基于机器学习的地下水砷与癌症风险评估预测模型:迈向学术研究现代化的一步

Sobia Iftikhar, Sania Bhatti, Z. Bhatti, M. Memon, F. Memon
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摘要

地下水砷污染是南亚国家最重要的问题之一,地下水是南亚国家最重要的饮用水来源之一。在亚洲国家,特别是生活在农村地区的巴基斯坦人正在吞食地下水以供饮用,而他们无法获得清洁水。这种砷污染的水对人体健康有害。本研究的持久性是研究未来几年巴基斯坦信德省Khairpur地下水中砷含量的增加,这也逐渐增加了人体癌症(皮肤癌,血癌)的发病率。为了预测未来五年的砷值和癌症风险,我们通过微软Azure机器学习开发了两个模型,算法包括支持向量机(SVM)、线性回归(LR)、贝叶斯线性回归(BLR)、提升决策树(BDT)、指数平滑ETS、自回归综合移动平均(ARIMA)。建立的预测模型“砷污染与癌症风险评估预测模型”(ACCRAP模型)可以帮助我们预测砷污染水平和癌症发病率。结果表明,在四种部署的机器学习算法中,BLR对癌症发病率的预测准确率最高。
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Groundwater Arsenic and Cancer Risk Assessment Prediction model via Machine Learning: A Step Towards Modernizing Academic Research
Ground water contamination with Arsenic (As) is one of the foremost issues in the South Asian countries where ground water is one of the foremost sources of drinking water. In Asian countries, especially people of Pakistan living in rural areas are devouring ground water for drinking purpose, and cleaned water is not accessible to them. This arsenic contaminated water is hazardous for human health. The persistence of this study is to study the increasing level of arsenic in ground water in coming years for Khairpur, Sindh Pakistan, which is also increasing the cancer rate (skin cancer, blood cancer) gradually in human body. To predict the arsenic value and cancer risk for the next five years, we have developed two models via Microsoft Azure machine learning with algorithms include Support Vector Machine (SVM), Linear Regression (LR), Bayesian Linear Regression (BLR), Boosted Decision tree (BDT), exponential smoothing ETS, Autoregressive Integrated Moving Average (ARIMA). The developed predictive model named as Arsenic Contamination and Cancer Risk Assessment Prediction Model (ACCRAP model) will help us to forecast the arsenic contamination levels and the cancer rate. The results demonstrated that BLR pose highest prediction accuracy of cancer rate among the four deployed machine learning algorithms.
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