The number of mentally ill people is increasing globally each year. Despite major medical advances, the identification of genetic and environmental factors responsible for mental illnesses still remains unsolved and is therefore a very active research focus today. Semi-structured data structure is predominantly used to enable the meaningful representations of the available mental health knowledge. Data mining techniques can be used to efficiently analyze these semi-structured mental health data. Tree mining algorithms can efficiently extract frequent substructures from semi-structured knowledge representation such as XML. In this paper we demonstrate effective application of the tree mining algorithms on records of mentally ill patients. Th...
Abstract Background and Objective: This study was conducted to shed light on the hidden relationshi...
Mental illness is one of the leading causes of death in The United States. Similarly, mental illness...
In national and local level, understanding of factors associated with public health issues like ment...
The number of mentally ill people is increasing globally each year. Despite major medical advances, ...
The World Health Organization predicted that depression would be the world's leading cause of disabi...
Data mining approach help in various extraction unit from large dataset. Mental health and brain sta...
Data mining techniques can be used to efficiently analyze semi-structured data. Semi-structured data...
The Big Data revolution is spreading worldwide. The data availability is actually the starting point...
Life expectancy may be greatly improved by accurately diagnosing mental health issues at an early st...
Healthcare organizations are forced to cope with a growing demand for healthcare and an increase in ...
The aim of this perspective is to provide a review upon the fundamental computational methods deploy...
Worldwide, about 700 million people are estimated to suffer from mental illnesses. In recent years, ...
AbstractObjectiveTo apply data mining methods to research on the state of sub-mental health among re...
This paper aims to synthesise the literature on machine learning (ML) and big data applications for ...
This study proposes a framework for mining temporal patterns from Electronic Medical Records. A new ...
Abstract Background and Objective: This study was conducted to shed light on the hidden relationshi...
Mental illness is one of the leading causes of death in The United States. Similarly, mental illness...
In national and local level, understanding of factors associated with public health issues like ment...
The number of mentally ill people is increasing globally each year. Despite major medical advances, ...
The World Health Organization predicted that depression would be the world's leading cause of disabi...
Data mining approach help in various extraction unit from large dataset. Mental health and brain sta...
Data mining techniques can be used to efficiently analyze semi-structured data. Semi-structured data...
The Big Data revolution is spreading worldwide. The data availability is actually the starting point...
Life expectancy may be greatly improved by accurately diagnosing mental health issues at an early st...
Healthcare organizations are forced to cope with a growing demand for healthcare and an increase in ...
The aim of this perspective is to provide a review upon the fundamental computational methods deploy...
Worldwide, about 700 million people are estimated to suffer from mental illnesses. In recent years, ...
AbstractObjectiveTo apply data mining methods to research on the state of sub-mental health among re...
This paper aims to synthesise the literature on machine learning (ML) and big data applications for ...
This study proposes a framework for mining temporal patterns from Electronic Medical Records. A new ...
Abstract Background and Objective: This study was conducted to shed light on the hidden relationshi...
Mental illness is one of the leading causes of death in The United States. Similarly, mental illness...
In national and local level, understanding of factors associated with public health issues like ment...