The technical capacity to monitor patients with a mobile device has drastically expanded, but data produced from this approach are often difficult to interpret. We present a solution to produce a meaningful representation of patient status from large, complex data streams, leveraging both a data-driven approach, and use clinical knowledge to validate results. Data were collected from a clinical trial enrolling chronic pain patients, and included questionnaires, voice recordings, actigraphy, and standard health assessments. The data were reduced using a clustering analysis. In an initial exploratory analysis with only questionnaire data, we found up to 3 stable cluster solutions that grouped symptoms on a positive to negative spectrum. Objective features (actigraphy, speech) expanded the cluster solution granularity. Using a 5 state solution with questionnaire and actigraphy data, we found significant correlations between cluster properties and assessments of disability and quality-of-life. The correlation coefficient values showed an ordinal distinction, confirming the cluster ranking on a negative to positive spectrum. This suggests we captured novel, distinct Pain Patient States with this approach, even when multiple clusters were equated on pain magnitude. Relative to using complex time courses of many variables, Pain Patient States holds promise as an interpretable, useful, and actionable metric for a clinician or caregiver to simplify and provide timely delivery of care.
翻译:监测使用移动装置的病人的技术能力大幅度扩大,但从这一方法中产生的数据往往难以解释。我们提出了一个解决办法,以便从大型、复杂的数据流中产生对病人状况有意义的反映,同时利用数据驱动的方法,并利用临床知识来验证结果。数据是从临床试验中收集的,登记慢性疼痛病人,包括问卷、语音录音、活体摄影和标准健康评估。数据使用群集分析而减少。在仅使用问卷数据的初步探索分析中,我们发现多达3个稳定的群集解决方案,将症状归为正至负谱。客观特征(行动、言语)扩大了群集溶颗粒度。我们利用5个州的问卷和活性数据解决方案,发现群集特性与残疾和生活质量评估之间的重要关联。相关系数值显示了一种或异性区别,证实了在负至正谱上的群集排序。这意味着我们用这种方法捕捉到新颖的、独特的癌症病人病人国家,即使将痛苦程度等同起来。相对于使用许多变量的复杂时间课程而言,痛苦病人国家有希望及时提供可解释、有用和计量的诊所。