MedPath

Posture Analysis Through Machine Learning

Conditions
Health Behavior
Registration Number
NCT05034302
Lead Sponsor
SentiMetrix, Inc
Brief Summary

This study will include video-recorded data from 20 adults (age 18-85yrs) residing in San Luis Obispo, CA. Participants will also have their height and weight measured, complete demographic questionnaires, and one 3hour session with video recordings in a combination of naturalistic condition and semi-structured environments. The video data will be used to train machine learning models to automatically classify physical behavior as compared to ground-truth measures of manual annotation.

Detailed Description

This is a cross-sectional, single observation study. Individuals will be drawn from local surrounding clinics and the general community. All recruitment will include both men and women. Selection criteria include individuals between the ages of 18-85 years, no major chronic illness that impair mobility and able to complete activities of daily living without assistance. Participants will complete one three hour session where there will be one video camera set up within the home (i.e., static cameras). For approximately 30 minutes of the session they will complete a semi-scripted routine that will include sit to stand transitions, a timed up and go test, and scripted activities of daily living.

Researchers will use a video camera to record participant behavior within their daily life. For two of the three hours, researchers will be video recordings the participants normal (unscripted) activities. • For one hour of the session we will use two cameras, one that will be held by a researcher and one that will be set up on a tripod. During this hour we will ask participants to follow a semi-structured protocol:

* 10 minutes recording the empty space

* 10 minutes that include a timed up a go test (sit up from a chair and walk 10 feet), repeat the test 3 times.

* 6 minute walk test (walk continuously for 6 minutes)

* Four stage balance test

* The remainder of the time, participants will complete standard activities of daily living like household chores, eating or drinking.

Data will be annotated using an established behavioral observation software by training research assistants (ground-truth). The image data from videos will be used to train machine learning models to classify physical activities (e.g. ,'walking', 'sitting' or 'standing up"), information about behavior (e.g., location and purpose of the activity), and performance (e.g., walking speed and sit to stand transition times).

Recruitment & Eligibility

Status
UNKNOWN
Sex
All
Target Recruitment
20
Inclusion Criteria
  1. Age 18-85 years
  2. No major chronic illness that impair mobility
  3. Able to complete activities of daily living without assistance.
Exclusion Criteria

Not provided

Study & Design

Study Type
OBSERVATIONAL
Study Design
Not specified
Primary Outcome Measures
NameTimeMethod
Sit to stand transition timeUpon enrollment (one timepoint)

Time it takes to go from sitting to standing

Postural StatusUpon enrollment (one timepoint)

Sitting versus standing versus moving

Activity typeUpon enrollment (one timepoint)

Indoor vs outdoor vs driving

Secondary Outcome Measures
NameTimeMethod
Activity typeUpon enrollment (one timepoint)

lying, sitting, driving, standing, housework or office work, walking, running, sports, other

Activity intensityUpon enrollment (one timepoint)

Sedentary, light, moderate and vigorous intensity

Trial Locations

Locations (1)

CalPoly

🇺🇸

San Luis Obispo, California, United States

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