BOOKS - Blockchain and Machine Learning for e-Healthcare Systems
Blockchain and Machine Learning for e-Healthcare Systems - Balusamy Balamurugan January 8, 2021 PDF  BOOKS
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Blockchain and Machine Learning for e-Healthcare Systems
Author: Balusamy Balamurugan
Year: January 8, 2021
Format: PDF
File size: PDF 23 MB



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Blockchain and Machine Learning for eHealthcare Systems: A New Paradigm for Human Survival As we continue to evolve in the digital age, it has become increasingly clear that the intersection of blockchain and machine learning technologies holds the key to unlocking the potential of eHealthcare systems. In their book "Blockchain and Machine Learning for eHealthcare Systems authors [Author Names] delve into the challenges facing the healthcare industry today and offer a comprehensive solution that leverages these cutting-edge technologies to address them. The authors argue that by understanding the process of technology evolution, we can develop a personal paradigm for perceiving the technological process of developing modern knowledge, which is crucial for the survival of humanity and the unification of people in a warring state. The Need for Blockchain and Machine Learning in Healthcare One of the primary challenges facing the healthcare industry today is the slow access to medical data, poor system interoperability, lack of patient agency, and issues with data quality and quantity for medical research. Blockchain technology offers a solution to these problems by facilitating and securing the storage of information in such a way that doctors can see a patient's entire medical history, while researchers only see statistical data instead of any personal information. This ensures that patients' privacy is maintained while still allowing for valuable insights to be gained from their medical records. Machine learning algorithms can then make use of this data to notice patterns and provide accurate predictions, offering more support for patients and improving clinical outcomes.
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