基于microrna的原发性高血压诊断机器学习模型

IF 3.6 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Non-Coding RNA Pub Date : 2023-10-25 DOI:10.3390/ncrna9060064
Amela Jusic, Inela Junuzovic, Ahmed Hujdurovic, Lu Zhang, Mélanie Vausort, Yvan Devaux
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引用次数: 0

摘要

高血压是心血管疾病的一个主要的可改变的危险因素。原发性、原发性或特发性高血压占所有病例的90-95%。识别新的特异性高血压生物标志物可能有助于理解病理生理途径和开发个性化治疗。我们通过机器学习模型测试了循环microRNAs (miRNAs)和临床危险因素的整合是否可以为原发性高血压的诊断和管理提供有用的信息和新工具。材料与方法:本观察性病例对照研究共纳入174例受试者,其中原发性高血压患者89例,对照组85例。通过对年龄和性别匹配的高血压患者(n = 30)和对照组(n = 30)的全血样本进行小RNA测序进行发现阶段。使用RT-qPCR的验证阶段涉及其余114名参与者。对于机器学习,使用170个具有完整数据的参与者来生成和评估分类模型。结果:小RNA测序发现,与对照组相比,高血压患者中有7个mirna下调,其中6个经RT-qPCR证实。在验证组中,高血压患者中miR-210-3p/361-3p/362-5p/378a-5p/501-5p也下调。包含临床危险因素(性别、BMI、饮酒、当前吸烟者和高血压家族史)、miR-361-3p和miR-501-5p的机器学习支持向量机(SVM)模型能够在测试数据集中对高血压患者进行分类,AUC为0.90,平衡精度为0.87,灵敏度为0.83,特异性为0.91。虽然有5种mirna在高血压患者中表现出显著的下调,但在SVM模型的10个子训练集中,至少有8个子训练集中一致选择了miR-361-3p和miR-501-5p以及临床危险因素。结论:本研究强调了基于mirna的生物标志物在加深我们对高血压病理生理的理解和个性化治疗策略方面的潜在意义。支持向量机模型的强大性能突出了其作为诊断和管理原发性高血压的宝贵资产的潜力。在评估其在临床环境中的附加价值之前,该模型仍需在独立患者队列中进行广泛验证。
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A Machine Learning Model Based on microRNAs for the Diagnosis of Essential Hypertension
Introduction: Hypertension is a major and modifiable risk factor for cardiovascular diseases. Essential, primary, or idiopathic hypertension accounts for 90–95% of all cases. Identifying novel biomarkers specific to essential hypertension may help in understanding pathophysiological pathways and developing personalized treatments. We tested whether the integration of circulating microRNAs (miRNAs) and clinical risk factors via machine learning modeling may provide useful information and novel tools for essential hypertension diagnosis and management. Materials and methods: In total, 174 participants were enrolled in the present observational case–control study, among which, there were 89 patients with essential hypertension and 85 controls. A discovery phase was conducted using small RNA sequencing in whole blood samples obtained from age- and sex-matched hypertension patients (n = 30) and controls (n = 30). A validation phase using RT-qPCR involved the remaining 114 participants. For machine learning, 170 participants with complete data were used to generate and evaluate the classification model. Results: Small RNA sequencing identified seven miRNAs downregulated in hypertensive patients as compared with controls in the discovery group, of which six were confirmed with RT-qPCR. In the validation group, miR-210-3p/361-3p/362-5p/378a-5p/501-5p were also downregulated in hypertensive patients. A machine learning support vector machine (SVM) model including clinical risk factors (sex, BMI, alcohol use, current smoker, and hypertension family history), miR-361-3p, and miR-501-5p was able to classify hypertension patients in a test dataset with an AUC of 0.90, a balanced accuracy of 0.87, a sensitivity of 0.83, and a specificity of 0.91. While five miRNAs exhibited substantial downregulation in hypertension patients, only miR-361-3p and miR-501-5p, alongside clinical risk factors, were consistently chosen in at least eight out of ten sub-training sets within the SVM model. Conclusions: This study highlights the potential significance of miRNA-based biomarkers in deepening our understanding of hypertension’s pathophysiology and in personalizing treatment strategies. The strong performance of the SVM model highlights its potential as a valuable asset for diagnosing and managing essential hypertension. The model remains to be extensively validated in independent patient cohorts before evaluating its added value in a clinical setting.
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来源期刊
Non-Coding RNA
Non-Coding RNA Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
6.70
自引率
4.70%
发文量
74
审稿时长
10 weeks
期刊介绍: Functional studies dealing with identification, structure-function relationships or biological activity of: small regulatory RNAs (miRNAs, siRNAs and piRNAs) associated with the RNA interference pathway small nuclear RNAs, small nucleolar and tRNAs derived small RNAs other types of small RNAs, such as those associated with splice junctions and transcription start sites long non-coding RNAs, including antisense RNAs, long ''intergenic'' RNAs, intronic RNAs and ''enhancer'' RNAs other classes of RNAs such as vault RNAs, scaRNAs, circular RNAs, 7SL RNAs, telomeric and centromeric RNAs regulatory functions of mRNAs and UTR-derived RNAs catalytic and allosteric (riboswitch) RNAs viral, transposon and repeat-derived RNAs bacterial regulatory RNAs, including CRISPR RNAS Analysis of RNA processing, RNA binding proteins, RNA signaling and RNA interaction pathways: DICER AGO, PIWI and PIWI-like proteins other classes of RNA binding and RNA transport proteins RNA interactions with chromatin-modifying complexes RNA interactions with DNA and other RNAs the role of RNA in the formation and function of specialized subnuclear organelles and other aspects of cell biology intercellular and intergenerational RNA signaling RNA processing structure-function relationships in RNA complexes RNA analyses, informatics, tools and technologies: transcriptomic analyses and technologies development of tools and technologies for RNA biology and therapeutics Translational studies involving long and short non-coding RNAs: identification of biomarkers development of new therapies involving microRNAs and other ncRNAs clinical studies involving microRNAs and other ncRNAs.
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