使用机器学习技术补充维生素D对乳腺癌妇女炎症标志物和总抗氧化能力的影响

Marzieh Tahmasebi, Masoud Veissi, Seyed Ahmad Hosseini, Amir Jamshidnezhad
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引用次数: 0

摘要

目的:建立人工神经网络(ANN)学习系统,预测补充维生素D对乳腺癌妇女血清维生素D水平、炎症因子和总抗氧化能力(TAC)的影响。方法:当前项目的数据集来自转诊到伊朗阿瓦士市沙法国家癌症患者医院的乳腺癌妇女。利用维生素D3补充治疗前后血清维生素D、肿瘤坏死因子-α (TNF-α)、转化生长因子β (TGF-β)和TAC水平的数据集进行建模。设计预测神经网络模型,检测维生素D3补充对血清维生素D、炎症因子和TAC水平变化的影响。结果:结果表明,ANN模型可以预测补充维生素D3对血清维生素D、TNF-α、TGF-β1和TAC水平变化的影响,平均准确率分别为85%、40%、89.5%和88.1%。结论:根据本研究结果,ANN方法可以准确预测补充维生素D3对血清维生素D、TNF-α、TGF-β1、TAC水平的影响。结果表明,所提出的人工神经网络方法可以帮助专家在预测维生素D补充对乳腺癌进展因素的影响的时间和准确性方面更自信地改进治疗过程(https://www.irct.ir/标识符:IRCT2015090623924N1)。
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Effect of vitamin D supplementation on inflammatory markers and total antioxidant capacity in breast cancer women using a machine learning technique
Aim: This study aimed to establish a learning system using an artificial neural network (ANN) to predict the effects of vitamin D supplementation on the serum levels of vitamin D, inflammatory factors, and total antioxidant capacity (TAC) in women with breast cancer. Methods: The data set of the current project was created from women with breast cancer who were referred to the Shafa State Hospital of Patients with Cancers in Ahvaz city, Iran. Modeling was implemented using the data set at the serum levels of vitamin D, tumor necrosis factor-α (TNF-α), transforming growth factor β (TGF-β), and TAC, before and after vitamin D3 supplement therapy. A prediction ANN model was designed to detect the effects of vitamin D3 supplementation on the serum level changes of vitamin D, inflammatory factors and TAC. Results: The results showed that the ANN model could predict the effect of vitamin D3 supplementation on the serum level changes of vitamin D, TNF-α, TGF-β1, and TAC with an accuracy average of 85%, 40%, 89.5%, and 88.1%, respectively. Conclusions: According to the findings of the study, the ANN method could accurately predict the effect of vitamin D3 supplementation on the serum levels of vitamin D, TNF-α, TGF-β1, and TAC. The results showed that the proposed ANN method can help specialists to improve the treatment process more confidently in terms of time and accuracy of predicting the influence of vitamin D supplementation on the factors affecting the progression of breast cancer (https://www.irct.ir/ identifier: IRCT2015090623924N1).
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