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Significant cancer risk factor extraction: An association rule discovery approach

机译:重大癌症危险因素提取:关联规则发现方法

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摘要

Cancer is the top most death threat for human life all over the world. Current research in the cancer area is still struggling to provide better support to a cancer patient. In this research our aim is to identify the significant risk factors for particular types of cancer. First, we constructed a risk factor data set through an extensive literature review of bladder, breast, cervical, lung, prostate and skin cancer. We further employed three association rule mining algorithms, Apriori, Predictive apriori and Tertius algorithm in order to discover most significant risk factors for particular types of cancer. Discovery risk factor has been identified to shows highest confidence values. We concluded that apriori indicates to be the best association rule-mining algorithm for significant risk factor discovery.
机译:癌症是全世界人类生命中最严重的死亡威胁。目前在癌症领域的研究仍在努力为癌症患者提供更好的支持。在这项研究中,我们的目的是确定特定类型癌症的重大危险因素。首先,我们通过对膀胱癌,乳腺癌,宫颈癌,肺癌,前列腺癌和皮肤癌的广泛文献综述,构建了危险因素数据集。我们还采用了三种关联规则挖掘算法,即Apriori,Predictive apriori和Tertius算法,以发现特定类型癌症的最重要风险因素。发现风险因素已被确定为显示最高置信度值。我们得出的结论是,先验表明是发现重大风险因素的最佳关联规则挖掘算法。

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