Haimovich Julian S, Venkatesh Arjun K, Shojaee Abbas, Coppi Andreas, Warner Frederick, Li Shu-Xia, Krumholz Harlan M
Albert Einstein College of Medicine, Bronx, New York, United States of America.
Center for Outcomes Research and Evaluation, Yale-New Haven Hospital, New Haven, Connecticut, United States of America.
PLoS One. 2017 Mar 29;12(3):e0172049. doi: 10.1371/journal.pone.0172049. eCollection 2017.
Identifying temporal variation in hospitalization rates may provide insights about disease patterns and thereby inform research, policy, and clinical care. However, the majority of medical conditions have not been studied for their potential seasonal variation. The objective of this study was to apply a data-driven approach to characterize temporal variation in condition-specific hospitalizations. Using a dataset of 34 million inpatient discharges gathered from hospitals in New York State from 2008-2011, we grouped all discharges into 263 clinical conditions based on the principal discharge diagnosis using Clinical Classification Software in order to mitigate the limitation that administrative claims data reflect clinical conditions to varying specificity. After applying Seasonal-Trend Decomposition by LOESS, we estimated the periodicity of the seasonal component using spectral analysis and applied harmonic regression to calculate the amplitude and phase of the condition's seasonal utilization pattern. We also introduced four new indices of temporal variation: mean oscillation width, seasonal coefficient, trend coefficient, and linearity of the trend. Finally, K-means clustering was used to group conditions across these four indices to identify common temporal variation patterns. Of all 263 clinical conditions considered, 164 demonstrated statistically significant seasonality. Notably, we identified conditions for which seasonal variation has not been previously described such as ovarian cancer, tuberculosis, and schizophrenia. Clustering analysis yielded three distinct groups of conditions based on multiple measures of seasonal variation. Our study was limited to New York State and results may not directly apply to other regions with distinct climates and health burden. A substantial proportion of medical conditions, larger than previously described, exhibit seasonal variation in hospital utilization. Moreover, the application of clustering tools yields groups of clinically heterogeneous conditions with similar seasonal phenotypes. Further investigation is necessary to uncover common etiologies underlying these shared seasonal phenotypes.
识别住院率的时间变化可能有助于了解疾病模式,从而为研究、政策制定和临床护理提供参考。然而,大多数医疗状况尚未针对其潜在的季节性变化进行研究。本研究的目的是采用数据驱动的方法来描述特定疾病住院的时间变化特征。利用2008年至2011年从纽约州医院收集的3400万份住院患者出院数据集,我们使用临床分类软件根据主要出院诊断将所有出院病例分为263种临床状况,以减轻行政索赔数据在反映临床状况时特异性不同的局限性。在应用局部加权回归季节性趋势分解法后,我们使用频谱分析估计季节性成分的周期性,并应用调和回归计算该疾病季节性利用模式的振幅和相位。我们还引入了四个新的时间变化指标:平均振荡宽度、季节系数、趋势系数和趋势线性度。最后,使用K均值聚类根据这四个指标对疾病进行分组,以识别常见的时间变化模式。在所有考虑的263种临床状况中,164种表现出具有统计学意义的季节性。值得注意的是,我们发现了一些此前未描述过季节性变化的疾病,如卵巢癌、肺结核和精神分裂症。聚类分析根据多种季节性变化测量方法得出了三组不同的疾病。我们的研究仅限于纽约州,结果可能无法直接应用于其他气候和健康负担不同的地区。很大一部分医疗状况(比之前描述的比例更大)在医院利用率方面表现出季节性变化。此外,聚类工具的应用产生了具有相似季节性表型的临床异质性疾病组。有必要进一步调查以揭示这些共享季节性表型背后的共同病因。