The applications of data mining and machine learning in Bangladesh for disease pattern analysis and prediction
View/ Open
Date
2020Publisher
Brac UniversityAuthor
Mahmud, Mahmudul HasanMetadata
Show full item recordAbstract
Over the years, data mining and machine learning have proved to be very convenient in
numerous fields of science and technology and their applications in the medical sector is an
emerging one. With the world population rate increasing by the year, the medical sector is
generating immense amount of data every day. By storing this data and analyzing it for disease
patterns, using numerous data mining and machine learning techniques, predictive models can be
built to assess future risk to potential patients. These models may have a very important role in a
developing country like Bangladesh, where Non-Communicable Diseases (NCD) like diabetes
and heart diseases have affected a large portion of its population. Clinical diagnosis of these
diseases requires a lot of tests which complicates the prediction process and proves to be
expensive for most patients as well. Predictive models based on data mining and machine
learning techniques provides a much more efficient system of predicting future risks for patients,
saving lives and a lot of money. This project looks at several data mining and machine learning
techniques for analyzing medical data in order to recognize disease patterns, compare their
performances and eventually produces a model with the highest accuracy in disease prediction.