用一种新的混合模型提高疾病诊断

Bikash Kanti Sarkar
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引用次数: 1

摘要

知识抽取是电子医疗系统的重要组成部分。然而,卫生领域的数据集高度不平衡、数量庞大、相互冲突和复杂,这可能导致疾病的错误诊断。因此,为这些数据集设计准确、鲁棒的临床诊断模型是数据挖掘中的一项具有挑战性的任务。在文献中,为此提出了许多标准的智能模型,但它们通常存在一些缺点,如缺乏可理解性,无法处理罕见情况,无法快速正确地做出决策等。事实上,使用标准智能方法的特定健康应用可能无法满足多个标准。然而,最近的研究表明,混合智能方法(集成多个标准智能方法)可以在健康应用中获得更好的性能。针对现有方法的局限性,本研究引入了一种新的混合预测模型(集成C4.5和PRISM学习器),用于从业者以可理解的方式有效诊断疾病(而不是任何特定疾病),与传统方法相比,预测结果更好。在14个基准数据集上获得的经验结果(在准确性、灵敏度和假阳性率方面)表明,该模型在几乎所有情况下都优于基础学习器。该模型的性能还表明,它可以很好地替代文献中发表的专门学习器(每种学习器都是针对特定疾病设计的)。总之,所提出的智能系统能够有效地完成医疗数据分类任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving disease diagnosis by a new hybrid model

Knowledge extraction is an important part of e-Health system. However, datasets in health domain are highly imbalanced, voluminous, conflicting and complex in nature, and these can lead to erroneous diagnosis of diseases. So, designing accurate and robust clinical diagnosis models for such datasets is a challenging task in data mining. In literature, numerous standard intelligent models have been proposed for this purpose but they usually suffer from several drawbacks like lack of understandability, incapability of operating rare cases, inefficiency in making quick and correct decision, etc. In fact, specific health application using standard intelligent methods may not satisfy multiple criteria. However, recent research indicates that hybrid intelligent methods (integrating several standard ones, can achieve better performance for health applications. Addressing the limitations of the existing approaches, the present research introduces a new hybrid predictive model (integrating C4.5 and PRISM learners) for diagnosing effectively the diseases (instead of any specific disease) in comprehensible way by the practitioners with better prediction results in comparison to the traditional approaches. The empirical results (in terms of accuracy, sensitivity and false positive rate) obtained over fourteen benchmark datasets demonstrate that the model outperforms the base learners in almost all cases. The performance of the model also claims that it can be good alternative to the specialized learners (each designed for specific disease) published in the literature. After all, the presented intelligent system is effective in undertaking medical data classification task.

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