BMC Med Res Methodol. 2013 May 24;13:66. doi: 10.1186/1471-2288-13-66.
Statistical process control (SPC), an industrial sphere initiative, has recently been applied in health care and public health surveillance. SPC methods assume independent observations and process autocorrelation has been associated with increase in false alarm frequency.
Monthly mean raw mortality (at hospital discharge) time series, 1995-2009, at the individual Intensive Care unit (ICU) level, were generated from the Australia and New Zealand Intensive Care Society adult patient database. Evidence for series (i) autocorrelation and seasonality was demonstrated using (partial)-autocorrelation ((P)ACF) function displays and classical series decomposition and (ii) "in-control" status was sought using risk-adjusted (RA) exponentially weighted moving average (EWMA) control limits (3 sigma). Risk adjustment was achieved using a random coefficient (intercept as ICU site and slope as APACHE III score) logistic regression model, generating an expected mortality series. Application of time-series to an exemplar complete ICU series (1995-(end)2009) was via Box-Jenkins methodology: autoregressive moving average (ARMA) and (G)ARCH ((Generalised) Autoregressive Conditional Heteroscedasticity) models, the latter addressing volatility of the series variance.
The overall data set, 1995-2009, consisted of 491324 records from 137 ICU sites; average raw mortality was 14.07%; average(SD) raw and expected mortalities ranged from 0.012(0.113) and 0.013(0.045) to 0.296(0.457) and 0.278(0.247) respectively. For the raw mortality series: 71 sites had continuous data for assessment up to or beyond lag40 and 35% had autocorrelation through to lag40; and of 36 sites with continuous data for ≥ 72 months, all demonstrated marked seasonality. Similar numbers and percentages were seen with the expected series. Out-of-control signalling was evident for the raw mortality series with respect to RA-EWMA control limits; a seasonal ARMA model, with GARCH effects, displayed white-noise residuals which were in-control with respect to EWMA control limits and one-step prediction error limits (3SE). The expected series was modelled with a multiplicative seasonal autoregressive model.
The data generating process of monthly raw mortality series at the ICU level displayed autocorrelation, seasonality and volatility. False-positive signalling of the raw mortality series was evident with respect to RA-EWMA control limits. A time series approach using residual control charts resolved these issues.
统计过程控制(SPC)是工业领域的一项举措,最近已应用于医疗保健和公共卫生监测领域。SPC 方法假设观测值是独立的,而过程自相关与误报频率的增加有关。
从澳大利亚和新西兰重症监护学会成人患者数据库中生成了 1995 年至 2009 年个体重症监护病房(ICU)水平的每月平均原始死亡率(出院时)时间序列。使用(部分)自相关(PACF)函数显示和经典序列分解来证明系列(i)自相关和季节性的证据,(ii)使用风险调整(RA)指数加权移动平均(EWMA)控制限(3 西格玛)寻找“在控”状态。风险调整是通过随机系数(ICU 站点为截距,APACHE III 评分斜率)逻辑回归模型实现的,生成预期死亡率序列。通过 Box-Jenkins 方法将时间序列应用于完整 ICU 系列(1995-(结束)2009):自回归移动平均(ARMA)和(G)ARCH(广义自回归条件异方差)模型,后者解决了序列方差的波动性问题。
1995 年至 2009 年的总体数据集由来自 137 个 ICU 站点的 491324 条记录组成;原始死亡率平均为 14.07%;原始和预期死亡率的平均值(SD)范围从 0.012(0.113)和 0.013(0.045)到 0.296(0.457)和 0.278(0.247)。对于原始死亡率序列:71 个站点具有评估滞后 40 或以上的连续数据,35%的站点具有滞后 40 的自相关;在 36 个具有连续数据超过 72 个月的站点中,所有站点均表现出明显的季节性。预期系列也出现了类似的数量和百分比。原始死亡率系列的 RA-EWMA 控制限存在失控信号;具有 GARCH 效应的季节性 ARMA 模型显示出白色噪声残差,这些残差与 EWMA 控制限和一步预测误差限(3SE)一致。预期系列采用乘法季节性自回归模型进行建模。
ICU 水平的原始死亡率月度时间序列生成过程显示出自相关、季节性和波动性。RA-EWMA 控制限对原始死亡率序列的误报信号明显。使用残差控制图的时间序列方法解决了这些问题。