| Literature DB >> 34527076 |
Yan Cheng Yang1,2, Saad Ul Islam3, Asra Noor3, Sadia Khan3, Waseem Afsar3, Shah Nazir3.
Abstract
Artificial intelligence (AI) is making computer systems capable of executing human brain tasks in many fields in all aspects of daily life. The enhancement in information and communications technology (ICT) has indisputably improved the quality of people's lives around the globe. Especially, ICT has led to a very needy and tremendous improvement in the health sector which is commonly known as electronic health (eHealth) and medical health (mHealth). Deep machine learning and AI approaches are commonly presented in many applications using big data, which consists of all relevant data about the medical health and diseases which a model can access at the time of execution or diagnosis of diseases. For example, cardiovascular imaging has now accurate imaging combined with big data from the eHealth record and pathology to better characterize the disease and personalized therapy. In clinical work and imaging, cancer care is getting improved by knowing the tumor biology and helping in the implementation of precision medicine. The Markov model is used to extract new approaches for leveraging cancer. In this paper, we have reviewed existing research relevant to eHealth and mHealth where various models are discussed which uses big data for the diagnosis and healthcare system. This paper summarizes the recent promising applications of AI and big data in medical health and electronic health, which have potentially added value to diagnosis and patient care.Entities:
Mesh:
Year: 2021 PMID: 34527076 PMCID: PMC8437645 DOI: 10.1155/2021/5812499
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.238
Existing research in the area.
| S. no. | Title | Year |
|---|---|---|
| 1 | Modeling future price and diffusion in health technology assessments of medical devices | 2016 |
| 2 | Big data effort in radiation oncology | 2016 |
| 3 | Processing and analyzing healthcare big data on cloud computing | 2016 |
| 4 | Decision rules for health system strengthening | 2016 |
| 5 | Use and analysis of big data in dermatology | 2017 |
| 6 | AI in precision cardiovascular medicine | 2017 |
| 7 | Disaggregating asthma | 2017 |
| 8 | Predicting the risk of acute care readmissions among rehabilitation inpatients | 2018 |
| 9 | Selecting health states for EQ-5D-3L valuation studies | 2018 |
| 10 | Modeling asynchronous event sequences with RNNs | 2018 |
| 11 | Map reduce-based hybrid NBC-TFIDF algorithm to mine the public sentiment on diabetes mellitus | 2018 |
| 12 | The trifecta of precision care in heart failure | 2018 |
| 13 | Roadmap for innovation-ACC health policy statement on healthcare transformation in the era of digital health, big data, and precision health | 2018 |
| 14 | Authenticating health activity data using distributed ledger technologies | 2018 |
| 15 | Spread of health-related misinformation on social media | 2019 |
| 16 | Big data analytics for personalized medicine | 2019 |
| 17 | Diagnosis of ear disease | 2019 |
| 18 | AI in cardiovascular imaging | 2019 |
| 19 | Big data visualization in cardiology | 2019 |
| 20 | Big data features, applications, and analytics in cardiology | 2019 |
| 21 | Transitive sequencing medical records for mining predictive and interpretable temporal | 2020 |
| 22 | AI and big data in cancer and precision oncology | 2020 |
| 23 | Electronic health data and machine learning for the prediction of 30-day unplanned readmission or all-cause mortality in heart failure | 2020 |
| 24 | The veteran affair precision oncology data repository | 2020 |
| 25 | Medical big data for P4 medicine on allergic conjunctivitis | 2020 |
| 26 | Somatic cancer gene-based biomedical document feature ranking and clustering | 2019 |
| 27 | Anatomization of data mining and fuzzy logic used in diabetes prognosis | 2020 |
| 28 | Blockchain in healthcare | 2020 |
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