Samara State Medical University, Samara, Russia.
Psychiatr Danub. 2023 Oct;35(Suppl 2):256-262.
The COVID-19 pandemic has had significant impacts on the child and adolescent population, with long-term consequences for physical health, socio-psychological well-being, and cognitive development, which require further investigation. We herein describe a study design protocol for recognizing neuropsychiatric complications associated with pediatric COVID-19, and for developing effective prevention and treatment strategies grounded on the evidence-based findings.
The study includes two cohorts, each with 163 participants, aged from 7 to 18 years old, and matched by gender. One cohort consisted of individuals with a history of COVID-19, while the other group presents those without such a history. We undertake comprehensive assessments, including neuropsychiatric evaluations, blood tests, and validated questionnaires completed by parents/guardians and by the children themselves. The data analysis is based on machine learning techniques to develop predictive models for COVID-19-associated neuropsychiatric complications in children and adolescents.
The first model is focused on a binary classification to distinguish participants with and without a history of COVID-19. The second model clusters significant indicators of clinical dynamics during the follow-up observation period, including the persistence of COVID-19 related somatic and neuropsychiatric symptoms over time. The third model manages the predictors of discrete trajectories in the dynamics of post-COVID-19 states, tailored for personalized prediction modeling of affective, behavioral, cognitive, disturbances (academic/school performance), and somatic symptoms of the long COVID.
The current protocol outlines a comprehensive study design aiming to bring a better understanding of COVID-19-associated neuropsychiatric complications in a population of children and adolescents, and to create a mobile phone-based applications for the diagnosis and treatment of affective, cognitive, and behavioral conditions. The study will inform about the improved management of preventive and personalized care strategies for pediatric COVID-19 patients. Study results support the development of engaging and age-appropriate mobile technologies addressing the needs of this vulnerable population group.
COVID-19 大流行对儿童和青少年人群产生了重大影响,对其身体健康、社会心理福祉和认知发展造成了长期影响,这需要进一步研究。本研究旨在描述一种识别与儿科 COVID-19 相关的神经精神并发症的研究设计方案,并基于循证发现制定有效的预防和治疗策略。
该研究包括两个队列,每个队列均有 163 名参与者,年龄在 7 至 18 岁之间,按性别匹配。一个队列由有 COVID-19 病史的个体组成,另一个队列则由无 COVID-19 病史的个体组成。我们进行了全面评估,包括神经精神评估、血液测试和由家长/监护人以及儿童自身完成的验证问卷。数据分析基于机器学习技术,以开发用于预测儿童和青少年 COVID-19 相关神经精神并发症的模型。
第一个模型专注于二分类,以区分有和无 COVID-19 病史的参与者。第二个模型对随访观察期间的临床动态的显著指标进行聚类,包括 COVID-19 相关躯体和神经精神症状随时间的持续存在。第三个模型管理 COVID-19 后状态动态中离散轨迹的预测因子,针对特定个体预测情感、行为、认知障碍(学业/学校表现)和长 COVID 的躯体症状。
本研究方案概述了一项全面的研究设计,旨在更好地了解儿童和青少年人群中 COVID-19 相关神经精神并发症,并创建一个基于手机的应用程序,用于诊断和治疗情感、认知和行为障碍。该研究将为儿科 COVID-19 患者的预防和个性化护理策略的改进管理提供信息。研究结果支持开发针对这一弱势群体需求的吸引人且适合年龄的移动技术。