In 2021, the global diabetic population reached 521 million, with type 2 diabetes mellitus (T2DM) accounting for 96.0% of cases. Remarkably, approximately one-quarter of these cases were from China, ranking it as the country with the highest number of patients with T2DM worldwide.1,2 Diabetic Peripheral Neuropathy (DPN), a common microvascular complication of T2DM, affects approximately 50% of patients with T2DM, leading to chronic pain, foot ulcers, amputation, depression and sleep disorders, significantly reducing the quality of life.3,4 Although the pathogenesis of DPN involves multiple risk factors and cascades of pathophysiological changes, including reduced expression of cell Na+-K+-ATPase, endoplasmic reticulum stress, mitochondrial dysfunction, DNA damage, enhanced inflammatory signalling and increased levels of inflammatory cytokines, it remains incompletely understood.5 Therefore, exploring potential risk factors for DPN in T2DM is warranted and may aid in the development of preventative or ameliorative strategies.
MicroRNA (miRNA), endogenous non-coding small RNAs, play a crucial role in regulating gene expression by inhibiting the translation of target mRNAs or directly degrading them. Increasing evidence suggests their involvement in diabetes and its complications, particularly diabetic neuropathies.6
miR-155 regulates over 241 genes, playing a role in various physiological and pathological processes, including haematopoietic lineage differentiation, inflammatory responses, immunity, cancer, cardiovascular diseases and notably diabetes.7–9
In T2DM, reduced levels of miR-155 across various mediums, including plasma, peripheral blood cells, platelets and urine, have been consistently observed across different ethnicities.8 This reduction may lead to the continuous overactivation of the Renin-Angiotensin-Aldosterone System (RAAS), resulting in harmful effects such as pro-oxidation, fibrosis, proliferation and inflammation.10,11 However, miR-155 can inhibit key factors like Basic Leucine Zipper Transcription Factor 1 (BACH1) and Suppressor of Cytokine Signalling 1 (SOCS1), thereby synergistically enhancing cellular protective, antioxidative, anti-apoptotic and anti-inflammatory pathways. Additionally, it promotes the formation of a protective cellular environment, which is compromised when miR-155 is downregulated.7,12 Concurrently, decreased levels of miR-155 have been observed in the leukocytes, sural nerves and the skin of the lower legs of patients with DPN, particularly those with painful neuropathy.13 Furthermore, microRNA-155 mimics have been demonstrated to improve nerve conduction velocity in DPN mice and inhibit pro-inflammatory genes induced by high glucose levels.14 These findings suggest the involvement of miR-155 in the development and progression of DPN.
miR-146a, pivotal in inhibiting inflammation escalation and maintaining immune homeostasis,15 also shows reduced levels in patients with T2DM across different regions.16–18 Notably, acute strength training has been shown to ameliorate this decrease, exhibiting a negative correlation with insulin resistance. This correlation could be attributed to its role in suppressing inflammatory responses.19 Studies on DPN in mice have demonstrated that elevated blood glucose levels lead to decreased miR-146a expression, resulting in increased levels of TRAF6 and IRAK1 in dorsal root ganglion (DRG) neurons. miR-146a mimetics have been found to significantly inhibit neuronal death induced by high blood glucose levels20 and exhibit protective effects against diabetic neuropathy and DPN. Thus, the therapeutic effects of miR-146a mimetics are speculated to stem from their ability to inhibit pro-inflammatory genes induced by high glucose levels.21,22 Furthermore, in patients with DPN, particularly those with painful neuropathies, miR-146a levels are significantly diminished in leukocytes, the sciatic nerve and the skin of the lower leg, underscoring its critical role in DPN pathogenesis.13
However, while previous studies on the relationship between miR-155, miR-146a and DPN have primarily been conducted in animal models, clinical research on the correlation between peripheral blood miR-155 and miR-146a expression and DPN remains limited. Therefore, our study aims to investigate the changes in the expression levels of miR-155 and miR-146a in the peripheral blood of patients with DPN and their potential as useful biomarkers for the diagnosis and treatment of DPN.
Materials and MethodsStudy ParticipantsClinical data were collected from 100 hospitalised patients with T2DM at the Endocrinology Department of the First Affiliated Hospital of Anhui Medical University between September 2020 and May 2021. Patients were categorised into two groups based on the presence of DPN: 51 patients without DPN comprised the T2DM group (n = 51) and 49 patients with DPN formed the DPN group (n = 49). Within the DPN group, patients were further divided into subgroups: those experiencing symptoms such as numbness, burning or stabbing pain in the extremities were classified into the painful neuropathy subgroup (n = 16), while those without such symptoms were categorised into the non-painful neuropathy subgroup (n = 33). Additionally, 50 healthy individuals were selected as the Normal Control (NC) group (n = 50). The diagnosis of T2DM followed the standards set by the American Diabetes Association.23 DPN diagnosis followed the guidelines recommended by the American Diabetes Association and the Toronto Diabetic Neuropathy Consensus, considering the presence of clinical symptoms or signs and abnormalities in nerve conduction studies (NCS).24,25 Exclusion criteria included patients with type 1 diabetes; gestational diabetes; other forms of diabetes; neuropathies from other conditions, such as cervical and lumbar spine diseases, Guillain-Barré syndrome, epilepsy and severe vascular diseases; severe comorbidities like progressive malignant tumours, acute infections, severe renal impairment, or heart failure; and medications affecting platelets (eg, aspirin) or cardiovascular or haematological diseases that could affect platelet-related indices. This study was approved by the Medical Ethics Committee of the First Affiliated Hospital of Anhui Medical University (Ethics batch number: CDEC000004982), and informed consent was obtained from all participants before commencement.
Detection of Clinical IndicatorsTrained staff collected clinical data, including age, sex, body mass index (BMI), systolic/diastolic blood pressure (SBP/DBP), diabetes duration, hypertension status, current smoking status, statin use and antidiabetic treatments, from all participants. Participants fasted for at least 10 hours before blood samples were collected from the elbow or forearm veins the next morning. Venous blood was drawn to measure Fasting plasma glucose (FPG), Fasting C-peptide (FCP), renal function, liver function, blood lipid composition, glycosylated haemoglobin A1c (HbA1c) and other indicators. Nerve conduction studies, including motor nerve conduction velocity (MCV) and sensory nerve conduction velocity (SCV) of the peroneal nerve, were performed using an electromyography-evoked potential system.
Quantitative Real-Time Polymerase Chain Reaction (qRT-PCR)qRT-PCR was used to detect miRNA expression in blood samples from all participants. Total RNA was extracted using TRIzol reagent (Thermo Fisher, Shanghai, China), and cDNA was synthesised using the PrimeScript RT kit (TaKaRa, Beijing, China). Micro RNA was analysed using SYBR™ Green PCR Master Mix (Servicebio, Wuhan, China). The relative levels were calculated using the 2−ΔΔCt method, with β-actin as the internal reference. Primers were used as follows:
miR-155: forward primer, 5’-CAAGGTGGTTAATGCTAATCGTGATA-3’ and reverse primer, 5’-GTGCAGGGTCCGAGGT-3’;
miR-146a: forward primer, 5’-TAATCGTGTGAGAACTGAATTCCA-3’ and reverse primer, 5’-TATGGTTTTGACGACTGTGTGAT-3’;
U6: forward primer, 5’-GCT TCG GCA CAT ATA CTA AAA-3’ and reverse primer, 5’-CGC TTC ACG AAT TTG CCT GTCAT-3’.
Statistical AnalysisData were analysed using SPSS software version 26.0. For qRT-PCR results, the standard curve method was employed for quantification. Quantitative data conforming to normal distribution were expressed as mean ± standard deviation (±s), and comparisons among multiple groups were performed using analysis of variance (ANOVA). Non-normally distributed quantitative data were represented by the median [M (P25, P75)], with comparisons between two groups assessed using the Wilcoxon rank-sum test. Moreover, comparisons among three groups were performed using the Kruskal–Wallis H-test. Categorical data were presented as frequencies or percentages (%) and compared using the Chi-square test. Spearman correlation analysis was used to assess the relationship between miR-155 and miR-146a expression levels and clinical data. Logistic regression analysis identified risk factors for the DPN group. Furthermore, diagnostic sensitivity and specificity of plasma miR-155 and miR-146a for DPN were evaluated using the area under the ROC curve (AUC). A P value < 0.05 was considered statistically significant.
ResultsClinical Parameter Comparison Among the Three GroupsThere were no statistically significant differences in gender, age, smoking history, alcohol history, family history of diabetes, BMI, TBIL, AST, ALT, TC, TG, LDL-C, HDL-C, VLDL and FCP between the NC, T2DM and DPN groups (P > 0.05) (Table 1). However, patients in the T2DM group exhibited significantly higher levels of FPG and HbA1c compared to the NC group. Additionally, both miR-155 and miR-146a expression levels in peripheral blood were significantly decreased (P < 0.05). Patients in the DPN group exhibited higher levels of FPG, HbA1c, BUN and Scr, along with a significant reduction in the expression levels of miR-155 and miR-146a (P < 0.05) (Table 1). Compared to the T2DM group, patients in the DPN group had a significantly longer duration of diabetes (P=0.002), higher levels of FPG, HbA1c, BUN and Scr, and lower SCV and MCV (P < 0.05). Moreover, the expression levels of miR-155 and miR-146a in peripheral blood were significantly decreased in the DPN group compared to the T2DM group (P < 0.05) (Table 1).
Table 1 Comparisons of Clinical Parameters Among the NC, T2DM and DPN Groups [n/M(P25, P75)]
Comparison of Clinical Parameters Among DPN SubgroupsThe analysis revealed a significantly lower TBIL level in the painful neuropathy subgroup compared to the non-painful neuropathy subgroup (10.32±4.10 vs 13.74±4.55, P = 0.014). However, there were no significant differences between the two subgroups in terms of AST, ALT, TC, TG, LDL-C, HDL-C, VLDL, FCP, FPG, HbA1c, BUN, Scr, SCV, MCV, miR-155 and miR-146a (P > 0.05) (Table 2). Both the painful and non-painful neuropathy subgroups exhibited significantly reduced expression levels of miR-155 and miR-146a compared to the NC group (P<0.001). Compared to the T2DM group, the non-painful neuropathy subgroup exhibited a significant reduction in miR-146a expression levels (P < 0.001), whereas the painful neuropathy subgroup did not demonstrate a significant difference. Furthermore, no significant differences were observed in miR-155 expression levels between the painful and non-painful neuropathy subgroups (Table 2).
Table 2 Comparison of Clinical Examinations, Biochemical Indicators and miRNA Among the Subgroups of DPN )/M(P25, P75)]
Correlation Analysis Between Peripheral Blood miR-155 and miR-146a and Clinical Indicators in Different GroupsSpearman correlation analysis revealed significant associations. In the NC group, miR-155 showed a negative correlation with Scr (rs = −0.305, P = 0.031), and miR-146a was negatively correlated with alanine aminotransferase (ALT) (rs = −0.303, P = 0.033). In the T2DM group, miR-146a was negatively correlated with smoking history (rs = −0.288, P = 0.040), while in the DPN group, miR-155 was positively correlated with FPG (rs = 0.362, P = 0.011). Additionally, miR-146a displayed a negative correlation with ALT (rs = −0.402, P = 0.004) and a positive correlation with AST (rs = 0.362, P = 0.346) (Table 3).
Table 3 Correlation Analysis of Peripheral Blood miR-155, miR-146a and Clinical Indexes in the DPN, T2DM and NC Groups
Correlation Analysis Between Peripheral Blood miR-155, miR-146a and Clinical Indicators in Painful Neuropathy Subgroups and Non-Painful Neuropathy SubgroupsSpearman correlation analysis in DPN subgroups revealed significant correlations. In the painful neuropathy subgroup, miR-155 displayed a significant negative correlation with BMI (rs = −0.749, P = 0.001). In the non-painful neuropathy subgroup, miR-155 was positively correlated with FPG (rs = 0.444, P = 0.010), while miR-146a exhibited a positive correlation with FPG (rs = 0.376, P = 0.031) and negative correlations with BMI (rs = −0.368, P = 0.035), aspartate aminotransferase (AST) (rs = −0.470, P = 0.006) and ALT (rs = −0.437, P = 0.011) (Table 4).
Table 4 Correlation Analysis Between Peripheral Blood miR-155, miR-146a and Clinical Indexes in DPN Subgroups
Logistic Regression Analysis of Factors Affecting Different Clinical OutcomesLogistic regression analysis for DPN risk factors: Using DPN as the dependent variable and disease duration, age, BMI, ALT, AST, FPG, HbA1c, BUN, Scr, miR-155, and miR-146a as independent variables, the analysis identified increased disease duration, elevated levels of FPG and Scr as independent risk factors for DPN, while higher levels of miR-155 and miR-146a appeared to be potential protective factors against the onset of DPN (P < 0.05) (Table 5).
Table 5 Logistic Regression Analysis of Risk Factors of Clinical Outcome
However, in the subgroups of DPN, with the occurrence of painful neuropathy as the dependent variable and the same set of variables as independent factors, only an increase in BUN levels was identified as an independent risk factor for developing painful neuropathy. Other variables including miR-155 and miR-146a did not show a significant statistical relevance (P > 0.05) (Table 5).
The Diagnostic Value of miR155 and miR-146a in Peripheral Blood for DPN in T2DMROC curve analysis for DPN diagnosis using miR-155 and miR-146a: The ROC curve analysis was employed to evaluate the sensitivity and specificity of miR-155 and miR-146a in peripheral blood for diagnosing DPN. The analysis indicated that low expression levels of miR-155 had an AUC of 0.641 (95% Confidence Interval (CI): 0.532–0.750, sensitivity: 91.8%, specificity: 37.3%), while low levels of miR-146a displayed an AUC of 0.722 (sensitivity, 57.1%; specificity, 84.3%). Furthermore, the combined diagnostic value of both miR-155 and miR-146a yielded a higher AUC of 0.775, sensitivity of 83.7% and specificity of 60.8%. The AUC for the duration of the disease as a diagnostic factor for DPN was 0.681, with a sensitivity of 79.6% and specificity of 49%. The AUC for combinations of miR-155 with disease duration, miR-146a with disease duration, and all three combined were 0.720, 0.788, and 0.818, respectively. These findings suggest that a combination of multiple indicators, such as miR-155, miR-146a, and disease duration, provides a superior diagnostic value for DPN compared to individual factors (P < 0.05) (Table 6, Figures 1 and 2).
Table 6 Predictive Value of ROC Curve of miR-155, miR-146a, Course of the Disease and All the Indexes in the Peripheral Blood
Figure 1 The biomarker potential of circulating miR-155 and miR-146a for distinguishing between DPN and T2DM was assessed through ROC curve analysis. Individually, circulating miR-155 showed a sensitivity of 91.8%, specificity of 37.3%, and AUC of 0.641(95% CI 0.532–0.750, P<0.05), while miR-146a had a sensitivity of 57.1%, specificity of 84.3%, and AUC of 0.722(95% CI 0.621–0.824, P<0.001).
Figure 2 The Diagnostic Value of Combining Multiple Indicators for DPN;The AUC for the combined diagnostic use of miR-155 and miR-146a specific to DPN diagnosis reached 0.775 (95% CI 0.685–0.866, P < 0.001), with a sensitivity of 83.7% and a specificity of 60.8%. The AUC of disease duration specific to DPN diagnosis reached 0.681(95% CI 0.578–0.785, P= 0.002), with a sensitivity of 79.6% and a specificity of 49%.The AUC for the combined use of miR-155 with disease duration, miR-146a with disease duration, and all three factors combined were 0.720(95% CI 0.621–0.819, P<0.001), 0.788(95% CI 0.695–0.881, P<0.001), and 0.818(95% CI 0.733–0.903, P<0.001), respectively.
DiscussionThe findings of our study corroborate previous research, demonstrating significantly lower expression levels of miR-155 and miR-146a in the peripheral blood of patients with T2DM compared to individuals with normal glucose tolerance. This observation is consistent across various regions and ethnic groups.8,16–18 Furthermore, the decline in miR-155 and miR-146a expression is more pronounced in patients with DPN than those with T2DM alone. Advanced multivariate logistic regression analysis indicates that elevated levels of miR-155 and miR-146a may act as protective factors against the development of DPN. ROC curve analysis further highlights the discriminative ability of miR-155 and miR-146a in distinguishing between T2DM and DPN, with their combined diagnostic value for DPN being particularly enhanced when considering the duration of diabetes. Therefore, the decrease in miR-155 and miR-146a not only serves as a significant risk factor for the onset of DPN but also emerges as potential biomarkers for the assessment, treatment and prognosis of DPN. To the best of our knowledge, this is the first study to explore the relationship between changes in peripheral blood miR-155 and miR-146a expression and the incidence of DPN in patients with T2DM.
Our study also reveals a negative correlation between miR-146a levels and smoking history in patients with T2DM. Additionally, increased disease duration, FPG and Scr levels emerge as independent risk factors for DPN, while elevated BUN levels serve as independent risk factors for the development of painful neuropathy. These findings are consistent with Papanas N et al’s study,26 further reinforcing our research conclusions. Notably, our study highlights the independent association of Scr levels with an increased risk of DPN, whereas higher BUN levels were specifically associated with an elevated risk of developing painful neuropathic symptoms. This underscores the detrimental impact of prolonged hyperglycemia not only on DPN but also on diabetic nephropathy, another significant microvascular complication. Furthermore, our conclusions are supported by a multicenter cross-sectional study from Beijing,27 wherein chronic kidney disease was identified as a risk factor for DPN, reflecting the shared pathological pathways between these conditions.
Further analysis within DPN subgroups revealed that patients with painful neuropathy exhibited lower TBIL levels compared to those with non-painful neuropathy. Notably, in the painful neuropathy subgroup, miR-155 was negatively correlated with BMI, whereas miR-146a was negatively correlated with BMI, AST and ALT in the non-painful neuropathy subgroup. Given the association between obesity and chronic inflammation,28 the inverse relationships between miR-155, miR-146a and BMI, alongside the role of TBIL as an antioxidant, suggest that patients with painful neuropathy may experience a more enduring and severe inflammatory condition. Previous research has indicated miR-146a’s beneficial role in liver conditions such as ischaemia/reperfusion injury, non-alcoholic fatty liver, fibrosis and hepatitis B, primarily through its regulatory effects on inflammation and immunity,29–32 emphasising the protective functions of miR-155 and miR-146a in DPN.
In our subgroup analysis, a noteworthy observation was made: while the non-painful neuropathy subgroup exhibited a significant decrease in miR-146a expression compared to the T2DM group, no notable difference in miR-146a levels was observed in the painful neuropathy subgroup. Additionally, there was no significant difference in miR-155 expression levels between the painful and non-painful neuropathy subgroups. Other clinical studies have reported similar findings,33 wherein peripheral blood miR-155 expression was downregulated in patients with T2DM but significantly increased in patients with Diabetic Foot Ulcer (DFU), possibly linked to the ongoing inflammatory state in DFU. Chen J et al34 reported that silencing miR-155 could improve sciatic nerve damage, enhance angiogenesis and alleviate inflammation in DPN rats. Conversely, Ghada M35 identified a detrimental role of spinal miR-155 expression in neuropathy. Studies also report that miR-155 mimics can improve nerve conduction velocity in DPN mice and inhibit pro-inflammatory genes induced by high glucose.14 Furthermore, Fan et al36 intervened in diabetic mice with exosomes rich in miR-146a (exo-146a), which significantly suppressed peripheral blood inflammation, monocyte and endothelial cell activation by inhibiting the Toll-like receptor (TLR)-4/NF-κB signalling pathway and enhancing nerve conduction speed, thereby improving neurological function recovery. However, these findings warrant further exploration to elucidate the underlying mechanisms of miR-155 expression changes in DPN. On the other hand, miR-146a, closely associated with inflammatory responses, has been consistently shown to be reduced in numerous animal experiments, highlighting its potential in improving neurological function.20–22 However, our study indicates no significant difference in miR-146a expression levels between the painful neuropathy subgroup and the T2DM group. However, Ying et al37 demonstrated that miR-146a-5p could alleviate neuropathic pain by inhibiting TRAF6 signalling in the spinal cord. Similarly, Wang et al38 reported that an intrathecal injection of miR-146a-5p could alleviate mechanical and thermal hyperalgesia in chronic constriction injury (CCI) rats and reverse TRAF6 upregulation in the L4-L6 dorsal root ganglia and spinal dorsal horn induced by CCI. Similarly, Peter M et al39 demonstrated that miR-146a could mitigate morphine-induced persistent neuropathic pain in male rats through Toll-like receptors. These discrepancies might stem from the limited sample size of the painful neuropathy subgroup and the possibility that painful and non-painful neuropathy represent different subtypes of DPN with distinct biological characteristics and heterogeneity, potentially affecting statistical differences. Nevertheless, further investigation is warranted to explore these aspects.
Studies have reported that miR-146a expression in peripheral blood40 could serve as a biomarker for patients with non-small cell lung cancer, while miR-15541 has been identified as a non-invasive biological marker for the presence, staging and prognosis of cancer. Collectively, our study’s results indicate that elevated levels of miR-155 and miR-146a in peripheral blood could potentially act as protective factors against the development of DPN and are negatively correlated with various DPN risk factors. Furthermore, ROC curve analysis suggests that miR-155 and miR-146a have the capacity to distinguish between T2DM and DPN, with their combined assessment offering greater diagnostic value for DPN. Therefore, the expression levels of miR-155 and miR-146a in peripheral blood suggest their functionality in the diagnosis and prognosis of DPN. However, further research is needed to ascertain the reasons behind the decreased expression of miR-155 and miR-146a, particularly among patients with painful and non-painful neuropathy. Notably, as peripheral blood sampling poses minimal risk of trauma and miR-155 and miR-146a assessment is straightforward and convenient, we recommend utilising them to predict the onset and progression of DPN.
ConclusionAccording to our study, the decreasing expression of miR-155 and miR-146a in the peripheral blood of patients with T2DM correlates significantly with the development of DPN. This association positions these microRNAs as promising biomarkers for both diagnosing and monitoring the progression of DPN (Figure 3). Despite these insights, the limitations of this study, including its single-center design and relatively modest sample size, may impact the reliability and applicability of the findings. To address these issues, future research should involve multicenter studies with larger sample sizes, which would help confirm our results and enable the classification of DPN into mild, moderate, and severe stages for enhanced clinical assessment. Moreover, our study could not determine the causal relationships between miR-155, miR-146a, and DPN, nor could it elucidate why their expression decreases in DPN patients. Therefore, further in-depth studies are essential to explore the molecular mechanisms of miR-155 and miR-146a, and to evaluate their potential as new therapeutic targets for DPN, which could lead to novel treatment avenues.
Figure 3 miR-155 and miR-146a effectively served as useful biomarkers for the diagnosis and prognosis of DPN.↑: increase; ↓: decrease.
Abbreviations: DPN, Diabetic Peripheral Neuropathy; SCV, Sensory Nerve Conduction Velocity; MCV, Motor Nerve Conduction Velocity; miR-155, microRNA-155; miR-146a, microRNA-146a.
Data Sharing StatementThe datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.
Ethics Approval and Consent to ParticipateAll procedures performed in this study involving human participants were in accordance with the 1964 Helsinki Declaration and its later amendments or comparable ethical standards. This study was approved by the medical ethics committee of the First Affiliated Hospital of Anhui Medical University as CDEC000004982, and informed consent was obtained from the subjects.
Consent for PublicationAll authors have declared their consent for this publication.
AcknowledgmentsWe are grateful to the all patients for participating in the study. We thank the participants of this study including the doctors, nurses, and researchers from the Department of Endocrinology in the First Affiliated Hospital of Anhui Medical University.
This paper has been uploaded to Research Square as a preprint: https://www.researchsquare.com/article/rs-3969442/v1
Author ContributionsAll authors made a significant contribution to the work reported, whether that is in the conception, study design, execution, acquisition of data, analysis and interpretation, or in all these areas; took part in drafting, revising or critically reviewing the article; gave final approval of the version to be published; have agreed on the journal to which the article has been submitted; and agree to be accountable for all aspects of the work.
FundingThis study was supported by the Natural Science Foundation of Anhui Province in China (2108085MH269), and the Natural Science Research Project of Colleges and Universities in Anhui Province (KJ2021A0274). The funding body had no role in the design of the study, or the collection, analysis, and interpretation of data, or in writing the manuscript.
DisclosureThe authors declare that they have no competing interests in this work.
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