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Time Series Models on Analysing Mortality Rates and Acute Childhood Lymphoid Leukaemia

机译:分析死亡率和急性儿童淋巴白血病的时间序列模型

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In this paper we demonstrate applying time series models on medical research. The Hungarian mortality rates were analysed by autoregressive integrated moving average models and seasonal time series models examined the data of acute childhood lymphoid leukaemia. The mortality data may be analysed by time series methods such as autoregressive integrated moving average (ARIMA) modelling,. This method is demonstrated by two examples analysis of the mortality rates of ischemic heart diseases and analysis of the mortality rates of cancer of digestive system.. Mathematical expressions are given for the results of analysis.. The relationships between time series of mortality rates were studied with ARIMA models Calculations of confidence intervals for autoregressive parameters by tree methods standard normal distribution as estimation and estimation of the White's theory and the continuous time case estimation. Analysing the confidence intervals of the first order autoregressive parameters we may conclude that the confidence intervals were much smaller than other estimations by applying the continuous time estimation model. We present a new approach to analysing the occurrence of acute childhood lymphoid leukaemia. We decompose time series into components. The periodicity of acute childhood lymphoid leukaemia in Hungary was examined using seasonal decomposition time series method. The cyclic trend of the dates of diagnosis revealed that a higher percent of the peaks fell within the winter months than in the other seasons. This proves the seasonal occurrence of the childhood leukaemia in Hungary.
机译:在本文中,我们展示了在医学研究中应用时间序列模型。匈牙利的死亡率是通过自回归综合移动平均线型进行分析,季节性时间序列模型检测了急性儿童淋巴白血病的数据。可以通过时间序列方法(如自回归综合移动普通(ARIMA)建模)分析死亡率数据。通过两个例子分析缺血性心脏病的死亡率分析和消化系统癌癌的死亡率分析来证明了该方法。分析结果给出了数学表达式。研究时间序列之间的关系序列的关系通过树方法与Arima模型计算自回归参数的置信区间标准正态分布作为白色理论的估计和估计和连续时间案例估计。分析了第一阶自回归参数的置信区间,我们可以得出结论,通过应用连续时间估计模型,置信区间比其他估计小得多。我们提出了一种分析急性儿童淋巴白血病发生的新方法。我们将时间序列分解为组件。采用季节性分解时间序列方法检查匈牙利急性儿童淋巴白血病的周期性。诊断日期的循环趋势揭示了较高百分比的峰值在冬季比其他季节下降。这证明了匈牙利儿童白血病的季节性发生。

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