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Application of data mining techniques to explore predictors of upper urinary tract damage in patients with neurogenic bladder

机译:数据挖掘技术在探索神经源性膀胱上尿路损伤预测指标中的应用

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This study proposed a decision tree model to screen upper urinary tract damage (UUTD) for patients with neurogenic bladder (NGB). Thirty-four NGB patients with UUTD were recruited in the case group, while 78 without UUTD were included in the control group. A decision tree method, classification and regression tree (CART), was then applied to develop the model in which UUTD was used as a dependent variable and history of urinary tract infections, bladder management, conservative treatment, and urodynamic findings were used as independent variables. The urethra function factor was found to be the primary screening information of patients and treated as the root node of the tree; Pabd max (maximum abdominal pressure, >14 cmH 2 O), Pves max (maximum intravesical pressure, a?¤89 cmH 2 O), and gender (female) were also variables associated with UUTD. The accuracy of the proposed model was 84.8%, and the area under curve was 0.901 (95%CI=0.844-0.958), suggesting that the decision tree model might provide a new and convenient way to screen UUTD for NGB patients in both undeveloped and developing areas.
机译:这项研究提出了一种决策树模型,以筛查神经源性膀胱(NGB)患者的上尿路损伤(UUTD)。病例组招募了34例UUTD的NGB患者,对照组包括78例无UUTD的患者。然后,应用决策树方法,分类和回归树(CART)来开发模型,在该模型中,将UUTD用作因变量,并将尿路感染,膀胱管理,保守治疗和尿动力学检查结果作为自变量。发现尿道功能因子是患者的主要筛查信息,并被视为树的根节点。 Pabd max(最大腹部压力,> 14 cmH 2 O),Pves max(最大膀胱内压力,a?¤89 cmH 2 O)和性别(女性)也是与UUTD相关的变量。所提模型的准确性为84.8%,曲线下面积为0.901(95%CI = 0.844-0.958),这表明决策树模型可能为筛查未发育期和未发育期NGB患者的UUTD提供了一种新的便捷方法。发展中地区。

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