Introduction
Adipose tissue participates in whole-body metabolism not just by energy storage. It is an endocrine organ and an important site for inflammatory crosstalk and immune response. Subcutaneous adipose tissue (SAT) is the largest adipose compartment for most humans and the primary site for lipid storage. Excess caloric intake per se causes an activation of resident immune cells in the adipose tissue, to which other immune cells are attracted from the circulation [
1]. Long-term overnutrition leads to a chronic low-grade inflammation, which promotes insulin resistance, for instance via insulin receptor substrate 2 (
IRS2) downregulation in SAT [
2] and thus precedes type 2 diabetes mellitus (T2DM) and other metabolic disorders [
3]. In the development of chronic inflammation, T cells induce the infiltration and inflammatory polarization of macrophages in the adipose tissue [
4,
5], which can make up to 40 % of cell content in obesity. These inflammatory macrophages have higher lipid content in murine models of obesity and show increased expression of genes relevant to lipid metabolism, such as peroxisome proliferator nuclear receptor gamma (
PPARG) [
6]. Additionally, immune cells are the major source of several inflammatory cytokines such as the cachexia-inducing tumor necrosis factor (
TNF)-α, interleukin 6 (
IL6), and interleukin 1β (
IL1B) [
12]. Notably, insulin resistance and lipolysis are both mediated by TNF. Lipolysis is enhanced by TNF through downregulating of perilipin 1 (
PLIN1), which protects adipocytes from lipolysis by modulating substrate availability for hormone-sensitive lipase [
7], and cell death-inducing DNA fragmentation factor-alpha-like effector A (
CIDEA) expression, which is enriched at lipid droplet contact sites [
8,
9]. SAT Expression of both
PLIN1 and
CIDEA correlates with insulin sensitivity in obesity [
9]. Moreover, adipose tissue of obese compared to lean subjects secretes reduced concentrations of the insulin-sensitizing adipokine adiponectin (
ADIPOQ) [
10]. Overall, these cytokines and adipokines play a crucial role in the development of adipose tissue inflammation and insulin resistance [
11‐
13].
Weight loss is key to restoring insulin sensitivity and reducing cardiovascular risk. Currently, bariatric surgery is the most sustainable treatment option, superior to lifestyle interventions in terms of weight maintenance and risk reduction [
14]. Long-term remission of T2DM in obese patients undergoing bariatric surgery has been frequently reported: 1 year after surgery, the hemoglobin A
1c level improved significantly, and disease-related mortality was reduced compared to conservative therapy [
15,
16]. On the other hand, weight loss following bariatric surgery resembles in some cases of cachexia [
17]. Although cachexia and obesity are on opposite sides of the weight spectrum, they display many similarities as both are characterized by increased adipose tissue lipolysis and insulin resistance.
Growth factors, which are important for adipogenesis, are downregulated in catabolic states and cachexia, which are characterized by low levels of insulin growth factor 1 (IGF-1) and increased levels of transforming growth factor beta (TGF-β) family members [
18]. Myostatin is a member of the TGF-β family and a negative regulator of muscle growth; however, it is not clear how weight loss after bariatric surgery affects serum myostatin levels.
Changes in adipose tissue gene expression during weight loss after bariatric surgery treatment of morbid obesity are to date underinvestigated. We set out to investigate the effects of weight loss on genes relevant to inflammation, lipolysis, apoptosis, and growth in adipose tissue 1 year after surgery and to compare expression levels with an age- and sex-matched lean and overweight control group.
Material and Methods
Ethical Statement
The trial has been performed in accordance to the 1964 Declaration of Helsinki and its latter amendments and with the Good Clinical Practice guidelines at the Department of Medicine III, Medical University of Vienna. All participants provided informed written consent prior to their inclusion in the study. The trial had been approved by the Ethics Committee of the Medical University of Vienna (EK-Nr. 488/2006, EK 275/2006, and EK-Nr. 963/2009) and by the Ethics Committee of the Göttlicher Heiland Hospital (EK-Nr. E10-N01-01) and was conducted at the Clinical Research Unit of the Division of Endocrinology and Metabolism, Department of Medicine III, Medical University of Vienna.
Study Population
Morbidly obese patients (BMI > 40 kg/m
2) prior to and 1 year after bariatric surgery were compared to a group of lean and overweight patients. We investigated metabolic parameters and SAT gene expression of 31 morbidly obese patients (BMI > 40 kg/m
2) before and approximately 1 year after elective bariatric surgery (follow-up time 419 ± 58 days). Adipose tissue and serum samples were collected within another study from
n = 20 lean and overweight donors (BMI < 30 kg/m
2) undergoing elective abdominal surgery either at the Department of Surgery from the Medical University of Vienna or the Hospital Göttlicher Heiland in Vienna. Results have been published elsewhere [
19,
20]. For comparison of gene expression, a subgroup of
n = 20 obese patients matched for age and sex with the lean and overweight were analyzed.
Obese patients were advised to maintain usual physical activity at a constant level. No intensive exercise routines were documented. All obese patients participated in previous trials by our group and metabolic changes 1 year after bariatric surgery have been presented elsewhere [
21]. Briefly, 20–65-year-old patients scheduled to undergo bariatric surgery or elective abdominal surgery were eligible for inclusion if their BMI was >40 kg/m
2 before surgery for the obese group and <30 kg/m
2 for the lean and overweight control group, and their fasting plasma glucose <126 mg/dl and 2-h plasma glucose after a 75-g oral-glucose tolerance test <200 mg/dl. Exclusion criteria included acute illness within the past 14 days or severe chronic illness such as active malignancies; acquired immunodeficiency (HIV infection, AIDS); significant liver, cardiovascular, renal, pulmonary or thyroid disease; anemia; inborn or acquired bleeding disorders; as well as pregnancy or breastfeeding. Anthropometric parameters were determined at inclusion and at the 1-year follow-up visit after bariatric surgery. All patients were Caucasian.
Collection of Subcutaneous Adipose Tissue
All bariatric surgeries (26 Roux-en-Y-gastric bypass (RYGB), three sleeve resections, and two gastric bandings) had been performed at the Department of Surgery of the Medical University of Vienna. Samples of SAT were collected by excision from the umbilical area during surgery. Other elective abdominal surgeries had been performed at the Department of Surgery of the Medical University of Vienna and the Göttlicher Heiland Hospital, Vienna. SAT was collected by excision from the periumbilical region. One year after bariatric surgery, the post-obese SAT was collected by needle biopsy of the periumbilical abdominal area. All adipose tissue samples were immediately immersed in RNAlater (Life Technologies) and stored at −80 °C.
Serum Samples and Laboratory Analysis
Blood samples were collected by venous puncture after a 12-h overnight fast. Blood samples were analyzed by the Department of Laboratory Medicine, Medical University of Vienna, for routine analysis of triglycerides, total-, HDL- and LDL-cholesterol, alanine transaminase (ALT), gamma-glutamyl transferase (GGT), glucose, insulin, C-peptide, C-reactive protein (CRP), glycosylated hemoglobin (HbA1c), and red and white blood cell counts. For ELISA analyses, blood was centrifuged at 3000g for 10 min at 4 °C and then stored at −20 °C. We used commercial ELISA kits to measure plasma concentrations of IL-6 (R&D Systems, Minneapolis, MN, USA) and serum concentrations of high-sensitivity tumor necrosis factor (Invitrogen, Thermo Fisher Scientific, Waltham, MA, USA) and myostatin (R&D Systems, Minneapolis, MN, USA) and a RIA for measuring serum adiponectin concentrations (Merck Millipore, Billerica, MA, USA). Homeostasis model assessment of insulin resistance (HOMA-IR) was calculated as the product of fasting insulin (μU/ml) and glucose (mg/dl) divided by 405.
Total RNA from tissue was extracted by using the RNeasy Lipid Tissue Mini Kit (QIAGEN, Venlo, Netherlands) and by TRIzol reagent (Thermo Fisher Scientific, Waltham, MA, USA) with a tissue homogenizer, followed by RNA isolation according the manufacturer’s instructions. RT-PCR was performed in duplicates by using the TaqMan Gene Expression Assays (Applied Biosystems). Gene expression was analyzed according to the ddCt method relating gene of interest Ct values to ubiquitin C (
UBC). No significant differences in the Ct values of UBC were observed between the groups. To ensure that SAT biopsies are not contaminated with dermis tissue, keratin 18 (
KRT18) expression was analyzed and three positive post-obese samples (gene expression >1000 % post-obese sample in comparison to the obese sample of the same patient) were excluded. A list of used TaqMan probes is provided in the supplementary Table
1.
Statistical Analysis
Normal distribution was determined by the Shapiro-Wilk test of normality. Normally distributed data were presented as means ± SDs, otherwise as medians (interquartile ranges). Group differences were calculated by one-way ANOVA with Tukey post hoc test or Kruskal-Wallis rank sum with Dunn’s multiple comparison test, and paired t test, or Wilcoxon signed rank test for paired samples, as appropriate.
For gene expression comparison ddCt-data were investigated independently by linear mixed effects analysis of gene expression, with the fixed effects status (lean, obese, or post-obese) and plate (obese before and after bariatric surgery or lean and obese) and the patient ID as a random effect. No apparent deviations from homoscedasticity or normality were observed in the residual plot. Relative gene expression boxplots were normalized to the median of the obese group. Data were not adjusted for multiple testing due to the study’s exploratory nature. For Pearson’s
r correlation, nonparametric data were log-transformed. For the elastic net equation, the optimal settings for
α (between 0 and 1) and for
λ plus one standard error [
22] were chosen to minimize the mean squared error using leave-one-out cross-validation. To investigate the relationship of TNF with other genes, we correlated its expression with assessed parameters in the post-obese group and performed an unbiased machine learning analysis via elastic net regularization, to check for independent predictors.
For statistical analysis, we used RStudio (version 0.99.491) [
23] with R (version 3.2.2) [
24] with the
lme4 (1.1–10) [
25] and the
glmnet (2.0–2) packages [
26]. Differences were considered statistically significant at two-sided values of
p < 0.05.
Discussion
Our present work aimed to investigate SAT expression of relevant inflammatory and metabolic genes of morbidly obese patients before and 1 year after bariatric surgery in comparison to lean subjects. Even though the mean BMI of patients in the post-obese group was still higher compared to the lean control group, most metabolic risk factors, such as insulin resistance, hyperlipidemia, and systemic inflammation, changed to such an extent that many of the analyzed parameters in serum differed even from the lean control group. Interestingly, analysis of adipose tissue inflammation-associated genes showed that gene expression profile of the post-obese group was significantly different in comparison to the obese and even the lean control group and pointed to reduced inflammation. We further showed that weight loss affected several genes relevant to lipolysis, apoptosis, and also growth factors with a role in cachexia. Accordingly, it seems that the near to normal weight achieved after bariatric surgery reflects a cachexia-like state rather than a healthy lean phenotype, particularly indicated by the extensive upregulation of TNF expression in the post-obese group.
Macrophage-associated inflammatory cytokines like
IL1B,
IL6, and
CCL3 were all upregulated in obese SAT [
27‐
29], but markedly downregulated after bariatric surgery, concordant with other data [
30,
31]. Interestingly, the anti-inflammatory
IL10 was downregulated upon weight loss. The finding that TNF was markedly upregulated contrasts other data, however, in those studies, the BMI change in response to weight loss was lower, the follow-up time was shorter, or the cohorts included diabetic-patients [
30,
32].
TNF was originally described as the cachexia-inducing factor and termed cachectin indicating a Janus-type function [
33]. It is known to mediate lipolysis and insulin resistance by downregulation of
PLIN1 [
7] and
CIDEA expression [
8]. TNF was described to cause apoptosis of adipocytes in vitro in a
CASP3-dependent manner [
34]. Notably,
CASP3 expression is higher in SAT in obesity in our study as well as in other studies [
35]. Since the number of adipocytes in adults is described to be unchanged upon weight gain or weight loss [
36],
CASP3 upregulation might be explained by increased apoptosis of inflammatory immune cells from the stromal vascular fraction [
37], as evidenced by the remarkable decrease in T cell marker
CD3E, pan-macrophage marker
CD68, endothelial cell marker
CD144 and antigen-presenting cell marker
HLA-
DR. In our post-obese group,
CASP3 expression in adipose tissue is even higher than in the obese group, clearly indicating a catabolic state.
TNF inhibits adipogenesis by downregulating
PPARG expression in cultured human adipocytes [
38]. We detected increased lipolysis and reduced adipogenesis in our cohort. The downregulation of metabolic markers
ADIPOQ,
IRS2,
PPARG, and
SCL2A4 (GLUT-4) expression after weight loss indicates reduced metabolism in adipose tissue. A study performed in rats showed similar results after RYGB [
39].
PPARG downregulation suggests an inhibition of adipogenesis and concomitant insulin resistance in SAT during weight loss [
40]. Other studies also showed a decrease in
PPARG after hypocaloric diet or 3 months after bariatric surgery [
41‐
43]. Other adipogenesis-related genes such as
IGF1 [
44] and
FGF1 were also significantly downregulated in the post-obese group. The preadipocyte differentiation marker
FGF1 was downregulated in post-obese SAT, contrary to the findings of Mejhert et al. who did not detect any differences in FGF1 secretion after 10 weeks of diet-induced weight loss [
45]. However, the weight loss was, notably, not as pronounced as we observed 1 year after bariatric surgery.
Although insulin pathway genes were downregulated, whole-body insulin sensitivity was restored in the post-obese group as suggested by the HOMA-IR and as noted previously [
21]. Surprisingly,
TNF expression in post-obese could be predicted by fasting glucose, although fasting glucose values were already lower in comparison to the lean control group. Interestingly,
TNF expression in SAT after bariatric surgery is independent of whole-body insulin resistance, contrary to the obese state. Local insulin resistance seems to occur in SAT, similar to cachectic states. In contrast to a previous study [
46], the pro-inflammatory M1 macrophage marker
CD40 was not reduced in the post-obese group, although the pan-macrophage marker
CD68 expression was downregulated. The increased CD40/CD68 ratio together with the downregulation of
PPARG and
ADIPOQ suggest a shift towards local insulin resistance inducing M1-like macrophages in SAT [
47‐
50]. M1 macrophages are the primary source of TNF and seem to orchestrate insulin resistance [
51]. Interestingly, although the expression of the immune cell marker
CD40 does not change significantly, elastic net revealed
TNF expression acts as a positive predictor. Therefore, CD40-positive cells could be a source of the
TNF upregulation in the SAT of post-obese patients. Of note, an increased apoptosis rate may also cause
TNF upregulation by the so-called apoptosis-induced apoptosis, where dying cells secrete TNF, which then in turn induce even more apoptosis [
52]. A proposed mechanism for TNF modulation of lipolysis in adipose tissue after weight loss is described in Fig.
5.
Weight loss after bariatric surgery can sometimes lead to a pronounced reduction of fat and fat-free mass similar to cachexia [
17]. Muscle wasting is relevant to cachexia; however, whole body muscle mass changes were not analyzed. Since myostatin (MSTN) levels correlate negatively with muscle mass and high circulating levels of MSTN were observed in muscle wasting conditions [
53,
54], MSTN was used as surrogate marker of skeletal muscle mass. To our knowledge, we are the first to report changes in myostatin serum concentration after weight loss induced by bariatric surgery. Consistent with the findings of Park et al. in muscle biopsies of obese subjects ~1 year after bariatric surgery, we observed a significant decrease in circulating myostatin levels upon weight loss, which approximated the level of the lean group [
55], suggesting that muscle wasting is not too advanced.
Regarding other growth factors related to both obesity and cachexia, our group showed that serum IGF-1 concentration increases in trend after surgery and is associated with a risk for developing post-load hypoglycemia 2 h after a standardized glucose challenge [
21]. Downregulated
IGF1 in SAT in the post-obese group indicates that IGF-1-concentration is uncoupled from SAT expression, since serum IGF-1 is primarily hepatic [
56].
Other examples of uncoupled SAT expression-serum concentration include circulating adiponectin and TNF. The increase in adiponectin concentration in serum 1 year after surgery did not reflect an increase in SAT
ADIPOQ expression, although SAT is believed to be the main source of serum adiponectin [
57], suggesting that in the post-obese, other fat depots, most likely bone marrow adipose tissue, significantly contributes to adiponectin serum levels [
58]. Also, others observed that circulating adiponectin increases, while IL-6 and TNF concentration decreases upon weight loss [
59,
60]. However, SAT
IL6 expression is described to be connected with serum levels in humans while
TNF expression is not—meaning that TNF primarily acts in a paracrine or autocrine manner [
61].
A limitation to our study is that the data merely present a “snapshot” during weight loss, as we did not include multiple time points after bariatric surgery. It would be interesting to know whether expression profiles after 5 or 10 years will resemble a healthy lean state in contrast to the catabolic state we observed in our study. An additional limitation of this study is that due to obvious reasons, we could only collect subcutaneous and not omental adipose tissue during follow-up. The amount of collected tissue by needle biopsy was very limited. Therefore, only mRNA expression could be investigated but neither histology nor protein expression. Adipose tissue samples were collected by excision during surgery for the lean and obese group and by needle biopsy in the post-obese group. Contradictory data are published on whether adipose tissue sampling affects gene expression analysis [77,78], yet we did not observe any significant differences between surgical excision and needle biopsy either (data not shown). For an inclusive statistical analysis, we performed a linear mixed effects model, taking into account the fact that due to sample size, considerations loss of power in comparing the lean with the obese group would occur.
Most studies focusing on bariatric surgery follow-up mainly investigated changes in serum parameters, whereas only few investigated changes in the expression of adipose tissue inflammation and cachexia-related genes. A major strength of our study is the thorough characterization of systemic and local adipose tissue changes after weight loss and the comparison to the lean state, as well as the novel finding that upon bariatric surgery, a state similar to cachexia seems to develop in SAT. Similarities and differences between post-bariatric weight loss as evaluated in this study and published data on cachexia [
17,
62,
63] are presented in supplementary Table
2.
In summary, our data suggest that in response to surgery-induced weight loss, upregulated TNF expression leads to increased lipolysis via PLIN1 downregulation, decreased adipogenesis via PPARG downregulation and even increased adipocyte turnover via CASP3 upregulation. Concomitant with lipolysis, local insulin resistance also occurs in cachexia and was reflected in our study by the downregulation of PLIN1, CIDEA, SLC2A4, ADIPOQ, IRS2, and PPARG. Thus, the profound weight loss caused a specific pattern in SAT gene expression, which let us conclude that the post-obese SAT reflects a cachexia-like state rather than healthiness. For a more in-depth analysis of the biological processes occurring in different human fat depots during weight loss, the mechanisms through which these changes contribute to whole-body metabolism need to be investigated in further studies.