Neural Network Structure Study In Child Mental Health Disorders Intelligent Diagnosis System*
نویسندگان
چکیده
منابع مشابه
Intelligent Health Solution System
Introduction: In the field of management, the statistics and performance of the deputies and functions of the organization are always of great importance, which requires instant access to the latest status of the system under coverage and minimal forecast of the future situation, to provide quality services Also improve. All of this justifies the existence of an intelligent statistical system w...
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BACKGROUND Few children with mental disorders access specialist services. Although previous studies suggest that general practitioner (GP) recognition is limited, parents may not be presenting these problems. AIM To compare GP recognition of disorders with child mental health data and to examine factors affecting recognition, in particular whether recognition is enhanced if the parent express...
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The aim of this study was to establish the range of psychiatric disorders and psychiatric comorbidity among children and adolescents attending a primary mental health service (PMHS). The main psychiatric diagnostic categories were: oppositional defiant disorders (ODDs) (75.3%), anxiety disorders (36.1%), mood disorders (35.1%), and attention deficit hyperactivity disorders (ADHDs) (28.9%). The ...
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Received Nov 21, 2017 Revised Jan 29, 2018 Accepted Feb 19, 2018 The Internet itself is a worldwide network connecting millions of computers and less significant networks. Computers communicated by routers. Crucial the role of a router is to our technique of communicating and computing. Routers are situated at gateways, the spaces where two or more networks connect, and are the decisive device ...
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Experiments with the Switzerland Heart Disease database have concentrated on attempting to distinguish presence and absence. The classifiers based on various neural networks, namely, MLP, PCA, Jordan, GFF, Modular, RBF, SOFM, SVM NNs and conventional statistical techniques such as DA and CART are optimally designed, thoroughly examined and performance measures are compared in this study. With c...
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ژورنال
عنوان ژورنال: Procedia Environmental Sciences
سال: 2011
ISSN: 1878-0296
DOI: 10.1016/j.proenv.2011.10.103