Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Sarcopenia and myosteatosis are accompanied by distinct biological profiles in patients with pancreatic and periampullary adenocarcinomas

  • Cynthia Stretch ,

    Contributed equally to this work with: Cynthia Stretch, Jean-Michel Aubin, Beata Mickiewicz

    Roles Formal analysis, Methodology, Visualization, Writing – original draft

    Affiliation Department of Oncology, University of Calgary, Calgary, Canada

  • Jean-Michel Aubin ,

    Contributed equally to this work with: Cynthia Stretch, Jean-Michel Aubin, Beata Mickiewicz

    Roles Data curation, Writing – original draft

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Beata Mickiewicz ,

    Contributed equally to this work with: Cynthia Stretch, Jean-Michel Aubin, Beata Mickiewicz

    Roles Formal analysis, Methodology, Visualization, Writing – review & editing

    Affiliation Department of Biological Sciences, University of Calgary, Calgary, Canada

  • Derek Leugner,

    Roles Data curation, Formal analysis, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Tariq Al-manasra,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Biological Sciences, University of Calgary, Calgary, Canada

  • Elizabeth Tobola,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Santiago Salazar,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Francis R. Sutherland,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Chad G. Ball,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Elijah Dixon,

    Roles Data curation, Writing – review & editing

    Affiliation Department of Surgery, University of Calgary, Calgary, Canada

  • Hans J. Vogel,

    Roles Methodology, Writing – review & editing

    Affiliation Department of Biological Sciences, University of Calgary, Calgary, Canada

  • Sambasivario Damaraju,

    Roles Funding acquisition, Investigation, Writing – review & editing

    Affiliations Department of Laboratory Medicine and Pathology, University of Alberta, Edmonton, Canada, Department of Oncology, University of Alberta, Edmonton, Canada

  • Vickie E. Baracos,

    Roles Funding acquisition, Investigation, Writing – review & editing

    Affiliation Department of Oncology, University of Alberta, Edmonton, Canada

  • Oliver F. Bathe

    Roles Conceptualization, Funding acquisition, Supervision, Writing – original draft, Writing – review & editing

    bathe@ucalgary.ca

    Affiliations Department of Oncology, University of Calgary, Calgary, Canada, Department of Surgery, University of Calgary, Calgary, Canada

Abstract

Introduction

Pancreatic and periampullary adenocarcinomas are associated with abnormal body composition visible on CT scans, including low muscle mass (sarcopenia) and low muscle radiodensity due to fat infiltration in muscle (myosteatosis). The biological and clinical correlates to these features are poorly understood.

Methods

Clinical characteristics and outcomes were studied in 123 patients who underwent pancreaticoduodenectomy for pancreatic or non-pancreatic periampullary adenocarcinoma and who had available preoperative CT scans. In a subgroup of patients with pancreatic cancer (n = 29), rectus abdominus muscle mRNA expression was determined by cDNA microarray and in another subgroup (n = 29) 1H-NMR spectroscopy and gas chromatography-mass spectrometry were used to characterize the serum metabolome.

Results

Muscle mass and radiodensity were not significantly correlated. Distinct groups were identified: sarcopenia (40.7%), myosteatosis (25.2%), both (11.4%). Fat distribution differed in these groups; sarcopenia associated with lower subcutaneous adipose tissue (P<0.0001) and myosteatosis associated with greater visceral adipose tissue (P<0.0001). Sarcopenia, myosteatosis and their combined presence associated with shorter survival, Log Rank P = 0.005, P = 0.06, and P = 0.002, respectively. In muscle, transcriptomic analysis suggested increased inflammation and decreased growth in sarcopenia and disrupted oxidative phosphorylation and lipid accumulation in myosteatosis. In the circulating metabolome, metabolites consistent with muscle catabolism associated with sarcopenia. Metabolites consistent with disordered carbohydrate metabolism were identified in both sarcopenia and myosteatosis.

Discussion

Muscle phenotypes differ clinically and biologically. Because these muscle phenotypes are linked to poor survival, it will be imperative to delineate their pathophysiologic mechanisms, including whether they are driven by variable tumor biology or host response.

Introduction

Pancreatic and periampullary adenocarcinomas have a poor prognosis. The only meaningful chance for cure is resection, although recurrence occurs in the majority. One of the hallmarks of these malignancies is their profound effects on the host health, including cachexia and its attendant changes in body composition [1, 2]. Cachexia is a multifactorial syndrome defined by an ongoing loss of skeletal muscle mass (with or without fat loss) that cannot be fully reversed by conventional nutritional support and leads to progressive functional impairment [3]. Functional impairment has been associated with poor operative outcomes, especially in the elderly [46].

In recent years, computed tomography (CT) scans have been used to evaluate cancer-associated changes in body composition [7]. Two features in particular have garnered attention: low muscle mass (sarcopenia) and decreased muscle radiodensity. Sarcopenia is a characteristic feature of cachexia [3]. Decreased muscle radiodensity is due to myosteatosis (fatty infiltration of skeletal muscles), which is known to accompany cancer [1, 8, 9]. The associations with cancer outcomes are significant. Sarcopenia is associated with increased treatment toxicity and reduced survival in several malignancies, including pancreas cancer [1016]. Myosteatosis is associated with a shorter overall survival after resection of various malignancies, including pancreatic cancer [14, 1720]. Low muscle mass or radiodensity may also adversely affect operative outcomes, due to impaired wound healing, depressed immunity and inability to mobilize after surgery [16, 2126]. The relationship between sarcopenia and myosteatosis is not well described; little is known about their co-incidence. Moreover, little is known about common and divergent biological features associated with these body composition phenotypes.

In a group of patients that have all undergone Whipple pancreaticoduodenectomy for pancreatic and periampullary adenocarcinomas, we have studied operative and oncologic outcomes as a function of muscle mass and radiodensity. The associations of these abnormalities with other anthropomorphic features and other clinical factors are described. compare transcriptional profiles in muscle, as well as blood metabolic profiles, to identify discriminating biological features in patients with decreased muscle mass and low muscle radiodensity.

Materials and methods

Patients

Our studies were approved by the Health Research Ethics Board of Alberta (HREBA.CC-16-0769 and HREBA.CC-16-0761). Patients included in this study provided written informed consents for use of clinical data, collection and use of biological specimens for the study described here. Patients who underwent a pancreaticoduodenectomy (Whipple procedure) for pathologically confirmed pancreatic adenocarcinoma or a non-pancreatic periampullary adenocarcinoma between 2003 and 2011 and who had pre-operative CT scans available as DICOM images were included. Demographic, clinical, laboratory and operative data were collected from paper charts and electronic health records.

Radiographic measurements

Preoperative digital axial CT scans done within 2 months of surgery were used to quantify skeletal muscle area as detailed in prior studies, using Slice-O-Matic software (v.4.3, Tomovision, Montreal, Canada) (Fig 1A) [7, 27]. Briefly, cross sectional surface area (cm2) values were calculated on images at the 3rd lumbar vertebra (L3) for skeletal muscle (SM), visceral adipose tissue (VAT), subcutaneous adipose tissue (SAT) using specified Hounsfield Unit (HU) ranges: -29 to +150 HU for SM, −190 to −30 HU for SAT, and −150 to −50 HU for VAT. Total adipose tissue (TAT) was calculated by adding the surface area of the VAT and SAT. Muscle area was normalized for stature and reported as lumbar skeletal muscle index (SMI, cm2/m2). Mean muscle radiodensity was measured for the entire cross-sectional area at L3.

thumbnail
Fig 1. Body composition in patients with periampullary adenocarcinomas.

A. Representative axial CT images from a muscular patient with high radiodensity (left panel), a patient with sarcopenia but high radiodensity (middle panel) and a patient with low muscularity and low radiodensity (right panel). The horizontal bar shows the Hounsfield Unit ranges pertaining to the isolated CT rectangles showing only the paraspinal muscles. B. Dot plot illustrating the association of muscle mass and radiodensity, in males and females. C. Differences in adipose tissue distribution in individuals with sarcopenia and low muscle radiodensity.

https://doi.org/10.1371/journal.pone.0196235.g001

In addition to evaluating muscle mass as a continuous variable, we defined sarcopenia as the lowest 40th percentile of SMI for each sex (<47.7 cm2/m2 for males and <36.5 cm2/m2 for females). Similarly, muscle radiodensity was analyzed as a continuous variable, and as a categorical variable (myosteatosis defined as lowest quartile of radiodensity; < 30 HU). Since muscle radiodensity was not significantly different between the sexes (S1 Fig), it was not corrected for sex. These definitions were arbitrarily based on percentile groupings, but also were similar to other studies on patients with pancreas cancer [16, 23].

Gene expression, rectus abdominis

Rectus abdominis muscle was harvested at laparotomy. Muscles were procured at the beginning of the operation by sharp dissection, taking care not to use electrocautery, then immediately snap frozen. Methods for sample processing and microarray analysis have been previously described [28]. Microarray data have been deposited in the US National Center for Biotechnology Information Gene Expression Omnibus (GEO), series accession number GSE41726.

Metabolomics analysis, serum

Details related to collection, storage and analysis of serum samples have been previously described [29]. Briefly, blood was procured from fasting patients with pancreatic and periampullary cancer in BD gold top vacutainers (BD Biosciences, Mississauga, ON, Canada) on the day of surgery, prior to any surgical manipulation. Samples were spun within 6 hours of collection, then frozen until analysis at -20°C. Serum samples were then analyzed by 1H-nuclear magnetic resonance (NMR) spectroscopy and gas chromatography-mass spectrometry (GC-MS).

Data analysis

Descriptive statistics were used to characterize the study cohort. Continuous data were compared using t-test. Fisher’s exact test was used for comparison of categorical variables. Pearson correlation coefficients were used to test for relationships of normally distributed data. Survivals were calculated from date of surgery to date of first appearance of recurrence (for disease-free survival (DFS)) or to date of death for overall survival (OS). Survival curves were estimated using the Kaplan-Meier method, compared using the log-rank test. The effects of selected clinical factors on prognosis were analyzed using the Cox Proportional Hazard model (with bootstrap). All tests of significance were two sided and p-values < 0.05 were considered statistically significant.

In our translational studies, to limit any heterogeneity in the study group, we focused only on patients with pancreatic adenocarcinoma. In the analysis of the microarray data, the intensity values for each of the 41,000 oligonucleotide sequences was log2 transformed prior to analysis. Patients were classified according to sarcopenia and myosteatosis. Transcripts with a t-test p-values cut-off of >0.05 for each class comparison (i.e. with and without sarcopenia or with and without myosteatosis) were removed from further analysis. To select the mRNA transcripts which explain the maximum separation between defined classes, filtered transcripts were submitted to partial least squares discriminant analysis (PLS-DA). This algorithm estimates the discriminatory power of each transcript in the form of VIP values. The final list of differentially abundant transcripts included all transcripts with a VIP>1.

Differentially abundant transcripts were analyzed using QIAGEN’s Ingenuity® Pathway Analysis (IPA®, QIAGEN Redwood City, http://www.qiagen.com/ingenuity). Biological function analysis identified the most significant functions associated with the differentially abundant genes (DAGs). Fisher’s exact test was used to calculate a p-value by IPA to determine the probability that the association between the genes and the functions is explained by chance alone. Low p-value suggests that the association between genes belonging to a function is unlikely to be due to chance. No tissue-type information was included prior to IPA analysis so as not to limit gene information available through the IPA database.

For the analysis of metabolomic data, zero values were considered as missing values. Data excluded consisted of all metabolites or features with >50% missing values, as well as unnamed or unidentified metabolites. The resulting 1H-NMR spectroscopy dataset contained 60 metabolites and the GC-MS dataset contained 123 metabolites for further analysis. Unsupervised principal component analysis (PCA) was conducted to identify overt outliers and any latent structures within each model. SIMCA-P+ (Version 12.0, Umetrics, Umea, Sweden) software was used for all multivariate projection modeling. Potentially significant subsets of metabolites were selected by using two-sample t-test assuming unequal variances (Welch’s t-test). Metabolites with a p-value < 0.30 were deemed potentially informative and were subjected to orthogonal partial least squares discriminate analyses (OPLS-DA). Compounds with variable importance in projection (VIP) ≤1 were further filtered. Metabolites were submitted to pathway analysis using MetaboAnalyst 3.4 [30] and Metscape Version 3.1.2 [31].

Results

Variations in body composition

123 patients were identified during the selected time period. Weight loss was reported more frequently in males (70.0 vs 51.0%, p = 0.05). As expected, males were more muscular (mean SMI 50.4 ± 13.6 vs. 38.8 ± 7.0 cm2/m2; P<0.0001), but there was no significant difference in muscle radiodensity between sexes. Men tended to have more visceral fat (55.6 ± 36.8 vs. 29.1 ± 21.5 cm2/m2; P<0.0001), and women tended to have more subcutaneous fat (78.9 ± 45.6 vs. 49.1 ± 22.8 cm2/m2; P<0.0001). Total adipose tissue was not significantly different between the sexes (S1 Fig).

Of the 123 patients, fifty patients (40.7%) were classified as having sarcopenia (regardless of myosteatosis status) and 31 patients (25.2%) were classified as having myosteatosis (regardless of sarcopenia status). Muscle mass and muscle radiodensity did not correlate well, regardless of sex (Fig 1B). Individuals with sarcopenia typically had a low BMI (Table 1). In comparison to patients with no sarcopenia, patients with sarcopenia had significantly less subcutaneous adipose tissue (44.5 ± 26.0 vs. 70.3 ± 34.8 cm2/m2; P<0.0001) and total adipose tissue (82.2 ± 47.6 vs. 122.4 ± 58.5 cm2/m2; P<0.0001) (Fig 1C). Visceral adipose tissue also tended to be lower in patients with sarcopenia, although this did not reach statistical significance (36.9 ± 31.7 vs. 49.6 ± 34.5 cm2/m2; p = 0.069). In comparison to patients with a normal muscle radiodensity, patients with muscle radiodensity < 30 HU had significantly greater visceral adipose tissue (65.6 ± 34.7 vs. 37.3 ± 30.6 cm2/m2; P<0.0001), subcutaneous adipose tissue (77.9 ± 37.9 vs. 53.8 ± 29.9 cm2/m2; P = 0.004) and total adipose tissue (145.5 ± 54.9 vs. 92.7 ± 52.5 cm2/m2; P<0.0001). In sum, these data demonstrate that sarcopenia and myosteatosis represent two separate and distinct clinical phenotypes.

thumbnail
Table 1. Patient characteristics as a function of low muscle mass and radiodensity.

Data are expressed as mean ± SD, or as N (%).

https://doi.org/10.1371/journal.pone.0196235.t001

A third group based on body composition was also apparent. There were 14 patients (11.4%) who had both low muscle mass and radiodensity. These patients had features similar to what was previously described as “sarcopenic obesity” [27, 32]. In that subgroup of patients, visceral, subcutaneous and total adipose tissue were typically high (over 50th percentile), yet skeletal muscle index was low. Patients in this third group had similar anthropomorphic features to each other.

Table 1 summarizes clinical characteristics as a function of muscle mass and radiodensity. We were unable to identify any clinical features that correlated with skeletal muscle index. Patients with low muscle radiodensity tended to be older, and they tended to have more significant comorbidities (higher Charlson comorbidity index, higher ASA class). Diabetes was especially associated with low muscle radiodensity.

Operative outcomes

Operative outcomes as a function of muscle mass and radiodensity are summarized in S1 Table. Major complications (Clavien grade ≥3) occurred in 12 patients (9.8%). Three patients (2.4%) required ICU admission. Median length of stay was 14.0 days (range 6–81 days). One patient (0.8%) died as a result of the procedure. Sarcopenia did not associate with any changes in operative outcomes. Myosteatosis was associated with an increased major complication rate (P = 0.035). There was a higher anastomotic leak rate, although this did not quite reach statistical significance (P = 0.079). Length of hospitalization in patients with low muscle radiodensity tended to be longer (P = 0.053). The only operative death in this series was in a patient with myosteatosis.

Survival

89 patients (72.4%) were followed until the time of death. Median follow-up for patients still alive was 44 months. Data pertaining to disease-free survival (DFS) and overall survival are summarized in Fig 2 and S2 Table.

thumbnail
Fig 2. Kaplan-Meier plots.

(A) Disease-free survival (DFS) as a function of sarcopenia. (B) Overall survival (OS) as a function of sarcopenia. (C) DFS as a function of myosteatosis. (D) OS as a function of myosteatosis. (E) DFS in individuals with both sarcopenia and myosteatosis. (F) OS in individuals with both sarcopenia and myosteatosis.

https://doi.org/10.1371/journal.pone.0196235.g002

On univariate analysis, as expected, DFS was significantly better in patients with non-pancreatic adenocarcinomas (p = 0.03, HR 0.6). CEA levels above 4.4 (p = 0.049, HR 1.7) and CA19-9 above 76.0 (p = 0.049, HR 2.1) were associated with inferior DFS. Anastomotic leaks were associated with a decreased DFS (p = 0.058, HR 0.478). DFS was not significantly linked to the presence of myosteatosis or sarcopenia. Also on univariate analysis, OS was significantly better in non-pancreatic adenocarcinomas. OS was adversely affected by infectious complications; prolonged ICU stays and high CEA levels. Median overall survival was shorter in patients with sarcopenia (26.4 vs 16.0 months, P = 0.005, HR1.8). Low muscle radiodensity as a continuous variable was significantly associated with a shorter survival (P = 0.005). Patients with myosteatosis (as we defined it) had a shorter OS, but this did not quite reach statistical significance (26.0 months vs 15.9 months, p = 0.06, HR 1.6). The coincidental presence of sarcopenia and myosteatosis was associated with a markedly reduced OS (25.2 vs 9.6 months, P = 0.002, HR 2.5).

On multivariate analysis, factors that were associated with shorter OS included an elevated CEA. Neither sarcopenia nor low muscle radiodensity was associated with a significantly reduced OS. However, the presence of both sarcopenia and myosteatosis conferred an inferior overall survival (HR 3.084 CI 1.009–9.425 P = 0.048).

Analysis of biological samples

Low muscle mass and radiodensity appear to occur independently, represent separate phenotypes, and have additive effects on survival outcomes. To understand how these different effects on muscle arise, we evaluated the muscle transcriptome and circulating metabolome. Of the 123 patients, 29 provided muscle samples and 29 provided serum samples. Only 10 patients provided both muscle and serum and because of this, the two analyses were treated independently. Patient characteristics from samples included in the transcriptomic and metabolomic analysis are shown in S3 Table.

Muscle transcriptome

Transcriptomic analysis was conducted for the phenotypes of interest, sarcopenia regardless of myosteatosis status (n = 8) and myosteatosis regardless of sarcopenia status (n = 10) compared to patients with neither sarcopenia or myosteatosis (n = 15). Of 41,000 transcripts analyzed by cDNA microarray, there were 645 differentially abundant transcripts associated with sarcopenia (S4 Table). These differentially abundant transcripts mapped to 531 unique genes. When we compared patients based on presence of myosteatosis, we identified 991 differentially abundant transcripts which mapped to 772 unique genes (S5 Table). The top 100 genes associated with each phenotype are summarized in Fig 3A and 3B. Only 64 DAGs were common in the analysis of sarcopenia and myosteatosis (Fig 3C).

thumbnail
Fig 3. Summary of transcriptomic analysis.

(A) Heatmap showing top 100 most differentially abundant transcripts (based on p-value), sarcopenia vs. normal body composition. (B) A heatmap showing top 100 most differentially abundant transcripts (based on p-value), myosteatosis vs. normal body composition. (C) Venn diagram summarizing numbers of unique and shared differentially abundant genes in sarcopenia and myosteatosis.

https://doi.org/10.1371/journal.pone.0196235.g003

Biological functions associated with differentially abundant genes related to sarcopenia and myosteatosis status are summarized in Fig 4. The largest number of sarcopenia related DAGs are involved in small molecule biochemistry, cellular function and maintenance, and cellular development. Of the DAGs attributed to small molecule biochemistry and cellular function and maintenance, 13 had functional annotations related to glucose homeostasis, but based on differential abundance, it is unclear how glucose biosynthesis may be affected. DAGs involved in cellular development (e.g. PTEN, TGFBR1 and MAPK1) had lower expression in sarcopenic muscle and suggest decreased growth. The largest number of myosteatosis-related DAGs are involved in cell death and survival, cellular function and maintenance, and cell morphology. Based on the differential abundance, muscle from patients with myosteatosis are expected to have increased apoptosis, disrupted organization of cytoskeleton, and decreased branching of neurites.

thumbnail
Fig 4. Biological functions associated with differentially abundant genes for muscle radiodensity and sarcopenia.

https://doi.org/10.1371/journal.pone.0196235.g004

The most significant canonical pathway based on sarcopenia-related DAGs was the antigen presentation pathway (Fisher’s exact test right-tailed p-value <0.0001), particularly antigen presentation to CD4+ T lymphocyte pathway. Despite lower expression of CIITA, a positive regulator of class II major histocompatibility complex (HLA) gene transcription, sarcopenic muscle had greater expression of HLA-DQA1, HLA-DQA2, HLA-DQB1, HLA-DQB2, and HLA-DQB5. Inflammation is known as an important driver in cancer associated muscle atrophy and expression of MHC class II molecules in our study support inflammation plays a role in sarcopenic muscle. Genes involved in growth pathways, typically decreased in sarcopenia, were also found to be decreased in our dataset. Genes encoding proteins involved in insulin signaling (GSK3B, MAPK1, PRKACB, PRKAR1A, PTEN, RHOQ, SYNJ1) all had lower expression in sarcopenic patients.

Oxidative phosphorylation was found to be the most significant canonical pathway (Fisher’s exact test right-tailed p-value <0.0001) based on myosteatosis-related DAGs. All 18 DAGs associated with oxidative phosphorylation had lower expression in muscles from patients with myosteatosis and encode proteins in complex I, II, IV and V of the electron transport chain. Decreased lipid oxidation likely contributes to the hallmark lipid accumulation seen in myosteatosis. Impaired oxidative phosphorylation is seen in skeletal muscles from patients with diabetes, who are also known to get myosteatosis [33]. Additionally, we identified 5 DAGs associated with lipid metabolism which may also contribute to lipid accumulation in myosteatosis (ADIPOR2 (FC = -1.39), APOL1 (FC = -1.79), APOL2 (FC = -2.10), APOO (FC = -1.90), and PON3 (FC = -1.80)).

Circulating metabolome

In analyzing the metabolome, two complimentary platforms were employed: 1H-NMR spectroscopy and GC-MS. Metabolomic analysis was conducted for the phenotypes of interest, sarcopenia (regardless of myosteatosis status) and myosteatosis (regardless of sarcopenia status). However, this analysis did not result in significant a OPLS-DA model. We then further focused the analysis and compared patients with sarcopenia only (N = 8), myosteatosis only (N = 6), or neither (N = 17). The PCAs for each modality did not demonstrate any significant outliers or any latent data structures (R2X 0.36 for 1H-NMR; R2X 0.17 for GC-MS).

With 1H-NMR spectroscopy, following filtering by t-test and VIP (>1), 17 metabolites were found to distinguish sarcopenia only from no sarcopenia or myosteatosis (Fig 5A). Similarly, a 17 metabolite model could be generated from GC-MS metabolites that discriminated sarcopenia from patients with neither sarcopenia or myosteatosis. Sera from individuals with low muscle radiodensity could be distinguished from patients with neither pathological phenotype by 1H-NMR spectroscopy with 15 metabolites; and by GC-MS with 8 metabolites (Fig 5B).

thumbnail
Fig 5. Metabolomic models that distinguish body composition phenotypes in pancreatic cancer patients.

(A) OPLS-DA scores plots and metabolite lists for NMR and GC-MS metabolites: sarcopenia vs. no sarcopenia or myosteatosis. (B) OPLS-DA scores plots and metabolite lists for NMR and GC-MS metabolites: myosteatosis vs. no sarcopenia or myosteatosis. For the metabolite lists: metabolites in bold are shared in 1H-NMR spectroscopy and GC-MS datasets; metabolites in red have a VIP>1.

https://doi.org/10.1371/journal.pone.0196235.g005

The metabolites associated with sarcopenia are consistent with impaired glucose metabolism as suggested by the simultaneous elevation of the glucogenic amino acids histidine, proline and glutamine; this is also seen in low muscle radiodensity. Pathway analysis suggested that sarcopenia was associated with perturbed alanine, aspartate and glutamate metabolism (FDR 0.0001); histidine metabolism (FDR 0.0002); arginine and proline metabolism (FDR 0.001), as well as lysine biosynthesis (FDR 0.02). Myosteatosis was associated with alanine, aspartate and glutamate metabolism (FDR 0.04) as well as lysine metabolism (FDR 0.03). Unlike with myosteatosis, in sarcopenia, there is evidence of dysregulated urea cycle, perhaps related to protein catabolism. The increased abundance of creatinine, alanine and glutamine (present at high levels in muscle) is consistent with this.

Discussion

Our objective was to define the relationship of sarcopenia and myosteatosis, to determine the association of each of these abnormalities with surgical and survival outcomes, and to identify whether these states have any obvious biological differences. The study was specifically designed to include patients undergoing the same procedure (Whipple procedure), where the complication rate is relatively high, so that the effects of these factors on operative outcomes would be obvious. In addition, to interrogate the underlying biology of sarcopenia and myosteatosis, transcriptomic and metabolomic studies were performed on pancreatic cancer patients.

Sarcopenia is a known feature of pancreatic cancer [1, 11, 12, 14], but there are few data on its prevalence in other periampullary adenocarcinomas. Since sarcopenia in the context of pancreatic cancer is thought to represent pathophysiologic muscle depletion, it is conceivable that recovery from surgery would be impaired, particularly if there is consequent impaired wound healing, depressed immunity and an inability to mobilize after surgery. We did not observe that sarcopenia was associated with an increased complication rate in our series. This was unexpected since several other groups have reported higher complication rates from pancreatic surgery in sarcopenic patients [12, 25, 26, 34]. We did find sarcopenia to be a poor prognostic factor in pancreatic cancer patients and this was consistent with other’s reports [11, 12, 14]. What remains unclear is whether these inferior oncologic outcomes are related to aggressive tumor biology, impaired host health, or both. In addition, it will be important to discriminate pathological sarcopenia from a premorbid ectomorphic body habitus.

Low skeletal muscle radiodensity is related to the accumulation of fat deposits within muscle [8, 9]. Our observation of worse surgical outcomes in patients with low muscle radiodensity suggests that myosteatosis reflects poor patient health. Indeed, myosteatosis occurred more frequently in individuals with more comorbidities, especially diabetes. Low muscle radiodensity was also linked to reduced OS. This was in agreement with reports from other groups [1, 16]

Our findings clearly demonstrate that sarcopenia and myosteatosis are independent abnormalities that represent two separate biological processes. They do not frequently occur co-incidentally; consequent changes in body composition differ; associated clinical factors are not the same; and they have additive effects on survival outcomes. In addition to these two abnormalities (low muscle mass and low muscle radiodensity), there was a third subgroup that had both sarcopenia and myosteatosis. Such individuals with obesity and sarcopenia have been previously described in pancreatic cancer [1, 23, 24, 32] as well as in other malignancies [27]. As demonstrated in our series, this subgroup has a particularly poor prognosis. Interestingly, diet-induced and genetically induced obesity both promote pancreatic tumor progression in mice by encouraging desmoplasia [35]. In that model, desmoplasia is encouraged by the activation of pancreatic stellate cells, which occurs with the recruitment of tumor-associated neutrophils by adipocyte-secreted IL-1β.

To gain an understanding of the biological differences between cancer-associated muscle atrophy and fat infiltration, we evaluated the muscle transcriptome and circulating metabolome. At the level of the muscle, diabetogenic-like alterations in carbohydrate and lipid metabolism were especially apparent with low muscle radiodensity. This was in keeping with the observation that low muscle radiodensity is more common with diabetes in this series as well as others [36, 37]. The diabetes associated with pancreatic cancer is unusual, as there is often an absence of obesity and there is a rapid progression to insulin dependence [38]. Insulin encourages tumor growth in vitro; in clinical series, the need for exogenous insulin therapy was associated with an increased risk of recurrence of colorectal cancer and hepatocellular carcinoma [3941]. Cancer-associated muscle wasting is associated with metabolic impairments, including insulin insensitivity [42]. Our results at the muscle and serum level agree with this.

Several limitations need to be acknowledged in our current analysis. First, this study was a single centre retrospective study using data from stored muscle and serum samples. Second, the patients included in the transcriptomic study were not the same as those included in the metabolomic study. In the future, analysis of biological samples from the same patients would enhance our understanding of metabolic differences between patients with sarcopenia only, myosteatosis only or both occurring together. Third, the sample sizes for our analyses were small. Given the discovery stage of the study and data analysis from multi omics platforms, statistical power analysis was not attempted.

There is intense interest regarding the underlying pathophysiology of cancer-associated sarcopenia and low muscle radiodensity and their impact on oncologic outcomes. Our work demonstrates that these two abnormalities are clinically and biologically distinct. When they do occur coincidentally, the adverse effects on patient prognosis are particularly profound. In future work, it will be important to understand what drives the heterogeneous responses to cancer. One possibility is that both muscle abnormalities are driven by different molecular factors originating from tumor. Alternatively, there may be differences in host susceptibility. Our work contributes to a growing body of evidence linking changes of body composition with clinical outcomes in cancer. Once sufficient information is available to consider therapeutic interventions, it will become important to identify at risk phenotypes, using preoperative CT imaging or biomarkers.

Supporting information

S1 Fig. Sex-related differences in muscularity, muscle radiodensity, and adipose tissue distribution.

https://doi.org/10.1371/journal.pone.0196235.s001

(PDF)

S1 Table. Operative outcomes as a function of sarcopenia and myosteatosis.

Data are expressed as mean ± SD, or as N (%).

https://doi.org/10.1371/journal.pone.0196235.s002

(PDF)

S2 Table. Summary of factors associated with disease-free survival and overall survival on univariate and multivariate analysis.

https://doi.org/10.1371/journal.pone.0196235.s003

(PDF)

S3 Table. Patient characteristics for the transcriptomic and metabolomic datasets.

https://doi.org/10.1371/journal.pone.0196235.s004

(PDF)

S4 Table. List of differentially abundant genes associated with sarcopenia.

https://doi.org/10.1371/journal.pone.0196235.s005

(XLSX)

S5 Table. List of differentially abundant genes associated with myosteatosis.

https://doi.org/10.1371/journal.pone.0196235.s006

(XLSX)

References

  1. 1. Rollins KE, Tewari N, Ackner A, Awwad A, Madhusudan S, Macdonald IA, et al. The impact of sarcopenia and myosteatosis on outcomes of unresectable pancreatic cancer or distal cholangiocarcinoma. Clin Nutr. 2016;35(5):1103–9. pmid:26411749.
  2. 2. Wesseltoft-Rao N, Hjermstad MJ, Ikdahl T, Dajani O, Ulven SM, Iversen PO, et al. Comparing two classifications of cancer cachexia and their association with survival in patients with unresected pancreatic cancer. Nutr Cancer. 2015;67(3):472–80. pmid:25710201.
  3. 3. Fearon K, Strasser F, Anker SD, Bosaeus I, Bruera E, Fainsinger RL, et al. Definition and classification of cancer cachexia: an international consensus. Lancet Oncol. 2011;12(5):489–95. pmid:21296615.
  4. 4. Scarborough JE, Bennett KM, Englum BR, Pappas TN, Lagoo-Deenadayalan SA. The impact of functional dependency on outcomes after complex general and vascular surgery. Ann Surg. 2015;261(3):432–7. pmid:24887971.
  5. 5. Sepehri A, Beggs T, Hassan A, Rigatto C, Shaw-Daigle C, Tangri N, et al. The impact of frailty on outcomes after cardiac surgery: a systematic review. J Thorac Cardiovasc Surg. 2014;148(6):3110–7. pmid:25199821.
  6. 6. Uppal S, Igwe E, Rice LW, Spencer RJ, Rose SL. Frailty index predicts severe complications in gynecologic oncology patients. Gynecol Oncol. 2015;137(1):98–101. pmid:25602715.
  7. 7. Mourtzakis M, Prado CM, Lieffers JR, Reiman T, McCargar LJ, Baracos VE. A practical and precise approach to quantification of body composition in cancer patients using computed tomography images acquired during routine care. Appl Physiol Nutr Metab. 2008;33(5):997–1006. pmid:18923576.
  8. 8. Stephens NA, Skipworth RJ, Macdonald AJ, Greig CA, Ross JA, Fearon KC. Intramyocellular lipid droplets increase with progression of cachexia in cancer patients. J Cachexia Sarcopenia Muscle. 2011;2(2):111–7. pmid:21766057.
  9. 9. Aubrey J, Esfandiari N, Baracos VE, Buteau FA, Frenette J, Putman CT, et al. Measurement of skeletal muscle radiation attenuation and basis of its biological variation. Acta Physiol (Oxf). 2014;210(3):489–97. pmid:24393306.
  10. 10. Prado CM, Baracos VE, McCargar LJ, Reiman T, Mourtzakis M, Tonkin K, et al. Sarcopenia as a determinant of chemotherapy toxicity and time to tumor progression in metastatic breast cancer patients receiving capecitabine treatment. Clin Cancer Res. 2009;15(8):2920–6. pmid:19351764.
  11. 11. Peng P, Hyder O, Firoozmand A, Kneuertz P, Schulick RD, Huang D, et al. Impact of sarcopenia on outcomes following resection of pancreatic adenocarcinoma. J Gastrointest Surg. 2012;16(8):1478–86. pmid:22692586.
  12. 12. Amini N, Spolverato G, Gupta R, Margonis GA, Kim Y, Wagner D, et al. Impact Total Psoas Volume on Short- and Long-Term Outcomes in Patients Undergoing Curative Resection for Pancreatic Adenocarcinoma: a New Tool to Assess Sarcopenia. J Gastrointest Surg. 2015;19(9):1593–602. pmid:25925237.
  13. 13. Okumura S, Kaido T, Hamaguchi Y, Fujimoto Y, Kobayashi A, Iida T, et al. Impact of the preoperative quantity and quality of skeletal muscle on outcomes after resection of extrahepatic biliary malignancies. Surgery. 2016;159(3):821–33. pmid:26603849.
  14. 14. Okumura S, Kaido T, Hamaguchi Y, Fujimoto Y, Masui T, Mizumoto M, et al. Impact of preoperative quality as well as quantity of skeletal muscle on survival after resection of pancreatic cancer. Surgery. 2015;157(6):1088–98. pmid:25799468.
  15. 15. Ninomiya G, Fujii T, Yamada S, Yabusaki N, Suzuki K, Iwata N, et al. Clinical impact of sarcopenia on prognosis in pancreatic ductal adenocarcinoma: A retrospective cohort study. Int J Surg. 2017;39:45–51. pmid:28110029.
  16. 16. van Dijk DP, Bakens MJ, Coolsen MM, Rensen SS, van Dam RM, Bours MJ, et al. Low skeletal muscle radiation attenuation and visceral adiposity are associated with overall survival and surgical site infections in patients with pancreatic cancer. J Cachexia Sarcopenia Muscle. 2017;8(2):317–26. pmid:27897432.
  17. 17. Kumar A, Moynagh MR, Multinu F, Cliby WA, McGree ME, Weaver AL, et al. Muscle composition measured by CT scan is a measurable predictor of overall survival in advanced ovarian cancer. Gynecol Oncol. 2016;142(2):311–6. pmid:27235857.
  18. 18. Kaibori M, Ishizaki M, Iida H, Matsui K, Sakaguchi T, Inoue K, et al. Effect of Intramuscular Adipose Tissue Content on Prognosis in Patients Undergoing Hepatocellular Carcinoma Resection. J Gastrointest Surg. 2015;19(7):1315–23. pmid:25963482.
  19. 19. Sabel MS, Lee J, Cai S, Englesbe MJ, Holcombe S, Wang S. Sarcopenia as a prognostic factor among patients with stage III melanoma. Ann Surg Oncol. 2011;18(13):3579–85. pmid:21822551.
  20. 20. Antoun S, Lanoy E, Iacovelli R, Albiges-Sauvin L, Loriot Y, Merad-Taoufik M, et al. Skeletal muscle density predicts prognosis in patients with metastatic renal cell carcinoma treated with targeted therapies. Cancer. 2013;119(18):3377–84. pmid:23801109.
  21. 21. van Vugt JLA, Buettner S, Levolger S, Coebergh van den Braak RRJ, Suker M, Gaspersz MP, et al. Low skeletal muscle mass is associated with increased hospital expenditure in patients undergoing cancer surgery of the alimentary tract. PLoS One. 2017;12(10):e0186547. pmid:29088245.
  22. 22. Carrara G, Pecorelli N, De Cobelli F, Cristel G, Damascelli A, Beretta L, et al. Preoperative sarcopenia determinants in pancreatic cancer patients. Clin Nutr. 2017;36(6):1649–53. pmid:27789123.
  23. 23. Sandini M, Bernasconi DP, Fior D, Molinelli M, Ippolito D, Nespoli L, et al. A high visceral adipose tissue-to-skeletal muscle ratio as a determinant of major complications after pancreatoduodenectomy for cancer. Nutrition. 2016;32(11–12):1231–7. pmid:27261062.
  24. 24. Pecorelli N, Carrara G, De Cobelli F, Cristel G, Damascelli A, Balzano G, et al. Effect of sarcopenia and visceral obesity on mortality and pancreatic fistula following pancreatic cancer surgery. Br J Surg. 2016;103(4):434–42. pmid:26780231.
  25. 25. Buettner S, Wagner D, Kim Y, Margonis GA, Makary MA, Wilson A, et al. Inclusion of Sarcopenia Outperforms the Modified Frailty Index in Predicting 1-Year Mortality among 1,326 Patients Undergoing Gastrointestinal Surgery for a Malignant Indication. J Am Coll Surg. 2016;222(4):397–407 e2. pmid:26803743.
  26. 26. Joglekar S, Asghar A, Mott SL, Johnson BE, Button AM, Clark E, et al. Sarcopenia is an independent predictor of complications following pancreatectomy for adenocarcinoma. J Surg Oncol. 2015;111(6):771–5. pmid:25556324.
  27. 27. Prado CM, Lieffers JR, McCargar LJ, Reiman T, Sawyer MB, Martin L, et al. Prevalence and clinical implications of sarcopenic obesity in patients with solid tumours of the respiratory and gastrointestinal tracts: a population-based study. Lancet Oncol. 2008;9(7):629–35. pmid:18539529.
  28. 28. Stretch C, Khan S, Asgarian N, Eisner R, Vaisipour S, Damaraju S, et al. Effects of sample size on differential gene expression, rank order and prediction accuracy of a gene signature. PloS one. 2013;8(6):e65380. Epub 2013/06/12. pmid:23755224.
  29. 29. McConnell YJ, Farshidfar F, Weljie AM, Kopciuk KA, Dixon E, Ball CG, et al. Distinguishing Benign from Malignant Pancreatic and Periampullary Lesions Using Combined Use of (1)H-NMR Spectroscopy and Gas Chromatography-Mass Spectrometry. Metabolites. 2017;7(1). pmid:28098776.
  30. 30. Xia J, Wishart DS. Using MetaboAnalyst 3.0 for Comprehensive Metabolomics Data Analysis. Curr Protoc Bioinformatics. 2016;55:14 01–091. pmid:27603023.
  31. 31. Karnovsky A, Weymouth T, Hull T, Tarcea VG, Scardoni G, Laudanna C, et al. Metscape 2 bioinformatics tool for the analysis and visualization of metabolomics and gene expression data. Bioinformatics. 2012;28(3):373–80. pmid:22135418.
  32. 32. Tan BH, Birdsell LA, Martin L, Baracos VE, Fearon KC. Sarcopenia in an overweight or obese patient is an adverse prognostic factor in pancreatic cancer. Clin Cancer Res. 2009;15(22):6973–9. Epub 2009/11/06. pmid:19887488.
  33. 33. <mitochondrial dysfunction in diabetes.pdf>.
  34. 34. Nishida Y, Kato Y, Kudo M, Aizawa H, Okubo S, Takahashi D, et al. Preoperative Sarcopenia Strongly Influences the Risk of Postoperative Pancreatic Fistula Formation After Pancreaticoduodenectomy. J Gastrointest Surg. 2016;20(9):1586–94. pmid:27126054.
  35. 35. Incio J, Liu H, Suboj P, Chin SM, Chen IX, Pinter M, et al. Obesity-Induced Inflammation and Desmoplasia Promote Pancreatic Cancer Progression and Resistance to Chemotherapy. Cancer Discov. 2016;6(8):852–69. pmid:27246539.
  36. 36. Miljkovic I, Zmuda JM. Epidemiology of myosteatosis. Curr Opin Clin Nutr Metab Care. 2010;13(3):260–4. pmid:20179586.
  37. 37. Miljkovic I, Cauley JA, Wang PY, Holton KF, Lee CG, Sheu Y, et al. Abdominal myosteatosis is independently associated with hyperinsulinemia and insulin resistance among older men without diabetes. Obesity (Silver Spring). 2013;21(10):2118–25. pmid:23408772.
  38. 38. Noy A B JP. Clinical review 63: Diabetes and pancreatic cancer: clues to the early diagnosis of pancreatic malignancy. Journal of Clinical Endocrinology and Metabolism. 1994;79(5):1223–31. pmid:7962312
  39. 39. Yang YX, Hennessy S, Lewis JD. Insulin therapy and colorectal cancer risk among type 2 diabetes mellitus patients. Gastroenterology. 2004;127(4):1044–50. pmid:15480982
  40. 40. Komura T, Mizukoshi E, Kita Y, Sakurai M, Takata Y, Arai K, et al. Impact of diabetes on recurrence of hepatocellular carcinoma after surgical treatment in patients with viral hepatitis. Am J Gastroenterol. 2007;102(9):1939–46. pmid:17573788.
  41. 41. Kawamura Y, Ikeda K, Arase Y, Yatsuji H, Sezaki H, Hosaka T, et al. Diabetes mellitus worsens the recurrence rate after potentially curative therapy in patients with hepatocellular carcinoma associated with nonviral hepatitis. J Gastroenterol Hepatol. 2008;23(11):1739–46. pmid:18713301.
  42. 42. Honors MA, Kinzig KP. The role of insulin resistance in the development of muscle wasting during cancer cachexia. J Cachexia Sarcopenia Muscle. 2012;3(1):5–11. pmid:22450024.