| Literature DB >> 30884824 |
Tie Hua Zhou1, Gong Liang Hu2, Ling Wang3.
Abstract
The Institute for Health Metrics and Evaluation (IHME) has stated that over 1.1 billion people suffered from mental disorders globally in 2016, and the burden of mental disorders has continued to grow with impacts on social development. Despite the implementation of strategies for promotion and prevention in mental health WHO's Comprehensive Mental Health Action Plan 2013⁻2020, the difficulty of diagnosis of mental disorders makes the objective "To provide comprehensive, integrated, and responsive mental health and social care services in community-based settings" hard to carry out. This paper presents a mental-disorder-aided diagnosis model (MDAD) to quantify the multipolarity sentiment affect intensity of users' short texts in social networks in order to analyze the 11-dimensional sentiment distribution. We searched the five mental disorder topics and collected data based on Twitter hashtag. Through sentiment distribution similarity calculations and Stochastic Gradient Descent (SGD), people with a high probability of suffering from mental disorder can be detected in real time. In particular, mental health warnings can be made in time for users with an obvious emotional tendency in their tweets. In the experiments, we make a comprehensive evaluation of MDAD by five common adult mental disorders: depressive disorder, anxiety disorder, obsessive-compulsive disorder (OCD), bipolar disorder, and panic disorder. Our proposed model can effectively diagnose common mental disorders by sentiment multipolarity analysis, providing strong support for the prevention and diagnosis of mental disorders.Entities:
Keywords: emotion perception; machine learning; psychological disorder; sentiments distribution; social network
Mesh:
Year: 2019 PMID: 30884824 PMCID: PMC6466382 DOI: 10.3390/ijerph16060953
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Mental disorders and clinical descriptions.
| Diseases | Clinical Descriptions |
|---|---|
| Depressive disorder | Characterized by depressive mood (e.g., sad, irritable, empty) or loss of pleasure accompanied by other cognitive, behavioral, or neurovegetative symptoms that significantly affect the individual’s ability to function. |
| Anxiety disorder | Characterized by marked symptoms of anxiety, manifested by either general apprehension or excessive worry focused on multiple everyday events, together with additional symptoms, such as muscular tension or sleep disturbance. |
| OCD | Characterized by the presence of persistent obsessions or compulsions, or most commonly both. Obsessions are repetitive and persistent thoughts, images, or impulses and urges that are intrusive, unwanted, and are commonly associated with anxiety. |
| Bipolar disorder | Defined by the occurrence of manic, mixed, or hypomanic episodes or symptoms. These episodes typically alternate over the course of these disorders with depressive episodes or periods of depressive symptoms. |
| Panic disorder | Panic attacks are discrete episodes of intense fear or apprehension accompanied by the rapid and concurrent onset of several characteristic symptoms. |
Description of the dataset.
| Condition | Users | Median | Total |
|---|---|---|---|
| Depressive disorder related | 75 | 16 | 1194 |
| Anxiety disorder related | 143 | 12 | 1711 |
| OCD-related | 32 | 10 | 316 |
| Bipolar disorder related | 16 | 18 | 289 |
| Panic disorder related | 130 | 14 | 1813 |
| No mental disorder | 400 | 17 | 6683 |
Figure 1Flowchart of diagnosis model.
Definition of main symbols.
| Symbol | Definition |
|---|---|
|
| |
|
| |
|
| Negative adverb |
|
| Adversative |
|
| Sentiment punctuation |
|
| Emoticon |
| q( | Sentiment quantification value of sentence |
| D | Eleven-dimensional sentiments distribution of user’s short texts |
| Prob( | Probability of suffering from mental disorder |
|
| Screening threshold of mental disorder |
Sentiment categories and affect intensity ranges. MSAI: multipolarity sentiment affect intensity.
| 8 Sentiments in NRC-Lexicon | 11 Sentiments in MSAI-Lexicon |
|---|---|
| Anger | Anger |
| Disgust | Loathing |
| Sadness | Grief |
| Surprise | Surprise |
| Fear | Terror |
| Trust | Trust |
| Joy | Joy |
| Anticipation | Anticipation |
Figure 2Eleven-dimensional sentiment distribution.
Figure 3Deviation of sentiment distribution between the mental health scale and social network short texts.
Datasets assignment.
| Training Data | Testing Data |
|---|---|
| Stanford Twitter sentiment corpus training data (100,000 users) | Hashtag-based testing data (119 users with condition and 120 users with no condition) |
| Hashtag-based training data (277 users with condition and 280 users with no condition) |
Figure 4Flowchart of step 2–step 6.
Sentiment analysis performance.
| Relevant | Non-Relevant | |
|---|---|---|
|
| TP (True Positive) | FP (False Positive) |
|
| FN (False Negative) | TN (True Negative) |
Sentiment analysis performance.
| Precision | Recall | F1-Measure | |
|---|---|---|---|
| Our method | 0.77 | 0.92 | 0.84 |
| Citius | 0.69 | 0.79 | 0.74 |
| SeNTU | 0.75 | 0.82 | 0.78 |
Figure 5Model iterative optimization.
Mental disorder proportions of different degrees.
| Condition | NMU | MMU | SMU |
|---|---|---|---|
| Depressive disorder | 81.0% | 10.5% | 8.5% |
| Anxiety disorder | 80.7% | 9.0% | 10.3% |
| OCD | 96.9% | 2.2% | 0.9% |
| Bipolar disorder | 96.5% | 1.5% | 2.0% |
| Panic disorder | 85.7% | 5.0% | 9.3% |