Early Stage Diabetes Prediction via Extreme Learning Machine
This addresses diabetes prediction for populations in developing and rural areas, but it appears incremental as it applies an existing method to a specific dataset.
The paper tackled the problem of late-stage diabetes diagnosis by proposing an extreme learning machine approach for early prediction using questionnaire data, aiming to alert users to seek medical help and prevent severe illness.
Diabetes is one of the chronic diseases that has been discovered for decades. However, several cases are diagnosed in their late stages. Every one in eleven of the world's adult population has diabetes. Forty-six percent of people with diabetes have not been diagnosed. Diabetes can develop several other severe diseases that can lead to patient death. Developing and rural areas suffer the most due to the limited medical providers and financial situations. This paper proposed a novel approach based on an extreme learning machine for diabetes prediction based on a data questionnaire that can early alert the users to seek medical assistance and prevent late diagnoses and severe illness development.