Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Integrating NMR Metabolomics and Glycomics for Early Cancer Detection in Patients with Non-Specific Symptoms

View through CrossRef
Abstract Background Early cancer diagnosis in patients with non-specific symptoms is limited by the lack of discriminatory tests. Within the Oxfordshire Suspected CANcer (SCAN) pathway, exploratory biomarker work showed that serum 1 H-NMR-based metabolomics can identify cancer with high accuracy. SCAN2 tested whether integrating metabolomics with glycomics improves discrimination in a clinically complex, real-world population. Methods Serum from 369 SCAN patients (59 cancers) was analysed using AXINON®lipoFIT® -derived NMR metabolomics and HPLC-MS glycomics. Machine-learning models were trained to predict cancer status, with performance assessed by receiver operating characteristic (ROC) analysis of pooled cross-validated predictions. To place cancer risk in a broader clinical context, a second classifier modelling alternative non-cancer diagnosis was incorporated, and mean predicted probabilities from both models were jointly projected into a two-dimensional space, maintaining strict separation of training and test data. Findings Integration of glycomics with metabolomics improved discrimination, achieving an AUC of 0.88 in a refined cohort excluding dominant comorbidities. Cancer-associated bi- and tri-antennary glycans, including FA2G2S1, FA2BG1, and M5A1G1S1, differentiated cancer cases. A classifier targeting metastatic disease achieved an AUC of 0.80. Joint probability analysis preserved cancer-associated metabolic signatures across comorbidity burden, with projection-based classification achieving an accuracy of 89.8%. Interpretation These findings validate the SCAN1 metabolomic signature in a more clinically complex cohort and demonstrate that integrating metabolomics with glycomics enhances cancer detection in patients with non-specific symptoms. Joint probability analysis provides an interpretable framework for cancer risk stratification within multimorbid diagnostic pathways, supporting the clinical potential of scalable multi-omics blood testing.
Title: Integrating NMR Metabolomics and Glycomics for Early Cancer Detection in Patients with Non-Specific Symptoms
Description:
Abstract Background Early cancer diagnosis in patients with non-specific symptoms is limited by the lack of discriminatory tests.
Within the Oxfordshire Suspected CANcer (SCAN) pathway, exploratory biomarker work showed that serum 1 H-NMR-based metabolomics can identify cancer with high accuracy.
SCAN2 tested whether integrating metabolomics with glycomics improves discrimination in a clinically complex, real-world population.
Methods Serum from 369 SCAN patients (59 cancers) was analysed using AXINON®lipoFIT® -derived NMR metabolomics and HPLC-MS glycomics.
Machine-learning models were trained to predict cancer status, with performance assessed by receiver operating characteristic (ROC) analysis of pooled cross-validated predictions.
To place cancer risk in a broader clinical context, a second classifier modelling alternative non-cancer diagnosis was incorporated, and mean predicted probabilities from both models were jointly projected into a two-dimensional space, maintaining strict separation of training and test data.
Findings Integration of glycomics with metabolomics improved discrimination, achieving an AUC of 0.
88 in a refined cohort excluding dominant comorbidities.
Cancer-associated bi- and tri-antennary glycans, including FA2G2S1, FA2BG1, and M5A1G1S1, differentiated cancer cases.
A classifier targeting metastatic disease achieved an AUC of 0.
80.
Joint probability analysis preserved cancer-associated metabolic signatures across comorbidity burden, with projection-based classification achieving an accuracy of 89.
8%.
Interpretation These findings validate the SCAN1 metabolomic signature in a more clinically complex cohort and demonstrate that integrating metabolomics with glycomics enhances cancer detection in patients with non-specific symptoms.
Joint probability analysis provides an interpretable framework for cancer risk stratification within multimorbid diagnostic pathways, supporting the clinical potential of scalable multi-omics blood testing.

Related Results

Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
Differential Diagnosis of Neurogenic Thoracic Outlet Syndrome: A Review
Differential Diagnosis of Neurogenic Thoracic Outlet Syndrome: A Review
Abstract Thoracic outlet syndrome (TOS) is a complex and often overlooked condition caused by the compression of neurovascular structures as they pass through the thoracic outlet. ...
Key Insights from Comparing LWD and Core NMR in Heavy Oil Carbonates
Key Insights from Comparing LWD and Core NMR in Heavy Oil Carbonates
Abstract Recent advances in LWD (logging-while-drilling) NMR (nuclear magnetic resonance) have enabled the simultaneous measurement of T1 and T2. These advances b...
Learnings from a New Slim Hole LWD NMR Technology
Learnings from a New Slim Hole LWD NMR Technology
Abstract This paper presents recent experience with a new 4 ¾-in logging-while-drilling (LWD) nuclear magnetic resonance (NMR) tool. Data from several wells drilled ...
Small Cell Lung Cancer and Tarlatamab: A Meta-Analysis of Clinical Trials
Small Cell Lung Cancer and Tarlatamab: A Meta-Analysis of Clinical Trials
Abstract Introduction Tarlatamab is a Delta-like ligand 3 (DLL3) -directed bispecific T-cell engager recently approved for use in patients with advanced small cell lung cancer (SCL...
Edoxaban and Cancer-Associated Venous Thromboembolism: A Meta-analysis of Clinical Trials
Edoxaban and Cancer-Associated Venous Thromboembolism: A Meta-analysis of Clinical Trials
Abstract Introduction Cancer patients face a venous thromboembolism (VTE) risk that is up to 50 times higher compared to individuals without cancer. In 2010, direct oral anticoagul...
Isolation, characterization and semi-synthesis of natural products dimeric amide alkaloids
Isolation, characterization and semi-synthesis of natural products dimeric amide alkaloids
 Isolation, characterization of natural products dimeric amide alkaloids from roots of the Piper chaba Hunter. The synthesis of these products using intermolecular [4+2] cycloaddit...
Emerging Evidence of IgG4-Related Disease in Pericarditis: A Systematic Review
Emerging Evidence of IgG4-Related Disease in Pericarditis: A Systematic Review
Abstract Introduction Immunoglobulin G4-related disease (IgG4-RD) is a recently identified immune-mediated condition that is debilitating and often overlooked. While IgG4-RD has be...

Back to Top