基于综合生物信息学分析和机器学习的阻塞性睡眠呼吸暂停和糖尿病相关生物标志物筛选。

IF 2.1 4区 医学 Q3 CLINICAL NEUROLOGY
Jianan Yang, Yujie Han, Xianping Diao, Baochang Yuan, Jun Gu
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引用次数: 0

摘要

背景:阻塞性睡眠呼吸暂停(OSA)和糖尿病(DM)的病理生理机制尚不清楚,尽管临床报道将两者联系起来。在研究了dm相关基因在OSA病理生理中的潜在作用后,我们的目标是研究该疾病的分子意义。机器学习是理解复杂基因表达数据以寻找OSA诊断生物标志物的有效方法。方法:首先对GEO采集的OSA和DM数据集进行差异表达分析。然后使用四种机器算法筛选候选生物标志物。建立了基于关键基因的诊断模型,并通过ROC曲线、校正曲线和决策曲线验证了诊断模型的准确性。最后,利用CIBERSORT算法探索OSA中免疫细胞的浸润。结果:通过差异表达分析,发现32个重要基因在OSA和DM数据集中均有相关性。通过富集分析,这些基因大部分富集于免疫调节、氧化应激反应和神经系统控制。当使用所有四种方法的一致特征来预测OSA诊断时,STK17A被认为具有高度的准确性。此外,该诊断模型表现出较强的性能和预测价值。最后,我们探索了OSA的免疫细胞特征,STK17A与侵袭性免疫细胞密切相关。结论:通过四种机器学习方法发现STK17A是一个可以区分OSA和DM个体的基因。除了为DM诱导的OSA提供可能的治疗靶点外,这种诊断方法还可以识别同时患有OSA的高危DM患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Screening of obstructive sleep apnea and diabetes mellitus -related biomarkers based on integrated bioinformatics analysis and machine learning.

Background: The pathophysiology of obstructive sleep apnea (OSA) and diabetes mellitus (DM) is still unknown, despite clinical reports linking the two conditions. After investigating potential roles for DM-related genes in the pathophysiology of OSA, our goal is to investigate the molecular significance of the condition. Machine learning is a useful approach to understanding complex gene expression data to find biomarkers for the diagnosis of OSA.

Methods: Differentially expressed analysis for OSA and DM data sets obtained from GEO were carried out firstly. Then four machine algorithms were used to screen candidate biomarkers. The diagnostic model was constructed based on key genes, and the accuracy was verified by ROC curve, calibration curve and decision curve. Finally, the CIBERSORT algorithm was used to explore immune cell infiltration in OSA.

Results: There were 32 important genes that were considered to be related both in OSA and DM datasets by differentially expressed analysis. Through enrichment analysis, the majority of these genes are enriched in immunological regulation, oxidative stress response, and nervous system control. When consensus characteristics from all four approaches were used to predict OSA diagnosis, STK17A was thought to have a high degree of accuracy. In addition, the diagnostic model demonstrated strong performance and predictive value. Finally, we explored the immune cells signatures of OSA, and STK17A was strongly linked to invasive immune cells.

Conclusion: STK17A has been discovered as a gene that can differentiate between individuals with OSA and DM based on four machine learning methods. In addition to offering possible treatment targets for DM-induced OSA, this diagnostic approach can identify high-risk DM patients who also have OSA.

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来源期刊
Sleep and Breathing
Sleep and Breathing 医学-呼吸系统
CiteScore
5.20
自引率
4.00%
发文量
222
审稿时长
3-8 weeks
期刊介绍: The journal Sleep and Breathing aims to reflect the state of the art in the international science and practice of sleep medicine. The journal is based on the recognition that management of sleep disorders requires a multi-disciplinary approach and diverse perspectives. The initial focus of Sleep and Breathing is on timely and original studies that collect, intervene, or otherwise inform all clinicians and scientists in medicine, dentistry and oral surgery, otolaryngology, and epidemiology on the management of the upper airway during sleep. Furthermore, Sleep and Breathing endeavors to bring readers cutting edge information about all evolving aspects of common sleep disorders or disruptions, such as insomnia and shift work. The journal includes not only patient studies, but also studies that emphasize the principles of physiology and pathophysiology or illustrate potentially novel approaches to diagnosis and treatment. In addition, the journal features articles that describe patient-oriented and cost-benefit health outcomes research. Thus, with peer review by an international Editorial Board and prompt English-language publication, Sleep and Breathing provides rapid dissemination of clinical and clinically related scientific information. But it also does more: it is dedicated to making the most important developments in sleep disordered breathing easily accessible to clinicians who are treating sleep apnea by presenting well-chosen, well-written, and highly organized information that is useful for patient care.
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