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An ensemble classifier approach for disease diagnosis using Random Forest

机译:一种使用随机森林的疾病综合诊断方法

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Massive amount of diagnostic data is generated everyday as a part of daily diagnosis, related to various types of diseases and disorders. For knowledge discovery from this diagnostic data, efficient data mining techniques play a very important role. Ensemble classifier is one of the data classification techniques related to data mining, in which decision of multiple base classifiers is combined for accurate prediction of the presence or absence of abnormality. Here, we have considered retinal images of diabetic patients, PET scan of brain of Alzheimer and MRI of brain cancer and classification is performed irrespective of whether normality or abnormality is present. The ensemble method proves to be very efficient in classification of records from available patient database, as it involves the process of considering opinion from multiple base classifiers, as opposed to the single classifier method. This leads to very accurate and precise inference, as uncorrelated errors are removed because of multiple base classifiers.
机译:作为日常诊断的一部分,每天都会产生大量的诊断数据,与各种类型的疾病和失调有关。为了从该诊断数据中发现知识,有效的数据挖掘技术起着非常重要的作用。集成分类器是与数据挖掘相关的数据分类技术之一,其中组合了多个基本分类器的决策,以准确预测异常的存在与否。在这里,我们考虑了糖尿病患者的视网膜图像,阿尔茨海默氏症的脑部PET扫描和脑癌的MRI,并且无论是否存在正常或异常都进行了分类。事实证明,集成方法在对可用患者数据库中的记录进行分类方面非常有效,因为它涉及到考虑来自多个基本分类器的意见的过程,而不是单个分类器方法。由于不相关的错误由于多个基本分类器而被删除,因此这导致了非常准确和精确的推断。

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