Department of Laser Physics, Ludwig Maximilian University of Munich (LMU), 85748 Garching, Germany.
Department of Informatics, Technical University of Munich (TUM), 85748 Garching, Germany.
Anal Chem. 2023 Apr 25;95(16):6523-6532. doi: 10.1021/acs.analchem.2c04711. Epub 2023 Apr 12.
Molecular fingerprinting via vibrational spectroscopy characterizes the chemical composition of molecularly complex media which enables the classification of phenotypes associated with biological systems. However, the interplay between factors such as biological variability, measurement noise, chemical complexity, and cohort size makes it challenging to investigate their impact on how the classification performs. Considering these factors, we developed an model which generates realistic, but configurable, molecular fingerprints. Using experimental blood-based infrared spectra from two cancer-detection applications, we validated the model and subsequently adjusted model parameters to simulate diverse experimental settings, thereby yielding insights into the framework of molecular fingerprinting. Intriguingly, the model revealed substantial improvements in classifying clinically relevant phenotypes when the biological variability was reduced from a between-person to a within-person level and when the chemical complexity of the spectra was reduced. These findings quantitively demonstrate the potential benefits of personalized molecular fingerprinting and biochemical fractionation for applications in health diagnostics.
通过振动光谱进行分子指纹识别可以描述分子结构复杂的介质的化学成分,从而实现与生物系统相关表型的分类。然而,生物变异性、测量噪声、化学复杂性和队列规模等因素之间的相互作用使得研究它们对分类性能的影响具有挑战性。考虑到这些因素,我们开发了一种模型,该模型可以生成逼真但可配置的分子指纹。我们使用来自两种癌症检测应用的基于血液的实验红外光谱来验证该模型,然后调整模型参数以模拟不同的实验设置,从而深入了解分子指纹识别的框架。有趣的是,当将生物变异性从人与人之间的水平降低到人与人之间的水平,并且当光谱的化学复杂性降低时,该模型在分类临床相关表型方面显示出了显著的改善。这些发现定量证明了个性化分子指纹识别和生化分级在健康诊断应用中的潜在好处。