Aptamer-Based Multiparameter Analysis for Molecular Profiling of Hematological Malignancies.
Yue LiuZhimin WangYuting ZhuoHui WuYing PengHai-Long WuTianhuan PengLiping QiuWeihong TanPublished in: Analytical chemistry (2024)
The subtypes of hematological malignancies (HM) with minimal molecular profile differences display an extremely heterogeneous clinical course and a discrepant response to certain treatment regimens. Profiling the surface protein markers offers a potent solution for precision diagnosis of HM by differentiating among the subtypes of cancer cells. Herein, we report the use of Cell-SELEX technology to generate a panel of high-affinity aptamer probes that are able to discriminate subtle differences among surface protein profiles between different HM cells. Experimental results show that these aptamers with apparent dissociation constants ( K d ) below 10 nM display a unique recognition pattern on different HM subtypes. By combining a machine learning model on the basis of partial least-squares discriminant analysis, 100% accuracy was achieved for the classification of different HM cells. Furthermore, we preliminarily validated the effectiveness of the aptamer-based multiparameter analysis strategy from a clinical perspective by accurately classifying complex clinical samples, thus providing a promising molecular tool for precise HM phenotyping.
Keyphrases
- machine learning
- induced apoptosis
- gold nanoparticles
- single cell
- systematic review
- cell cycle arrest
- deep learning
- sensitive detection
- magnetic resonance imaging
- stem cells
- small molecule
- photodynamic therapy
- endoplasmic reticulum stress
- cell therapy
- binding protein
- cell death
- cell proliferation
- flow cytometry
- magnetic nanoparticles
- bone marrow
- amino acid
- big data