João Marcos G. Barbosa, Lurian Caetano David, Camilla Gabriela de Oliveira, Anselmo Elcana de Oliveira and Nelson R. Antoniosi Filho
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引用次数: 0
摘要
人体耵聍分析是诊断疾病的一种创新和非侵入性趋势。最近,使用二元(挥发性存在/不存在)和半定量(挥发性强度)数据方法的基于耵聍挥发性的新方法在检测癌症、慢性病、罕见病和异生物暴露的生物标记物方面显示出巨大的潜力。然而,迄今为止,耵聍数据中的体重指数(BMI)、性别、年龄和民族/种族等人口统计学因素的影响尚未得到广泛描述,这可能会妨碍生物标记物发现研究的解释。本研究考察了这些因素对耵聍的影响,确定了不同生理组的基线挥发性有机代谢物(VOMs)。研究人员使用顶空/气相色谱-质谱法(HS/GC-MS)分析了七十名志愿者的耵聍样本,并使用二元和半定量数据方法进行了多元统计分析。在二元数据方法中,有几种 VOM 在某些特定人口群体中呈现出高发生率模式。不过,没有观察到可归因于人口统计因素的歧视模式。在半定量方法中,耵聍 VOMs 的相对丰度受性别和体重指数的影响比受年龄和民族/种族的影响更大。总之,我们描述了耵聍 VOM 的发生和丰度是如何受患者表型影响的,这可以为未来基于耵聍挥发物的个性化医疗方法铺平道路。
Influence of sex, age, ethnicity/race, and body mass index on the cerumen volatilome using two data analysis approaches: binary and semiquantitative†
Human cerumen analysis is an innovative and non-invasive trend in diagnosing diseases. Recently, new cerumen volatile-based methods using binary (volatile presence/absence) and semiquantitative (volatile intensity) data approaches have shown great potential in detecting biomarkers for cancer, chronic and rare diseases, and xenobiotic exposures. However, to date, the impacts of demographic factors such as body mass index (BMI), sex, age, and ethnicity/race in cerumen data have not been widely described, which can hamper interpretation in biomarker discovery investigations. This study examined the effects of such factors in cerumen, defining the baseline volatile organic metabolites (VOMs) across different physiological groups. Cerumen samples from seventy volunteers were analyzed using headspace/gas chromatography–mass spectrometry (HS/GC–MS) and multivariate statistical analysis using binary and semiquantitative data approaches. In the binary data approach, several VOMs exhibited patterns of high occurrence in some specific demographic groups. However, no pattern of discrimination that could be attributed to demographic factors was observed. In the semiquantitative approach, the relative abundance of cerumen VOMs was more impacted by sex and BMI than age and ethnicity/race. In summary, we describe how cerumen VOM occurrence and abundance are affected by patient phenotype, which can pave the way for more personalized medicine in future cerumen volatile-based methods.
Molecular omicsBiochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
5.40
自引率
3.40%
发文量
91
期刊介绍:
Molecular Omics publishes high-quality research from across the -omics sciences.
Topics include, but are not limited to:
-omics studies to gain mechanistic insight into biological processes – for example, determining the mode of action of a drug or the basis of a particular phenotype, such as drought tolerance
-omics studies for clinical applications with validation, such as finding biomarkers for diagnostics or potential new drug targets
-omics studies looking at the sub-cellular make-up of cells – for example, the subcellular localisation of certain proteins or post-translational modifications or new imaging techniques
-studies presenting new methods and tools to support omics studies, including new spectroscopic/chromatographic techniques, chip-based/array technologies and new classification/data analysis techniques. New methods should be proven and demonstrate an advance in the field.
Molecular Omics only accepts articles of high importance and interest that provide significant new insight into important chemical or biological problems. This could be fundamental research that significantly increases understanding or research that demonstrates clear functional benefits.
Papers reporting new results that could be routinely predicted, do not show a significant improvement over known research, or are of interest only to the specialist in the area are not suitable for publication in Molecular Omics.