Little Max, Wicks Paul, Vaughan Timothy, Pentland Alex
Human Dynamics Group, Media Lab, Massachusetts Institute of Technology, Cambridge, MA 02139, United States.
J Med Internet Res. 2013 Jan 24;15(1):e20. doi: 10.2196/jmir.2112.
Parkinson's disease (PD) is an incurable neurological disease with approximately 0.3% prevalence. The hallmark symptom is gradual movement deterioration. Current scientific consensus about disease progression holds that symptoms will worsen smoothly over time unless treated. Accurate information about symptom dynamics is of critical importance to patients, caregivers, and the scientific community for the design of new treatments, clinical decision making, and individual disease management. Long-term studies characterize the typical time course of the disease as an early linear progression gradually reaching a plateau in later stages. However, symptom dynamics over durations of days to weeks remains unquantified. Currently, there is a scarcity of objective clinical information about symptom dynamics at intervals shorter than 3 months stretching over several years, but Internet-based patient self-report platforms may change this.
To assess the clinical value of online self-reported PD symptom data recorded by users of the health-focused Internet social research platform PatientsLikeMe (PLM), in which patients quantify their symptoms on a regular basis on a subset of the Unified Parkinson's Disease Ratings Scale (UPDRS). By analyzing this data, we aim for a scientific window on the nature of symptom dynamics for assessment intervals shorter than 3 months over durations of several years.
Online self-reported data was validated against the gold standard Parkinson's Disease Data and Organizing Center (PD-DOC) database, containing clinical symptom data at intervals greater than 3 months. The data were compared visually using quantile-quantile plots, and numerically using the Kolmogorov-Smirnov test. By using a simple piecewise linear trend estimation algorithm, the PLM data was smoothed to separate random fluctuations from continuous symptom dynamics. Subtracting the trends from the original data revealed random fluctuations in symptom severity. The average magnitude of fluctuations versus time since diagnosis was modeled by using a gamma generalized linear model.
Distributions of ages at diagnosis and UPDRS in the PLM and PD-DOC databases were broadly consistent. The PLM patients were systematically younger than the PD-DOC patients and showed increased symptom severity in the PD off state. The average fluctuation in symptoms (UPDRS Parts I and II) was 2.6 points at the time of diagnosis, rising to 5.9 points 16 years after diagnosis. This fluctuation exceeds the estimated minimal and moderate clinically important differences, respectively. Not all patients conformed to the current clinical picture of gradual, smooth changes: many patients had regimes where symptom severity varied in an unpredictable manner, or underwent large rapid changes in an otherwise more stable progression.
This information about short-term PD symptom dynamics contributes new scientific understanding about the disease progression, currently very costly to obtain without self-administered Internet-based reporting. This understanding should have implications for the optimization of clinical trials into new treatments and for the choice of treatment decision timescales.
帕金森病(PD)是一种无法治愈的神经疾病,患病率约为0.3%。其标志性症状是运动功能逐渐衰退。目前关于疾病进展的科学共识认为,除非接受治疗,症状会随着时间的推移而平稳恶化。对于患者、护理人员以及科学界而言,准确的症状动态信息对于新治疗方法的设计、临床决策以及个体疾病管理至关重要。长期研究将该疾病的典型病程描述为早期呈线性进展,在后期逐渐达到平台期。然而,数天至数周内的症状动态仍未得到量化。目前,缺乏关于数年中短于3个月时间间隔内症状动态的客观临床信息,但基于互联网的患者自我报告平台可能会改变这一状况。
评估以健康为重点的互联网社交研究平台PatientsLikeMe(PLM)的用户在线自我报告的帕金森病症状数据的临床价值,在该平台上患者根据统一帕金森病评定量表(UPDRS)的一个子集定期对其症状进行量化。通过分析这些数据,我们旨在获得一个科学窗口,以了解数年中短于3个月评估间隔的症状动态本质。
将在线自我报告数据与帕金森病数据和组织中心(PD - DOC)数据库这一黄金标准进行验证,该数据库包含间隔大于3个月的临床症状数据。使用分位数 - 分位数图进行直观数据比较,并使用柯尔莫哥洛夫 - 斯米尔诺夫检验进行数值比较。通过使用简单的分段线性趋势估计算法,对PLM数据进行平滑处理,以将随机波动与连续的症状动态区分开来。从原始数据中减去趋势可揭示症状严重程度的随机波动。使用伽马广义线性模型对波动的平均幅度与诊断后的时间进行建模。
PLM和PD - DOC数据库中诊断时的年龄分布以及UPDRS大致一致。PLM患者系统性地比PD - DOC患者年轻,并且在帕金森病“关”状态下症状严重程度更高。诊断时症状(UPDRS第一部分和第二部分)的平均波动为2.6分,诊断后16年升至5.9分。这种波动分别超过了估计的最小和中度临床重要差异。并非所有患者都符合目前逐渐、平稳变化的临床情况:许多患者存在症状严重程度以不可预测的方式变化的情况,或者在其他方面更稳定的病程中经历大幅快速变化。
关于帕金森病短期症状动态的这些信息有助于对疾病进展形成新的科学理解,而目前在没有基于互联网的自我报告的情况下获取这些信息成本非常高。这种理解应该对新治疗方法的临床试验优化以及治疗决策时间尺度的选择产生影响。