Title
Hospital Iot Big Data And Real-Time Monitoring And Nursing Intervention For Patients With Insomnia
Abstract
Insomnia is a common problem that has been affecting residents for a long time. This study?s main purpose of determining whether insomnia results from greater improvements in sleep using hypnosis than just the educational process of sleep hygiene. Sleep restriction therapy is a weekly session based on the following sleep hygiene education sessions. Provides an important aspect of assessing patients with insomnia and long-term care measures with an existing review of big data processing options. These include various non-drug therapy, drug therapy, cognitive behavioral therapy, the most important treatment for insomnia, benzodiazepines, and "Zdrugs" melatonin receptor agonist and a selective histamine H1 receptor agonist. A Deep Learning IoT including drugs, origin antagonists, antidepressants, antipsychotics, anticonvulsants and non-selective antihistamine. Many unsupervised data made a valuable tool for large data analysis, where the original data is mainly unmarked and unclassified. Complex patterns from sleeplessness, big data analysis, large amounts of data, semantic indexing, data annotation, and fast information retrieval to simplify identification tasks and some of the important things in the Internet of Things deeply explore the methods be used for problems. However, the deep basic learning array of drug therapy has the above characteristics of insomniac patients, and therapeutic research effects fully characterize its risk/benefit curve. These measures can form the basis of insomnia systems and evidence-based treatment in the clinical setting. Looking at the evidence base in this area and improving many patients? management in many hospitals highlights areas where insomnia needs to provide resources and be investigated.
Year
DOI
Venue
2021
10.1016/j.micpro.2020.103667
MICROPROCESSORS AND MICROSYSTEMS
Keywords
DocType
Volume
Sleep hygiene education, An array of nursing intervention, Hospital management, Origin antagonists, Antidepressants, Antipsychotics, Deep learning
Journal
81
ISSN
Citations 
PageRank 
0141-9331
0
0.34
References 
Authors
0
7
Name
Order
Citations
PageRank
Xiaoman Chang100.34
Xiaosun Tang200.34
Lei Chen300.34
Aixia Liu400.34
Yan Wang500.68
Na Liu600.34
Yurong Wang700.34