| Literature DB >> 35677598 |
Marc Hilty1, Pietro Oldrati1, Liliana Barrios2, Tamara Müller1, Claudia Blumer1, Magdalena Foege1, Phrt Consortium, Christian Holz2, Andreas Lutterotti1.
Abstract
Background: Dysfunction of the autonomic nervous system is common in multiple sclerosis patients, and probably present years before diagnosis, but its role in the disease is poorly understood.Entities:
Keywords: autonomic nervous system; cardiac autonomic dysfunction; heart rate variability; multiple sclerosis; progressive; wearable
Year: 2022 PMID: 35677598 PMCID: PMC9168869 DOI: 10.1177/20552173221103436
Source DB: PubMed Journal: Mult Scler J Exp Transl Clin ISSN: 2055-2173
Figure 2.Left: Pearson correlation of the median from the ten approximated trend segments using all possible combinations of available days compared to the full data for all three metrics. The approximations quickly converge, showing that one week of data collection may be sufficient. Right: An example of trend approximation (line) for one patient using the super-imposed daily data (dots) for each metric. Grey dots represent sleep and wake data replicated to the margins to avoid spurious values in the polynomial fit.
Figure 1.Flow chart of the recruitment process and overview of excluded participants.
Demographic characteristics of the study population.
| Control | Patient | P-Value | ||
|---|---|---|---|---|
| Number | 24 | 55 | ||
| Age, mean (SD) | 33.5 (10.6) | 36.8 (9.5) | 0.200 | |
| Ethnicity, n(%) | Asian | 3 (12.5) | 0.019 | |
| Caucasian | 18 (75.0) | 51 (94.4) | ||
| Hispanic | 1 (4.2) | |||
| Middle-Eastern | 2 (8.3) | 3 (5.6) | ||
| Gender, n (%) | m | 11 (45.8) | 20 (36.4) | 0.588 |
| w | 13 (54.2) | 35 (63.6) | ||
| MS type, n (%) | PMS | 9 (16.4) | ||
| RRMS | 46 (83.6) | |||
| EDSS, mean (SD) | 2.2 (1.4) | |||
| Disease duration, mean (SD) | 6.7 (6.3) | |||
| Inflam. activity, n (%) | no | 38 (69.1) | ||
| yes | 17 (30.9) | |||
| Progressive state, n (%) | no | 41 (74.5) | ||
| yes | 14 (25.5) | |||
| DMT, n (%) | None | 8 (14.5) | ||
| Dimethylfumarat | 6 (10.9) | |||
| Natalizumab | 12 (21.8) | |||
| Rituximab | 4 (7.3) | |||
| Ocrelizumab | 15 (27.3) | |||
| Ozanimod | 2 (3.6) | |||
| Siponimod | 1 (1.8) | |||
| Teriflunomide | 1 (1.8) | |||
| aHSCT | 6 (10.9) | |||
| FSMC, mean (SD) | total | 53.0 (21.8) | ||
| cognitive | 26.2 (11.6) | |||
| motoric | 26.8 (11.1) | |||
| COMPASS-31, mean (SD) | 16.9 (8.6) | |||
| Concomittant medication, n (%) | no | 35 (63.6) | ||
| yes | 20 (36.4) |
Data are mean (SD) or n (%). MS: multiple sclerosis; PMS: progressive multiple sclerosis; RRMS: relapsing-remitting multiple sclerosis; COMPASS-31: Composite Autonomic Symptom Score; EDSS: expanded disability status score; FSMC: Fatigue Score for motor functions and cognition; aHSCT: autologous hematopoetic stem cell transplantation; DMT: disease modifying therapy; Inflam. activity is defined as confirmed clinical relapse or GD + enhancing lesion in the past 12 months. Progressive state is defined as confirmed clinical progression based on Lublin et al. Concomitant medication is defined as non-DMT therapies with a known influence on heart-rate, a list can be found in the supplemental Table S1.
Figure 3.A standardized day starting with waking up in the morning and ending with waking up the day after represented by ten segments (20%), five during awake and five during sleep. The median of the approximated HRV trends of participants groups is shown in the line diagram. The histogram corresponds to the total data availability per segment. The top heat map shows optimal single time windows, the bottom one is the optimal windows for adaptive assessment, ranking the top 10 best AUCs. HC refers to healthy controls, pwMS to patients with multiple sclerosis. During awake hours either early morning or late evening shows differences in the HRV metrics between subgroups, meanwhile signals are converging during a majority of the daytime. Patients with a progressive disease course show a substantially different circadian adaptation, predominantly during sleep.
Single time windows discriminating patient characteristics.
| Group | Time window | Metric | AUC | 95% CI |
|---|---|---|---|---|
| pwMS | 40%-80% night | SD2% | 0.6712 | 0.5378, 0.8046 |
| Inflammation | 80%-100% night | SD2% | 0.6626 | 0.5167, 0.8086 |
| Radiological activity | 80%-100% night | SD2% | 0.655 | 0.4749, 0.8352 |
| Clinical activity | 0%-100% night | SD2% | 0.7381 | 0.5531, 0.9231 |
| Progression | 40%-100% night | SD2% | 0.7544 | 0.5916, 0.9171 |
| EDSS | 60%-80% night | SD2% | 0.7087 | 0.5464, 0.871 |
| ARMSS | 80%-100% night | SDNN% | 0.6381 | 0.4927, 0.7836 |
| COMPASS-31 | 40%-60% night | SD2% | 0.7163 | 0.5699, 0.8628 |
| COMPASS-31 pwMS | 20%-40% day | SD1% | 0.6273 | 0.4736, 0.781 |
| Severe FSMC fatigue | 40%-80% day | SD2% | 0.6772 | 0.5056, 0.8489 |
Optimized time windows and HRV metric based on the AUC to differentiate between patient characteristics: pwMS differentiated from healthy controls (55/79), pwMS with recent inflammatory activity (24/55), pwMS with current radiological activity (12/55), pwMS with current clinical activity (6/55), pwMS with objectified progressive disease (14/55), pwMS with EDSS ≥ 3 (18/55), pwMS with ARMSS ≥ 4 (37/55), pwMS with COMPASS-31 > 17 compared to healthy controls (26/50), pwMS with COMPASS-31 ≥ 17 compared to pwMS wih COMPASS-31 < 17 (26/51) and pwMS with FSMC total score ≥ 65 compared to pwMS without fatigue (21/39).
Adaptative difference between time windows discriminating patient subgroups.
| Group | Time windows | Metric | AUC | 95% CI |
|---|---|---|---|---|
| pwMS | 0%-20% day and 40%-60% night | ΔSDNN% | 0.7402 | [0.6221, 0.8582] |
| Inflammation | 80%-100% day and 40%-100% night | ΔSD1% | 0.6707 | [0.5236, 0.8178] |
| Radiological activity | 80%-100% day and 60%-80% night | ΔSD1% | 0.7403 | [0.5564, 0.9242] |
| Clinical activity | 0%-80% day and 20%-60% night | ΔSD1% | 0.6497 | [0.3663, 0.933] |
| Progression | 80%-100% day and 20%-60% night | ΔSDNN% | 0.777 | [0.6448, 0.9092] |
| EDSS | 60%-100% day and 40%-80% night | ΔSDNN% | 0.7477 | [0.6146, 0.8809] |
| ARMSS | 0%-20% night and 40%-80% night | ΔSDNN% | 0.6742 | [0.5126, 0.8358] |
| COMPASS-31 | 60%-80% night and 80%-100% night | ΔSD1% | 0.7628 | [0.6282, 0.8975] |
| COMPASS-31 pwMS | 40%-80% night and 80%-100% night | ΔSD1% | 0.6658 | [0.5146, 0.8169] |
| Severe FSMC fatigue fafatfatigue | 40%-80% night and 80%-100% night | ΔSD1% | 0.6587 | [0.4827, 0.8348] |
Optimized difference between two time windows and HRV metric based on the AUC to differentiate between patient characteristics: pwMS differentiated from healthy controls (55/79), pwMS with recent inflammatory activity (24/55), pwMS with current radiological activity (12/55), pwMS with current clinical activity (6/55), pwMS with objectified progressive disease (14/55), pwMS with EDSS ≥ 3 (18/55), pwMS with ARMSS ≥ 4 (37/55), pwMS with COMPASS-31 > 17 compared to healthy controls (26/50), pwMS with COMPASS-31 ≥ 17 compared to pwMS wih COMPASS-31 < 17 (26/51) and pwMS with FSMC total score ≥ 65 compared to pwMS without fatigue (21/39).
Figure 4.Effect size of difference in pwMS per metric displayed as standardized mean difference with 95% CI. Mann-Whitney-U test was applied and * signifies a p-value <0.05, ** a p-value <0.01, after Benjaminin-Hochberg correction. COMPASS-31 results are displayed both as differences between HC and subjective AD and within patients with or without subjective AD. Other effects where performed only within pwMS.