There is an urgent need for new methods that improve the management and treatment of Major Depressive Disorder (MDD). Speech has long been regarded as a promising digital marker in this regard, with many works highlighting that speech changes associated with MDD can be captured through machine learning models. Typically, findings are based on cross-sectional data, with little work exploring the advantages of personalization in building more robust and reliable models. This work assesses the strengths of different combinations of speech representations and machine learning models, in personalized and generalized settings in a two-class depression severity classification paradigm. Key results on a longitudinal dataset highlight the benefits o...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...
Early intervention for depression is very important to ease the disease burden, but current diagnost...
There is an urgent need for new methods that improve the management and treatment of Major Depressiv...
Depression is a prevalent comorbidity in patients with severe physical disorders, such as cancer, st...
Depression is a prevalent comorbidity in patients with severe physical disorders, such as cancer, st...
Major Depressive Disorder (MDD) is a common worldwide mental health issue with high associated socio...
According to the WHO, depression is a common mental disorder characterized by persistent sadness and...
Accurate detection of depression from spontaneous speech could lead to an objective diagnostic aid t...
In this paper, we investigate the problem of detecting depres-sion from recordings of subjects ’ spe...
Depression is one of the most common mental health issues. (It affects more than 4% of the world’s p...
Abstract Assessing mental health disorders and determining treatment can be difficult for a number o...
In the present study, we attempt to estimate the severity of depression using a Convolutional Neural...
Recent studies have revealed mutually correlated audio features in the voices of depressed patients....
AbstractBackgroundGrowing evidence documents the potential of machine learning for developing brain ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...
Early intervention for depression is very important to ease the disease burden, but current diagnost...
There is an urgent need for new methods that improve the management and treatment of Major Depressiv...
Depression is a prevalent comorbidity in patients with severe physical disorders, such as cancer, st...
Depression is a prevalent comorbidity in patients with severe physical disorders, such as cancer, st...
Major Depressive Disorder (MDD) is a common worldwide mental health issue with high associated socio...
According to the WHO, depression is a common mental disorder characterized by persistent sadness and...
Accurate detection of depression from spontaneous speech could lead to an objective diagnostic aid t...
In this paper, we investigate the problem of detecting depres-sion from recordings of subjects ’ spe...
Depression is one of the most common mental health issues. (It affects more than 4% of the world’s p...
Abstract Assessing mental health disorders and determining treatment can be difficult for a number o...
In the present study, we attempt to estimate the severity of depression using a Convolutional Neural...
Recent studies have revealed mutually correlated audio features in the voices of depressed patients....
AbstractBackgroundGrowing evidence documents the potential of machine learning for developing brain ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...
Early intervention for depression is very important to ease the disease burden, but current diagnost...