基于机器学习的新冠肺炎症状预测诊断研究

E. Devi, V. Athappan, Rahul R Rajendran, E. Devi, Dr.G. Emayavaramban, S. Sriragavi, Dr.M. Sivaramkrishnan
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引用次数: 4

摘要

有效的筛查有助于快速准确地发现COVID-19,还可以减轻医疗保健系统的负担。已经开发了具有许多标准的预测模型来估计感染的概率。这些工具旨在帮助世界各地的医务工作者对受害者进行分类,特别是在医疗资源有限的地方。为了利用症状预测COVID-19,数据集取自以色列卫生部的网站。数据集包含9个属性和2,78,848个样本。使用预处理技术清理原始数据集。采用随机森林、K近邻、决策树、混合随机森林、K近邻、决策树等机器学习算法对195194个样本进行模型识别。通过83654个样本对预测模型进行了验证,保证了模型的质量。采用ROC曲线、真阳性和阴性率、假阳性和阴性率、阳性和阴性预测值、准确率等性能指标对模型进行检验。从评价结果来看,所提出的混合模型准确率高达98.97%。该技术可用于在检测能力受限的情况下优先筛查COVID-19。等等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Diagnostic Study on Prediction of Covid-19 by Symptoms Using Machine Learning
Effective screening helps for quick and accurate detection of COVID-19 and it also decreases the burden on the healthcare system. Prediction models with numerous criteria have been developed to estimate the probability of infection. These are designed to assist medical workers across the world in triaging victi ms, especially in places with limited medical resources. For predicting the COVID-19 using symptoms, the dataset is taken from the website of the Israeli Ministry of Health. The dataset contains 9 attributes and 2,78,848 samples. The raw dataset is cleaned using pre-processing techniques. The Machine learning algorithms like Random Forest, K Nearest Neighbor, Decision Tree, and hybrid Random Forest, K Nearest Neighbor, and Decision Tree are applied on the 1,95,194 samples to identify the model. The predicted model is tested on 83,654 samples to ensure the quality of the designed model. The performance metrics like ROC [Receiver Operating Characteristic] curve, True Positive and Negative Rate, False Positive and Negative Rate, Positive and Negative Predictive Value, and Accuracy are applied to check the model. From the evaluation result, the proposed hybrid model gives high accuracy of 98.97% . The proposed technique might be utilized to priorities COVID-19 screening when testing capabilities are constrained., among several other things.
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