We present our work towards automatic monitoring of major depressive disorder at the population-level leveraging social media and natural language processing. In this pilot study, we manually annotated Twitter tweets i.e., whether the tweet conveys clinical evidence of depression or not, and if the tweet is depression-related, whether it conveys low mood, fatigue or loss of energy, or problems with social environment. Our classifiers trained with simple features can automatically distinguish between tweets with clinical evidence of depression or not with promising results, suggesting complete automation is possible
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
With the rise of social media, millions of people are routinely expressing their moods, feelings, an...
With the rise of social media, millions of people are routinely expressing their moods, feelings, an...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
The issue of depression in our society is becoming increasingly significant as more and more people ...
Depression has become a serious problem in this current generation and the number of people affected...
Depression has become a serious problem in this current generation and the number of people affected...
Background: Mental health problems are widely recognized as a major public health challenge worldwid...
Depression is one of the most common mental health disorders, and a large number of depressed people...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
With the rise of social media, millions of people are routinely expressing their moods, feelings, an...
With the rise of social media, millions of people are routinely expressing their moods, feelings, an...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
The issue of depression in our society is becoming increasingly significant as more and more people ...
Depression has become a serious problem in this current generation and the number of people affected...
Depression has become a serious problem in this current generation and the number of people affected...
Background: Mental health problems are widely recognized as a major public health challenge worldwid...
Depression is one of the most common mental health disorders, and a large number of depressed people...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...
Applying simple natural language processing methods on social media data have shown to be able to re...