Diabeto - Diabetes Prediction using oneAPI

Sara Saxena

Sara Saxena

Bengaluru, Karnataka

This project is designed to predict the likelihood of a person developing diabetes based on a number of risk factors. The goal of tproject is to help identify individuals who are at high risk for the disease so that preventive measures can be taken early on to minimize the likelihood of complication ...learn more

Project status: Published/In Market

oneAPI, Artificial Intelligence, Cloud

Intel Technologies
DevCloud, oneAPI, DPC++, Intel GPA, Intel Python, Other

Code Samples [1]Links [1]

Overview / Usage

Diabetes is a chronic disease that affects the body's ability to produce or use insulin, a hormone that regulates blood sugar levels. There are two main types of diabetes: type 1 diabetes, which is usually diagnosed in childhood and is caused by the immune system attacking the cells that produce insulin, and type 2 diabetes, which is usually diagnosed in adulthood and is caused by a combination of genetic and lifestyle factors.The effects of diabetes can be serious and long-lasting. High blood sugar levels can damage the blood vessels, nerves, and organs, leading to a range of health complications.

Methodology / Approach

Machine learning can be used to develop predictive models that can analyze health-related data and identify individuals who are at risk of developing diabetes. These models can use a wide range of data such as age, BMI, glucose levels, insulin levels, and other health-related features to accurately predict the likelihood of diabetes.The effects of predicting diabetes using ML are numerous and significant. Firstly, it can help healthcare professionals to identify individuals who are at risk of developing diabetes at an early stage. This allows for early intervention and preventive measures, such as lifestyle changes and medication, to be put in place to manage the disease and reduce its complications.
Secondly, predicting diabetes using ML can help to reduce the burden of the disease on healthcare systems and the wider society. Early detection and prevention can reduce the number of individuals who require medical intervention for complications arising from diabetes, reducing healthcare costs and improving the quality of life of individuals with diabetes.
Finally, ML-based diabetes prediction models can also be used to gain insights into the underlying causes of diabetes and how to prevent it. These models can identify the most important factors that contribute to the risk of diabetes, helping healthcare professionals to develop more effective prevention and treatment strategies.
In summary, predicting diabetes using ML is crucial for the early detection and prevention of the disease. It can help to reduce the burden of the disease on healthcare systems and the wider society and provide valuable insights into the underlying causes of diabetes.

Technologies Used

There can be significant value for businesses in using a prediction model to predict diabetes using Intel OneAPI.Firstly, diabetes is a significant health concern, and the healthcare business could benefit greatly from accurate prediction models. For example, healthcare providers could use such a model to identify patients at high risk of developing diabetes and provide early intervention and preventive care. This can help reduce healthcare costs and improve patient outcomes.
Secondly, businesses in the insurance industry could also benefit from a diabetes prediction model. They could use the model to identify individuals who are at high risk of developing diabetes and adjust insurance premiums accordingly. This can help insurance companies reduce their risk and improve their profitability.
Thirdly, businesses in the food and beverage industry could also use a diabetes prediction model to develop and market products that are specifically targeted toward individuals with diabetes. This can help these businesses expand their customer base and increase their revenue.

Repository

https://github.com/aresgodd/Diabeto

Collaborators

3 Results

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