From: mohamed Lahby <lahby@ieee.org>
To: caml-list@inria.fr
Subject: [Caml-list] [Free Springer Book, May 16th] Contributing a chapter on Advanced AI and Internet of Health Things Technologies for Combating Pandemic
Date: Sat, 14 May 2022 14:54:31 +0100 [thread overview]
Message-ID: <CAMo8cMojyiABi_HgyLyiO4XxuKAddHpyXFn21ZbZUB1LKqCxJg@mail.gmail.com> (raw)
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Dear Colleagues, Students and /Fellows,
We are editing a Springer Book entitled *“Advanced AI and Internet of
Health Things Technologies for Combating Pandemic**”.* The Book will
be published
by Springer Book series "Internet of Things"
https://www.springer.com/series/11636
We cordially invite you to contribute a chapter. The full chapter is due
later this year but for now, We will just need the following:
- Author List
- Chapter Title
- Abstract (between 2 and 6 sentences)
The last deadline to submit your short abstract directly at *lahby@ieee.org
<lahby@ieee.org>* is * May, 16th, 2022 (Firm deadline)*
NB: There are no submission or acceptance fees for manuscripts submitted to
this book for publication
The tentative structure of the book (*but are not limited to the following
Parts*) is mentioned below:
*PART 1: State-of-the-Art and Healthcare 5.0*
- Chapter 1. Machine Learning Techniques for Pandemic Forecasting: Survey
- Chapter 2. Deep Learning Techniques for Pandemic Forecasting :Survey
- Chapter 3. Machine Learning in Healthcare 5.0 Research: Survey
*PART 2: Machine learning Techniques and Pandemic/COVID-19*
- Chapter 4. Machine learning Models for combating pandemic
- Chapter 5. Machine learning techniques for predicting Mental Health
- Chapter 6. Artificial Intelligence Techniques in the Fight Against
COVID-19
- Chapter 7. Gene expression analyses and Pandemic/COVID-19
- Chapter 8. Explainable AI for Predicting COVID-19 patients
*PART 3: Deep Learning Models and Pandemic/COVID-19*
- Chapter 9. Effective Screening and Face Mask for Pandemic/COVID-19
- Chapter 10. Deep Convolutional Neural Network and COVID-19
- Chapter 11. CT Scan Images and COVID-19
- Chapter 12. Large scale lung COVID-19 CT image segmentation
- Chapter 13. COVID-19 information retrieval Tweets and Deep
- Learning Model
- Chapter 14. Chest X-ray Images and Deep Learning for combating
Pandemic/COVID-19
*PART 4: Internet of Health Things for Combating Pandemic/COVID-19*
- Chapter 15. IoT Solutions for Combating Pandemic/COVID-19
- Chapter 16. Machine Learning based IoT Solutions for Combating
Pandemic/COVID-19
- Chapter 17. Deep Learning based IoT Solutions for Combating
Pandemic/COVID-19
- Chapter 18. Internet of Medical Things (IoMT) for Combating
Pandemic/COVID-19
- Chapter 19. Remote assisted living and IoHT
- Chapter 20. Security of Internet of Medical Things
*PART 5: Case Studies and Frameworks for Combating Pandemic/COVID-19*
- Chapter 21. Case studies and Pandemic/COVID-19
- Chapter 22.Frameworks and Pandemic/COVID-19
Looking forward to hearing from you soon. Feel free to share with your
network as well
Best regards
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