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"The significance of detecting diabetes and pre-diabetes is related to the risk of
developing complications from high blood glucose levels. Studies have found that
early signs of diabetic complications such as retinopathy and cardiovascular disease
were found relatively early in the diabetes diagnosis, implying that these disease
states were already present or developing well before an official diagnosis of diabetes
was made. Because diabetes complications can develop before a patient is diagnosed,
early detection and intervention can be extremely beneficial in the long run. The risk
of developing type 2 diabetes from pre-diabetes is quite high, especially if untreated.
When diabetes is detected early, the patient may not only delay, but also avoid, the
development of diabetes. The prevention of disease is far less expensive than the
treatment of hyperglycaemia and diabetic complications. The disease ""Diabetes
Mellitus"" is one of the world's most common critical illnesses. Diabetes affects 8.5
percent of persons over the age of 18 and is responsible for 1.6 million deaths
annually, according to the World Health Organization. As a result of the research, it
was discovered many studies have been conducted for diabetes prediction, but no
specific mechanism has been implemented to pre-determine the best treatment to be
prescribed for that. As a result, I chose Ayurveda as my treatment option in efforts to
add value to both diabetes prevention and the Sri Lankan Ayurveda industry.
This project aims to dissect the factors that influence the diagnosis process of diabetes
patients. To Design, Implement, Test, and Evaluate a Machine learning model that
inputs the diagnosis of the patient and utilizes artificial intelligence, optimization
algorithms in a probabilistic context to provide time-dependent optimal decisions on
the prediction of diabetes and the treatment to be prescribed according to the
Ayurveda clinical data of the patient. This supports the decisions of the specialists to
produce this medicine to deliver the best-customized treatment for the analysed
disease. Meanwhile, providing the required data for the sources to be used, edit and
remove these sources, and storing and retrieving the data which is prescribed to
patient and their information through efficient database management systems. Also,
this project aims to collect more data on treatment customization for patients for
algorithm training purposes for more accurate customization of treatments in the
future.
Author has incorporated strategies to optimally predict diabetes diagnosis and the
most suitable Ayurveda treatment for it using a real-life data set of diabetes clinical
data and the outcome manually matched with the best Ayurveda herbal treatment with
the help of Ayurveda Physicians. Pre-processing tasks like scaling, testing, training,
and managing would be included, as well as best parameter selection for increased
accuracy. Diabetes diagnosis and treatment prediction were predicted using
classification algorithms described in the literature, with an accuracy of 88 percent for
diabetes prediction and 55 percent for treatment prediction. This project also funds a
treatment prescribing system that allows physicians to amend and personalize
treatments for patients, as well as manage patient records to store and retrieve data. " |
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