The mining minds digital health and wellness framework

Journal article


Banos, Oresti, Bilal Amin, Muhammad, Khan, Wajahat Ali, Afzal, Muhammad, Hussain, Maqbool, Kang, Byeong Ho and Lee, Sungyong 2016. The mining minds digital health and wellness framework. BioMedical Engineering OnLine. 15 (S1). https://doi.org/10.1186/s12938-016-0179-9
AuthorsBanos, Oresti, Bilal Amin, Muhammad, Khan, Wajahat Ali, Afzal, Muhammad, Hussain, Maqbool, Kang, Byeong Ho and Lee, Sungyong
Abstract

The provision of health and wellness care is undergoing an enormous transformation. A key element of this revolution consists in prioritizing prevention and proactivity based on the analysis of people’s conducts and the empowerment of individuals in their self-management. Digital technologies are unquestionably destined to be the main engine of this change, with an increasing number of domain-specific applications and devices commercialized every year; however, there is an apparent lack of frameworks capable of orchestrating and intelligently leveraging, all the data, information and knowledge generated through these systems. This work presents Mining Minds, a novel framework that builds on the core ideas of the digital health and wellness paradigms to enable the provision of personalized support. Mining Minds embraces some of the most prominent digital technologies, ranging from Big Data and Cloud Computing to Wearables and Internet of Things, as well as modern concepts and methods, such as context-awareness, knowledge bases or analytics, to holistically and continuously investigate on people’s lifestyles and provide a variety of smart coaching and support services. This paper comprehensively describes the efficient and rational combination and interoperation of these technologies and methods through Mining Minds, while meeting the essential requirements posed by a framework for personalized health and wellness support. Moreover, this work presents a realization of the key architectural components of Mining Minds, as well as various exemplary user applications and expert tools to illustrate some of the potential services supported by the proposed framework. Mining Minds constitutes an innovative holistic means to inspect human behavior and provide personalized health and wellness support. The principles behind this framework uncover new research ideas and may serve as a reference for similar initiatives.

Keywordshealth and wellness, prioritizing prevention and proactivity, empowerment of individuals
Year2016
JournalBioMedical Engineering OnLine
Journal citation15 (S1)
PublisherSpringer Science and Business Media LLC
ISSN1475-925X
Digital Object Identifier (DOI)https://doi.org/10.1186/s12938-016-0179-9
Web address (URL)http://hdl.handle.net/10545/624842
hdl:10545/624842
Publication dates15 Jul 2016
Publication process dates
Deposited29 May 2020, 12:16
Accepted2016
ContributorsKyung Hee University, 1732 Deokyoungdae-ro, Giheung-ug, Yongin-si, 446-701, Korea and University of Tasmania
File
File Access Level
Open
Permalink -

https://repository.derby.ac.uk/item/94vwq/the-mining-minds-digital-health-and-wellness-framework

Download files

  • 52
    total views
  • 0
    total downloads
  • 0
    views this month
  • 0
    downloads this month

Export as

Related outputs

Transformer-based active learning for multi-class text annotation and classification
Hussain, M. 2024. Transformer-based active learning for multi-class text annotation and classification. Digital Health. pp. 1-21. https://doi.org/10.1177/20552076241287357
Optimizing Aerospace Product Maintenance A Novel Multi-Modal Knowledge Graph and LLM Approach for Enhanced Decision Support
Awill, R., Khan, W., Hussain, M. and Anderson, B. 2024. Optimizing Aerospace Product Maintenance A Novel Multi-Modal Knowledge Graph and LLM Approach for Enhanced Decision Support. The Extended Semantic Web Conference 2024: Fabrics of Knowledge: Knowledge Graphs and Generative AI. The Extended Semantic Web .
A unified graph model based on molecular data binning for disease subtyping
Hassan Zada, M., Yuan, B, Khan, W., Anjum, A., Reiff-Marganiec, S. and Saleem, R. 2022. A unified graph model based on molecular data binning for disease subtyping. Journal of Biomedical Informatics. pp. 1-24. https://doi.org/10.1016/j.jbi.2022.104187
Large-scale Data Integration Using Graph Probabilistic Dependencies (GPDs)
Zada, Muhammad Sadiq Hassan, Yuan, Bo, Anjum, Ashiq, Azad, Muhammad Ajmal, Khan, Wajahat Ali and Reiff-Marganiec, Stephan 2020. Large-scale Data Integration Using Graph Probabilistic Dependencies (GPDs). IEEE. https://doi.org/10.1109/bdcat50828.2020.00028
Tweets classification and sentiment analysis for personalized tweets recommendation
Batool, Rabia, Satti, Fahad Ahmed, Hussain, Jamil, Khan, Wajahat Ali, Khan, Adil Mehmood and Hayat, Bashir 2020. Tweets classification and sentiment analysis for personalized tweets recommendation. Complexity in Deep Neural Networks. 2020. https://doi.org/10.1155/2020/8892552
Entropy Based Features Distribution for Anti-DDoS Model in SDN
Raja Majid Ali Ujjan, Zeeshan Pervez, Keshav Dahal, Wajahat Ali Khan, Asad Masood Khattak and Bashir Hayat 2021. Entropy Based Features Distribution for Anti-DDoS Model in SDN. Sustainability. 13 (3), pp. 1-27. https://doi.org/10.3390/su13031522
Ubiquitous health profile (UHPr): a big data curation platform for supporting health data interoperability
Satti, Fahad Ahmed, Ali, Taqdir, Hussain, Jamil, Khan, Wajahat Ali, Khattak, Asad Masood and Lee, Sungyoung 2020. Ubiquitous health profile (UHPr): a big data curation platform for supporting health data interoperability. Computing. https://doi.org/10.1007/s00607-020-00837-2
Data-driven knowledge acquisition, validation, and transformation into HL7 Arden Syntax
Hussain, Maqbool, Afzal, Muhammad, Ali, Taqdir, Ali, Rahman, Khan, Wajahat Ali, Jamshed, Arif, Lee, Sungyoung, Kang, Byeong Ho and Latif, Khalid 2015. Data-driven knowledge acquisition, validation, and transformation into HL7 Arden Syntax. Artificial Intelligence in Medicine. 92, pp. 51-70. https://doi.org/10.1016/j.artmed.2015.09.008
Multi-model-based interactive authoring environment for creating shareable medical knowledge
Ali, Taqdir, Hussain, Maqbool, Khan, Wajahat Ali, Afzal, Muhammad, Hussain, Jamil, Ali, Rahman, Hassan, Waseem, Jamshed, Arif, Kang, Byeong Ho and Lee, Sungyoung 2017. Multi-model-based interactive authoring environment for creating shareable medical knowledge. Computer Methods and Programs in Biomedicine. 150, pp. 41-72. https://doi.org/10.1016/j.cmpb.2017.07.010
An adaptive semantic based mediation system for data interoperability among health information systems
Khan, Wajahat Ali, Khattak, Asad Masood, Hussain, Maqbool, Amin, Muhammad Bilal, Afzal, Muhammad, Nugent, Christopher and Lee, Sungyoung 2014. An adaptive semantic based mediation system for data interoperability among health information systems. Journal of Medical Systems. 38 (8). https://doi.org/10.1007/s10916-014-0028-y
Mapping evolution of dynamic web ontologies
Khattak, A.M., Pervez, Z., Khan, Wajahat Ali, Khan, A.M., Latif, K. and Lee, S.Y. 2015. Mapping evolution of dynamic web ontologies. Information Sciences. 303, pp. 101-119. https://doi.org/10.1016/j.ins.2014.12.040
The intelligent medical platform: a novel dialogue-based platform for health-care services
Taqdir Ali, Jamil Hussain, Muhammad Bilal Amin, Musarrat Hussain, Usman Akhtar, Wajahat Ali Khan, Sungyoung Lee, Byeong Ho Kang, Maqbool Hussain, Muhammad Afzal, Hyeong Won Yu, Ubaid Ur Rehman, Ho-Seong Han, June Young Choi and Arif Jamshed The intelligent medical platform: a novel dialogue-based platform for health-care services. Computer. https://doi.org/10.1109/mc.2019.2924393
Exploring the dominant features of social media for depression detection
Hussain, J., Satti, F.A., Afzal, M., Khan, W.A., Bilal, H.S.M., Ansaar, M.Z., Ahmad, H.F., Hur, T., Bang, J., Kim, J.-I., Park, G.H., Seung, H., Lee, S. and Khan, W. Exploring the dominant features of social media for depression detection. Journal of Information Science. https://doi.org/10.1177/0165551519860469
Acquiring guideline-enabled data driven clinical knowledge model using formally verified refined knowledge acquisition method
Afzal, Muhammad, Malik, Khalid M., Ali, Taqdir, Ali Khan, Wajahat, Irfan, Muhammad, Jamshrf, Arif, Lee, Sungyoung and Hussain, Maqbool 2020. Acquiring guideline-enabled data driven clinical knowledge model using formally verified refined knowledge acquisition method. Computer Methods and Programs in Biomedicine. https://doi.org/10.1016/j.cmpb.2020.105701
Exploring the dominant features of social media for depression detection
Hussain, J., Satti, F. A., Afzal, M., Khan, W., Bilal, H. S. M., Ansaar, M. Z., Ahmad, H. F. and Hur, T. 2019. Exploring the dominant features of social media for depression detection. Journal of Information Science. 46 (6). https://doi.org/10.1177/0165551519860469
A data-driven knowledge acquisition system: an end-to-end knowledge engineering process for generating production rules
Ali, M., Ali, R., Khan, W.A., Han, S.C., Bang, J., Hur, T., Kim, D., Lee, S., Kang, B.H. and Khan, W. A data-driven knowledge acquisition system: an end-to-end knowledge engineering process for generating production rules. IEEE Access. https://doi.org/10.1109/access.2018.2817022
Change-aware scheduling for effectively updating linked open data caches
Usman Akhtar, Muhammad Asif Razzaq, Ubaid Ur Rehman, Muhammad Bilal Amin, Wajahat Ali Khan, Eui-Nam Huh and Sungyoung Lee Change-aware scheduling for effectively updating linked open data caches. IEEE Access. https://doi.org/10.1109/access.2018.2871511
A multimodal deep log-based user experience (UX) platform for UX evaluation.
Hussain, J., Khan, W., Hur, T., Bilal, H. S. M., Bang, J., Hassan, A. U., Afzal, M. and Lee, S. 2018. A multimodal deep log-based user experience (UX) platform for UX evaluation. Sensors. 18 (5), pp. 1-31. https://doi.org/10.3390/s18051622
OS2: Oblivious similarity based searching for encrypted data outsourced to an untrusted domain
Zeeshan Pervez, Mahmood Ahmad, Asad Masood Khattak, Naeem Ramzan and Wajahat Ali Khan 2017. OS2: Oblivious similarity based searching for encrypted data outsourced to an untrusted domain. PLos ONE. 12 (7), pp. 1-22. https://doi.org/10.1371/journal.pone.0179720