Detection of the Prodromal Phase of Bipolar Disorder from Psychological and Phonological Aspects in Social Media
نویسندگان
چکیده
Seven out of ten people with bipolar disorder are initially misdiagnosed and thirty percent of individuals with bipolar disorder will commit suicide. Identifying the early phases of the disorder is one of the key components for reducing the full development of the disorder. In this study, we aim at leveraging the data from social media to design predictive models, which utilize the psychological and phonological features, to determine the onset period of bipolar disorder and provide insights on its prodrome. This study makes these discoveries possible by employing a novel data collection process, coined as Time-specific Subconscious Crowdsourcing, which helps collect a reliable dataset that supplements diagnosis information from people suffering from bipolar disorder. Our experimental results demonstrate that the proposed models could greatly contribute to the regular assessments of people with bipolar disorder, which is important in the primary care setting.
منابع مشابه
Bipolar mood disorder ( manic phase) in a patient with neurofibromatosis type 1 with cerebral involvement
Even though neurofibromatosis ( NF) is not a rare neurological disorder, but there is few studies regarding the relationship between NF and psychological disorders. A 14 year old girl with NF type 1 associated with multiple cerebral lesions was admitted in psychiatric ward due to restlessness , hypertalktiveness aggressive behavior, and flight of idea. Psychiatric diagnosis, based on DSM IV ...
متن کاملSelf Stigma Among People with Bipolar-I Disorder in Iran
Objectives: Psychiatric stigma refers to systemic and internalized stereotypical negative attitudes against individual with mental illness. This article describes the level of self stigma, stereotype endorsement and perceived discrimination experienced by patients with Bipolar-I disorder in Tehran. Methods: Data were collected from a total of 126 patients with Bipolar-I disorder who responde...
متن کاملIdentification Psychological Disorders Based on Data in Virtual Environments Using Machine Learning
Introduction: Psychological disorders is one of the most problematic and important issue in today's society. Early prognosis of these disorders matters because receiving professional help at the appropriate time could improve the quality of life of these patients. Recently, researches use social media as a form of new tools in identifying psychological disorder. It seems that through the use of...
متن کاملCorrelation of Social Network Attributes with Individuals’ Score on Bipolar Spectrum Diagnostic Scale
Introduction: Bipolar Spectrum Disorders include a variety of mood disorders from bipolar II disorder to conditions characterized by hyperthymic mood states. It has been suggested that psychosocial factors also play an important role in bipolar disorders, in this study we have used social network analysis in order to better understand the social positions of those affected by bipolar spectrum d...
متن کاملNonadherence Effective Factors in Bipolar Disorder With Previous Rehospitalization
Objective: Bipolar disorder is a severe mental disorder, and its prevalence is around 1% to 2%. Despite a vast literature around bipolar disorder, the reasons of its nonadherence and rehospitalization is still obscure. Several symptoms of bipolar disorder include changes in activity level, cognitive abilities, speech, and vegetative functions, such as sleep, sexual activity, as well as aggressi...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1712.09183 شماره
صفحات -
تاریخ انتشار 2017