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Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer

Cis-diol metabolic reprogramming evolves during primary liver cancer (PLC) initiation and progression. However, owing to the low concentrations and highly structural heterogeneity of cis-diols in vivo, severe interference from complex biofluids and limited profiling coverage of existing methods, in-...

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Autores principales: Li, Pengfei, Xu, Shuxin, Han, Yanjie, He, Hui, Liu, Zhen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9993839/
https://www.ncbi.nlm.nih.gov/pubmed/36908957
http://dx.doi.org/10.1039/d2sc05541d
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author Li, Pengfei
Xu, Shuxin
Han, Yanjie
He, Hui
Liu, Zhen
author_facet Li, Pengfei
Xu, Shuxin
Han, Yanjie
He, Hui
Liu, Zhen
author_sort Li, Pengfei
collection PubMed
description Cis-diol metabolic reprogramming evolves during primary liver cancer (PLC) initiation and progression. However, owing to the low concentrations and highly structural heterogeneity of cis-diols in vivo, severe interference from complex biofluids and limited profiling coverage of existing methods, in-depth profiling of cis-diol metabolites and linking their specific changes with PLC remain challenging. Besides, due to the low specificity of widely used protein biomarkers, accurate classification of PLC from hepatitis still represents an unmet need in clinical diagnostics. Herein, to high-coverage profile cis-diols and explore the translational potential of them as biomarkers, a machine learning-empowered boronate affinity extraction-solvent evaporation assisted enrichment-mass spectrometry (MLE-BESE-MS) was developed. A single analytical platform integrated with multiple complementary functions, including pH-controlled boronate affinity extraction, solvent evaporation-assisted enrichment and nanoelectrospray ionization-based cis-diol identification, was constructed, which significantly improved the metabolite coverage. Meanwhile, by virtue of machine learning (principal components analysis, orthogonal partial least-squares discrimination analysis and random forest), collected cis-diols were statistically screened to extract efficient features for precise PLC diagnosis, and the results outperform the routinely used protein biomarker-based methods both in sensitivity (87.5% vs. less than 70%) and specificity (85.7% vs. ca. 80%). This machine learning-empowered integrated MS platform advanced the targeted metabolic analysis for early cancer diagnosis, rendering great promise for clinical translation.
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spelling pubmed-99938392023-03-09 Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer Li, Pengfei Xu, Shuxin Han, Yanjie He, Hui Liu, Zhen Chem Sci Chemistry Cis-diol metabolic reprogramming evolves during primary liver cancer (PLC) initiation and progression. However, owing to the low concentrations and highly structural heterogeneity of cis-diols in vivo, severe interference from complex biofluids and limited profiling coverage of existing methods, in-depth profiling of cis-diol metabolites and linking their specific changes with PLC remain challenging. Besides, due to the low specificity of widely used protein biomarkers, accurate classification of PLC from hepatitis still represents an unmet need in clinical diagnostics. Herein, to high-coverage profile cis-diols and explore the translational potential of them as biomarkers, a machine learning-empowered boronate affinity extraction-solvent evaporation assisted enrichment-mass spectrometry (MLE-BESE-MS) was developed. A single analytical platform integrated with multiple complementary functions, including pH-controlled boronate affinity extraction, solvent evaporation-assisted enrichment and nanoelectrospray ionization-based cis-diol identification, was constructed, which significantly improved the metabolite coverage. Meanwhile, by virtue of machine learning (principal components analysis, orthogonal partial least-squares discrimination analysis and random forest), collected cis-diols were statistically screened to extract efficient features for precise PLC diagnosis, and the results outperform the routinely used protein biomarker-based methods both in sensitivity (87.5% vs. less than 70%) and specificity (85.7% vs. ca. 80%). This machine learning-empowered integrated MS platform advanced the targeted metabolic analysis for early cancer diagnosis, rendering great promise for clinical translation. The Royal Society of Chemistry 2023-02-13 /pmc/articles/PMC9993839/ /pubmed/36908957 http://dx.doi.org/10.1039/d2sc05541d Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Li, Pengfei
Xu, Shuxin
Han, Yanjie
He, Hui
Liu, Zhen
Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title_full Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title_fullStr Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title_full_unstemmed Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title_short Machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
title_sort machine learning-empowered cis-diol metabolic fingerprinting enables precise diagnosis of primary liver cancer
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9993839/
https://www.ncbi.nlm.nih.gov/pubmed/36908957
http://dx.doi.org/10.1039/d2sc05541d
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