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ORIGINAL RESEARCH article

Front. Immunol., 28 November 2023
Sec. Multiple Sclerosis and Neuroimmunology

Association of retinal vessel pathology and brain atrophy in relapsing-remitting multiple sclerosis

  • 1Department of Neurology, Klinikum rechts der Isar, TUM School of Medicine and Health, Technical University of Munich, Munich, Germany
  • 2Department of Ophthalmology, University Hospital of Erlangen-Nuremberg, Erlangen, Germany
  • 3Department of Neuroradiology, Klinikum rechts der Isar, TUM School of Medicine and Health, Technical University of Munich, Munich, Germany
  • 4Institute for Experimental Neuroimmunology, Klinikum rechts der Isar, TUM School of Medicine and Health, Technical University of Munich, Munich, Germany
  • 5Munich Cluster for Systems Neurology (SyNergy), Munich, Germany

Background: Optical coherence tomography angiography (OCTA) allows non-invasive assessment of retinal vessel structures. Thinning and loss of retinal vessels is evident in eyes of patients with multiple sclerosis (MS) and might be associated with a proinflammatory disease phenotype and worse prognosis. We investigated whether changes of the retinal vasculature are linked to brain atrophy and disability in MS.

Material and methods: This study includes one longitudinal observational cohort (n=79) of patients with relapsing-remitting MS. Patients underwent annual assessment of the expanded disability status scale (EDSS), timed 25-foot walk, symbol digit modalities test (SDMT), retinal optical coherence tomography (OCT), OCTA, and brain MRI during a follow-up duration of at least 20 months. We investigated intra-individual associations between changes in the retinal architecture, vasculature, brain atrophy and disability. Eyes with a history of optic neuritis (ON) were excluded.

Results: We included 79 patients with a median disease duration of 12 (interquartile range 2 - 49) months and a median EDSS of 1.0 (0 - 2.0). Longitudinal retinal axonal and ganglion cell loss were linked to grey matter atrophy, cortical atrophy, and volume loss of the putamen. We observed an association between vessel loss of the superficial vascular complex (SVC) and both grey and white matter atrophy. Both observations were independent of retinal ganglion cell loss. Moreover, patients with worsening of the EDSS and SDMT revealed a pronounced longitudinal rarefication of the SVC and the deep vascular complex.

Discussion: ON-independent narrowing of the retinal vasculature might be linked to brain atrophy and disability in MS. Our findings suggest that retinal OCTA might be a new tool for monitoring neurodegeneration during MS.

1 Introduction

Though the retina reflects an unmyelinated part of the central nervous system (CNS), it is frequently affected by different autoimmune diseases. Atrophy of the retinal nerve fiber layer (RNFL) and ganglion cells is frequently found in most patients with multiple sclerosis (MS) and has been linked to a worse disease prognosis (14). Moreover, ganglion loss over time might reflect CNS atrophy and is discussed as a new biomarker for neurodegenerative processes in the course of MS (5, 6).

Optical coherence tomography (OCT) angiography (OCTA) allows for non-invasive, and high-resolution imaging of retinal blood vessels. Originally developed as new imaging modality in ophthalmology, OCTA has increasingly been applied in patients with autoimmune diseases of the CNS during the last years. Recent research suggests that patients suffering from CNS autoimmune diseases also display alterations of the retinal vasculature. Though different OCTA devices have been applied to study retinal vessel pathology in MS, a rarefication of superficial retinal vessel structures has been reported in most studies (7). Superficial retinal vessel loss is evident during the first 90 days after acute optic neuritis (ON) and linked to a poor visual acuity (810). We could recently show that narrowing of superficial retinal vessels also occurs in eyes without a history of ON, might be associated with a pro-inflammatory intrathecal immunity, and might predict a worse disease course in patients with early relapsing-remitting MS (RRMS) (11). These data suggest that the retinal vasculature might be involved in CNS autoimmunity. The underlying pathophysiology is not yet understood. It is unclear whether rarefication of the retinal vasculature occurs secondary to metabolic effects of retinal neurodegeneration or whether retinal vessels or the blood-retinal-barrier are primarily affected during MS (10).

In the current study, we evaluated whether alterations of retinal vessel structures are linked to brain atrophy and qualify as a biomarker for CNS neurodegeneration in patients with RRMS.

2 Materials and methods

2.1 Study design

The current study includes a longitudinal observational cohort of patients with clinically isolated syndrome (CIS) and RRMS according to the McDonald criteria 2017 between 18 and 75 years of age (12). We retrospectively selected patients from a running prospective observational cohort study of patients with early MS who have been enrolled between 2018 and 2022 at the Department of Neurology, Klinikum rechts der Isar of the Technical University of Munich. We selected patients with CIS and early RRMS who received at least two OCT, OCTA, and brain MRI examinations during a follow-up duration of at least 18 months. At baseline, patients underwent a thorough clinical assessment with evaluation of the expanded disability status scale (EDSS), the symbol digit modalities test (SDMT), the timed 25-foot walk test (T25W) and the 9-hole peg test (9-HPT). OCT, OCTA, and brain MRI were performed. We took a detailed medical history in all patients. Baseline visits were scheduled at least 30 days after the last clinical relapse. All patients received an assessment of the EDSS, SDMT, T25W, 9-HPT, a retinal OCT, an OCTA scan and a cerebral MRI scan once per year at pre-defined timepoints (all 12 months). Additional clinical visits with assessment of the EDSS occurred depending on clinical conditions of the respective patients. All of these examinations and procedures were performed within a maximum period of 14 days. Immunotherapies were categorized as disease-modifying therapy (DMT) class 1 (glatiramer acetate, interferon beta-1a/b, dimethyl fumarate, teriflunomide), class 2 (fingolimod, ozanimod, cladribine) and class 3 (natalizumab, rituximab, ocrelizumab, Ofatumumab, alemtuzumab), and “no DMT” if patients were not set on any immunotherapy. Disability worsening as measured by the EDSS was defined if an increase of the EDSS confirmed at least 3 months after the first documentation occurred during the study follow-up (EDSS increase of ≥ 1.5 if the baseline EDSS was 0, increase of ≥ 1.0 if the baseline EDSS was between 1.0 and 5.0). We defined worsening of the SDMT if a reduction of at least 4 points occurred (confirmed in a second follow-up visit) (13) and worsening of the T25W and 9HPT if an ≥ 20% increase in test times were recognized (confirmed in a second follow-up visit) (14). We excluded patients with any relevant eye disease possibly affecting the integrity of the retina and a refractory errors > 6 dioptres. Eyes with a history of ON, suspected subclinical ON (as delineated below), or poor OCTA quality were removed from the analysis as well. We furthermore removed patients from the analysis if exclusion of single eyes resulted in missing OCTA data on both eyes at any timepoint.

In the first step, we aimed to reproduce already published associations of longitudinal retinal neurodegeneration and brain atrophy (5). In the second step, we searched for a possible relationship of longitudinal changes of the retinal vasculature and brain volume loss. In the third step, we analyzed whether changes of retinal vessel structures are linked to clinical measures of disability.

2.2 Standard protocol approvals, registrations, and patient consents

STROBE guidelines were followed for reporting of observational studies. The ethics committee of the Technical University of Munich, School of Medicine evaluated and approved the current study (116/16 S, 9/15 S). We adhered to the Declaration of Helsinki and all participants gave written informed consent.

2.3 OCT and OCTA analysis

We accomplished conventional retinal OCT images as described previously (15) and included examination of the peripapillary RNFL (pRNFL) and the macula (30° x 25° macular scan). All scans were thoroughly checked for sufficient image quality according to the OSCAR-IB criteria (16). Segmentation of retinal layers was done automatically by a manufacturer provided software (Eye Explorer, v2.5.4.) and was manually corrected if necessary.

We acquired OCTA examinations on both eyes of each patient under low-lighting conditions (Heidelberg Spectralis OCT 2 with angiography module, Heidelberg Engineering) by experienced operators as described elsewhere (10, 11). In brief, en face images were recorded (2.9 × 2.9 mm scanning area) manually centred on the fovea centralis and with active eye tracking. We performed segmentation of the macular area into the superficial (SVC) and the deep vascular complex (DVC) using a manufacturer derived algorithm (v2.5.4). We used the Erlangen Angio Tool (17) for quantification of retinal vessel densities as described elsewhere (10, 11). Vessel structures were assessed within a centred perifoveal circle between a radius of 0.8 mm and 2.9 mm (area 6.1 mm²). The size of the foveal avascular zone (FAZ) was calculated using a MatLab-based software tool (MathWorks, vR2019b). To ensure sufficient OCTA image quality, we checked all OCTA scans according to the OSCAR-MP criteria (18).

As an established standard procedure, eyes with a history of clinical and/or unilateral subclinical ON were excluded from the analyses. We assumed a history of subclinical ON if a difference of both the pRNFL and the GCIP of more than 5 and 4 µm, respectively, was present between both eyes (19). We followed the APOSTEL 2.0 recommendations for reporting quantitative OCT studies (20).

2.4 Cerebral MRI acquisition and processing

We recorded all cerebral MRI scans by using the same 3 Tesla scanner (Achieva, Philips Healthcare) with the identical protocol. All MRI examinations were performed during daytime (7 AM to 6 PM). We acquired three-dimensional T1- and T2‐weighted fluid‐attenuated inversion recovery (FLAIR) images as described elsewhere (2). All MRI examinations were further processed with the software packages SPM12, CAT12 (https://www.neuro.uni-jena.de/cat12/) and LST (https://www.applied-statistics.de/). Lesions of the white matter were segmented from FLAIR and T1-weighted images by the “lesion growth algorithm” (21). Brain volumes were calculated by the sum of the brain white and grey matter. Cortical thickness was taken from CAT’s surface-based maps (22). We applied a reverse brain mask approach to assess the total intracranial volume (23). We extracted regional brain volumes from grey matter images with the LONI Probabilistic Brain (LPBA40) atlas (24) for putamen and neuromorphometrics atlas (25) for thalamus. All images were visually inspected for MRI artifacts by experienced operators.

2.5 Statistical analysis

Statistical analyses was done using GraphPad Prism (v9.3.1) software. To account for inter-eye correlations of OCT and OCTA measures, we used mean values of both eyes as one single data point when both eyes were available for calculation. If one eye was excluded due to our exclusion criteria (see above), we used the values of the remaining eye as described elsewhere (2). For evaluation of longitudinal alterations of OCT and OCTA measures, eyes with a history of clinical ON, suspected subclinical ON, or poor image quality at baseline or during the study follow-up were removed from this analysis for every timepoint completely. To quantify longitudinal annual changes of OCT, OCTA, and MRI measures, we performed least square linear regression analyses. Here, the best-fit value of the slope between OCT/OCTA/MRI time points (referenced to baseline, x-axis) and the respective measurements (y-axis) was calculated. This value reflects the linear change of the respective measure per time interval (year). We applied both univariate simple and multiple linear regression models to search for associations between longitudinal OCT or OCTA measures, changes of different brain volumes and disability as already described by others (5). We corrected all multiple linear regression models for the covariates age, sex, total intracranial volume, and disease duration, if not otherwise stated (11). We furthermore performed a Bonferroni correction for multiple comparison. To evaluate whether relevant longitudinal changes of OCT, OCTA, and MRI variables occurred, we applied a paired t-test (if normally distributed) or the Wilcoxon matched-pairs signed rank test (if not normally distributed) of the baseline and the respective last follow-up measure. To test for differences of longitudinal OCT and OCTA measures between patients with EDSS, SDMT, T25W, 9HPT worsening and those without, we used an unpaired t test or a non-parametric Mann–Whitney U test depending on normal distribution. Values are described as mean ± standard deviation (SD) (if normally distributed) or otherwise as median (25%-75% interquartile range). The statistical significance threshold was p<0.05.

3 Results

3.1 Study cohort and baseline characteristics

A total of 136 patients were identified and included into the current study. Fifty-seven patients were excluded due to the exclusion criteria whereas 42 patients revealed a history of ON in one eye and poor OCTA quality on the remaining eye at any study visit and 15 patients had poor OCTA quality on both eyes. Thus, we included 79 patients with a median age of 38 (32 - 47) years and a disease duration of 12 (2 - 49) months into the final analysis. Patients were only mildly clinical affected (median EDSS 1.0 [0 - 2.0]) (Table 1). We excluded 26 eyes due to a history of clinical ON, 2 eyes due to subclinical ON and another 9 eyes due to poor OCTA quality. In total, 121 eyes of 79 patients included in the study. Twelve patients from this cohort have already been reported in other studies (10, 11).

TABLE 1
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Table 1 Clinical characteristics, OCT, OCTA and brain MRI measures at baseline.

3.2 Longitudinal associations of the retinal architecture, vasculature, and brain volumes

Patients from our longitudinal observational cohort underwent a median of 3 (2-3) study visits over a median follow-up duration of 728 (714-742) days. Patients showed thinning of the pRNFL and the GCIP as well as rarefication of vessel structures within the SVC (Table 2). Moreover, we saw a reduction of the total intracranial volume and the cortical thickness accompanied by white and grey matter loss, in particular of the thalamus and putamen (Table 2). We observed a trend toward an increase in T2 lesion volume while the number of lesions remained unchanged (Table 2). DMT exposure during the study follow-up did not significantly affect the rates of OCT, OCTA and brain MRI measures (data not shown). A total of 9 patients (12% of patients) suffered from confirmed EDSS worsening, 9 patients (12%) from SDMT worsening, 5 patients (6%) from T25W worsening, two patients (3%) from 9-HPT worsening of the dominant hand one patient (1%) from worsening of the non-dominant hand during the follow-up.

TABLE 2
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Table 2 Longitudinal alterations of the retinal architecture, vasculature and brain volumes.

Longitudinal changes of the GCIP thickness were by trend linked to alterations of the SVC (ΔGCIP ~ ΔSVC: β = 0.10 [95% CI -0.03 to 0.23], p=0.13). No linkage was seen between the remaining OCT and OCTA measures (data not shown).

In the first step we searched for relationships between retinal neurodegeneration and brain atrophy. As expected (5), retinal axonal and ganglion cell loss were linked to grey matter atrophy, cortical atrophy, and volume loss of the putamen (Figures 1A, B).

FIGURE 1
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Figure 1 Association of the retinal architecture and brain atrophy. (A) Correlation of annualized changes of the peripapillary retinal nerve fiber layer (pRNFL) thickness and annualized changes of total grey matter volume, cortical thickness, and grey matter volume of the putamen. (B) Correlation of annualized changes of the combined ganglion cell and inner plexiform layer (GCIP) thickness and changes of total grey matter volume, cortical thickness and volume of the putamen. (A, B) Multiple linear regression models corrected for age, sex, disease duration, total intracranial volume; β estimates (line) and 95% confidence interval (CI; dotted lines).

In the second step, we analyzed associations of longitudinal alterations of the retinal vasculature and brain volumes. Here, retinal vessel rarefication of the SVC was associated with both grey and white matter atrophy (Figure 2A). This association remained robust when additionally correcting for longitudinal changes of GCIP (ΔSVC ~ Δ grey matter + ΔGCIP: β = 0.04 [95% CI 0.01 to 0.08], p=0.02; ΔSVC ~ Δ white matter + ΔGCIP: β = 0.10 [95% CI 0.01 to 0.19], p=0.04). Moreover, retinal vessel loss of the DVC was associated with grey matter atrophy (Figure 2B). This linkage remained robust when correcting for GCIP loss (ΔDVC ~ Δ grey matter + ΔGCIP: β = 0.05 [95% CI 0.01 to 0.09], p=0.01). No linkage between changes in the FAZ and brain volumes or white matter lesion estimates was recognized (data not shown).

FIGURE 2
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Figure 2 Association of the retinal vasculature, brain atrophy and disability. (A) Association of annualized changes of vessel densities of the superficial vascular complex (SVC) and annualized changes of the grey and white matter volumes. (B) Association of annualized changes of vessel densities of the deep vascular complex (DVC) and annualized changes of the grey matter volume. (C) Correlation of annualized changes of vessel densities of the DVC and annualized changes of the EDSS. (A, B) Multiple linear regression models corrected for age, sex, disease duration; (C) Multiple linear regression models corrected for age, sex, disease duration, total intracranial volume; β estimates (line) and 95% confidence interval (CI; dotted lines).

In the third step, we searched for possible relations of retinal vessel changes and disability. Here, intra-individual rarefication of deep vessel structures during the study follow-up was associated with an increase in EDSS values (Figure 2C). This finding remained robust when additionally correcting for longitudinal changes of the GCIP (ΔDVC ~ Δ EDSS + ΔGCIP β = -0.63 [95% CI -1.17 to -0.08], p=0.03). We did not recognize any association of longitudinal retinal vessel loss and annualized alterations of the SDMT, T25W or 9-HPT.

Patients with confirmed EDSS worsening revealed a pronounced thinning of retinal vessel structures of the SVC and DVC as compared to those with stable EDSS values (Figure 3A). Moreover, patients with SDMT and by trend T25W worsening showed higher rates of SVC and DVC vessel loss as compared to those with stable measures (Figures 3B, C). No significant differences were recognized in longitudinal alterations of the FAZ, pRNFL and GCIP in patients with or without worsening of the EDSS, SDMT and T25W. Due to the low sample sizes of patients with 9-HPT worsening, we did not perform additional statistical tests here.

FIGURE 3
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Figure 3 Alteration of the retinal vasculature in patients with and without disability worsening. (A) Annualized changes of vessel densities of the superficial (SVC) and deep vascular complex (DVC) in patients with and without confirmed worsening of the expanded disability status scale (EDSS). (B) Annualized changes of vessel densities of the SVC and DVC in patients with and without confirmed worsening of the symbol digit modalities test (SDMT). (C) Annualized changes of vessel densities of the SVC and DVC in patients with and without confirmed worsening of the timed 25-foot walk test (T25W). (A-C) Unpaired t test or non-parametric Mann–Whitney U test (depending on normal distribution); bars reveal median values and the 75% measure of the 25%-75% interquartile range.

Taken together, our data suggest that individual changes in the retinal vasculature might reflect central nervous system neurodegeneration during the disease course of MS.

4 Discussion

In the current study, we aimed to integrate changes of retinal vessels into the pathophysiological concept of MS. Our findings indicate that the rarefication of the retinal vasculature might be linked to CNS neurodegeneration and disability. Therefore, OCTA based analysis of retinal vessels may add novel aspects to the clinical and therapeutical approach of patients with early MS.

Retinal vessel loss as measured by OCTA is frequently found in the eyes of individuals with MS and past ON. Here, rarefication of superficial vessel structures after ON is a consistent finding across different OCTA devices (711, 26). We could recently show that superficial vessel thinning evolves simultaneously to GCIP atrophy after acute ON (10). Some studies, and the majority by using the Optovue OCTA device, also detected decreased vessel densities of the (peri-)foveal DVC in eyes with an ON history (7, 9, 27) whereas other groups using the Heidelberg Engineering Spectralis did not find any alterations of the DVC during MS (8, 10, 11, 28). However, there is growing literature suggesting that retinal vessel pathology also occurs in eyes without past ON during MS (8, 11, 2830).

In our study, alterations of the retinal vasculature were linked to clinical measures of disability. Different cross-sectional studies also described an association between decreased retinal vessel densities and increased measures of disability like the EDSS or Multiple Sclerosis Functional Composite (MSFC) (8, 30). In our study, decreasing DVC vessel densities were associated with increasing EDSS values in the longitudinal cohort. In line with this, Lanzillo et al. found an association of decreasing parafoveal vessel densities (without differentiating into SVC or DVC) and increasing EDSS values after a 1-year prospective follow-up in patients with MS (31). These data suggest that (deep) retinal vessel loss might reflect disability progression during MS.

In the present study, retinal axonal and ganglion cell atrophy were associated with grey matter loss and cortical atrophy. There is substantial evidence in the literature that both retinal ganglion cell and axonal loss reflect CNS neurodegeneration during MS. By applying 7T MRI imaging, Sinnecker et al. could show that a focal optic radiation damage results in consecutive atrophy of corresponding RNFL thinning of the retina suggesting that retrograde trans-synaptic neurodegeneration occurs during MS (32). Other studies suggested that retrograde trans-synaptic neurodegeneration even applies for focal lesions outside the visual pathway. Longitudinal intra-individual ganglion cell loss has been linked to whole-brain and especially grey matter atrophy in patients with RRMS by both longitudinal retrospective and prospective studies (5, 33). Moreover, different cross-sectional studies provided evidence that retinal ganglion cell loss might also be associated with spinal cord atrophy in individuals with MS (34, 35). These data suggest that retinal ganglion cell loss as measured by OCT can mirror CNS neurodegeneration during MS.

Furthermore, our data suggest an association between retinal vessel loss and brain atrophy in MS that is largely independent of retinal tissue neurodegeneration. In our study, an intra-individual vessel loss of the SVC was associated with both grey and white matter atrophy and a vessel rarefication of the DVC was linked to a decline of grey matter volume, notably independent of alterations of the ganglion cell layer. To the best of our knowledge, our study is the first to analyze connections between the retinal vasculature as measured by OCTA and CNS neurodegeneration as estimated by MRI.

The underlying mechanisms leading to changes of the retinal vasculature and their potential association with CNS neurodegeneration in patients with MS remain unclear. One hypothesis suggests that alterations of the SVC are secondary metabolic effects of retinal ganglion cell loss during MS. The SVC supplies ganglion cells with blood and oxygen. Thus, rarefication of superficial retinal vessels could be a secondary effect of GCIP atrophy due to a lower oxygen demand. In line with this, ganglion cell loss, which is closely related to CNS neurodegeneration, could also result in SVC vessel rarefication. Recently, we could show that superficial but not deep retinal vessel rarefication is evident after acute ON and evolves simultaneously to ON-associated ganglion cell atrophy (10). While this seems to be a possible explanation in eyes with acute ON, it appears less likely to be the underlying mechanism in ON-independent alterations of the retinal vasculature. Firstly, the associations between longitudinal vessel rarefication of the SVC, DVC, and grey matter atrophy remained robust when correcting for ganglion cell loss in our statistical models. Secondly, we detected an association between retinal vessel loss of the DVC and grey matter atrophy. Vessel branches originating from the DVC do not supply retinal ganglion cells and should thus not be affected by ganglion cell atrophy. This suggests that GCIP loss does not entirely explain SVC and DVC thinning and its association with CNS neurodegeneration in patients with RRMS.

On the contrary, ON-independent retinal vessel loss and its association with CNS neurodegeneration could be the consequence of disease-specific alterations of retinal glial cells. Astrocytes, and especially microglia, are thought to be one of the drivers of compartmentalized, chronic, and smoldering inflammation (36). Pathological alterations of astrocytes and microglia are frequently found in brain specimens of patients with MS. They may even occur in CNS areas distant from any inflammatory lesion, for example, in normal-appearing white matter (37, 38). Within the retina, alterations of glial cells are also evident. Histopathological studies in human eyes have revealed a decline of astrocytic Müller cells and an activation of retinal microglia near vessels as a typical finding in patients with MS (11, 39). The blood-retinal-barrier is formed by retinal Müller astrocytes, microglia, pericytes and endothelial cells and modulates the vascular tone and the retinal blood supply (40). Besides MS, retinal vessel loss also occurs during anti-aquaporin 4 antibody positive neuromyelitis optica spectrum disorders. By our group, vessel loss within the SVC has been linked to enhanced serum levels of the glial fibrillary acidic protein (GFAP) suggesting a damage and decline of astrocytes (11, 41). In experimental autoimmune encephalomyelitis, the standard murine model of MS, aquaporin 4 expressing Müller cells are mandatory for the integrity of the blood-retinal-barrier and genetic ablation of aquaporin-4 may result in altered retinal perfusion (42). Based on these findings, we speculate that changes of the retinal vasculature could result from pathological alterations of retinal glial cells. By establishing an association of retinal vessel pathology, an inflammatory immune phenotype (11) and CNS neurodegeneration, our study provides further evidence for this hypothesis.

Our study has different limitations. Firstly, OCTA measurements are device-specific and device-specific effects on the present results and derived conclusions are possible (43). Here, further studies comparing different OCTA devices are needed. Secondly, physiological influences of age and sex on OCTA measures have not been studied in detail yet. It is possible that age affects retinal vessel measures and that the present data might not relevant to younger or older patients. However, we corrected for age, making a purely age-related origin of our findings unlikely. Thirdly, our data and especially the reported longitudinal OCTA measures lack a comparison to healthy subjects. There is very limited data on alterations of the retinal vasculature under healthy conditions and we cannot compare our measures to published findings in the literature. There is, however, substantial literature on longitudinal brain atrophy measures in patients with MS. Our patient cohort revealed a mean cerebral atrophy of 0.4% per year (Tables 1, 2), which is above the rate of healthy cohorts (~0.2%) and in proximity to the threshold which is considered as acceptable under therapeutical conditions (0.4%) (44). This suggests that our patient cohort reveals a rather mild longitudinal cerebral atrophy in the range in published studies. Fourthly, further methodological issues need to be taken into account when interpreting the present findings: It is unclear whether a decline in vessel densities really reflects a true loss of vessel branches or whether it results from hypoperfusion or vasoconstriction. OCTA only provided retinal perfusion patterns but does not report about vessel morphology or integrity. Currently available devices and algorithms do not allow to differentiate whether a reduction in retinal vessel densities reflects vascular constriction, shrinkage of vessels, or true vessel loss. Here, advances in OCTA signal and image processing are needed. Fifthly, we did not screen our patients for the prevalence of arterial hypertension, diabetes or hyperlipidemia in a standardized way since this conditions could affect quantitative analyses of the retinal vasculature (45).

Taken together, our study suggests an association between alterations of the retinal vasculature and CNS neurodegeneration in patients with MS. Our findings provide novel insights into the retinal pathology during MS. If confirmed by other groups, the evaluation of retinal vessels by OCTA could be a novel tool to assess CNS neurodegeneration.

Data availability statement

The raw data is not accessible to the public due to privacy and ethical considerations. However, upon a reasonable request from a qualified investigator, the data can be shared in an anonymized format.

Ethics statement

The studies involving humans were approved by ethics committee of the Technical University of Munich, School of Medicine and Health. The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study.

Author contributions

ER: Data curation, Formal Analysis, Investigation, Methodology, Writing – original draft. TW: Data curation, Writing – review & editing. MB: Data curation, Writing – review & editing. LA: Data curation, Supervision, Writing – review & editing. RW: Data curation, Methodology, Writing – review & editing. CN: Writing – review & editing. AB: Writing – review & editing. VD: Data curation, Writing – review & editing. CM: Methodology, Software, Writing – review & editing. CZ: Methodology, Writing – review & editing. TK: Resources, Writing – review & editing. BH: Conceptualization, Resources, Writing – review & editing. JK: Methodology, Writing – review & editing. MM: Data curation, Formal Analysis, Investigation, Methodology, Resources, Supervision, Writing – review & editing. BK: Conceptualization, Data curation, Formal Analysis, Funding acquisition, Investigation, Methodology, Project administration, Supervision, Writing – original draft.

Funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. TW is funded by a research grant of the National Institutes of Health (grant 1R01NS112161-01). LA is funded by a research grant from Novartis Deutschland GmbH. The funder was not involved in the study design, collection, analysis, interpretation of data, the writing of this article, or the decision to submit it for publication. RW received an intramural research grant provided by the Technical University of Munich, TUM school of Medicine and Health, and a clinician scientist grant from Munich Cluster for Systems Neurology. CN was received a research scholarship from the Gemeinnützige Hertie Foundation. TK was supported by the Deutsche Forschungsgemeinschaft (SFB1054-B06 (ID 210592381), TRR128-A07 (ID 213904703), TRR128-A12 (ID 213904703), TRR128-Z02 (ID 213904703), TRR274-A01 (ID 408885537), and EXC 2145 (SyNergy, ID 390857198), the European Research Council ERC (CoG 647215), and by the Hertie Network of Clinical Neuroscience. BH was supported by the European Union’s Horizon 2020 Research and Innovation Program (grant MultipleMS, EU RIA 733161), the Deutsche Forschungsgemeinschaft (DFG) under Germany’s Excellence Strategy within the framework of the Munich Cluster for Systems Neurology (EXC 2145 SyNergy—ID 390857198) and the Bundesministerium für Bildung und Forschung (ClinSpect-M). JK is funded by the Deutsche Forschungsgemeinschaft (DFG; ID 465242983, 432290010) and the European Research Council ERC (StG, CoG, POC). MM is funded by the Deutsche Forschungsgemeinschaft (DFG; PP2177, ID 428223038), the National Institutes of Health (NIH; ID 1R01NS112161) and the Bavarian State Ministry for Science and Art (Bavaria - Québec: F.4-V0134.K5.1/86/34). BK was funded by the Else Kröner-Fresenius-Stiftung (Else Kröner-Fresenius Exzellenzstipendium), the Gemeinnützige Hertie Foundation (medMS program) and received a research award from Novartis (Oppenheim award 2020).

Acknowledgments

We thank Mira Radic for expert assistance during OCTA and OCTA acquisition.

Conflict of interest

LA received travel and research support by Novartis Deutschland GmbH. RW received a poster grant from Novartis Deutschland GmbH. AB has received consulting and/or speaker fees from Alexion, Bayer Healthcare, Biogen, Celgene, Novartis Deutschland GmbH, Roche and Sandoz/Hexal. CM is a medical advisor to Heidelberg Engineering, Heidelberg, Germany, receives lecture honorarium by Heidelberg Engineering and Bayer AG, Leverkusen, Germany. CZ has served on scientific advisory boards for Philips and Bayer Schering; serves as co-editor on the Advisory Board of Clinical Neuroradiology; has received speaker honoraria from Bayer-Schering and Philips and has received research support and investigator fees for clinical studies from Biogen Idec, Quintiles, MSD Sharp & Dome, Boehringer Ingelheim, Inventive Health Clinical UK Ltd., Advance Cor, Brainsgate, Pfizer, Bayer-Schering, Novartis, Roche, Servier, Penumbra, WCT GmbH, Syngis, SSS Internartional Clinical Research, PPD Germany GmbH, Worldwide Clinical Trials Ltd., Phenox, Covidien, Actelion, Medivation, Medtronic, Harrison Clinical Research, Concentric, Penumbra, Pharmtrace, Reverse Medical Corp., Premier Research Germany Ltd., Surpass Medical Ltd. and GlaxoSmithKline. TK received travel support and speaking honoraria from Novartis Deutschland GmbH and Merck. BH has served on scientific advisory boards for Novartis Deutschland GmbH; he has served as DMSC member for AllergyCare, Sandoz, Polpharma and TG therapeutics; he or his institution have received speaker honoraria from Desitin; his institution received research grants from Regeneron for multiple sclerosis research. He holds part of two patents; one for the detection of antibodies against KIR4.1 in a subpopulation of patients with multiple sclerosis and one for genetic determinants of neutralizing antibodies to interferon. All conflicts are not relevant to the topic of the study. JK received speaking honoraria from Novartis Deutschland GmbH. BK received travel support and speaking honoraria from Novartis Deutschland GmbH, Teva, Heidelberg Engineering and served at the advisory board of Merck. He received a research grant from Novartis Deutschland GmbH.

The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

The author(s) declared that they were an editorial board member of Frontiers, at the time of submission. This had no impact on the peer review process and the final decision.

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Keywords: optical coherence tomography, optical coherence tomography angiography, multiple sclerosis, magnetic resonance imaging, brain atrophy, disability

Citation: Romahn EF, Wiltgen T, Bussas M, Aly L, Wicklein R, Noll C, Berthele A, Dehmelt V, Mardin C, Zimmer C, Korn T, Hemmer B, Kirschke JS, Mühlau M and Knier B (2023) Association of retinal vessel pathology and brain atrophy in relapsing-remitting multiple sclerosis. Front. Immunol. 14:1284986. doi: 10.3389/fimmu.2023.1284986

Received: 29 August 2023; Accepted: 07 November 2023;
Published: 28 November 2023.

Edited by:

Philipp Albrecht, Heinrich Heine University of Düsseldorf, Germany

Reviewed by:

Gabriel Bsteh, Medical University of Vienna, Austria
Joachim Havla, Ludwig Maximilian University of Munich, Germany

Copyright © 2023 Romahn, Wiltgen, Bussas, Aly, Wicklein, Noll, Berthele, Dehmelt, Mardin, Zimmer, Korn, Hemmer, Kirschke, Mühlau and Knier. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Benjamin Knier, Benjamin.knier@tum.de

These authors have contributed equally to this work and share senior authorship

Disclaimer: All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.