Markopoulou Katerina, Aasly Jan, Chung Sun Ju, Dardiotis Efthimios, Wirdefeldt Karin, Premkumar Ashvini P, Schoneburg Bernadette, Kartha Ninith, Wilk Gary, Wei Jun, Simon Kelly Claire, Tideman Samuel, Epshteyn Alexander, Hadsell Bryce, Garduno Lisette, Pham Anna, Frigerio Roberta, Maraganore Demetrius
Department of Neurology, NorthShore University HealthSystem, Evanston, IL, United States.
Department of Neuromedicine and Movement Science and Department of Neurology, St Olav's Hospital, Norwegian University of Science and Technology, Trondheim, Norway.
Front Neurol. 2020 Jul 7;11:548. doi: 10.3389/fneur.2020.00548. eCollection 2020.
Different factors influence severity, progression, and outcomes in Parkinson's disease (PD). Lack of standardized clinical assessment limits comparison of outcomes and availability of well-characterized cohorts for collaborative studies. Structured clinical documentation support (SCDS) was developed within the DNA Predictions to Improve Neurological Health (DodoNA) project to standardize clinical assessment and identify molecular predictors of disease progression. The Longitudinal Clinical and Genetic Study of Parkinson's Disease (LONG-PD) was launched within the Genetic Epidemiology of Parkinson's disease (GEoPD) consortium using a Research Electronic Data Capture (REDCap) format mirroring the DodoNA SCDS. Demographics, education, exposures, age at onset (AAO), Unified Parkinson's Disease Rating Scale (UPDRS) parts I-VI or Movement Disorders Society (MDS)-UPDRS, Montreal Cognitive Assessment (MoCA)/Short Test of Mental Status (STMS)/Mini Mental State Examination (MMSE), Geriatric Depression Scale (GDS), Epworth Sleepiness Scale (ESS), dopaminergic therapy, family history, nursing home placement, death and blood samples were collected. DodoNA participants (396) with 6 years of follow-up and 346 LONG-PD participants with up to 3 years of follow-up were analyzed using group-based trajectory modeling (GBTM) focused on: AAO, education, family history, MMSE/MoCA/STMS, UPDRS II-II, UPDRS-III tremor and bradykinesia sub-scores, Hoehn and Yahr staging (H&Y) stage, disease subtype, dopaminergic therapy, and presence of autonomic symptoms. The analysis was performed with either cohort as the training/test set. Patients are classified into slowly and rapidly progressing courses by AAO, MMSE score, H &Y stage, UPDRS-III tremor and bradykinesia sub-scores relatively early in the disease course. Late AAO and male sex assigned patients to the rapidly progressing group, whereas tremor to the slower progressing group. Classification is independent of which cohort serves as the training set. Frequencies of disease-causing variants in and were 1.89 and 2.96%, respectively. Standardized clinical assessment provides accurate phenotypic characterization in pragmatic clinical settings. Trajectory analysis identified two different trajectories of disease progression and determinants of classification. Accurate phenotypic characterization is essential in interpreting genomic information that is generated within consortia, such as the GEoPD, formed to understand the genetic epidemiology of PD. Furthermore, the LONGPD study protocol has served as the prototype for collecting standardized phenotypic information at GEoPD sites. With genomic analysis, this will elucidate disease etiology and lead to targeted therapies that can improve disease outcomes.
不同因素会影响帕金森病(PD)的严重程度、进展及预后。缺乏标准化的临床评估限制了对预后的比较以及协作研究中特征明确队列的可用性。在“改善神经健康的DNA预测”(DodoNA)项目中开发了结构化临床文档支持(SCDS),以实现临床评估的标准化并识别疾病进展的分子预测指标。帕金森病纵向临床与遗传研究(LONG-PD)在帕金森病遗传流行病学(GEoPD)联盟内启动,采用Research Electronic Data Capture(REDCap)格式,与DodoNA SCDS镜像。收集了人口统计学信息、教育程度、暴露情况、发病年龄(AAO)、统一帕金森病评定量表(UPDRS)第一至六部分或运动障碍协会(MDS)-UPDRS、蒙特利尔认知评估(MoCA)/简易精神状态检查(STMS)/简易精神状态检查表(MMSE)、老年抑郁量表(GDS)、爱泼华嗜睡量表(ESS)、多巴胺能治疗、家族史、养老院安置情况、死亡信息及血样。使用基于组的轨迹建模(GBTM)对396名有6年随访的DodoNA参与者和346名有长达3年随访的LONG-PD参与者进行分析,重点关注:AAO、教育程度、家族史、MMSE/MoCA/STMS、UPDRS II-II、UPDRS-III震颤和运动迟缓亚评分、霍恩和雅尔分期(H&Y)阶段、疾病亚型、多巴胺能治疗以及自主神经症状的存在情况。以任一队列作为训练/测试集进行分析。在疾病进程相对早期,根据AAO、MMSE评分、H&Y阶段、UPDRS-III震颤和运动迟缓亚评分,可将患者分为进展缓慢和迅速两组。发病年龄晚和男性被归为迅速进展组,而震颤患者被归为进展较慢组。分类与用作训练集的队列无关。致病变体在[具体内容1]和[具体内容2]中的频率分别为1.89%和2.96%。标准化临床评估在实际临床环境中提供准确的表型特征描述。轨迹分析确定了疾病进展的两种不同轨迹及分类的决定因素。准确表型特征描述对于解释在诸如GEoPD等为了解PD遗传流行病学而组建的联盟中生成的基因组信息至关重要。此外,LONGPD研究方案已成为在GEoPD各研究点收集标准化表型信息的原型。通过基因组分析,这将阐明疾病病因并带来可改善疾病预后的靶向治疗。