South Asians in the United States*: Developing a Systemic and Empirically Based Mental Health Assessment Model

Author(s):  
Azmaira H. Maker ◽  
Mona Mittal ◽  
Mudita Rastogi
2018 ◽  
Vol 66 (2) ◽  
pp. 236-247 ◽  
Author(s):  
Tonya B. Van Deinse ◽  
Gary S. Cuddeback ◽  
Amy Blank Wilson ◽  
Michael Lambert ◽  
Daniel Edwards

There is little published information about the measures that probation agencies in the United States use to identify individuals with mental illnesses who are under community supervision. This study used statewide administrative data to estimate and compare the prevalence of mental illnesses among probationers using officer report and offender self-report data. Prevalence estimates of mental illnesses ranged from 15 percent to 19 percent, which is consistent with prior studies that used formal diagnostic assessments. In the absence of costly and time-consuming diagnostic assessments, probation agency-developed mental health scales can aid in identifying those who might be in need of additional mental health assessment.


2021 ◽  
Vol 2021 ◽  
pp. 1-10
Author(s):  
Keke Li ◽  
Weifang Yu

College students are under increasing competition pressure, which has a negative impact on their mental health, as the pace of learning and life accelerates, as well as the increasingly difficult employment situation. As a result, emphasizing the importance of college students’ mental health and fully addressing it has become a top priority in the work of colleges and universities. However, some students and even teachers are currently unconcerned about mental illness, making it difficult for students with psychological abnormalities to receive timely detection and effective treatment. As a result, it is the responsibility of student management for colleges and universities to identify and intervene early in the mental health problems of college students. Through the use of multimodal data and neural network models, it is now possible to evaluate and predict the mental state of college students in real time, thanks to the advancement of intelligent technology. Therefore, a novel multimodal neural network model is proposed in this paper. Our model is divided into two branches in particular. The traditional mental health assessment and prediction algorithm, which is based on the improved BP neural network and the International Mental Health Scale SCL-90, is one of the branches. Given how difficult it is to meet the requirements for the accuracy of college students’ mental health assessments using this method, our other branch is computer vision-based facial emotion recognition of college students, which is used to aid in the evaluation of mental health assessments. Our model demonstrates competitive performance through simulation and comparative experiments.


1984 ◽  
Vol 39 (12) ◽  
pp. 1424-1434 ◽  
Author(s):  
David J. Knesper ◽  
John R. Wheeler ◽  
David J. Pagnucco

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