Enabling Healthcare 4.0 for Pandemics. Группа авторов
of Congress Cataloging-in-Publication Data
ISBN 978-1-119-76879-1
Cover image: Russell Richardson
Cover design by Pixabay.Com
Set in size of 11pt and Minion Pro by Manila Typesetting Company, Makati, Philippines
Printed in the USA
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Preface
The history of the universe has seen remarkable milestones in human evolution. We have evolved over the ages and witnessed a lot of disruption in this journey. However, human beings have matured and are now capable of harnessing the environment to make their lives easier. This ability of humans to adapt and make the best of natural resources has been a spectacular achievement. Today, we continue to explore existing technology and newer emerging technologies are also being rendered for making human lives more comfortable and reliable. However, there still are certain aspects of nature which remain unexplored by us. Several decades ago, epidemics were a common phenomenon which affected human civilizations economically as well as socially. Millions of lives were lost, but the spread of epidemics was limited to some particular geographical boundaries, and the demographics were confined. Currently, society has witnessed a newer phenomenon known as a “pandemic,” which is even a more critical situation compared to an epidemic as its geographical boundaries are not fixed and it spreads very quickly even before it can be sensed. COVID-19 is such a pandemic, as it originated in late 2019 in China and within a span of just three months affected every country across the globe.
The technological developments in the fields of artificial intelligence (AI) and machine learning (ML) are very exciting and encouraging. Using these techniques, we are able to make remarkable predictions and decisions. But our experiences during the current outbreak show that our technological arsenal was incapable of predicting the outbreak well in advance. Though there have been tremendous efforts by researchers to make such predictions and explore AI and allied technologies to tackle such problems and minimize their impact, this current pandemic has exposed many open issues. Apart from socioeconomic issues, such incidents have a longterm impact on civilizations. Due to COVID-19 the world came to a halt—there were no flights, trains, buses, cars and machines running anywhere. Industries and organizations across the globe were not prepared for such a big disruption in their daily operations and changes in the market supply and demand equilibrium. Though some countries have been able to control the outbreak in masses, by and large all the processes were trial and error approaches; and it has been observed that when restrictions on movements and recommended gathering size limitations are removed, the pandemic starts to spread its wings again.
In this book, we will explore the current state of practice using Healthcare 4.0 as a roadmap for harnessing AI, ML, the internet of things (IoT) and other modern cognitive technologies to help deal with various aspects of a pandemic outbreak. There is a need to improvise our healthcare system with the increasing intervention of modern computing and data management platforms to increase the reliability of human processes and life expectancy. There is also an urgent need to come up with smart IoT-based systems which can aid in detection, prevention and cure of these pandemics with precision. There are lots of challenges associated with all the open issues. The objective of this book is to provide a new approach for preparing for and organizing technological warfare against future pandemics with advances in Healthcare 4.0.
The significant contributions made by various authors have contributed to making this book a ready reference for developing an understanding of the technological resolutions sought in order to devise tools for addressing pandemic situations like those we are currently facing. The chapters of this book are related to processes and technologies that may be helpful for dealing with pandemics of the modern era and other such related unforeseen natural disasters. A brief chapter-by-chapter description of the book follows:
Chapter 1, “COVID-19 and Machine Learning Approaches to Deal with the Pandemic,” gives an overview of the efforts and strategies used by organizations across the globe during the COVID-19 pandemic using AI and ML techniques in various fields ranging from manufacturing, resource management, remote monitoring, etc. In addition, an ML approach being used by researchers for supporting healthcare-related issues raised by COVID-19 is discussed.
Chapter 2, “Healthcare System 4.0 Perspectives on the COVID-19 Pandemic,” explores the leading HCS 4.0 techniques that could address this pandemic, highlighting real-world applications, opportunities, challenges and future insights.
Chapter 3, “Analysis and Prediction of COVID-19 Using Machine Learning,” makes use of various Python libraries, namely, scikit-learn, matplotlib for data visualization, NumPy and pandas for data manipulation.
Chapter 4, “Rapid Forecasting of a Pandemic Outbreak Using Machine Learning,” proposes a strategy for the preliminary estimation of how COVID-19 spreads across the globe, its possible treatments, and the prevention of outbreaks by making use of technologies like ML, which may prove beneficial in saving the human race from pandemics like COVID-19 in the future.
Chapter 5, “Rapid Forecasting of Pandemic Outbreak Using Machine Learning: The Case of COVID-19,” assesses different models and proposes an early warning system that uses AI to make conjectures on the likelihood of potential flare-ups of ailments.
Chapter 6, “Emerging Technologies for Handling Pandemic Challenges,” focuses on computational strategies and factors wherein AI and big data can help in dealing with the gigantic, unprecedented number of records obtained from open health surveillance.
Chapter 7, “Unfolding the Potential of Impactful Emerging Technologies Amid COVID-19,” reviews the technologies used in combating previous epidemics such as Ebola and SARS, and provides significant insights into emerging technologies used to combat COVID-19. It classifies the technology into five major groups and then discusses its use in the least developed, developing, and developed countries.
Chapter 8, “Advances in Technology: Preparedness for Handling Pandemic Challenges,” outlines the role of technological advancements during the time of the pandemic. As digital technology intervenes to control the disastrous effect on humankind, it simultaneously introduces several challenges that are highlighted in the chapter.
Chapter 9, “Emerging Technologies for COVID-19,” presents several innovative emerging technologies for handling the pandemic challenges discussed. The new technologies that can tackle these key challenges include blockchain, drone facilities, Mobile APK, wearable sensing, internet of healthcare things, AI, 5G and virtual reality. Soon these technologies will be used in managing pandemic challenges.
Chapter 10, “Emerging Techniques for Handling Pandemic Challenges,” proposes the latest technologies used in making predictions that are more accurate than ever in dealing with crisis situations such as a pandemic. It covers all major factors and emerging technologies that will help to efficiently manage, handle and control such pandemic situations now and in the future.
Chapter 11, “A Hybrid Metaheuristic Algorithm for Intelligent Nurse Scheduling,” addresses issues such as staff scheduling problems in hospitals. The challenge is to assign nurses to various