| Literature DB >> 35220052 |
Stefania D Iancu1, Ramona G Cozan1, Andrei Stefancu1, Maria David2, Tudor Moisoiu3, Cristiana Moroz-Dubenco4, Adel Bajcsi4, Camelia Chira5, Anca Andreica4, Loredana F Leopold6, Daniela Eniu7, Adelina Staicu7, Iulian Goidescu7, Carmen Socaciu8, Dan T Eniu9, Laura Diosan10, Nicolae Leopold11.
Abstract
SERS analysis of biofluids, coupled with classification algorithms, has recently emerged as a candidate for point-of-care medical diagnosis. Nonetheless, despite the impressive results reported in the literature, there are still gaps in our knowledge of the biochemical information provided by the SERS analysis of biofluids. Therefore, by a critical assignment of the SERS bands, our work aims to provide a systematic analysis of the molecular information that can be achieved from the SERS analysis of serum and urine obtained from breast cancer patients and controls. Further, we compared the relative performance of five different machine learning algorithms for breast cancer and control samples classification based on the serum and urine SERS datasets, and found comparable classification accuracies in the range of 61-89%. This result is not surprising since both biofluids show striking similarities in their SERS spectra providing similar metabolic information, related to purine metabolites. Lastly, by carefully comparing the two datasets (i.e., serum and urine) we show that it is possible to link the misclassified samples to specific metabolic imbalances, such as carotenoid levels, or variations in the creatinine concentration.Entities:
Keywords: Machine learning; Metabolites; SERS liquid biopsy; Serum; Urine
Mesh:
Year: 2022 PMID: 35220052 DOI: 10.1016/j.saa.2022.120992
Source DB: PubMed Journal: Spectrochim Acta A Mol Biomol Spectrosc ISSN: 1386-1425 Impact factor: 4.098