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Machine learning to reveal an astute risk predictive framework for Gynecologic Cancer and its impact on women psychology: Bangladeshi perspective

机译:机器学习揭示妇科癌症的精明风险预测框架及其对妇女心理学的影响:孟加拉国视角

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In this research, an astute system has been developed by using machine learning and data mining approach to predict the risk level of cervical and ovarian cancer in association to stress. For functioning factors and subfactors, several machine learning models like Logistics Regression, Random Forest, AdaBoost, Na?ve Bayes, Neural Network, kNN, CN2 rule Inducer, Decision Tree, Quadratic Classifier were compared with standard metrics e.g., F1, AUC, CA. For certainty info gain, gain ratio, gini index were revealed for both cervical and ovarian cancer. Attributes were ranked using different feature selection evaluators. Then the most significant analysis was made with the significant factors. Factors like children, age of first intercourse, age of husband, Pap test, age are the most significant factors of cervical cancer. On the other hand, genital area infection, pregnancy problems, use of drugs, abortion, and the number of children are important factors of ovarian cancer. Resulting factors were merged, categorized, weighted according to their significance level. The categorized factors were indexed using ranker algorithm which provides them a weightage value. An algorithm has been formulated afterward which can be used to predict the risk level of cervical and ovarian cancer in relation to women's mental health. The research will have a great impact on the low incoming country like Bangladesh as most women in low incoming nations were unaware of it. As these two can be described as the most sensitive cancers to women, the development of the application from algorithm will also help to reduce women’s mental stress. More data and parameters will be added in future for research in this perspective.
机译:在这项研究中,通过使用机器学习和数据采矿方法开发了一个精明的系统,以预测与压力结合的宫颈癌和卵巢癌的风险水平。对于物流回归,随机森林,Adaboost,Na ve,神经网络,knn,CN2规则诱导器,决策树,二次分类器等几种机器学习模型与标准度量,例如F1,AUC,CA进行了比较。 。对于确定的信息增益,GAIN比,宫颈癌和卵巢癌的GINI指数显示。使用不同的特征选择评估符排名属性。那么最重要的分析是用重要因素进行的。儿童的因素,第一次性交年龄,丈夫年龄,罂粟试验,年龄是宫颈癌最重要的因素。另一方面,生殖器面积感染,妊娠问题,药物使用,流产,儿童人数是卵巢癌的重要因素。由此产生的因素被合并,分类,加权根据其意义水平。使用Ranker算法索引分类因子,该算法为它们提供了重量值。之后的算法已被制定,可用于预测与女性心理健康有关的宫颈癌和卵巢癌的风险水平。由于大多数鲍拉拉德,这项研究将对低收入的国家产生很大影响,因为大多数较低的国家的女性都没有意识到它。由于这两者可以被描述为女性最敏感的癌症,从算法的应用的发展也有助于降低女性的精神压力。在此视角下将来将来添加更多数据和参数。

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