- From: George Mastorakis <mastorakis@gmail.com>
- Date: Mon, 17 Jul 2023 11:24:16 +0300
- To: undisclosed-recipients: ;
- Message-ID: <2bedb2f0-9d7a-8635-d8e8-fe1aae4cbd14@gmail.com>
> *Call for Book Chapters for the Springer-Verlag Handbook:*** > > *“Intelligent Technologies for Healthcare Business Applications”*** > > * (Indexed by Scopus)* > > */Editors/* > > *Athina Bourdena, Hellenic Mediterranean University, Greece* > > *Constandinos X. Mavromoustakis, University of Nicosia, Cyprus* > > *Evangelos K. Markakis, Hellenic Mediterranean University, Greece* > > *George Mastorakis, Hellenic Mediterranean University, Greece* > > *Evangelos Pallis, University of West Attica, Greece* > > ** > > The healthcare industry has long been at the forefront of innovation > and technological advancement, and intelligent technologies have the > potential to revolutionize the way healthcare businesses operate. From > improving patient outcomes to streamlining administrative processes, > intelligent technologies can offer a range of benefits to healthcare > businesses. One of the most promising areas for intelligent > technologies in healthcare is in the field of predictive analytics. > Predictive analytics uses data mining, machine learning, and other > advanced analytics techniques to identify patterns and relationships > in large data sets. By analyzing patient data, healthcare businesses > can identify trends and risk factors that can help them to predict and > prevent health problems before they occur. For example, predictive > analytics can be used to identify patients who are at high risk of > developing a particular disease or condition, and to provide targeted > interventions to prevent the condition from developing. Another > promising area for intelligent technologies in healthcare is in the > field of telehealth (telemedicine). Telehealth allows healthcare > professionals to provide remote care to patients, using video > conferencing, remote monitoring devices, and other technologies. > Telehealth can help to improve access to healthcare, particularly for > patients in rural or remote areas, and can also help to reduce > healthcare costs by minimizing the need for in-person visits. > Intelligent technologies such as machine learning and natural language > processing can be used to analyze patient data collected through > telehealth visits, and to provide personalized recommendations for care. > > Intelligent technologies can also be used to improve the efficiency of > administrative processes in healthcare businesses. For example, > machine learning algorithms can be used to analyze patient data and > identify patterns that can help to optimize scheduling and resource > allocation. Similarly, natural language processing can be used to > automate the processing of medical records and other administrative > documents, freeing up healthcare professionals to focus on patient > care. One of the most exciting areas for intelligent technologies in > healthcare is in the development of personalized medicine. > Personalized medicine uses data analytics and other advanced > technologies to identify the unique characteristics of individual > patients, and to tailor treatment plans to their specific needs. For > example, genetic data can be used to identify patients who are at high > risk of developing certain diseases, and to provide personalized > interventions to prevent or treat those conditions. However, there are > also some challenges and concerns associated with the use of > intelligent technologies in healthcare. One of the biggest concerns is > around data privacy and security. Healthcare businesses need to ensure > that patient data is kept secure and confidential, and that it is only > used for legitimate purposes. They also need to ensure that their > employees are trained to use intelligent technologies safely and > ethically, and that they understand the potential risks and > limitations of these technologies. In a general context, intelligent > technologies have the potential to transform the healthcare industry, > offering a range of benefits from improved patient outcomes to > streamlined administrative processes. However, healthcare businesses > need to be aware of the challenges and concerns associated with the > use of these technologies, and to take steps to ensure that they are > used safely and ethically. By doing so, they can unlock the full > potential of intelligent technologies to improve healthcare outcomes > for patients around the world. > > Sections of interest include but are /_not limited_/ to: > > /Section I — Introduction of AI and healthcare/ > > /Section II — Architectures and intelligent systems for AI and > healthcare convergence/ > > /Section III— IoT with Machine Learning and Artificial System > technologies/ > > /Section IV— AI and 6G mobile systems/ > > /Section V— AI enabled healthcare systems/ > > /Section VI— Performance Evaluation of Deep Learning and IoT-related > mechanisms/ > > /We strongly welcome _other topic suggestions_//./ > > > _Schedule & Deadlines_ > > ·*_31^st July 2023_* > Full chapter submission via e-mail: gmastorakis@hmu.gr > <mailto:gmastorakis@hmu.gr> > > ·*_30^th September 2023_* > Review comments > > ·*_31^st October 2023_* > Submission of the revised version > > ·*_30^th November 2023 _* > Final acceptance notification > > ·*_31^st December 2023_**__* > Final manuscript > > > _Manuscript Preparation_ > > * Please follow the manuscript formatting guidelines below and > submit the original version (in */Microsoft word/*) and or > */LaTex/* format as per the guidelines > (URL:https://www.springer.com/us/authors-editors/book-authors-editors/your-publication-journey/manuscript-preparation). > * Each final manuscript should be about 25-35 pages long > (formatted). Depending on the number of submissions, longer > manuscripts will also be accepted. > * Submit your chapter(s) via e-mail: gmastorakis@hmu.gr > <mailto:gmastorakis@hmu.gr> >
Received on Monday, 17 July 2023 08:24:36 UTC