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Spatial data mining using association rules and fuzzy logic for autonomous exploration of geo-referenced cancer data in Western Tamilnadu, India

机译:使用关联规则和模糊逻辑进行空间数据挖掘,以自主探索印度西泰米尔纳德邦的地理参考癌症数据

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Data mining using association rule is widely applied in medicine, particularly in cancer epidemiology. It is reported that this technique has certain uncertainty. To minimize the uncertainty, fuzzy logic is used with association rules. To demonstrate the efficiency of these methods further, geographical information system tool is used to spatially view results obtained from above-mentioned techniques. For the present study, cancer data were taken due its disparity among different populations/locations and also because it is a serious concern that affects our socioeconomic well being. Cancer is a family of diseases arising due to varied factors and there is no one cause and cure until the definite causative factor is determined. Data mining approach using association rule technique was applied to extract association between diet and incidences of cancer and was interpreted using fuzzy logic. The spatial data were displayed through map objects, and apriori algorithm is used to evaluate, visualize, and analyze the results from the data mining process. In this regard, data consisting of 3000 cancer cases were scrutinized which involves 16 parameters, 160 types of cancer, and 5 types of dietary habits including smoking, mixed diet, alcohol, betel nut, and tobacco chewing. Association rule mining reduces 800 combinations of cancer and habits to 129 cancer types and 3 habits and plots the respective location in the map through map objects. Fuzzy logic is used to find the spatiohabits linked. Association rule integrated with fuzzy logic reveals the influence of diet on cancer and its spatial pattern of the disease distribution. This technique enables us to provide the interpretation for the severity of disease that needs further attention and decision making.
机译:使用关联规则的数据挖掘已广泛应用于医学,尤其是癌症流行病学。据报道,该技术具有一定的不确定性。为了使不确定性最小化,将模糊逻辑与关联规则一起使用。为了进一步证明这些方法的效率,使用了地理信息系统工具来空间查看从上述技术获得的结果。在本研究中,获取癌症数据是由于其在不同人群/位置之间的差异,也是因为它是一个严重的问题,影响了我们的社会经济福祉。癌症是由多种因素引起的疾病家族,只有在确定了明确的致病因素后,才有任何原因可以治愈。应用关联规则技术的数据挖掘方法提取饮食与癌症发生率之间的关联,并使用模糊逻辑对其进行解释。空间数据通过地图对象显示,先验算法用于评估,可视化和分析数据挖掘过程的结果。在这方面,对包括3000个癌症病例的数据进行了仔细检查,涉及16个参数,160种癌症和5种饮食习惯,包括吸烟,混合饮食,酒精,槟榔和烟草咀嚼。关联规则挖掘将800种癌症和习惯组合减少为129种癌症和3种习惯,并通过地图对象在地图上绘制了相应位置。模糊逻辑用于查找链接的空间习惯。结合模糊逻辑的关联规则揭示了饮食对癌症的影响及其疾病分布的空间格局。这种技术使我们能够提供对疾病严重性的解释,需要进一步关注和决策。

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