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Prognostic Analysis of Hip Fracture in Elderly Women with Data Mining Methods

机译:数据采矿方法老年妇女髋部骨折预后分析

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Hip fracture has become one of the most public health concerns because it is an increasing cause of significant morbidity, mortality, and costs associated with osteoporosis. Although many studies claimed physical activity is the leading cause of hip fracture, other risk factors should be investigated. Most studies in this area employ either descriptive statistical analysis or traditional regression techniques to assess the association between hip fracture and small sets of clinical risk factors. Consequently, not only many potentially important variables such as pre-fracture health conditions are neglected in their analysis, but the results produced by such regression models may not represent relevant risk factors and pattern recognition of hip fracture appropriately. Thus, in this study, we examine whether more complex analytical models using several data mining techniques can better predict and explain the causes of increasing hip fracture in elderly patients. These techniques including logistic regression model, decision tree, and artificial neural network (ANN) are effective ways to analyze data sets with multiple predictor variables, which include both clinical and non-clinical-related risk factors. The preliminary analysis results show that physical activity, traditional medicine, race, BMI, underlying cerebrovascular disease, and alcohol consumption are among the key risk factors.
机译:髋部骨折已成为最为关注的公共卫生问题之一,因为它是显著的发病率,死亡率和骨质疏松症相关的成本增加的原因。虽然许多研究声称身体活动是髋部骨折的主要原因,其他危险因素应进行调查。在这个领域雇用大多数研究无论是描述性统计分析或传统的回归技术来评估髋部骨折和小套的临床危险因素之间的关联。因此,不仅许多潜在的重要的变量如骨折前的健康条件被忽略在他们的分析,但通过这样的回归模型所产生的结果可能不能代表相关的风险因素和髋部骨折的适当图案识别。因此,在这项研究中,我们研究使用多个数据挖掘技术更复杂的分析模型是否能更好地预测和解释老年患者增加髋部骨折的原因。这些技术包括Logistic回归分析,决策树和人工神经网络(ANN)是分析数据集有多个预测变量,其中包括临床和非临床相关危险因素的有效途径。初步分析结果表明,体力活动,传统医学,种族,BMI,脑血管疾病底层,和饮酒是关键的风险因素。

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