Liu Zirui, Li Tieyi, Wang Zeyu, Liu Jun, Huang Shan, Min Byoung Hoon, An Ji Young, Kim Kyoung Mee, Kim Sung, Chen Yiqing, Liu Huinan, Kim Yong, Wong David T W, Huang Tony Jun, Xie Ya-Hong
Department of Materials Science and Engineering, University of California Los Angeles, Los Angeles, California 90095, United States.
Department of Mechanical Engineering and Material Science, Duke University, Durham, North Carolina 27708, United States.
ACS Appl Nano Mater. 2022 Sep 23;5(9):12506-12517. doi: 10.1021/acsanm.2c01986. Epub 2022 Aug 25.
Gastric cancer (GC) is one of the most common and lethal types of cancer affecting over one million people, leading to 768,793 deaths globally in 2020 alone. The key for improving the survival rate lies in reliable screening and early diagnosis. Existing techniques including barium-meal gastric photofluorography and upper endoscopy can be costly and time-consuming and are thus impractical for population screening. We look instead for small extracellular vesicles (sEVs, currently also referred as exosomes) sized ⌀ 30-150 nm as a candidate. sEVs have attracted a significantly higher level of attention during the past decade or two because of their potentials in disease diagnoses and therapeutics. Here, we report that the composition information of the collective Raman-active bonds inside sEVs of human donors obtained by surface-enhanced Raman spectroscopy (SERS) holds the potential for non-invasive GC detection. SERS was triggered by the substrate of gold nanopyramid arrays we developed previously. A machine learning-based spectral feature analysis algorithm was developed for objectively distinguishing the cancer-derived sEVs from those of the non-cancer sub-population. sEVs from the tissue, blood, and saliva of GC patients and non-GC participants were collected ( = 15 each) and analyzed. The algorithm prediction accuracies were reportedly 90, 85, and 72%. "Leave-a-pair-of-samples out" validation was further performed to test the clinical potential. The area under the curve of each receiver operating characteristic curve was 0.96, 0.91, and 0.65 in tissue, blood, and saliva, respectively. In addition, by comparing the SERS fingerprints of individual vesicles, we provided a possible way of tracing the biogenesis pathways of patient-specific sEVs from tissue to blood to saliva. The methodology involved in this study is expected to be amenable for non-invasive detection of diseases other than GC.
胃癌(GC)是最常见且致命的癌症类型之一,影响着超过一百万人,仅在2020年全球就导致768,793人死亡。提高生存率的关键在于可靠的筛查和早期诊断。包括钡餐胃荧光摄影和上消化道内镜检查在内的现有技术成本高且耗时,因此对于人群筛查不切实际。相反,我们将直径为⌀ 30 - 150 nm的小细胞外囊泡(sEVs,目前也称为外泌体)作为候选对象。在过去一二十年里,sEVs因其在疾病诊断和治疗方面的潜力而受到了更高程度的关注。在此,我们报告通过表面增强拉曼光谱(SERS)获得的人类供体sEVs内部集体拉曼活性键的组成信息具有非侵入性检测胃癌的潜力。SERS由我们之前开发的金纳米金字塔阵列基底触发。开发了一种基于机器学习的光谱特征分析算法,用于客观区分癌症来源的sEVs和非癌症亚群的sEVs。收集了胃癌患者和非胃癌参与者的组织、血液和唾液中的sEVs(每组各15个)并进行分析。据报道,该算法的预测准确率分别为90%、85%和72%。进一步进行了“留一对样本”验证以测试其临床潜力。在组织、血液和唾液中,每个受试者工作特征曲线的曲线下面积分别为0.96、0.91和0.65。此外,通过比较单个囊泡的SERS指纹图谱,我们提供了一种可能的方法来追踪患者特异性sEVs从组织到血液再到唾液的生物发生途径。本研究中涉及的方法有望适用于除胃癌之外的其他疾病的非侵入性检测。