使用基本实验室参数进行登革热阳性检测的基于机器学习的数学方程。

IF 1.1 Q4 PRIMARY HEALTH CARE
Shirin Dasgupta, Shuvankar Das, Debarghya Chakraborty
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引用次数: 0

摘要

目的:登革热是一种常见的重要虫媒病毒感染,主要由埃及伊蚊传播。登革热给全球公共卫生造成了巨大负担。严重登革热可能是致命的。因此,早期发现重症病例对于适当的治疗至关重要。然而,世界卫生组织(世卫组织)推荐的传统登革热诊断方法(ELISA、RT-PCR)在资源有限的环境中是不可用的。材料和方法:作为替代,两种基于机器学习(ML)的预测模型,特别是多元自适应回归样条(MARS)和人工神经网络(ANN),被用来预测登革热感染。与传统方法相比,这两种模型更经济、更简单,因为它们只处理5个基本参数[即年龄、总白细胞计数(TLC)、血红蛋白、血小板计数和红细胞沉降率(ESR)]。对所有输入参数进行了全面审查,登革热感染的阳性预测与过去的调查相关联。这些参数在2022年6月至2023年9月期间被建议在印度Midnapore的一个nabl认可的私人诊断中心接受登革热检测的122名患者中进行了评估。在122例患者中,71例在NS1测试中发现Panbio大于9个单位,51例在NS1测试中发现Panbio小于9个单位。结果:在本研究中,MARS和ANN预测分类的准确率分别为87.5%和95.83%。结论:在两种ML模型中,血小板计数都是最重要的输入参数。此外,提出了两个预测数学方程来检测每种ML模型的登革热阳性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based mathematical equations for dengue positivity detection using elementary laboratory parameters.

Objectives: Dengue is a common and important arboviral infection transmitted by the domestic Aedes aegypti mosquito. Dengue has managed to create a huge burden on public health globally. Severe dengue may prove to be fatal. Hence, early recognition of severe cases is essential for proper management. However, the traditional methods of dengue diagnosis (ELISA, RT-PCR) recommended by the World Health Organization (WHO) are not available in resource-constrained settings.

Materials and methods: As a replacement, two machine learning (ML)-based prediction models, specifically Multivariate Adaptive Regression Splines (MARS) and Artificial Neural Network (ANN), are utilized to predict dengue infection. These two models serve as a more affordable and simpler alternative to traditional methods because they deal with only five elementary parameters [i.e. Age, Total Leucocyte Count (TLC), Haemoglobin, Platelet Count, and Erythrocyte Sedimentation rate (ESR)]. A comprehensive review of all the input parameters is conducted, and the positivity prediction of dengue infection is correlated with past investigations. These parameters were evaluated in 122 patients who were advised to undergo a dengue test in an NABL-accredited private diagnostic centre in Midnapore, India, from June 2022 to September 2023. Out of total 122 patients, 71 were found to have greater than 9 Panbio units in the NS1 test, and 51 were found to have fewer than 9 Panbio units in the NS1 test.

Results: In the present study for dengue positivity detection, the correctness of the predicted classes is determined to be 87.5% and 95.83% for MARS and ANN, respectively.

Conclusion: From both ML models, it is observed that Platelet Count is the most relatively important input parameter. In addition, two predictive mathematical equations are presented to detect dengue positivity for each ML model.

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