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Discriminant functions and decision tree induction techniques for antenatal fetal risk assessment

机译:判别功能和决策树归纳技术,用于产前胎儿风险评估

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This study concentrates on the comparison of the discriminant functions and the decision tree induction techniques in antepartum fetal evaluation. These classification techniques are applied to antenatal fetal risk assessment problem and the performances, the computational complexities and the importance of each technique in terms of diagnostic clues are observed. The task is to investigate the Doppler ultrasound measurements of umbilical artery (UA) to relate the health conditions of fetuses using discriminant functions such as linear discriminant functions (LDF), multilayer perceptron (MLP), decision trees (C4.5, CART) and neural trees. We use the following UA blood flow velocity waveforms: pulsatility index (PI), resistance index (RI) and systolic/diastolic ratio (S/D) in terms of weeks (week index: WI as a normalized value) to decide if there is any hypoxia suspicion. It is observed that the performances of MLP and CART are better but C4.5 defines understandable diagnostic clues. On the other hand, the time complexity of LDF and C4.5 are become favorable. Experiments support that C4.5, MLP, CART and neural trees are favorable medical aids to physicians during intensive surveillance of fetuses. With the limited number of indices, we obtain a specificity and sensitivity of 100% and 93% with these decision techniques.
机译:这项研究集中于判别函数和决策树归纳技术在产前胎儿评估中的比较。这些分类技术应用于产前胎儿风险评估问题,并观察了每种技术在诊断线索方面的性能,计算复杂性和重要性。任务是研究使用线性判别函数(LDF),多层感知器(MLP),决策树(C4.5,CART)等判别函数对脐动脉(UA)的多普勒超声测量结果与胎儿的健康状况进行关联神经树。我们使用以下UA血流速度波形:脉搏指数(PI),阻力指数(RI)和收缩/舒张比(S / D)(以周为单位)(周指数:WI为归一化值)来确定是否存在任何缺氧的怀疑。可以观察到MLP和CART的性能更好,但是C4.5定义了可理解的诊断线索。另一方面,LDF和C4.5的时间复杂度变得有利。实验支持C4.5,MLP,CART和神经树是对胎儿进行密集监视期间对医生的有利医疗帮助。由于指标数量有限,使用这些决策技术可获得100%和93%的特异性和敏感性。

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