| Literature DB >> 31187191 |
Ruben P A van Eijk1,2, Jaap N E Bakers3, Tommy M Bunte1, Arianne J de Fockert1, Marinus J C Eijkemans2, Leonard H van den Berg4.
Abstract
BACKGROUND: The extensive heterogeneity between patients with amyotrophic lateral sclerosis (ALS) complicates the quantification of disease progression. In this study, we determine the value of remote, accelerometer-based monitoring of physical activity in patients with ALS.Entities:
Keywords: Accelerometry; Amyotrophic lateral sclerosis; Clinical trial; Longitudinal cohort study
Mesh:
Year: 2019 PMID: 31187191 PMCID: PMC6765690 DOI: 10.1007/s00415-019-09427-5
Source DB: PubMed Journal: J Neurol ISSN: 0340-5354 Impact factor: 4.849
Fig. 1Raw accelerometer data of a single measurement and illustration of outcomes. Non-wear periods (black) were identified in raw accelerometer data (a). For the wear periods, we defined four outcomes: (1) %active, (2) metabolic equivalent (MET), (3) vector magnitude (VM) and (4) A1. b %Active; the activity count (y-axis) was split based on a 100 counts per minute cut-off and we calculated the proportion of being active (i.e., > 100 counts, green) [16]. c MET; the activity counts were recoded to MET (gray=MET 1) and averaged. When a patient is inactive (i.e., lying), the MET is 1 (gray) [7]. d VM; the average daily activity count (mean; mu) was multiplied by the daily variation in activity counts (sd standard deviation). e A1; instead of using the composite of three accelerometer axis (gray), we extracted only the vertical axis (i.e., movement against gravity; A1, green). The A1 was defined as the daily variation in the vertical axis (sd). The four outcomes resulted in different daily summaries with important differences in day-to-day variation. For example, the %active ranges from 6.1 to 18.2%, whereas the A1 ranges only from 0.79 to 0.83. This could have important consequences for the sensitivity to detect differential disease progression
Characteristics of the patients at baseline
| Characteristics | Overall |
|---|---|
| Age, mean (SD), (years) | 60 (12) |
| Males, no. (%) | 31 (74) |
| MND subtype, no. (%) | |
| ALS | 39 (93) |
| PMA | 3 (7) |
| PLS | 0 (0) |
| Bulbar onset, no. (%) | 7 (17) |
| Symptom duration (months) | |
| Median | 25 |
| Range | 7–218 |
| Diagnostic delay (months) | |
| Median | 8 |
| Range | 2–130 |
| Riluzole use, no. (%) | 30 (75) |
| Body mass index, mean (SD), (kg/m2) | 25 (3) |
| ALSFRS-R total score, mean (SD) | 36 (8) |
| ΔFRS (points per month) | |
| Median | 0.34 |
| Range | 0.05–1.24 |
| Prognostic subgroup, no. (%) | |
| Very long | 16 (38) |
| Long | 14 (33) |
| Intermediate | 11 (26) |
| Short | 1 (2) |
| Very short | 0 (0) |
MND motor neuron disease, ALS amyotrophic lateral sclerosis, PMA progressive muscular atrophy, ALSFRS-R revised ALS functional rating scale, ΔFRS 48—ALSFRS-R score/disease duration [11]
Longitudinal rates of change during follow-up
| Outcome | Model parameters | Coefficient of variation | |||
|---|---|---|---|---|---|
| Intercept | Slopea | 95% CIb | |||
| ALSFRS-R | |||||
| Total score | 36.4 | − 0.59 | − 0.80 to − 0.39 | < 0.001 | 1.06 |
| Bulbar score | 10.2 | − 0.13 | − 0.19 to − 0.07 | < 0.001 | 1.34 |
| Motor score | 15.2 | − 0.44 | − 0.60 to − 0.28 | < 0.001 | 1.10 |
| Respiratory score | 11.2 | − 0.09 | − 0.15 to − 0.03 | 0.006 | 2.02 |
| ActiGraph | |||||
| %Active | 27.9 | − 0.64 | − 0.86 to − 0.43 | < 0.001 | 0.81 |
| MET | 1.71 | − 0.018 | − 0.024 to − 0.013 | < 0.001 | 0.64 |
| Vector magnitude (VM) | 8.55 | − 0.19 | − 0.25 to − 0.14 | < 0.001 | 0.77 |
| Vertical axis (A1) | 1.65 | − 0.029 | − 0.038 to − 0.021 | < 0.001 | 0.74 |
Coefficient of variation (CoV) = between-patient standard deviation of slope/mean rate of change, a lower value indicates that there is less variation among patients and disease progression can be detected more accurately; CI confidence interval, ALSFRS-R revised ALS functional rating scale, MET metabolic equivalent. Linear mixed models were used to estimate the mean rate of change, CI, p value and CoV
aSlope is the mean monthly rate of change during follow-up
b95% CI and p value of slope (indicating whether the rate of change is different from zero)
Fig. 2Correlation between accelerometer-based outcomes and disease progression. Longitudinal correlation between two accelerometer-based outcomes, %active (a) and variation in the vertical axis (A1, b), with the ALSFRS-R; r = Pearson correlation. The green lines represent the individual patient correlations. c, d Distribution of %active and A1 within clinical stages defined by the King’s ALS staging algorithm [2]
Fig. 3Longitudinal sample size calculations for three accelerometer-based outcomes. Models from Table 2 were used for the sample size calculation to detect a 25% reduction in slope with 90% power (per group). We evaluated different scenarios by varying the follow-up duration (x-axis) and using either a monthly (a) or bimonthly (b) sampling interval. The colors represent the different accelerometer-based endpoints. A1 = variation in vertical axis (i.e., movement against gravity). The sample size calculations are based on the observed slopes in Table 2 and do not account for missing data [15]. It is important to note that in other settings, the absolute sample size varies, but is unlikely to affect the relative differences between outcomes (i.e., absolute sample size are high in this example due to the relatively slow rate of progression of the enrolled population)