Thermo Scientific Compound Discoverer software
Technical notes | 2018 | Thermo Fisher ScientificInstrumentation
Small molecule research often yields highly complex data from high-resolution accurate-mass Orbitrap mass spectrometers. Efficient extraction of reliable chemical information is essential for compound identification, quantification, and pathway elucidation.
This white paper presents Thermo Scientific Compound Discoverer software as a unified solution to streamline small molecule workflows. Key aims include unknown identification, differential analysis, and integration with biological databases through customizable processing trees and templates.
Data acquisition employs Thermo Scientific Orbitrap mass spectrometers with stepped collision energies to capture high-resolution MS and MS/MS spectra. Compound Discoverer software builds drag-and-drop workflows from processing nodes for peak detection, elemental composition, spectral library search (mzCloud, mzVault), similarity searches, class-based fragment scoring, and database queries (ChemSpider). Retention time alignment, self-normalization using QC samples, and export tools enable targeted method generation. Integrated pathway analysis uses KEGG, BioCyc, and Metabolika databases.
Spectral library and similarity searches combined with the mzLogic algorithm improved unknown identification rates. Stepped collision energy data enhanced match quality through in silico averaged spectra. Class-based fragment scoring rapidly identified structural analogs in complex matrices. Advanced statistical tools (PCA, PLS-DA, t-tests, volcano plots) revealed sample differences, while nested study designs and robust normalization improved quantitative confidence. Automated retention time alignment across large studies and stable isotope labeling workflows facilitated metabolic flux analysis.
Compound Discoverer software reduces manual processing, accelerates method set-up, and handles diverse applications including metabolomics, environmental testing, food safety, pharmaceutical impurity analysis, forensic toxicology, anti-doping, and explosive detection. Integrated export to instrument methods streamlines targeted MS workflows.
Ongoing developments may focus on enhanced AI-driven identification, expansion of curated spectral libraries, deeper integration with multi-omics platforms, real-time data interpretation, and more automated class-based discovery workflows. Increased support for novel labeling experiments and cloud-based collaboration is anticipated.
Thermo Scientific Compound Discoverer software offers a comprehensive, flexible environment that fully leverages Orbitrap HRAM data for small molecule research. Its integrated workflows, from unknown identification to statistical and pathway analysis, deliver high-confidence results and streamline analytical pipelines.
1. Dunn WB, Broadhurst D, Begley P, et al. Procedures for large-scale metabolic profiling of serum and plasma using GC-MS and LC-MS. Nat. Protoc. 2011;6(7):1060–83.
Software, LC/HRMS, LC/MS, LC/MS/MS, LC/Orbitrap
IndustriesManufacturerThermo Fisher Scientific
Summary
Importance of the topic
Small molecule research often yields highly complex data from high-resolution accurate-mass Orbitrap mass spectrometers. Efficient extraction of reliable chemical information is essential for compound identification, quantification, and pathway elucidation.
Objectives and overview
This white paper presents Thermo Scientific Compound Discoverer software as a unified solution to streamline small molecule workflows. Key aims include unknown identification, differential analysis, and integration with biological databases through customizable processing trees and templates.
Methodology and instrumentation
Data acquisition employs Thermo Scientific Orbitrap mass spectrometers with stepped collision energies to capture high-resolution MS and MS/MS spectra. Compound Discoverer software builds drag-and-drop workflows from processing nodes for peak detection, elemental composition, spectral library search (mzCloud, mzVault), similarity searches, class-based fragment scoring, and database queries (ChemSpider). Retention time alignment, self-normalization using QC samples, and export tools enable targeted method generation. Integrated pathway analysis uses KEGG, BioCyc, and Metabolika databases.
Key results and discussion
Spectral library and similarity searches combined with the mzLogic algorithm improved unknown identification rates. Stepped collision energy data enhanced match quality through in silico averaged spectra. Class-based fragment scoring rapidly identified structural analogs in complex matrices. Advanced statistical tools (PCA, PLS-DA, t-tests, volcano plots) revealed sample differences, while nested study designs and robust normalization improved quantitative confidence. Automated retention time alignment across large studies and stable isotope labeling workflows facilitated metabolic flux analysis.
Benefits and practical applications
Compound Discoverer software reduces manual processing, accelerates method set-up, and handles diverse applications including metabolomics, environmental testing, food safety, pharmaceutical impurity analysis, forensic toxicology, anti-doping, and explosive detection. Integrated export to instrument methods streamlines targeted MS workflows.
Future trends and applications
Ongoing developments may focus on enhanced AI-driven identification, expansion of curated spectral libraries, deeper integration with multi-omics platforms, real-time data interpretation, and more automated class-based discovery workflows. Increased support for novel labeling experiments and cloud-based collaboration is anticipated.
Conclusion
Thermo Scientific Compound Discoverer software offers a comprehensive, flexible environment that fully leverages Orbitrap HRAM data for small molecule research. Its integrated workflows, from unknown identification to statistical and pathway analysis, deliver high-confidence results and streamline analytical pipelines.
Reference
1. Dunn WB, Broadhurst D, Begley P, et al. Procedures for large-scale metabolic profiling of serum and plasma using GC-MS and LC-MS. Nat. Protoc. 2011;6(7):1060–83.
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