ORBITS

2020 ◽  
Vol 14 (3) ◽  
pp. 294-306
Author(s):  
Mourad Khayati ◽  
Ines Arous ◽  
Zakhar Tymchenko ◽  
Philippe Cudré-Mauroux

With the emergence of the Internet of Things (IoT), time series streams have become ubiquitous in our daily life. Recording such data is rarely a perfect process, as sensor failures frequently occur, yielding occasional blocks of data that go missing in multiple time series. These missing blocks do not only affect real-time monitoring but also compromise the quality of online data analyses. Effective streaming recovery (imputation) techniques either have a quadratic runtime complexity, which is infeasible for any moderately sized data, or cannot recover more than one time series at a time. In this paper, we introduce a new online recovery technique to recover multiple time series streams in linear time. Our recovery technique implements a novel incremental version of the Centroid Decomposition technique and reduces its complexity from quadratic to linear. Using this incremental technique, missing blocks are efficiently recovered in a continuous manner based on previous recoveries. We formally prove the correctness of our new incremental computation, which yields an accurate recovery. Our experimental results on real-world time series show that our recovery technique is, on average, 30% more accurate than the state of the art while being vastly more efficient.

2020 ◽  
Author(s):  
Grace McKeon ◽  
Zachary Steel ◽  
Ruth Wells ◽  
Jill Newby ◽  
Dusan Hadzi-Pavlovic ◽  
...  

UNSTRUCTURED First-responders (e.g. police, firefighters, paramedics) are at high risk of experiencing poor mental health. Physical activity interventions can help reduce symptoms and improve mental health in this group. More research is however needed to evaluate accessible, low cost ways of delivering programs. Social media may be a potential platform for delivering group-based physical activity interventions. We co-designed a 10-week online physical activity program delivered via a private Facebook group. We provided education and motivation around different weekly topics (e.g. goal setting and reducing sedentary behaviour) and provided participants with a Fitbit. We aimed to examine the feasibility and acceptability of the program for first-responders and a nominated informal caregiver to participate with them. We also explored the impact on mental health symptoms, sleep quality, quality of life and physical activity levels. A multiple time series design was applied to assess levels of psychological distress, with participants acting as their own control prior to the intervention. Twenty-four participants (n=12 first responders and n=12 nominated support partners) were recruited and 88% (n=21) completed the post assessment questionnaires. High acceptability was observed in the qualitative interviews. Exploratory analyses found significant reductions in psychological distress across the intervention. Pre and post analysis showed significant improvements in quality of life (Cohen’s d=0.603), total depression, anxiety and stress scores (d=0.354) and minutes of walking (d=0.549). Changes in perceived social support to exercise and sleep quality were not significant. The results provide preliminary support for the use of social media and a multiple-time series design to deliver mental health informed physical activity interventions for first-responders and their informal caregivers.


2008 ◽  
Vol 24 (10) ◽  
pp. 1286-1292 ◽  
Author(s):  
Jongrae Kim ◽  
Declan G. Bates ◽  
Ian Postlethwaite ◽  
Pat Heslop-Harrison ◽  
Kwang-Hyun Cho

10.2196/23432 ◽  
2021 ◽  
Vol 5 (4) ◽  
pp. e23432
Author(s):  
Grace McKeon ◽  
Zachary Steel ◽  
Ruth Wells ◽  
Jill Newby ◽  
Dusan Hadzi-Pavlovic ◽  
...  

Background First responders (eg, police, firefighters, and paramedics) are at high risk of experiencing poor mental health. Physical activity interventions can help reduce symptoms and improve mental health in this group. More research is needed to evaluate accessible, low-cost methods of delivering programs. Social media may be a potential platform for delivering group-based physical activity interventions. Objective This study aims to examine the feasibility and acceptability of delivering a mental health–informed physical activity program for first responders and their self-nominated support partners. This study also aims to assess the feasibility of applying a novel multiple time series design and to explore the impact of the intervention on mental health symptoms, sleep quality, quality of life, and physical activity levels. Methods We co-designed a 10-week web-based physical activity program delivered via a private Facebook group. We provided education and motivation around different topics weekly (eg, goal setting, overcoming barriers to exercise, and reducing sedentary behavior) and provided participants with a Fitbit. A multiple time series design was applied to assess psychological distress levels, with participants acting as their own control before the intervention. Results In total, 24 participants (12 first responders and 12 nominated support partners) were recruited, and 21 (88%) completed the postassessment questionnaires. High acceptability was observed in the qualitative interviews. Exploratory analyses revealed significant reductions in psychological distress during the intervention. Preintervention and postintervention analysis showed significant improvements in quality of life (P=.001; Cohen d=0.60); total depression, anxiety, and stress scores (P=.047; Cohen d=0.35); and minutes of walking (P=.04; Cohen d=0.55). Changes in perceived social support from family (P=.07; Cohen d=0.37), friends (P=.10; Cohen d=0.38), and sleep quality (P=.28; Cohen d=0.19) were not significant. Conclusions The results provide preliminary support for the use of social media and a multiple time series design to deliver mental health–informed physical activity interventions for first responders and their support partners. Therefore, an adequately powered trial is required. Trial Registration Australian New Zealand Clinical Trials Registry (ACTRN): 12618001267246; https://anzctr.org.au/Trial/Registration/TrialReview.aspx?ACTRN=12618001267246.


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