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Skip pattern analysis for stratification and detection of undetermined and inconsistent data

机译:跳过模式分析,用于分层和检测不确定和不一致的数据

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Urinary Incontinence (UI) is a costly condition that decreases the quality of a patient's life and social engagement. Identification of UI risk factors may help early prevention and treatment of the condition. In this study we revisited the Medical, Epidemiological and Social Aspects of Aging (MESA) data collected in 1983 by the University of Michigan. The experiments are conducted on the dataset pertaining to the female-only population. The dataset contains missing values. First, the missing values are classified into inconsistent, undetermined, genuine missing values and skip patterns. The undetermined and inconsistent values are distinguished from the skip patterns and removed from the dataset. Once the skip patterns are detected, they are used to stratify the MESA data. Based on the stratification performed, the important risk factors are then analyzed for each group of subjects. JRip rule extraction technique is utilized to determine the UI risk factors. Consequently, taking female hormones was determined as the most important stratifying feature. The dataset is then stratified to two subsets based on this stratifying feature. Education level, hearing problems, urine loss while coughing or sneezing, physical activity, stress and cancer are risk factors specific to taking female hormones. The common risk factors among both of the stratified groups were: stress, frequent sneezing, and low physical activity. Although there were common risk factors among both of the stratified groups these preliminary results show that different group of subjects have different risk factors, and therefore they should be provided with different diagnoses and possibly treatment plans.
机译:尿失禁(UI)是一种昂贵的疾病,会降低患者的生活质量和社交参与度。 UI危险因素的识别可能有助于早期预防和治疗该病。在这项研究中,我们回顾了密歇根大学1983年收集的关于衰老的医学,流行病学和社会方面(MESA)数据。在与仅女性人口有关的数据集上进行实验。数据集包含缺失值。首先,缺失值分为不一致,不确定,真正的缺失值和跳跃模式。不确定的值和不一致的值会与跳过模式区分开,并从数据集中删除。一旦检测到跳过模式,它们就会用于对MESA数据进行分层。基于所进行的分层,然后针对每组受试者分析重要的危险因素。 JRip规则提取技术用于确定UI风险因素。因此,服用女性荷尔蒙被确定为最重要的分层特征。然后,基于此分层特征,将数据集分层为两个子集。受教育程度,听力问题,咳嗽或打喷嚏时尿量减少,体育活动,压力和癌症是服用女性荷尔蒙的特定危险因素。两组患者的共同危险因素为:压力,频繁打喷嚏和体育锻炼量少。尽管这两个分层组中都有共同的危险因素,但这些初步结果表明,不同组的受试者具有不同的危险因素,因此应为他们提供不同的诊断和可能的治疗方案。

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