4 research outputs found
Monitoring Functional Capability of Individuals with Lower Limb Amputations Using Mobile Phones
To be effective, a prescribed prosthetic device must match the functional requirements and capabilities of each patient. These capabilities are usually assessed by a clinician and reported by the Medicare K-level designation of mobility. However, it is not clear how the K-level designation objectively relates to the use of prostheses outside of a clinical environment. Here, we quantify participant activity using mobile phones and relate activity measured during real world activity to the assigned K-levels. We observe a correlation between K-level and the proportion of moderate to high activity over the course of a week. This relationship suggests that accelerometry-based technologies such as mobile phones can be used to evaluate real world activity for mobility assessment. Quantifying everyday activity promises to improve assessment of real world prosthesis use, leading to a better matching of prostheses to individuals and enabling better evaluations of future prosthetic devices.Max Nader Center for Rehabilitation Technologies and Outcome
Medicare functional classification levels (K-levels).
<p>Medicare functional classification levels (K-levels).</p
Data acquisition setup.
<p>A) The G1 android mobile phone used in this experiment. B) The axes of the tri-axial accelerometer relative to the image in A–xyz as red, green, blue, respectively. C) The phone was placed on the back of the subject so that the three axes pointed up, left, and to the back of the subject, as indicated in D.</p
The distribution of activity level for each subject.
<p>To aid interpretation, the participants have been ordered based on overall activity level (medium+high). The IDs correspond to the subject K-levels, and subscripts are given to match the description of subjects in <a href="http://www.plosone.org/article/info:doi/10.1371/journal.pone.0065340#pone-0065340-t002" target="_blank">Table 2</a>. The gray transparency indicates the 95% confidence interval using bootstrapping over days recorded.</p