Globally a large number of people are suffering from diabetes. In 1990, 11.3 million people were diabetic across the world which has increased up to 22.9 million people in 2017. Almost 46% of people are unaware of that they are diabetic which in turn cause serious complication. It is on the
Diagnosis and Classification of Diabetes Mallitus using Bio-Signals
Globally a large number of people are suffering from diabetes. In 1990, 11.3 million people were
diabetic across the world which has increased up to 22.9 million people in 2017. Almost 46% of
people are unaware of that they are diabetic which in turn cause serious complication. It is on the
list of the first ten deadly diseases in most countries. Its rate is increasing alarmingly worldwide.
According to statistics, it would be almost 366 million people in 2030. There are three main
types of diabetes named as Type 1, Type 2, and Gestational diabetes. In the proposed method,
the aim is to design a classification system that can distinguish between diabetic and non-diabetic
patients accurately using a non-invasive technique. The proposed method will use PPG as signals
and using ML and DL classifiers such as SVM, KNN, etc. it will distinguish between healthy
and diabetic individuals.
A biomedical signal-based project that detects diabetes in a person and can also tell us that what
type of diabetes is present in that person. So that according to type cure can be recommended
like if it is type 1 then use insulin if it types 2 then physical activities such as weight loss,
prevention, and healthy diet, etc. are required. If diabetes is diagnosed early then it can control
and the patient is not much affected. So, it is compulsory to have more and more work on it. Our
main objective is to analyze the data given and make a system that can analyze and detect that
subject as healthy or diabetic. Then if the subject is diabetic then what type it is. To measure and
analyze accurately and efficiently we are developing a system having software as well as
hardware.
The first step of the project is to acquire data through Bio-ensors (ECG and PPG). The data is taken both from online sources and in real-time. The data is then cleaned and the region of interest from the bio-signals is extracted. Through which the features are obtained. The machine learning models are trained on the resultant feature file and we get the acuuracy of diagnosis.
Raspeberry Pi 3b+ is used as the operating and standalone system to diagnose the diabetes. The real time data is obtained using the two sensors called: MAX30100 for PPG and AD8232 for ECG. Arduino Uno is used as the Analog to Digital (ADC) converter for the analog sensors. The LCD will display all the details of data being obtained and trained on. The final results of the diagnosis of the diabetes will be displayed there.
| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| Raspberry pi 3b+ Processor | Equipment | 1 | 20000 | 20000 |
| MAX 30100 PPG Sensor | Equipment | 1 | 1000 | 1000 |
| AD 8232 ECG Sensor | Equipment | 3 | 2000 | 6000 |
| Arduino Uno | Equipment | 2 | 2000 | 4000 |
| LCD Display | Equipment | 1 | 10000 | 10000 |
| Report Printing | Miscellaneous | 3 | 250 | 750 |
| Circuit Components | Equipment | 1 | 5000 | 5000 |
| Total in (Rs) | 46750 |
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