Plasma levels of S100B and neurofilament light chain protein in stress
Scientific Reports volume 12, Article number: 8339 (2022) Cite this article
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The pathophysiological changes underlying stress-related mental disorders remain unclear. However, research suggests that alterations in astrocytes and neurons may be involved. This study examined potential peripheral markers of such alterations, including S100B and neurofilament light chain (NF-L). We compared plasma levels of S100B and NF-L in patients with chronic stress-induced exhaustion disorder (SED), patients with major depressive disorder (MDD), and healthy controls. We also investigated whether levels of S100B and NF-L correlated with levels of astrocyte-derived extracellular vesicles (EVs that indicate astrocyte activation or apoptosis) and with symptom severity. Only women had measurable levels of S100B. Women with SED had higher plasma levels of S100B than women with MDD (P < 0.001) and healthy controls (P < 0.001). Self-rated symptoms of cognitive failures were positively correlated with levels of S100B (rs = 0.434, P = 0.005) as were depressive symptoms (rs = 0.319, P < 0.001). Plasma levels of astrocyte-derived EVs were correlated with levels of S100B (rs = 0.464, P < 0.001). Plasma levels of NF-L did not differ between the groups and were not correlated with symptom severity or EV levels. Thus, long-term stress without sufficient recovery and SED may be associated with raised plasma levels of S100B, which may be evidence of pathophysiological changes in astrocytes. The findings also support the hypothesis that plasma levels of S100B are associated with cognitive dysfunction.
Chronic stress increases the risk for psychiatric disorders such as major depressive disorder1 (MDD) and chronic stress-induced exhaustion disorder (SED), also called clinical burnout. SED is caused by long-term stress without sufficient recovery, which leads to mental and physical exhaustion2,3. Stress impacts cognitive processes4, and cognitive symptoms such as impaired memory and attention are common in patients with SED3. SED is included in the Swedish version of the International Classification of Diseases, tenth version (ICD-10)5 (Table 1).
Chronic neuroinflammation may underlie not only MDD6, but also SED. This neuroinflammatory model posits that chronic inflammation affects glial cell function, including the function of astrocytes. The model is in line with research into pathophysiological changes that suggests that stress-related mental disorders are associated with alterations in astrocyte density and morphology in specific regions of the brain7,8,9,10. Potential markers of alterations in astrocytes include astrocyte-derived extracellular vesicles (EVs), which are released from the cell membrane during cell activation and/or apoptosis11. These EVs can be measured in plasma with flow cytometry by labeling them with antibodies for astrocyte-derived proteins such as glial fibrillary acidic protein (GFAP) and aquaporin 4 (AQP4). We recently demonstrated higher levels of astrocyte-derived EVs in the plasma of patients with SED and MDD than in healthy controls. Furthermore, levels of these EVs were significantly higher in patients with SED than patients with MDD, which suggests that different pathophysiological processes may underlie these stress-related mood disorders12.
Affected astrocytes can also be detected in peripheral blood with validated commercial assays, such as assays for S100B. S100B is a cytosolic calcium-binding protein13 synthesized primarily by astrocytes14. Raised levels of S100B are used clinically as an indicator of brain damage15 and may be a marker of neurological disorders16. S100B is hypothesized to be a marker of blood brain barrier integrity17 and has been found in the cerebrospinal fluid (CSF) and serum of patients with mood disorders, including MDD18,19,20,21. Its potential use as a marker of altered astrocytes in Alzheimer disease22 is additional evidence of its link with cognitive dysfunction and possibly with chronic stress and neuroinflammation. To the best of our knowledge, however, no previous studies have investigated S100B in patients with SED.
Although astrocytes are the main source of S100B, this calcium-binding protein can also be synthesized in cells outside the nervous system, such as adipocytes and melanocytes23, and its levels in serum can increase after trauma, such as acute fracture24. Thus, S100B might not always come from changes in astrocytes. It is therefore useful to investigate whether any raised levels of S100B in patients with stress-related mental disorders are correlated with increased levels of astrocyte-derived EVs in those patients.
Another marker that has been explored in people with psychiatric disorders is cytoskeletal protein neurofilament light chain (NF-L). NF-L, which is expressed in central25 and peripheral26 neurons, is released in a variety of physiological processes, such as aging27, and is a potential blood biomarker of neuro-axonal injury28. Increased levels of NF-L have been found in the CSF of people with psychiatric disorders, such as bipolar disorder29, and in plasma in people with treatment-resistant major depression30.
The primary aim of this study was to compare plasma levels of S100B and NF-L in patients with SED, patients with MDD, and healthy controls. The secondary aim was to investigate whether these levels correlated with levels of astrocyte-derived EVs and with symptom severity in these three groups.
From 2014 to 2018, patients at a psychiatric outpatient clinic in Stockholm who fulfilled the diagnostic criteria for SED5 (Table 1) or MDD31 were consecutively invited to participate in the study. Patients were included if they were between the ages of 18 and 65 years, could speak Swedish, and had no somatic or psychiatric disorders other than SED or MDD (including substance use disorders). Blood samples were used to exclude patients with thyroid disease, anemia, vitamin B12 deficiency, and alcohol overconsumption. Patients were excluded if they had a history of head trauma with loss of consciousness. A physician conducted a clinical examination. The Swedish version of the Mini International Neuropsychiatric Interview (M.I.N.I.) 6.0.032,33 was used to diagnose mental disorders other than SED. M.I.N.I. was administered by a clinic physician, one of the researchers, or a psychologist familiar with the instrument. Patients with SED who also fulfilled the criteria for MDD were included in the SED group if the physician judged that the MDD was secondary to the SED (n = 2). A total of 31 patients with SED and 13 with MDD were recruited from this clinic. To increase the number of patients with MDD in the study, patients at an additional psychiatric outpatient clinic who fulfilled the ICD-10 criteria for MDD were also invited to participate, resulting in a total of 31 patients with MDD in the study (Supplemental Fig. 1). To minimize the possibility that patients with SED had experienced stress symptoms for different lengths of time prior to blood sampling, patients were only included if they had been diagnosed less than three months before the start of the study.
The healthy controls in the study came from a group recruited in 2009 to serve as controls in future studies. A total of 1146 adult permanent residents of Sweden age 55 and below, were randomly selected by Statistics Sweden, Sweden's official government statistics agency. Those who agreed to participate were contacted by phone for a first screening. If they described themselves as healthy, they were invited to a medical investigation that included a clinical and a psychological examination performed by a physician. People with current or previous diagnoses of SED or other mental disorders, cancer, endocrine disorders, or cardiovascular disorders were excluded, resulting in 165 healthy controls. The current study included 61 of these healthy controls, matched for sex and age with patients with SED or MDD.
The regional Ethical Review Board in Stockholm, Sweden (http://www.epn.se/en/start/), approved the study (Dnr. 2008/0061-31, 2014/585-31/1, 2016/1239-32, 2017/2088-32, 2021-00346 and 2021-05515-02). The study was conducted in keeping with the principles outlined in the Declaration of Helsinki. The researchers provided potential participants with oral and written information about the study and obtained written informed consent prior to inclusion.
Prior to linkage and analysis, data were pseudonymized.
To quantify the severity of depressive symptoms, we used the self-assessment version of the Montgomery Åsberg Depression Rating Scale (MADRS-S)34. MADRS-S includes nine items about sadness, inner tension, sleep, appetite, concentration, lassitude, ability to feel, pessimistic thoughts, and suicidal thoughts. Overall scores range from 0 to 54 points. To measure the experience of cognitive failures in daily life, we used the 25-item Cognitive Failures Questionnaire (CFQ)35. The CFQ includes 25 questions about failures of perception, memory, and motor function. Overall scores range from 0 to 100 points. All three groups (patients with SED, patients with MDD, and healthy controls) completed MADRS-S. The CFQ was completed by patients with SED and patients with MDD but not healthy controls.
Blood samples were drawn at inclusion from an antecubital vein after at least 15 min of rest. They were drawn in the morning, and the patients were asked to fast for 12 h prior to sampling. They were also asked to avoid physical activity prior to blood sampling. The samples were drawn into citrated tubes and centrifuged within 1 h at room temperature for 20 min at 2000×g. After centrifugation, the platelet poor plasma was stored at − 80 °C. The blood sampling routines for the healthy controls were similar to the routines for the patients, and the samples from all three groups were analyzed in the same batch. Because the samples from controls were collected in 2009, these samples had been stored at least 5 years longer than the samples from the patients at the time of analysis.
A commercially available enzyme-linked immunosorbent assay (ELISA) was used to measure S100B (Abcam, Cambridge, United Kingdom) and NF-L (Nordicbiosite, Stockholm, Sweden) in plasma. The analyses were conducted in accordance with the manufacturer's protocols. The analyses of S100B could not detect levels < 0.011 ng/ml in our samples.
We used flow cytometry to measure astrocyte-derived EVs. The method is described in greater detail in a previous publication12. Briefly, platelet poor plasma samples were thawed and centrifuged at 2000×g for 20 min at room temperature (RT). The upper supernatant was then high-speed centrifuged for 45 min at RT (at 20,800×g) to obtain an EV-enriched pellet. To analyze astrocyte-derived EVs, 20 µl of the pellet were labeled with anti-Aquaporin-4 Dylight 488 (Abcam, Cambridge, UK) and anti-GFAP Dylight 755 (Abcam, Cambridge, UK) and incubated in darkness for 20 min. The EVs were measured on a Beckman Gallios instrument (Beckman coulter, Brea, CA, USA). The EVs were defined by size (forward scatter) (~ 0.3–0.9 µm in diameter) and by co-expression of AQP4 and GFAP.
To compare clinical and demographic characteristics, we used unpaired t-tests or the Mann–Whitney test to compare two groups and the Kruskal–Wallis test with the Bonferroni correction to compare three groups. The Fisher's exact test was used to compare antidepressant medication and selective serotonin reuptake inhibitors or serotonin and norepinephrine reuptake inhibitors (SSRIs or SNRIs) in patients with SED and patients with MDD. The Kruskal–Wallis test with the Bonferroni correction was used to compare levels of S100B and NF-L in the three groups (patients with SED, patients with MDD, and healthy controls).
Because of the non-normal distribution of the data, the two-way Spearman's correlation test was used to analyze correlations between plasma levels of two variables, S100B and NF-L, and astrocyte-derived EVs, symptom severity scale scores and age. The results are presented as Spearman coefficients (rs). The Mann–Whitney test was used to compare plasma levels of S100B and NF-L in women and men.
For all statistical tests, P < 0.05 was considered statistically significant. We did not adjust for multiple testing.
A total of 31 patients with SED, 31 patients with MDD, and 61 healthy controls were included in the study. The groups did not differ significantly by age, sex, or BMI (Table 2). Self-reported severity of depressive symptoms (MADRS-S) reflected clinical expectations. That is, patients with MDD had the highest level of depressive symptoms, significantly higher than healthy controls (P < 0.001), but not significantly higher than patients with SED (P = 0.407) (Table 2). Self-reported severity of cognitive symptoms (CFQ) also reflected clinical expectations: patients with SED reported significantly more severe cognitive symptoms than patients with MDD (P = 0.025).
Plasma levels of S100B were lower than the ELISA assay could measure (< 0.011 ng/ml) in 61 healthy controls (100% of healthy controls), 27 of 31 patients with MDD (87% of patients with MDD), and 17 of 31 patients with SED (55% of patients with SED). Only women had measurable levels of S100B (14 of 27 women with SED and 4 of 26 with MDD). The non-parametric tests showed that patients with SED had significantly higher plasma levels of S100B than patients with MDD (P < 0.001) and healthy controls (P < 0.001), but there was no significant difference between plasma levels of S100B in patients with MDD and healthy controls (P = 0.406) (Fig. 1). In patients with SED, mean levels of S100B were 0.388 ng/ml, in patients with MDD, 0.037 ng/ml, and in healthy controls, 0.011 ng/ml.
Plasma levels of S100B measured by enzyme-linked immunosorbent assay (ELISA). Gray dots represent women and black dots represent men.
Levels of NF-L did not differ significantly in the groups (P = 0.104) or by sex (P = 0.391) (Supplementary Fig. 2).
Healthy controls did not provide information about symptoms of cognitive failure (did not complete the CFQ) and were therefore not included in the analysis. When the patient groups were combined, self-rated symptoms of cognitive failures were significantly positively correlated with levels of S100B (rs = 0.434, P = 0.005) (Fig. 2). This finding was observed only in women; no men had measurable levels of S100B.
Correlation between levels of S100B and severity of self-rated symptoms of cognitive failure measured with the Cognitive Failure Questionnaire (CFQ) and severity of self-rated depressive symptoms measured with the self-assessment version of the Montgomery Åsberg Depression Rating Scale (MADRS-S). Red filled circle = patients with stress-induced exhaustion disorder; Blue filled triangle = patients with major depressive disorder and black filled diamond = healthy controls.
All groups provided information about depressive symptoms (MADRS-S), and therefore all groups were included in the analysis. Self-rated depression severity was significantly positively correlated with levels of S100B when all three groups were combined (rs = 0.319, P < 0.001) (Fig. 2).
Neither symptoms of cognitive failure (rs = − 0.213, P = 0.187) nor of depression (rs = 0.169, P = 0.080) were correlated with levels of NF-L in either men or women.
Age was not correlated with plasma levels of S100B (rs = 0.050, P = 0.586) or NF-L (rs = 0.077, P = 0.398).
In a previous analysis of the blood samples from this study population12, our group observed significantly higher plasma levels of astrocyte-derived EVs in the patients with SED and in the patients with MDD than in the healthy controls. In the current study, levels of S100B were positively correlated with levels of astrocyte-derived EVs when comparing all groups together rs = 0.464, P < 0.001). Levels of S100B were positively correlated with levels of astrocyte-derived EVs in patients with SED (rs = 0.444, P = 0.012) but not in patients with MDD (rs = − 0.162, P = 0.383). Since healthy controls did not have measurable levels of S100B correlation was not estimated (Fig. 3). No correlation was observed between levels of NF-L and levels of astrocyte-derived EVs when all groups were analyzed together (rs = 0.096, P = 0.291).
Rank correlation between plasma levels of S100B and astrocyte-derived extracellular vesicles (EVs) in patients with stress-induced exhaustion disorder and patients with major depressive disorder. Red filled circle = patients with stress-induced exhaustion disorder, blue filled triangle = patients with major depressive disorder. Healthy controls are not shown because levels of S100B were not measurable in this group.
In this study, we observed that patients with SED had significantly higher plasma levels of S100B than patients with MDD and healthy controls. Self-rated symptoms of cognitive failures were significantly positively correlated with levels of S100B, as were depressive symptoms. Plasma levels of astrocyte-derived EVs were significantly correlated with levels of S100B. Plasma levels of NF-L did not differ between the groups and were not correlated with symptom severity or levels of astrocyte-derived EVs.
Research into S100B and chronic stress is in its infancy. Elevated plasma levels of S100B have been observed in rats after restraint stress36. However, this is the first investigation into levels of S100B in patients with fatigue and cognitive symptoms due to chronic stress without adequate recovery (that is, in patients with SED). Stress is a risk factor for psychiatric disorders, including MDD37, and elevated levels of S100B have previously been found in serum and cerebral spinal fluid in people with mood disorders, including MDD21,38.
The mean level of S100B in patients with SED in the current study (0.388 ng/ml) exceeded a suggested reference level used to identify pathological CT scans in hospital emergency settings after traumatic brain injury (≥ 0.105 ng/ml)15. However, caution must be used in interpreting the meaning of this difference, as the previous study used a different method to measure serum levels of S100B (the Elecys® S100 assay on a Cobas e411 instrument, both from Roche Diagnostics, Germany). In the present study, both the mean level of S100B in healthy controls and the mean level in patients with MDD were under the reference level used to identify traumatic brain injury in the earlier study.
We did not observe significantly higher levels of S100B in the peripheral blood of patients with MDD than in healthy controls. Other studies have observed such a difference38. The discrepancy in findings may be explained by the small sample size in our study and the method we used to measure S100B, which cannot detect levels of < 0.011 ng/ml. These methodological limitations may also lie behind our finding of significantly higher plasma levels of S100B in patients with SED than patients with MDD. On the other hand, patients with chronic stress without adequate recovery might experience different pathophysiological processes than patients with MDD. This discrepancy would only be apparent when the two groups are analyzed separately, as in the present study.
In our study, regardless of diagnosis, only women had measurable levels of S100B. This finding supports the results of previous research on patients with MDD that suggest that gender might affect levels of S100B39. Gender may also affect neurobiological cerebral vulnerability to stress. According to research on patients with SED, abnormalities such as cortical thinning and amygdala enlargement were more pronounced in women than men40. However, our findings should be interpreted with caution because of the small size of our study population and the limited number of patients with elevated levels of S100B.
In our study, intake of antidepressant medication did not differ significantly between patients with SED and patients with MDD. Previous research in an animal model has shown that SSRIs may prevent psychosocial stress from reducing the number of astrocytes in the hippocampus41. This finding is consistent with observations that antidepressant medication can reduce levels of S100B in serum18,42. It is thus possible that the patients in the current study would have had higher levels of S100B if they had not been taking antidepressants.
Like our study, several previous studies have found that levels of S100B are associated with cognitive outcomes39,43,44,45. In most prior studies, higher levels are linked with negative cognitive outcomes39,44,45, such as cognitive impairment in people with small vessel disease45. An exception to this pattern was a study of cognitive function in people with type 2 diabetes, which found that higher levels of S100B were associated with better cognitive function43.
In the present study, we observed a positive correlation between S100B and astrocyte-derived EVs that is mainly driven by the patients with SED (primarily two individuals). The clinical implication is somewhat unclear, and larger studies are needed to understand the mechanism behind these findings. However, since both S100B and EVs that are positive for both AQP4 and GFAP derive from astrocytes, astrocytes could play an important role in the disease mechanism in patients with SED. Moreover, flow cytometric assays used to measure EVs have the advantage of measuring specific populations (i.e., vesicles only) and simultaneously enable further phenotyping of vesicles, that is, the use of several antibodies at once. Based on the results presented here and previously by our group, flow cytometry also seems to be more sensitive than ELISA in analyzing soluble proteins, such as CD40L46 and HMGB147.
There are several limitations in this study. The healthy controls were recruited several years before the patients. However, the blood sampling procedure was similar for patients and healthy controls, and blood samples were analyzed in the same batch. Storage time might have influenced the levels of S100B, NF-L, and EVs. Furthermore, although S100B comes primarily from astrocytes, it can be derived from cells outside the nervous system. It is therefore possible that the elevated levels measured in this study originate from cell types other than astrocytes. However, since levels of S100B and astrocyte-derived EVs were significantly positively correlated, this seems unlikely. Moreover, the ELISA assay used in the present study is not sensitive enough to measure levels of S100B in plasma below 0.011 ng/ml. We do not know how the results would have been affected if we had a more sensitive measure of this protein. We did not observe any differences in NF-L levels between the groups, but these NF-L assay results must be interpreted with caution. Although blood sampling and pre-analytical handling were similar in the three groups, and all samples were analyzed simultaneously, ELISA is of limited sensitivity for measuring NF-L in blood48. Moreover, a positive control was not available to show whether the assay worked sufficiently beside the standard curve that was in the kit.
The number of participants was relatively small. The study population included fewer men (n = 18) than women (n = 105), which reflects sex differences in the proportion of people diagnosed with stress-related mental disorders49. However, the small number of men in the study population meant that it was not possible to determine whether the sex differences we observed, including the raised levels of S100B in women only, were due to chance/sample size or to real sex-related differences.
Another limitation is that we did not adjust for multiple testing, which increases the risk of rejecting a true null hypothesis.
The results of this study support the findings of previous studies that there might be pathophysiological differences behind SED and MDD and that plasma levels of S100B may be associated with cognitive dysfunction: in the current study, with self-reported symptoms of cognitive failure. We also observed a positive correlation between plasma levels of S100B and plasma levels of astrocyte-derived EVs. This suggests that, like the EVs, elevated levels of S100B derive from astrocytes and may be evidence of pathophysiological changes in these brain cells. Future studies could compare levels of S100B in plasma and in CSF to investigate the potential contribution of blood–brain barrier disruption to stress-related mental disorders. The findings of the current study do not provide evidence that neurons are affected in stress-related disorders, as levels of N-FL were similar in patients with SED, patients with MDD, and healthy controls.
The dataset generated and analyzed during the study is available from the corresponding author on reasonable request.
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This work was funded by Grants from Skandia; Söderström Königska Foundation; the Foundation for Rehabilitation and Medical Research, Karolinska Institutet; and Region Stockholm, including the Department of Rehabilitation Medicine at Danderyd University Hospital and the Network Health Care (Nätverkssjukvård) project. The authors thank scientific editor Kimberly Kane, medical writer certified, Region Stockholm Academic Primary Health Care Centre, for help with the language used in the manuscript, and statistician Frederik Johansson, Danderyd Hospital Medical Library, for help with statistical calculations.
Open access funding provided by Karolinska Institute. The funders of the study played no role in study design, data collection, data analysis, data interpretation, statistics, or writing the article. The corresponding author had full access to all data in the study and was responsible for the decision to submit the manuscript for publication.
Academic Primary Health Care Centre, Region Stockholm, Solnavägen 1E, Box 45436, 104 31, Stockholm, Sweden
Johanna Wallensten
Department of Clinical Sciences, Karolinska Institutet, Danderyd University Hospital, 18288, Stockholm, Sweden
Johanna Wallensten, Marie Åsberg, Kristian Borg, Aniella Beser & Alexander Wilczek
Department of Medical Sciences, Uppsala University, 75185, Uppsala, Sweden
Fariborz Mobarrez
Division of Family Medicine and Primary Health Care, Department of Neurobiology, Care Sciences and Society, Karolinska Institutet, 17177, Stockholm, Sweden
Anna Nager
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J.W., A.N., M.Å., K.B., F.M., and A.W. conceived and designed the study. J.W., A.B., and A.W. acquired the data. J.W., A.N., F.M., and A.B. analyzed and interpreted the data. J.W., A.N., and F.M. drafted the manuscript. All authors revised the manuscript for important intellectual content, approved the final version for publication, and agree to be accountable for their own contributions and ensure that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved.
Correspondence to Johanna Wallensten.
The authors declare no competing interests.
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Wallensten, J., Mobarrez, F., Åsberg, M. et al. Plasma levels of S100B and neurofilament light chain protein in stress-related mental disorders. Sci Rep 12, 8339 (2022). https://doi.org/10.1038/s41598-022-12287-1
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Received: 25 February 2022
Accepted: 09 May 2022
Published: 18 May 2022
DOI: https://doi.org/10.1038/s41598-022-12287-1
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