Abstract
The healthcare sector is rapidly evolving due to the exponential growth of
the digital space and emerging technologies. Maintaining and effectively handling large
quantities of data has become difficult in all industries. Furthermore, collecting helpful
knowledge from extensive data collection is a daunting challenge. There would be an
immense amount of data that continues to grow, making it harder and harder to find
some helpful information. In the healthcare industry, big data analytics offers a variety
of tools and strategies for detecting or predicting illnesses faster and delivering better
healthcare facilities to the right patient at the right time to increase the quality of life. It
is not as simple as one would imagine, given the myriad functional challenges that need
to be addressed within current health data analytics systems that offer procedural
frameworks for data collection, aggregation, processing, review, simulation, and
interpretation. This chapter aims to design a long-term, commercially viable, and
intelligent diabetes diagnosis approach with tailored care. Due to a lack of systematic
studies in the previous literature, this chapter describes the different computational
methods used in big data analytical techniques and the various phases and modules that
transform the healthcare economy from data collection to knowledge distribution. The
investigation findings indicate that the suggested framework will effectively offer
adapted evaluation and care advice to patients, emphasizing a knowledge exchange
approach and adapted data processing model for the smart diabetic system.
Keywords: Big Data in Healthcare, Convolution Neural Network, Deep Learning, Hybrid Model of Neural Network, Personalized Diagnosis System, Real-Time Analytics, Smart Diabetics System.