Given the current social distance restrictions across the world, most individuals now use social media as their major medium of communication. Millions of people suffering from mental diseases have been isolated due to this, and they are unable to get help in person. They have become more reliant on online venues to express themselves and seek advice on dealing with their mental disorders. According to the World health organization (WHO), approximately 450 million people are affected. Mental illnesses, such as depression, anxiety, etc., are immensely common and have affected an individuals' physical health. Recently Artificial Intelligence (AI) methods have been presented to help mental health providers, including psychiatrists and psychologists, in decision making based on patients' authentic information (e.g., medical records, behavioral data, social media utilization, etc.). AI innovations have demonstrated predominant execution in numerous real-world applications broadening from computer vision to healthcare. This study analyzes unstructured user data on the Reddit platform and classifies five common mental illnesses: depression, anxiety, bipolar disorder, ADHD, and PTSD. We trained traditional machine learning, deep learning, and transfer learning multi-class models to detect mental disorders of individuals. This effort will benefit the public health system by automating the detection process and informing appropriate authorities about people who require emergency assistance.
翻译:鉴于目前世界各地的社会距离限制,大多数个人现在都使用社交媒体作为他们的主要通信媒介; 数百万精神病患者因此被隔离,无法亲自获得帮助; 他们更加依赖在线场所表达自己的意见和寻求治疗其精神失常的建议; 据世界卫生组织(卫生组织)称,约有4.5亿人受到影响; 精神疾病,如抑郁、焦虑等极为常见,影响到个人身体健康; 最近提出了人工智能(AI)方法,以帮助精神保健提供者,包括精神科医生和心理学家,根据病人的真实信息(如病历、行为数据、社交媒体利用等)作出决定; 大赦国际的创新表明,在从计算机视野到保健的无数实际应用中,执行得占优势; 这项研究分析了红化平台上缺乏结构的用户数据,将五种常见的精神疾病分类为:抑郁、焦虑、双极障碍、ADHD和PTSD。 我们培训了传统机器学习、深层次学习和学习多级模型,以检测精神病患者的真实信息(如医疗记录、行为数据、社交媒体利用等)。