Lee Jun Hwa, Yu Seung Eun, Kim Kyung-Hee, Yu Myung Hyun, Jeong In-Hye, Cho Jae Youl, Park Sang-Jae, Lee Woo Jin, Han Sung-Sik, Kim Tae Hyun, Hong Eun Kyung, Woo Sang Myung, Yoo Byong Chul
1Biomarker Branch, Research Institute, National Cancer Center, Goyang, 10408 Republic of Korea.
2Omics Core Laboratory, Research Institute, National Cancer Center, Goyang, 10408 Republic of Korea.
EPMA J. 2018 Aug 17;9(3):287-297. doi: 10.1007/s13167-018-0147-5. eCollection 2018 Sep.
Pancreatic cancer (PC) and biliary tract cancer (BTC) are highly aggressive cancers, characterized by their rarity, difficulty in diagnosis, and overall poor prognosis. Diagnosis of PC and BTC is complex and is made using a combination of appropriate clinical suspicion, imaging and endoscopic techniques, and cytopathological examination. However, the late-stage detection and poor prognosis of this tumor have led to an urgent need for biomarkers for early and/or predictive diagnosis and improved personalized treatments.
There are two hypotheses for focusing on low-mass metabolites in the blood. First, valuable information can be obtained from the masses and relative amounts of such metabolites, which present as low-mass ions (LMIs) in mass spectra. Second, metabolic profiling of individuals may provide important information regarding biological changes in disease states that is useful for the early diagnosis of PC and BTC.
To assess whether profiling metabolites in serum can serve as a non-invasive screening tool for PC and BTC, 320 serum samples were obtained from patients with PC ( = 51), BTC ( = 39), colorectal cancer (CRC) ( = 100), and ovarian cancer (OVC) ( = 30), and from healthy control subjects (control) (n = 100). We obtained information on the relative amounts of metabolites, as LMIs, via triple time-of-flight mass spectrometry. All data were analyzed according to the peak area ratios of discriminative LMIs.
The levels of the 14 discriminative LMIs were higher in the PC and BTC groups than in the control, CRC and OVC groups, but only two LMIs discriminated between PC and BTC: lysophosphatidylcholine (LysoPC) (16:0) and LysoPC(20:4). The levels of these two LysoPCs were also slightly lower in the PC/BTC/CRC/OVC groups compared with the control group. Taken together, the data showed that metabolic profiling can precisely denote the status of cancer, and, thus, could be useful for screening. This study not only details efficient methods to identify discriminative LMIs for cancer screening but also provides an example of metabolic profiling for distinguishing PC from BTC. Furthermore, the two metabolites [LysoPC(16:0), LysoPC(20:4)] shown to discriminate these diseases are potentially useful when combined with other, previously identified protein or metabolic biomarkers for predictive, preventive and personalized medical approach.
胰腺癌(PC)和胆管癌(BTC)是侵袭性很强的癌症,其特点是发病率低、诊断困难且总体预后较差。PC和BTC的诊断很复杂,需要综合运用适当的临床怀疑、影像学和内镜技术以及细胞病理学检查来进行。然而,这种肿瘤的晚期检测和不良预后导致迫切需要用于早期和/或预测性诊断以及改善个性化治疗的生物标志物。
关注血液中的低质量代谢物有两个假设。第一,可以从这些代谢物的质量和相对含量中获得有价值的信息,这些代谢物在质谱中表现为低质量离子(LMI)。第二,个体的代谢谱分析可能提供有关疾病状态下生物学变化的重要信息,这对PC和BTC的早期诊断有用。
为了评估血清中的代谢物谱分析是否可作为PC和BTC的非侵入性筛查工具,从PC患者(n = 51)、BTC患者(n = 39)、结直肠癌(CRC)患者(n = 100)、卵巢癌(OVC)患者(n = 30)以及健康对照受试者(对照组,n = 100)中获取了320份血清样本。我们通过三重飞行时间质谱法获得了作为LMI的代谢物相对含量信息。所有数据均根据鉴别性LMI的峰面积比进行分析。
PC组和BTC组中14种鉴别性LMI的水平高于对照组、CRC组和OVC组,但只有两种LMI能区分PC和BTC:溶血磷脂酰胆碱(LysoPC)(16:0)和LysoPC(20:4)。与对照组相比,PC/BTC/CRC/OVC组中这两种LysoPC的水平也略低。综上所述,数据表明代谢谱分析可以精确地表明癌症状态,因此可用于筛查。本研究不仅详细介绍了识别用于癌症筛查的鉴别性LMI的有效方法,还提供了区分PC和BTC的代谢谱分析示例。此外,所显示的用于区分这些疾病的两种代谢物[LysoPC(16:0),LysoPC(20:4)]与其他先前确定的蛋白质或代谢生物标志物联合使用时,可能对预测、预防和个性化医疗方法有用。