Part of the day—metadata
|
Splits the day into 4 segments |
Helps detect energy loss in PwMS with fatigue during the day, a common symptom. |
Computed values |
Categorical: morning, afternoon, evening, night
Additional granularity within a segment: 1-minute, 15-minute, or 1-hour
|
Part of the week—metadata
|
Indicates on which weekdays specific patterns occur, applicable across all 4 granularity levels |
Many PwMS are pursuing jobs or have family duties, leading to different physical activity patterns between weekdays and weekends. |
Computed values |
Categorical: Monday, Tuesday, Wednesday, Thursday, Friday, Saturday, Sunday |
PwMS distribution—metadata
|
Anonymized PwMS IDs help identify if activity patterns are common to specific PwMS or are balanced in distribution across PwMS. |
Identifies specific PwMS activity patterns, helping to manage relevance and cardinality. In the interface, the top 3 PwMS for each pattern are highlighted. |
BarKA-MS39
|
Categorical: Anonymized PwMS IDs |
Weather condition—metadata
|
Weather data from a public API is integrated for multimodal analysis of PwMS sequences, while maintaining patient anonymity |
Weather may impose additional barriers for physical activity, as heat can worsen specific MS symptoms. |
Openweathermap Public API40
|
Categorical: sunny, rainy, cloudy, snowy, etc. |
Heart rate—data
|
Wearables-based measurement of PwMS heart rate |
Approximates sleep and stress evaluations |
BarKA-MS39
|
Numerical |
Steps—data
|
Wearables-based measurement of PwMS step count |
Approximates level of activity, and indicates possible fatigue episode |
BarkaMS39
|
Numerical |