基于印度马哈拉施特拉邦Raigad地区三级医院发热门诊患者的流感样疾病ILI监测随机森林模型评价

Q3 Pharmacology, Toxicology and Pharmaceutics
Mr Raut
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引用次数: 0

摘要

简介:机器学习和人工智能工具、party和随机森林可用于评估监测数据,以获得更好的结果。本研究的主要目的是评估机器学习和人工智能模型原始数据在covid - 19大流行期间三级护理医院发烧门诊患者流感样疾病(ILI)监测中的实用性和可靠性。次要目标是估计模型统计量以衡量参数的影响。方法:本研究是基于医学院附属三级医院监测数据的二次数据分析研究。2020年3月23日至2020年6月30日期间,发热门诊社区医学部流感样疾病监测小组收集了3723例病例的数据。数据由(11)个变量组成。数据分析采用R软件(4.2.2)。应用机器学习(ML)和人工智能工具党和随机森林。结果:随机森林模型的模型精度为0.9557,优于Party模型,在不同截止点下,随机森林模型的AUC分别为87.4%(灵敏度0.9533,特异性0.9685)、89.7%(灵敏度0.9059,特异性0.9957)和88.3%(灵敏度0.965,特异性0.9527)。模型发现,患者严重程度(轻度、中度、重度)、发热门诊就诊天数、疾病性质(无症状?)和患者年龄是准确率平均下降顺序中最显著的因素,而患者严重程度(轻度、中度、重度)、发热门诊就诊天数、患者年龄和症状投诉次数(NOC)是基尼系数平均下降顺序中最显著的预测Covid-19检测结果的因素。结论:对于训练集和测试集,party算法是一致的,而对于随机森林,在训练集上的结果很好,而对于测试集,相同的模型在预测类上存在困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation Of Random Forest Model on Influenza Like Illness ILI Surveillance Based on Patients Attending Fever OPD During COVID 19 Pandemic at Tertiary Care Hospital In Raigad District Maharashtra India
Introduction: The machine learning and artificial intelligence tools, party and random forest can be used to evaluate surveillance data for better outcomes. The primary objective of the study was to evaluate the utility and reliability of machine learning and artificial intelligence model primary data for the Influenzas Like illness (ILI) Surveillance of patients attending fever OPD in a tertiary care hospital during covid 19 pandemic. The secondary objective was to estimate model statistics to measure the effect of parameters. Methodology: This is a secondary data analysis study based on surveillance data in the tertiary care hospital attached to medical college. The data of 3723 cases was collected by Surveillance team for Influenzas Like Illness (ILI) under Department of Community Medicine in Fever OPD during covid pandemic from 23 March 2020 to 30 June 2020. Data consisted (11) variables. Data was analysed using R Software (4.2.2). Machine learning (ML) and Artificial Intelligence tool party and random forest were applied. Results: The random forest model performed better than Party model with model accuracy of 0.9557, AUC of random forest model were 87.4% (sensitivity 0.9533, specificity 0.9685), 89.7% (sensitivity 0.9059, specificity 0.9957) and 88.3% (Sensitivity 0.965, Specificity 0.9527) for confirmed, probable and suspected with different cut-offs. The model found Severity of Patient (Mild, Moderate, Severe), the day of Fever OPD Visit, nature of illness (is asymptomatic?) and age of patient as the most significant factors in decreasing order by mean decrease in Accuracy while the Severity of Patient (Mild, Moderate, Severe), the day of Fever OPD Visit, age of patient and number of symptomatic Complaint (NOC) were found the most significant factors in decreasing order by mean decrease in Gini to predict Covid-19 Test Results. Conclusions: The party algorithm was consistent for train and test dataset while for the random forest results were good on train dataset while same model had seen difficulty in prediction class for the test dataset.
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