Mayo Nancy E, Hum Stanley, Matout Mohamad, Fellows Lesley K, Brouillette Marie-Josée
Department of Medicine, School of Physical and Occupational Therapy, Faculty of Medicine and Health Sciences, McGill University, Montreal, Canada.
Brain Health Outcomes Platform (BHOP), Montreal Neurological Institute, McGill University, Montreal, Canada.
Qual Life Res. 2024 Sep;33(9):2509-2516. doi: 10.1007/s11136-024-03719-8. Epub 2024 Jun 25.
This study aimed to produce a patient-centered understanding of mental health symptoms of people with the post-COVID-19 syndrome (PCS).
A cross-sectional analysis of 414 participants in a longitudinal study was carried out involving people who self-identified as having symptoms of PCS. People were asked to name their most frequent and most bothersome mental health symptoms affected by PCS using the structure of the Patient Generated Index (PGI). The text threads from the PGI were grouped into topics using BERTopic analysis.
20 topics were identified from 818 text threads referring to PCS mental health symptoms. 35% of threads were identified as relating to anxiety, discussed in terms of five topics: generalized/social anxiety, fear/worry, post-traumatic stress, panic, and nervous. 29% of threads were identified as relating to low mood, represented by five topics: depression, discouragement, emotional distress, sadness, and loneliness. A cognitive domain (22% of threads) was covered by four topics referring to concentration, memory, brain fog, and mental fatigue. Topics related to frustration, anger, irritability. and mood swings (7%) were considered as one domain and there were separate topics related to motivation, insomnia, and isolation.
This novel method of digital transformation of unstructured text data uncovered different ways in which people think about classical mental health domains. This information could be used to evaluate whether existing measures cover the content identified by people with PCS, to initiate a clinical conversation, or to justify the development of a new measure of the mental health impact of PCS.
本研究旨在以患者为中心,了解新冠后综合征(PCS)患者的心理健康症状。
对一项纵向研究中的414名参与者进行横断面分析,这些参与者自我认定有PCS症状。要求参与者使用患者生成指数(PGI)的结构,说出受PCS影响最频繁、最困扰的心理健康症状。使用BERTopic分析将PGI中的文本线索分组为主题。
从818条提及PCS心理健康症状的文本线索中识别出20个主题。35%的线索被确定与焦虑有关,围绕五个主题进行讨论:广泛性/社交焦虑、恐惧/担忧、创伤后应激、恐慌和紧张。29%的线索被确定与情绪低落有关,由五个主题代表:抑郁、气馁、情绪困扰、悲伤和孤独。一个认知领域(22%的线索)由四个主题涵盖,涉及注意力、记忆力、脑雾和精神疲劳。与挫折、愤怒、易怒和情绪波动相关的主题(7%)被视为一个领域,还有与动机、失眠和孤立相关的单独主题。
这种对非结构化文本数据进行数字转换的新方法揭示了人们思考经典心理健康领域的不同方式。这些信息可用于评估现有测量方法是否涵盖了PCS患者所确定的内容,发起临床对话,或为开发一种新的PCS心理健康影响测量方法提供依据。