An Automatic Diabetes Risk Assessment System Using IoT Cloud Platform

Diabetes mellitus is a disease that impairs the body’s ability to process blood sugar due to insufficient production of the hormone called insulin or the body’s resistant towards insulin or both. There are three types of diabetes, namely, type 1, type 2, and gestational diabetes. Among these types, type 2 is common and it is associated with lifestyle risk factors such as inadequate physical activity, poor diet and increased body mass index and hereditary factors. If it is not managed carefully, diabetes can lead to a accumulation of blood sugars which can increase the risk of obtaining stroke, heart and kidney diseases. Therefore a personalized advisory system which monitors the health condition of the user through sensors acquire his/her diet and day-to-day activity information through interactive platforms, store them in a common cloud platform, process them through machine learning techniques, and provide valid health related personalized advices to manage their health condition is the need of the hour (American Diabetes Association, Diabetes Care 29:s4–s42, 2006). The proposed system uses an IoT Cloud platform named ThingSpeak, where the sensor data can be sent to the cloud for storing, analyzing, and visualizing the data with MATLAB or other software and our own applications can be developed and operated by MathWorks. A web application has been developed and made available to the users to manage diabetes or prevent them from diabetes and its dangerous complications.

[1]  Shreejay Mall,et al.  Diet monitoring and management of diabetic patient using robot assistant based on Internet of Things , 2017, 2017 International Conference on Emerging Trends in Computing and Communication Technologies (ICETCCT).

[2]  Wathiq Mansoor,et al.  Diabetes Patients Monitoring by Cloud Computing , 2017 .

[3]  Araceli Queiruga Dios,et al.  Proposal of Wearable Sensor-Based System for Foot Temperature Monitoring , 2017, DCAI.

[4]  Beverley Balkau,et al.  AUSDRISK: an Australian Type 2 Diabetes Risk Assessment Tool based on demographic, lifestyle and simple anthropometric measures , 2010, The Medical journal of Australia.

[5]  Mohammad Khubeb Siddiqui,et al.  Application of data mining: Diabetes health care in young and old patients , 2013, J. King Saud Univ. Comput. Inf. Sci..

[6]  A. Rissanen,et al.  Take Action to Prevent Diabetes – The IMAGE Toolkit for the Prevention of Type 2 Diabetes in Europe , 2010, Hormone and metabolic research = Hormon- und Stoffwechselforschung = Hormones et metabolisme.

[7]  Ning Wang,et al.  A monitoring system for type 2 diabetes mellitus , 2012, 2012 IEEE 14th International Conference on e-Health Networking, Applications and Services (Healthcom).

[8]  Julián Colorado,et al.  Wearable-Based Human Activity Recognition Using an IoT Approach , 2017, J. Sens. Actuator Networks.

[9]  Shivananda R. Poojara,et al.  Predictive analysis of diabetic patient data using machine learning and Hadoop , 2017, 2017 International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC).

[10]  V. Mohan,et al.  A simplified Indian Diabetes Risk Score for screening for undiagnosed diabetic subjects. , 2005, The Journal of the Association of Physicians of India.