使用数据挖掘来检查前列腺癌的患病率:以内罗毕县为例

Njeri Ngaruiya, C. Moturi
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引用次数: 4

摘要

前列腺癌在过去几年呈上升趋势,在20多岁的男性中发现了令人震惊的病例。问题是,大多数病例是在晚期诊断出来的,因此死亡率很高。近年来,数据驱动分析研究已成为新颖研究的常见补充,不同的工具和算法正在癌症研究中占据中心位置。在这项研究中,主要目的是使用数据挖掘来导出模式,这些模式用于构建一个预后工具,该工具有助于识别Gleason评分,一旦筛选并决定治疗技术。在本研究中,我们使用了两种流行的数据挖掘工具(R Environment和WEKA),结果几乎相同。该数据集包含大约485条记录和7个变量。在WEKA中,ANN和J48之间的模型构建和比较采用了10倍交叉验证。结果表明,与J48相比,在所有实例中,ANN是最准确的预测器,在创建的不同区域中显示不同的水平。这项研究有助于社会、学术界和癌症研究,最终通过使用模式识别来帮助降低死亡率,从而做出更好的决策。此外,这对帮助肯尼亚政府确定他们应该正确放置2015年初国家政府推出的癌症诊断和治疗设备的位置有潜在的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of data mining to check the prevalence of prostate cancer: Case of Nairobi County
Prostate cancer has been on the rise in the past years and alarming cases being found in men in their 20's. The problem is that most of the cases are diagnosed in their late stages thus the mortality rate being high. In recent years data driven analytic studies have become a common complement with novel research where different tools and algorithms are taking a centre stage in cancer research. In this research, the main objective was to use data mining to derive patterns which were used in building a prognostic tool that helps in identification of the Gleason score once screened and deciding the treatment technique. In this research, we used two popular data mining tools (R Environment and WEKA) which exhibited almost same results. The dataset contained around 485 records and 7 variables. In WEKA, a 10-fold cross-validation was used in model building and comparison between ANN and J48. The results showed that ANN is the most accurate predictor compared to J48 in all the instances displaying varying levels in the different zones created. This study contributes to society, academics and cancer research which ultimately assist in reduction of mortality rates by use of pattern recognitions which leads to better decision making. Furthermore, this is a potential impact in helping the GOK (Government of Kenya) in establishing where they should correctly place the cancer diagnosis and treatment equipment that were rolled out by the National government early 2015.
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