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Design of Clinical Support Systems Using Integrated Genetic Algorithm and Support Vector Machine

机译:基于集成遗传算法和支持向量机的临床支持系统设计

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Clinical decision support system (CDSS) provides knowledge and specific information for clinicians to enhance diagnostic efficiency and improving healthcare quality. An appropriate CDSS can highly elevate patient safety, improve healthcare quality, and increase cost-effectiveness. Support vector machine (SVM) is believed to be superior to traditional statistical and neural network classifiers. However, it is critical to determine suitable combination of SVM parameters regarding classification performance. Genetic algorithm (GA) can find optimal solution within an acceptable time, and is faster than greedy algorithm with exhaustive searching strategy. By taking the advantage of GA in quickly selecting the salient features and adjusting SVM parameters, a method using integrated GA and SVM (IGS), which is different from the traditional method with GA used for feature selection and SVM for classification, was used to design CDSSs for prediction of successful ventilation weaning, diagnosis of patients with severe obstructive sleep apnea, and discrimination of different cell types form Pap smear. The results show that IGS is better than methods using SVM alone or linear discriminator.
机译:临床决策支持系统(CDSS)为临床医生提供知识和特定信息,以提高诊断效率和改善医疗质量。适当的CDSS可以大大提高患者的安全性,提高医疗质量,并提高成本效益。支持向量机(SVM)被认为优于传统的统计和神经网络分类器。但是,确定有关分类性能的SVM参数的适当组合至关重要。遗传算法(GA)可以在可接受的时间内找到最优解,并且比具有穷举搜索策略的贪婪算法要快。通过利用GA的优势,快速选择显着特征并调整SVM参数,设计了一种使用GA和SVM集成(IGS)的方法,该方法不同于使用GA进行特征选择和SVM进行分类的传统方法。 CDSS用于预测成功的通气断奶,诊断患有严重阻塞性睡眠呼吸暂停的患者以及通过巴氏涂片检查来区分不同的细胞类型。结果表明,IGS优于单独使用SVM或线性鉴别器的方法。

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