Application of machine learning for the analysis of peripheral blood biomarkers in oral mucosal diseases: a cross-sectional study.

IF 2.6 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Huiyu Yao, Zixin Cao, Liangfu Huang, Haojie Pan, Xiaomin Xu, Fucai Sun, Xi Ding, Wan Wu
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引用次数: 0

Abstract

Background: Oral mucosal lesions are widespread globally, have a high prevalence in clinical practice, and significantly impact patients' quality of life. However, their pathogenesis remains unclear. Recent evidences suggested that hematological parameters may play a role in their development. Our study investigated the differences in humoral immune indexes, serum vitamin B levels, and micronutrients among patients with oral mucosal lesions and healthy controls. Additionally, it evaluated a Random Forest machine learning model for classifying various oral mucosal diseases based on peripheral blood biomarkers.

Methods: We recruited 237 patients with recurrent aphthous ulcers (RAU), 35 with oral lichen planus (OLP), 67 with atrophic glossitis (AG), 35 with burning mouth syndrome (BMS), and 82 healthy controls. Clinical data were analyzed by SPSS 24 software. Serum levels of immunoglobulins (IgG, IgA, IgM), complements (C3, C4), vitamin B (VB1, VB2, VB3, VB5), serum zinc (Serum Zn), serum iron (Serum Fe), unsaturated iron-binding capacity (UIBC), total iron-binding capacity (TIBC), and iron saturation (Iron Sat) were measured and compared among groups. A Random Forest model was applied to analyze a dataset comprising 319 samples with eight key biomarkers.

Results: Significant differences were observed between the oral mucosal diseases groups and controls in the serum levels of VB2, VB3, VB5, zinc, iron, TIBC, and Iron Sat. Specifically, serum levels of VB2 and VB3 were significantly higher in patients compared to controls (*p < 0.05), while levels of VB5, Serum Zn, Serum Fe, TIBC, and Iron Sat were significantly lower (*p < 0.05). No significant differences were found for C3, C4, IgG, IgM, IgA, VB1, and UIBC. The optimized Random Forest model demonstrated high performance, and effectively classified different disease groups, though some overlap between groups was noted. Feature importance analysis, based on the Mean Decrease Accuracy and Gini Index, identified VB2, VB3, Serum Fe, TIBC, and Serum Zn as key biomarkers, indicating their potential in distinguishing oral mucosal diseases.

Conclusion: Our study identified significant associations between the contents of VB2, VB3, VB5, Serum Fe, Serum Zn, and other micronutrients and oral mucosal lesions. It suggested that regulating these micronutrient levels could be essential for preventing and curing such lesions. The Random Forest model demonstrated high accuracy (94.68%) in classifying disease groups, emphasizing the potential of machine learning to enhance diagnostic precision in oral mucosal diseases. Future research should focus on validating these findings in larger cohorts and exploring alternative machine-learning algorithms to improve diagnostic accuracy further.

机器学习在口腔黏膜疾病外周血生物标志物分析中的应用:一项横断面研究。
背景:口腔黏膜病变在全球范围内广泛存在,在临床实践中具有较高的患病率,并显著影响患者的生活质量。然而,其发病机制尚不清楚。最近的证据表明,血液学参数可能在其发展中起作用。本研究探讨了口腔黏膜病变患者和健康对照者体液免疫指标、血清维生素B水平和微量营养素的差异。此外,它还评估了基于外周血生物标志物对各种口腔粘膜疾病进行分类的随机森林机器学习模型。方法:选取复发性阿夫特溃疡(RAU) 237例,口腔扁平苔藓(OLP) 35例,萎缩性舌炎(AG) 67例,灼口综合征(BMS) 35例,对照组82例。采用SPSS 24软件对临床资料进行分析。测定各组血清免疫球蛋白(IgG、IgA、IgM)、补体(C3、C4)、维生素B (VB1、VB2、VB3、VB5)、血清锌(Serum Zn)、血清铁(Serum Fe)、不饱和铁结合力(UIBC)、总铁结合力(TIBC)、铁饱和度(iron Sat)水平并进行比较。随机森林模型用于分析包含319个样本的数据集,其中包含8个关键生物标志物。结果:口腔黏膜疾病组与对照组血清VB2、VB3、VB5、锌、铁、TIBC、iron Sat水平存在显著差异,其中患者血清VB2、VB3水平显著高于对照组(*p)。结论:本研究发现VB2、VB3、VB5、血清Fe、血清Zn等微量营养素含量与口腔黏膜病变存在显著相关性。这表明,调节这些微量营养素水平对于预防和治疗此类病变可能是必不可少的。随机森林模型在分类疾病组方面显示出较高的准确率(94.68%),强调了机器学习在提高口腔粘膜疾病诊断精度方面的潜力。未来的研究应侧重于在更大的队列中验证这些发现,并探索替代的机器学习算法,以进一步提高诊断的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Oral Health
BMC Oral Health DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.90
自引率
6.90%
发文量
481
审稿时长
6-12 weeks
期刊介绍: BMC Oral Health is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of disorders of the mouth, teeth and gums, as well as related molecular genetics, pathophysiology, and epidemiology.
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