Machine learning-assisted pattern recognition and imaging of multiplexed cancer cells via a porphyrin-embedded dendrimer array.

Jiabao Hu, Weiwei Ni, Mengting Han, Yunzhen Zhan, Fei Li, Hui Huang, Jinsong Han
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Abstract

Early cancer detection plays a vital role in improving the survival rate of cancer patients, underscoring the importance of developing cancer detection methods. However, it is a great challenge to achieve simple, rapid, and accurate methods for simultaneously discerning various cancers. Herein we developed a 5-element porphyrin-embedded dendrimer-based sensor array, targeting the parallel discrimination of multiple cancers. The porphyrin-embedded dendrimers were modified with various functional groups to generate differentiated interactions with diverse cancer cells, which has been validated by fluorescence responses and laser confocal microscopy imaging. The dual-channel, five-element array, featuring ten signal outputs, achieved 100% accuracy in distinguishing between one human normal cell and six human cancerous cells, as well as in differentiating among mixed cells. Moreover, the screen 6-channel array can accurately distinguish 9 cells from mice and humans in minutes through optimization by multiple machine learning algorithms, including two normal cells and 7 cancerous cells with only 1000 cells, highlighting the significant potential of a porphyrin-embedded dendrimer-based parallel discriminating platform in early cancer diagnosis.

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通过卟啉嵌入树枝状聚合物阵列对多重癌细胞进行机器学习辅助模式识别和成像。
早期癌症检测对提高癌症患者的存活率起着至关重要的作用,这也凸显了开发癌症检测方法的重要性。然而,如何实现简单、快速、准确地同时分辨各种癌症是一项巨大的挑战。在此,我们开发了一种基于树枝状聚合物的 5 元卟啉嵌入式传感器阵列,目标是同时分辨多种癌症。卟啉包埋树枝状聚合物经各种功能基团修饰后,可与不同的癌细胞产生不同的相互作用,这一点已通过荧光反应和激光共聚焦显微镜成像得到验证。双通道五元件阵列具有十个信号输出,在区分一个人类正常细胞和六个人类癌细胞以及区分混合细胞方面达到了 100% 的准确率。此外,通过多种机器学习算法的优化,屏幕上的 6 通道阵列可在几分钟内准确区分出小鼠和人类的 9 个细胞,其中包括 2 个正常细胞和 7 个癌细胞,而细胞数量仅为 1000 个,这凸显了基于卟啉嵌入树枝状分子的并行分辨平台在早期癌症诊断中的巨大潜力。
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来源期刊
Journal of materials chemistry. B
Journal of materials chemistry. B 化学科学, 工程与材料, 生命科学, 分析化学, 高分子组装与超分子结构, 高分子科学, 免疫生物学, 免疫学, 生化分析及生物传感, 组织工程学, 生物力学与组织工程学, 资源循环科学, 冶金与矿业, 生物医用高分子材料, 有机高分子材料, 金属材料的制备科学与跨学科应用基础, 金属材料, 样品前处理方法与技术, 有机分子功能材料化学, 有机化学
CiteScore
12.00
自引率
0.00%
发文量
0
审稿时长
1 months
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Development of a xanthene-based NIR fluorescent probe for accurate and sensitive detection of γ-glutamyl transpeptidase in cancer diagnosis and treatment. Biomaterials enhancing localized cancer therapy activated anti-tumor immunity: a review. Quantum DFT analysis and molecular docking investigation of various potential breast cancer drugs. Machine learning-assisted pattern recognition and imaging of multiplexed cancer cells via a porphyrin-embedded dendrimer array. Enhanced luminescence and stability of TFMDSA nanoparticles via polymer-induced aggregation for bioimaging.
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