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Recent mass spectrometry-based proteomics for biomarker discovery in lung cancer, COPD, and asthma

机译:基于质谱的肺癌,COPD和哮喘的生物标志物发现基于质谱的蛋白质组学

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Introduction: Lung cancer and related diseases have been one of the most common causes of deaths worldwide. Genomic-based biomarkers may hardly reflect the underlying dynamic molecular mechanism of functional protein interactions, which is the center of a disease. Recent developments in mass spectrometry (MS) have made it possible to analyze disease-relevant proteins expressed in clinical specimens by proteomic challenges.Areas covered: To understand the molecular mechanisms of lung cancer and its subtypes, chronic obstructive pulmonary disease (COPD), asthma and others, great efforts have been taken to identify numerous relevant proteins by MS-based clinical proteomic approaches. Since lung cancer is a multifactorial disease that is biologically associated with asthma and COPD among various lung diseases, this study focused on proteomic studies on biomarker discovery using various clinical specimens for lung cancer, COPD, and asthma.Expert commentary: MS-based exploratory proteomics utilizing clinical specimens, which can incorporate both experimental and bioinformatic analysis of protein-protein interaction and also can adopt proteogenomic approaches, makes it possible to reveal molecular networks that are relevant to a disease subgroup and that could differentiate between drug responders and non-responders, good and poor prognoses, drug resistance, and so on.
机译:介绍:肺癌和相关疾病是全世界死亡最常见的原因之一。基于基于基因组的生物标志物可能几乎不反映功能蛋白相互作用的潜在动态分子机制,这是疾病的中心。质谱(MS)的最新发展使得通过蛋白质组学挑战分析临床标本中表达的疾病相关蛋白。覆盖:了解肺癌及其亚型的分子机制,慢性阻塞性肺病(COPD),哮喘和其他人,已经采取了巨大的努力来通过基于MS的临床蛋白质组学方法来确定许多相关蛋白质。由于肺癌是一种与各种肺病中的哮喘和COPD生物学相关的多因素疾病,这项研究侧重于使用各种肺癌,COPD和Asthma.expert评论的各种临床发现的生物标志物发现的蛋白质组学研究:基于MS的探索性蛋白质组学利用临床标本,可以纳入蛋白质 - 蛋白质相互作用的实验和生物信息分析,也可以采用蛋白质方法,使得可以揭示与疾病亚组相关的分子网络,并且可以区分药物响应者和非响应者之间的分子网络,良好,预期,耐药性等差。

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