Publications by authors named "Lindsey J Tulipani"

Article Synopsis
  • Falls are common among individuals with multiple sclerosis (PwMS), leading to health complications, and fluctuations in MS symptoms can make it hard to assess fall risk through standard biannual clinical visits.
  • Recent advancements in remote monitoring using wearable sensors provide a promising method to better understand fall risk by analyzing daily activity data from PwMS in real-world environments.
  • A new dataset was created from 38 PwMS, which includes walking data and assessments to explore how free-living walking bouts relate to fall risk; results show that longer walking bouts are more effective for distinguishing between fallers and non-fallers compared to shorter ones.
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Falls and mobility deficits are common in people with multiple sclerosis (PwMS) across all levels of clinical disability. However, functional mobility observed in supervised settings may not reflect daily life which may impact assessments of fall risk and impairment in the clinic. To investigate this further, we compared the utility of sensor-based performance metrics from sit-stand transitions during daily life and a structured task to inform fall risk and impairment in PwMS.

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Background: One in two people with multiple sclerosis (PwMS) will fall in a three-month period. Predicting which patients will fall remains a challenge for clinicians. Standardized functional assessments provide insight into balance deficits and fall risk but their use has been limited to supervised visits.

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Falls are a significant problem for persons with multiple sclerosis (PwMS). Yet fall prevention interventions are not often prescribed until after a fall has been reported to a healthcare provider. While still nascent, objective fall risk assessments could help in prescribing preventative interventions.

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Background: Approximately half of the 2.3 million people with multiple sclerosis (PwMS) will fall in any three-month period. Currently clinicians rely on self-report measures or simple functional assessments, administered at discrete time points, to assess fall risk.

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Article Synopsis
  • Walking issues are common in people with multiple sclerosis (PwMS), impacting their quality of life and typically measured using self-reports and clinical tests that may not capture real-world walking fully.
  • Wearable sensors, which can objectively assess various aspects of walking and provide data from everyday life, are under-researched in PwMS compared to other populations like older adults.
  • Current studies have begun to use wearable tech but have mostly focused on pace, with limited exploration of important gait characteristics like variability, asymmetry, and complexity during daily activities, indicating a need for further research in this area.*
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