Characterizing the connection between Parkinson's disease progression and healthcare utilization

Lane Fitzsimmons, Francesca Frau, Sylvie Bozzi, Karen Chandross, Brett Beaulieu-Jones
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Abstract

Background and Objectives: Parkinson's disease (PD) progression can be characterized in terms of healthcare utilization by analyzing clinical events across different stages of disease. Methods: PD progression was measured by the Hoehn & Yahr (H&Y) clinical rating scale and clinical events at each stage were evaluated. Natural language processing and a large language model were used to extract H&Y values from real-world data enabling a larger cohort than manually collected studies, and multi-state hidden Markov models were used for H&Y progression likelihood. Results: Within the one year, most patients in H&Y stages 2-5 remained in the same stage. Stage transitions, when they occurred, were most frequently to the next higher stage. Higher H&Y stages were associated with discharges into long term care and higher rates of additional clinical events. Conclusions: Stratifying key clinical events by H&Y score demonstrates the increases of health care utilization and economic burden with PD severity. Modelling the progression likelihood establishes a progression timeline and emphasizes the unmet need to identify treatment options that stop or slow these transitions.
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描述帕金森病进展与医疗保健使用之间的联系
背景和目的:通过分析不同疾病阶段的临床事件,可以从医疗保健利用率的角度来描述帕金森病(PD)的进展。方法帕金森病的进展是通过 Hoehn & Yahr(H&Y)临床评分量表来衡量的,并对每个阶段的临床事件进行评估。使用自然语言处理和大型语言模型从真实世界的数据中提取 H&Y 值,从而获得比人工收集的研究数据更大的队列,并使用多状态隐马尔可夫模型计算 H&Y 进展可能性:结果:在一年内,H&Y 2-5 期的大多数患者仍处于同一阶段。如果发生阶段转换,最常见的是转换到下一个更高的阶段。H&Y分期越高,出院后接受长期护理的比例越高,发生其他临床事件的比例也越高:按H&Y评分对主要临床事件进行分层表明,随着帕金森病严重程度的增加,医疗保健使用率和经济负担也会增加。对病情进展可能性的建模确定了病情进展的时间表,并强调了确定治疗方案以阻止或减缓病情进展的必要性。
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