Haldavnekar Rupa, Venkatakrishnan Krishnan, Tan Bo
Institute for Biomedical Engineering, Science and Technology (I BEST), Partnership between Ryerson University and St. Michael's Hospital, Toronto, Ontario M5B 1W8, Canada.
Ultrashort Laser Nanomanufacturing Research Facility, Faculty of Engineering and Architectural Sciences, Ryerson University, 350 Victoria Street, Toronto, Ontario M5B 2K3, Canada.
ACS Nano. 2022 Aug 23;16(8):12226-12243. doi: 10.1021/acsnano.2c02971. Epub 2022 Aug 15.
Liquid biopsy for determining the presence of cancer and the underlying tissue of origin is crucial to overcome the limitations of existing tissue biopsy and imaging-based techniques by capturing critical information from the dynamic tumor heterogeneity. A newly emerging liquid biopsy with extracellular vesicles (EVs) is gaining momentum, but its clinical relevance is in question due to the biological and technical challenges posed by existing technologies. The biological barriers of existing technologies include the inability to generate fundamental details of molecular structure, chemical composition as well as functional variations in EVs by gathering simultaneous information on multiple intra-EV molecules, unavailability of holistic qualitative analysis, in addition to the inability to identify tissue of origin. Technological barriers include reliance on EV isolation with a few labeled biomarkers, resulting in the inability to generate comprehensive information on the disease. A more favorable approach would be to generate holistic information on the disease without the use of labels. Such a marker-free diagnosis is impossible with the existing liquid biopsy due to the unavailability clinically validated cancer stem cells (CSC)-specific markers and dependence of existing technologies on EV isolation, undermining the clinical relevance of EV-based liquid biopsy. Here, CSC EVs were employed as an independent liquid biopsy modality. We hypothesize that tracking the signals of CSCs in peripheral blood with CSC EVs will provide a reliable solution for accurate cancer diagnosis, as CSC are the originators of tumor contributing to tumor heterogeneity. We report nanoengineered 3D sensors of extremely small nano-scaled probes self-functionalized for SERS, enabling integrative molecular and functional profiling of otherwise undetectable CSC EVs. A substantially enhanced SERS and ultralow limit of detection (10 EVs per 10 μL) were achieved. This was attributed to the efficient probe-EV interaction due to the 3D networks of nanoprobes, ensuring simultaneous detection of multiple EV signals. We experimentally demonstrate the crucial role of CSC EVs in cancer diagnosis. We then completed a pilot validation of this modality for cancer detection as well as for identification of the tissue of origin. An artificial neural network distinguished cancer from noncancer with 100% sensitivity and 100% specificity for three hard to detect cancers (breast, lung, and colorectal cancer). Binary classification to distinguish one tissue of origin against all other achieved 100% accuracy, while simultaneous identification of all three tissues of origin with multiclass classification achieved up to 79% accuracy. This noninvasive tool may complement existing cancer diagnostics, treatment monitoring as well as longitudinal disease monitoring by validation with a large cohort of clinical samples.
通过从动态肿瘤异质性中获取关键信息来确定癌症的存在及其起源组织,液体活检对于克服现有组织活检和基于成像技术的局限性至关重要。一种新兴的基于细胞外囊泡(EVs)的液体活检正在兴起,但由于现有技术带来的生物学和技术挑战,其临床相关性受到质疑。现有技术的生物学障碍包括:无法通过收集多个囊泡内分子的同时信息来生成囊泡分子结构、化学成分以及功能变化的基本细节;无法进行整体定性分析;此外,无法识别起源组织。技术障碍包括依赖用少数标记生物标志物分离EVs,导致无法生成关于疾病的全面信息。一种更有利的方法是在不使用标记的情况下生成关于疾病的整体信息。由于缺乏经过临床验证的癌症干细胞(CSC)特异性标志物以及现有技术对EVs分离的依赖,现有的液体活检无法实现这种无标记诊断,这削弱了基于EVs的液体活检的临床相关性。在此,CSC EVs被用作一种独立的液体活检方式。我们假设,用CSC EVs追踪外周血中CSC的信号将为准确的癌症诊断提供可靠的解决方案,因为CSC是导致肿瘤异质性的肿瘤起源细胞。我们报告了一种纳米工程化的3D传感器,其具有自功能化的极小纳米尺度探针用于表面增强拉曼光谱(SERS),能够对原本无法检测到的CSC EVs进行综合分子和功能分析。实现了显著增强的SERS和超低检测限(每10 μL 10个EVs)。这归因于纳米探针的3D网络导致的高效探针 - EV相互作用,确保了对多个EV信号的同时检测。我们通过实验证明了CSC EVs在癌症诊断中的关键作用。然后,我们完成了这种方式用于癌症检测以及起源组织识别的初步验证。一个人工神经网络以100%的灵敏度和100%的特异性区分了癌症和非癌症,针对三种难以检测的癌症(乳腺癌、肺癌和结直肠癌)。二元分类以区分一种起源组织与所有其他组织的准确率达到100%,而多类分类同时识别所有三种起源组织的准确率高达79%。这种非侵入性工具可能通过对大量临床样本进行验证来补充现有的癌症诊断、治疗监测以及疾病纵向监测。