TY - JOUR
T1 - Using handgrip strength to screen for diabetes in developing countries
AU - Eckman, Molly
AU - Gigliotti, Christopher
AU - Sutermaster, Staci
AU - Butler, Peter J.
AU - Mehta, Khanjan
N1 - Publisher Copyright:
© 2015 Taylor and Francis.
PY - 2016/1/2
Y1 - 2016/1/2
N2 - Lack of access to healthcare in the developing world has created a need for locally-based primary and pre-primary healthcare systems. Many regions of the world have adopted Community Health Worker (CHW) programmes, but volunteers in these programmes lack the tools and resources to screen for disease. Because of its simplicity of operation, handgrip strength (HGS) measurements have the potential to be an affordable and effective screening tool for conditions that cause muscle weakness in this context. In the study described in this report, translators were used to collect data on age, gender, height, weight, blood pressure, HGS and key demographic data. HGS was significantly lower for diabetics than patients without diabetes. A simple binary logistic model was created that used HGS, age, blood pressure and BMI to predict a patients probability of having diabetes. This study develops a predictive model for diabetes using HGS and other basic health measurements and shows that HGS-based screening is a viable method of early detection of diabetes.
AB - Lack of access to healthcare in the developing world has created a need for locally-based primary and pre-primary healthcare systems. Many regions of the world have adopted Community Health Worker (CHW) programmes, but volunteers in these programmes lack the tools and resources to screen for disease. Because of its simplicity of operation, handgrip strength (HGS) measurements have the potential to be an affordable and effective screening tool for conditions that cause muscle weakness in this context. In the study described in this report, translators were used to collect data on age, gender, height, weight, blood pressure, HGS and key demographic data. HGS was significantly lower for diabetics than patients without diabetes. A simple binary logistic model was created that used HGS, age, blood pressure and BMI to predict a patients probability of having diabetes. This study develops a predictive model for diabetes using HGS and other basic health measurements and shows that HGS-based screening is a viable method of early detection of diabetes.
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U2 - 10.3109/03091902.2015.1112855
DO - 10.3109/03091902.2015.1112855
M3 - Article
C2 - 26623523
AN - SCOPUS:84955633682
SN - 0309-1902
VL - 40
SP - 8
EP - 14
JO - Journal of Medical Engineering and Technology
JF - Journal of Medical Engineering and Technology
IS - 1
ER -