View clinical trials related to Distress, Emotional.
Filter by:The goal of this observational study is to validate an AI algorithm's capability to differentiate the population with suicidal ideation from a control population using various multimodal variables, including voice analysis, facial emotions, natural language, and proteomics data. The primary research question it aims to answer is: Is it possible to identify suicidal ideation and suicide risk in adolescents early and non-intrusively using multimodal data analysis through digital instruments equipped with artificial intelligence? Participants in this study will be asked to: Complete psychometric instruments to establish a gold standard for detecting suicide risk and suicidal ideation. Provide voice recordings, facial emotion data, and linguistic content in natural and specific contexts. Participate in salivary proteomics data collection. This study compares three distinct groups: Ideation: Adolescent patients with current suicidal ideation. Clinical Population: Psychological or psychiatric patients of the same age and gender without suicidal ideation. General Population: Adolescents without known psychological or psychiatric pathology of the same age and gender, without suicidal ideation. Researchers will compare these groups to determine if the AI algorithm is effective in differentiating individuals with suicidal ideation (Group 1) from both a clinical control group (Group 2) and a general population control group (Group 3) using the collected multimodal data. The study aims to assess the algorithm's ability to identify early signs of suicide risk in these distinct participant populations.
The purpose of this study is to study different ways to help parents cope with strong emotions. The study team will be looking at how two different treatments help parents learn to manage strong emotions. These treatments are one session and are completed online, without a therapist, like an online training or class.
'Distress' refers to emotional distress, including psychological distress, in cancer patients. This study aims to explore whether mindfulness-based cognitive-behavioral therapy for cancer patients is effective in relieving distress and to discover neurophysiological factors that contribute to relieving distress. Mindfulness meditation, which is the core of mindfulness-based cognitive behavioral therapy, can develop cognitive flexibility through 'awareness of what is happening now'. In this study, a mindfulness-based cognitive behavioral therapy program is implemented for patients with advanced cancer, and clinical characteristics and conditions including distress level are observed through questionnaires and interviews. In addition, genetic data and brain imaging data are collected through blood sampling and brain magnetic resonance imaging. The ultimate goal of this study is to prove the therapeutic efficacy of a mindfulness-based cognitive behavioral therapy program for distress of patients with advanced cancer through an in-depth and multifaceted integrated approach, and to understand the related neurophysiological mechanisms.