. We would therefore expect the results to be qualitatively reproducible if a similar protocol were to be followed by an external laboratory, using the same sample set. The data show clear differential serum metabolic profiles associated with the groups of samples included in the study, offering strong possibilities for quantitative assay development needed for validation of the biomarkers. We also note the potential value of unidentified metabolites included in the qualitative profiling approach for providing valuable biomarkers that would otherwise remain unexplored. Current means used for the diagnosis of NAFLD (i.e.

Liver biopsy or imaging techniques) are subject to significant uncertainty and are poorly suited as tests for such a prevalent condition, from both a clinical and financial point of view. Imaging techniques are expensive and nonspecific, since they are unable to distinguish NASH from isolated steatosis, while liver biopsy is an invasive, subjective procedure, associated with potential complications and prone to sampling error. Although most steatosis patients tend to have a benign, nonprogressive clinical course, a significant proportion of those with NASH show progressive liver disease with a significant associated risk of developing cirrhosis and its complications (portal hypertension, liver failure, and hepatocellular carcinoma).

Clearly then the distinction of NASH from steatosis is critical in order to identify high-risk patients and adapt their corresponding clinical management profile accordingly. Dyslipidemia, in particular hypertriglyceridemia has long been associated with the development of metabolic diseases such as NAFLD - the prevailing view being that excess bulk lipids are responsible for less favorable patient evolution. The present data, benefiting from the ability of modern technology to profile hundreds of diverse, intact lipid molecular species, indicate that a BMI-dependent serum metabolic profile distinguishes between NASH and steatosis patients, and may have significant implications for the development of biomarkers and potential novel targets for therapeutic intervention. Synopsis An obstacle to the development of metabolome-based NAFLD predictors has been the lack of large cohort data from biopsy-proven patients matched for key metabolic features such as obesity. We examined the serum metabolome of 467 biopsied individuals with normal liver histology (n=90) or diagnosed with NAFLD (steatosis, n=246; NASH, n=131), using ultra-performance liquid chromatography coupled to mass spectrometry (UPLC-MS). The figure depicts obesity dependent biomarkers revealed by the study.

TAG triacylglycerides NEFA nonesterified fatty acids NAFLD nonalcoholic fatty liver disease NASH nonalcoholic steatohepatitis UPLC-MS ultra-performance liquid chromatography coupled to mass spectrometry BMI body-mass index TOF time-of-flight MS/MS tandem mass spectrometry CV coefficient of variation IS internal standard RSD relative standard deviation WHO world health organization K-W Kruskal-Wallis statistic ROC receiver operating characteristic AUC area under the ROC curve VLDL very low density lipoprotein PUFA polyunsaturated fatty acid.

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