Javed et al., 2025 - Google Patents
Enhancing chronic disease prediction in IoMT-enabled Healthcare 5.0 using deep machine learning: Alzheimer's disease as a case studyJaved et al., 2025
View PDF- Document ID
- 9104660727954329200
- Author
- Javed R
- Abbas T
- Shahzad T
- Kanwal K
- Ramay S
- Khan M
- Ouahada K
- Publication year
- Publication venue
- IEEE access
External Links
Snippet
Chronic disease significantly affects health on a global scale. Deep machine learning algorithms have found widespread application in the diagnosis of chronic diseases. Early diagnosis and treatment reduce the chance of a disease getting worse and, as a result, raise …
- 208000017667 Chronic Disease 0 title abstract description 67
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