OBJECTIVE: Proactive and automatic screening for depression is a challenge facing the public health system. This paper describes a system for addressing the above challenge. MATERIALS AND METHOD: The system implementing the methodology--Pedesis--harvests the Web for metaphorical relations in which depression is embedded and extracts the relevant conceptual domains describing it. This information is used by human experts for the construction of a "depression lexicon". The lexicon is used to automatically evaluate the level of depression in texts or whether the text is dealing with depression as a topic. RESULTS: Tested on three corpora of questions addressed to a mental health site the system provides 9% improvement in prediction whether the question is dealing with depression. Tested on a corpus of Blogs, the system provides 84.2% correct classification rate (p<.001) whether a post includes signs of depression. By comparing the system's prediction to the judgment of human experts we achieved an average 78% precision and 76% recall. CONCLUSION: Depression can be automatically screened in texts and the mental health system may benefit from this screening ability.
OBJECTIVE: Proactive and automatic screening for depression is a challenge facing the public health system. This paper describes a system for addressing the above challenge. MATERIALS AND METHOD: The system implementing the methodology--Pedesis--harvests the Web for metaphorical relations in which depression is embedded and extracts the relevant conceptual domains describing it. This information is used by human experts for the construction of a "depression lexicon". The lexicon is used to automatically evaluate the level of depression in texts or whether the text is dealing with depression as a topic. RESULTS: Tested on three corpora of questions addressed to a mental health site the system provides 9% improvement in prediction whether the question is dealing with depression. Tested on a corpus of Blogs, the system provides 84.2% correct classification rate (p<.001) whether a post includes signs of depression. By comparing the system's prediction to the judgment of human experts we achieved an average 78% precision and 76% recall. CONCLUSION:Depression can be automatically screened in texts and the mental health system may benefit from this screening ability.
Authors: Małgorzata Szcześniak; Adam Falewicz; Klaudia Strochalska; Radosław Rybarski Journal: Int J Environ Res Public Health Date: 2022-05-17 Impact factor: 4.614