Prediction of Optimal Algorithm For Diagnosis of Chronic Obstructive Pulmonary Disease

K. Kousalya, K Dinesh, B. Krishnakumar, K. G, Kowsika C, Ponmathi K
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Abstract

Data analyzing is the process of analyzing the dataset to make inferences from the information available. The main aim is to apply statistical analysis and technologies on data to solve problems. Thus, researchers introduce various algorithms for analysis the data. But the existing algorithms have not achieve the expected outcome. Thus, the proposed work also addresses to the improve the mechanism for analysis the dataset for the prediction of an optimal algorithm for diagnosis of Chronic Obstructive Pulmonary Disease (COPD). Airflow into and out of the lungs is impeded by COPD. Long-term exposure to irritating gases or particles, most typically from cigarette smoke, is frequently the cause. People with COPD have a higher risk of developing heart disease, lung cancer, and a variety of other disorders. Here this work compares various machine learning algorithms for the huge volume of medical data with multiple attributes. The objective is to predict the algorithm which has the highest accuracy. With the help of analytics of the chosen dataset, the above-mentioned models are deployed and compared for the prediction of the algorithm with the highest accuracy rate of 97%.
慢性阻塞性肺疾病诊断的最优算法预测
数据分析是分析数据集以从可用信息中做出推断的过程。主要目的是应用数据的统计分析和技术来解决问题。因此,研究人员引入了各种算法来分析数据。但是现有的算法并没有达到预期的效果。因此,提出的工作还涉及改进分析数据集的机制,以预测慢性阻塞性肺疾病(COPD)诊断的最佳算法。慢性阻塞性肺病阻碍了进出肺部的气流。长期暴露于刺激性气体或颗粒,最典型的是来自香烟的烟雾,往往是原因。患有慢性阻塞性肺病的人患心脏病、肺癌和其他各种疾病的风险更高。在这里,这项工作比较了用于具有多个属性的大量医疗数据的各种机器学习算法。目标是预测出准确率最高的算法。通过对所选数据集的分析,对上述模型进行了部署和比较,得到了准确率最高的97%算法的预测结果。
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