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A New Model based on Fuzzy integral for Cancer Prediction

机译:一种基于模糊积分的癌症预测的新模型

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Cancer prediction models provide an important approach to assess risk and prognosis by identifying individuals and enabling estimates of the population burden and cost of cancer. Models also may aid in the evaluation of treatments and interventions. A number of statistical and machine learning techniques have been employed to develop various cancer prediction models. Meanwhile, gene selection is very important for cancer classification. We need to deal with high-dimensional gene space and few samples. But the epistasis means that some genes maybe cover or affect other genes. Fuzzy measure can describe the interaction between genes very well. In this article, we proposed one new model based on fuzzy integral with respect to fuzzy measure for cancer prediction with sparse genes. We can obtain a group of combinations of genes with the highest fuzzy measure values. The new method is applied to two cancer data for testifying the performance. Experimental results show that the proposed model has the highest testing accuracy and F-score by comparing with several state-of-the-art methods.
机译:癌症预测模型提供了通过识别个人来评估风险和预后的重要方法,并能够估算癌症的人口负担和成本。模型也可能有助于评估治疗和干预措施。已经采用了许多统计和机器学习技术来开发各种癌症预测模型。同时,基因选择对于癌症分类非常重要。我们需要处理高维基因空间和少量样品。但是,外科意味着一些基因可能会覆盖或影响其他基因。模糊测量可以描述基因之间的相互作用。在本文中,我们提出了一种基于模糊积分的一种新模型,了解稀疏基因的癌症预测模糊量。我们可以获得具有最高模糊测量值的基因组合组合。新方法应用于两种癌症数据,用于作证性能。实验结果表明,通过与若干最先进的方法相比,该拟议模型具有最高的测试精度和F分。

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