scholarly journals The importance of mental health monitoring during transfer to adult care settings as examined among paediatric transplant recipients

2014 ◽  
Vol 51 (2) ◽  
pp. 220-222 ◽  
Author(s):  
Rachel A Annunziato ◽  
Nicole Arrato ◽  
Melissa Rubes ◽  
Ronen Arnon
2021 ◽  
Author(s):  
Zhiwei Chen ◽  
Weizhao Yang ◽  
Jinrong Li ◽  
Jiale Wang ◽  
Shuai Li ◽  
...  

2008 ◽  
Vol 25 (3) ◽  
pp. 108-115
Author(s):  
Majella Cahill ◽  
Anne Jackson

AbstractDeveloping effective models of identifying and managing physical ill health amongst mental health service users has become an increasing concern for psychiatric service providers. This article sets out the general professional and Irish statutory obligations to provide physical health monitoring services for individuals with serious mental illness. Review and summary statements are provided in relation to the currently available guidelines on physical health monitoring.


Author(s):  
Chao Du ◽  
Chang Liu ◽  
P. Balamurugan ◽  
P. Selvaraj

Artificial intelligence (AI) in healthcare has recently been promising using deep neural networks. It is indeed even been in clinical trials more and more, with positive outcomes. Deep learning is the process of using algorithms to train a neural network model using huge quantities of data to learn how to execute a given task and then make an accurate classification or prediction. Apart from physical health monitoring, such deep learning models can be used for the mental health evaluation of individuals. This study thus designs a deep learning-based mental health monitoring scheme (DL-MHMS) for college students. This model uses the most efficient convolutional neural network (CNN) to classify the mental health status as positive, negative, and normal using the EEG signals collected from college students. The simulation analysis achieves the highest classification accuracy and F1 scores of 97.54% and 98.35%, less sleeping disorder rate of 21.19%, low depression level of 18.11%, reduced suicide attention level of 28.14%, increasing personality development ratio of 97.52%, enhance self-esteem ratio of 98.42%, compared to existing models.


Author(s):  
Xiaoqian Liu ◽  
Tingshao Zhu

In this chapter, a kind of emotion recognition method based on gait using a customized smart bracelet with a built-in acceleration sensor was introduced in detail. The results showed that the classification accuracies of angry-neutral, happy-neutral, angry-happy, and angry-happy-neutral using the acceleration data of wrist are 91.3%, 88.5%, 88.5%, and 81.2%, respectively. Besides, the wearable devices and motion-sensing technology application in psychology research have been further discussed, and non-contact emotion identification and mental health monitoring based on offline behaviors were reviewed summarily.


2007 ◽  
Vol 18 (2) ◽  
pp. 356-361 ◽  
Author(s):  
Robin. Harvey ◽  
Michael. Smith ◽  
Nicholas. Abraham ◽  
Sean. Hood ◽  
Dennis. Tannenbaum

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