胰腺癌
编码
计算机科学
数字聚合酶链反应
精密医学
加权
计算生物学
人工智能
高光谱成像
灵敏度(控制系统)
癌症
编码(内存)
比色法
生物信息学
降维
数字数据
模式识别(心理学)
可视化
适应(眼睛)
医学
DNA
作者
Dongsheng Mao,Chenbin Liu,Runchi Zhang,Zhiyuan Ma,Liang Wu,M Y Zhu,Xiaochen Tang,Wen Chen,Jie Deng,Hongquan Gou,Xiong Dun,Jingqi Chen,Z. Liu,Wenxing Li,Fenyong Sun,Xiaoli Zhu
标识
DOI:10.1038/s41467-026-70343-0
摘要
Digital medicine leverages digital biomarkers by algebraically integrating multiple biomarkers to reflect disease status. Colorimetric analysis offers an intuitive readout, but colorimetric-based digital medicine remains underexplored. Here we show an Enzymatic Colorimetric Encoding-based Digital Medicine platform (EnCODE). By harnessing enzyme-catalyzed multicolor encoding in tandem with the programmability of DNA technology, EnCODE converts multidimensional miRNA information into recognizable optical signals. We demonstrate that these signals are decodable and can be interpreted by visual inspection or spectral analysis, facilitating dimensionality reduction and visualization of disease states. Additionally, EnCODE integrates a continuous weighting mechanism that enables accurate mapping of digital biomarkers. In a cohort of 163 pancreatic cancer clinical samples, EnCODE achieves 96% detection sensitivity and 90% overall accuracy—comparable to the 96% sensitivity and 91% overall accuracy with conventional molecular diagnostic methods. We increase data density through three-dimensional color encoding and hyperspectral imaging-based analysis, enabling an intuitive color-coded molecular readout. Digital medicine needs intuitive readouts to translate multidimensional biomarkers into reliable cancer tests. Here, authors present EnCODE, an enzyme-driven colorimetric platform that encodes multi-miRNA profiles into decodable colours, detecting pancreatic cancer with 90% accuracy in 163 patient samples.
科研通智能强力驱动
Strongly Powered by AbleSci AI