This paper proposes a system that analyzes social media data to detect users’ cognitive distortions and negative emotions, thereby supporting early diagnosis and treatment of mental health problems. Beyond the existing negative thinking detection model, we added a function to predict potential risk factors for various mental health problems such as phobias and eating disorders. The system is based on the CBT (Cognitive Behavioral Therapy) framework and classifies text and image content as positive or negative by utilizing acceptance and responsibility and data augmentation techniques. It analyzes social media data in various languages by utilizing models such as BERT, RoBERTa (sentiment analysis), T5, PEGASUS (text summarization), and mT5 (multilingual text translation).