Mitchell Lee Taylor, Madhusudhan Alle, Raymond Wilson, Alberto Rodriguez-Nieves, Mitchell A Lutey, William F Slavney, Jacob Stewart, Hiyab Williams, Kristopher Amrhein, Hongmei Zhang, Yongmei Wang, Thang Ba Hoang, Xiaohua Huang
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引用次数: 0
摘要
癌症相关胞外囊泡(EVs)的单囊泡分子图谱分析越来越被认为是癌症检测和监测的有力工具。掩膜和靶标双重成像是一种简便的方法,可在单个囊泡水平上量化生物流体中分子靶标EVs群体的比例。然而,由于掩膜图像上的假信号干扰以及需要分析临床样本中的大量图像,准确、高效的双重成像囊泡分析一直面临挑战。在这项工作中,我们报告了一种基于机器学习的全自动双成像分析方法,并将其与双成像单囊泡技术(DISVT)一起用于检测不同阶段的乳腺癌。我们使用卷积神经网络 Resnet34 和迁移学习来建立一个合适的机器学习模型,该模型能准确识别实验数据中的感兴趣区。模型的训练结合了实验数据和合成数据。利用 DISVT 和我们的机器学习辅助图像分析平台,我们测定了 HER2 阳性乳腺癌中试患者血浆中 EpCAM 阳性 EVs 和 CD24 阳性 EVs 在捕获的带有 CD81 标记的血浆 EVs 中所占的比例,并与健康供体的血浆 EVs 进行了比较。结果发现,无论是健康供体还是 I 期患者,EpCAM 阳性 EVs 和 CD24 阳性 EVs 的数量都微乎其微。随着癌症从 II 期发展到 III 期,EpCAM 阳性 EVs(也是 CD81 阳性)的数量从 18% 增加到 29%。进一步发展到 IV 期时,EV 数量没有明显增加。CD24 阳性 EVs 也有类似趋势。统计分析表明,EpCAM 和 CD24 标记都能检测出处于 II、III 或 IV 期的 HER2 阳性乳腺癌。它们还能区分除 III 期和 IV 期以外的癌症分期。DISVT具有简便、高灵敏度和高效率的特点,可广泛用于基础研究和临床应用,定量表征生物流体中的分子靶向EV亚型。
Single Vesicle Surface Protein Profiling and Machine Learning-Based Dual Image Analysis for Breast Cancer Detection.
Single-vesicle molecular profiling of cancer-associated extracellular vesicles (EVs) is increasingly being recognized as a powerful tool for cancer detection and monitoring. Mask and target dual imaging is a facile method to quantify the fraction of the molecularly targeted population of EVs in biofluids at the single-vesicle level. However, accurate and efficient dual imaging vesicle analysis has been challenging due to the interference of false signals on the mask images and the need to analyze a large number of images in clinical samples. In this work, we report a fully automatic dual imaging analysis method based on machine learning and use it with dual imaging single-vesicle technology (DISVT) to detect breast cancer at different stages. The convolutional neural network Resnet34 was used along with transfer learning to produce a suitable machine learning model that could accurately identify areas of interest in experimental data. A combination of experimental and synthetic data were used to train the model. Using DISVT and our machine learning-assisted image analysis platform, we determined the fractions of EpCAM-positive EVs and CD24-positive EVs over captured plasma EVs with CD81 marker in the blood plasma of pilot HER2-positive breast cancer patients and compared to those from healthy donors. The amount of both EpCAM-positive and CD24-positive EVs was found negligible for both healthy donors and Stage I patients. The amount of EpCAM-positive EVs (also CD81-positive) increased from 18% to 29% as the cancer progressed from Stage II to III. No significant increase was found with further progression to Stage IV. A similar trend was found for the CD24-positive EVs. Statistical analysis showed that both EpCAM and CD24 markers can detect HER2-positive breast cancer at Stages II, III, or IV. They can also differentiate individual cancer stages except those between Stage III and Stage IV. Due to the simplicity, high sensitivity, and high efficiency, the DISVT with the AI-assisted dual imaging analysis can be widely used for both basic research and clinical applications to quantitatively characterize molecularly targeted EV subtypes in biofluids.
期刊介绍:
Nanomaterials (ISSN 2076-4991) is an international and interdisciplinary scholarly open access journal. It publishes reviews, regular research papers, communications, and short notes that are relevant to any field of study that involves nanomaterials, with respect to their science and application. Thus, theoretical and experimental articles will be accepted, along with articles that deal with the synthesis and use of nanomaterials. Articles that synthesize information from multiple fields, and which place discoveries within a broader context, will be preferred. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental or methodical details, or both, must be provided for research articles. Computed data or files regarding the full details of the experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. Nanomaterials is dedicated to a high scientific standard. All manuscripts undergo a rigorous reviewing process and decisions are based on the recommendations of independent reviewers.