β地中海贫血患者氧化应激生物标志物严重程度的识别和被动测量:K-means、随机森林、XGBoost、决策树、基于神经网络的新框架

Debleena Basu , Rupal Sinha , Saswata Sahu , Jyotsna Malla , Nishant Chakravorty , Partha Sarathi Ghosal
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引用次数: 5

摘要

铁超载诱导β -地中海贫血患者氧化应激是相关治疗方案的主要挑战之一。疾病的严重程度和准确预后在很大程度上取决于几个临床参数,不同的激素在这方面也提供了被动指征。本研究的重点是铁超载、热带激素和氧化应激生物标志物对β -地中海贫血患者严重程度的临床意义,以及低估它们的相互作用。病例组和对照组广泛采集血清样本,并对血清样本中分析的研究参数进行统计分析。氧化应激生物标志物丙二醛(MDA)和蛋白羰基水平与铁蛋白水平呈显著正相关。通过K-means聚类和XGBoost、随机森林和决策树等分类算法,建立了一种新的疾病严重程度分类框架。此外,利用神经网络模型预测氧化应激生物标志物、丙二醛和蛋白羰基,并根据铁蛋白和营养激素的测量值进行预测。聚类结果表明,铁蛋白和氧化应激生物标志物是确定疾病严重程度的决定性参数。在分类器中,经过k交叉验证,XGBoost的准确率最高(100%)。神经网络模型对丙二醛和蛋白羰基的预测具有较高的准确性。提出的技术可以选择作为一个现实生活中的决策工具,医疗专业人员在诊断和治疗β -地中海贫血。此外,一些关键血液参数的被动测定方法可能归因于开发的预测模型,这也可用于类似领域的医学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of severity and passive measurement of oxidative stress biomarkers for β–thalassemia patients: K-means, random forest, XGBoost, decision tree, neural network based novel framework

Iron-overload induced oxidative stress in β–thalassemia patients is one of the major challenges in the associated treatment protocol. The severity and accurate prognosis of the disease is largely dependent on several clinical parameters, and different hormones also provide passive indication in this context. The present study focused on clinical implication of iron overload, tropic hormones, and oxidative stress biomarkers on severity of β–thalassemia patients as well as understating their interactive effects. Extensive blood serum samples were collected from group of case and control and statistical analysis was performed on the analyzed study parameters from the serum samples. The oxidative stress biomarkers, Malondialdehyde (MDA) and protein carbonyl level showed significant positive correlation with ferritin levels in case. A novel framework was developed to categorize the severity of the disease through K-means clustering and several classification algorithms, such as XGBoost, random forest, and decision tree. Furthermore, a neural network model was used for predicting the oxidative stress biomarker, MDA and protein carbonyl from measured value of ferritin and trophic hormones. The results of clustering depicted that ferritin and the oxidative stress biomarkers were conclusive parameters in determining the severity of the disease. Among the classifiers, XGBoost showed the highest accuracy after k-cross validation (100%). The neural network model exhibited high accuracy in predicting MDA and protein carbonyl. The proposed technique can be chosen as a real life decision tool for medical professionals in the diagnosis and treatment of β–thalassemia. Furthermore, the approach of passive determination of some critical blood parameters may be attributed from the developed prediction model, which can also be instrumental in the similar area of medical research.

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