In the intricate world of environmental monitoring, the pursuit of identifying and quantifying the myriad chemicals present in our surroundings has long been a scientific frontier. Recent advances have championed nontargeted analysis (NTA) as a revolutionary approach, purportedly capable of scanning the full gamut of chemical presence without prior assumptions. However, groundbreaking research emerging from the Van ’t Hoff Institute for Molecular Sciences (HIMS) at the University of Amsterdam challenges this optimistic perspective, revealing that current NTA techniques may cover only an infinitesimal fraction of the true chemical space.
At the heart of this revelation lies the esteemed method of Liquid Chromatography–Electrospray Ionisation–High-Resolution Mass Spectrometry (LC–ESI–HRMS), a gold-standard technology widely regarded as the benchmark for environmental chemical screening. While LC–ESI–HRMS has undeniably transformed analytical capabilities, the Amsterdam study articulates that inherent physical and chemical constraints drastically limit its scope, leaving vast uncharted territories within the chemical universe effectively invisible to this powerful instrument.
The team, led by environmental modeling expert Saer Samanipour, implemented an innovative computational framework termed Measurable Feature Prediction (MFP) to decode the complexities of measurable chemical space coverage. Unlike previous assessments, MFP employs a sophisticated similarity-based modeling approach that integrates molecular fingerprint data with predictive analytics centered on chromatographic retention indices and ionization efficiency. This strategy allows scientists to anticipate the exact regions of chemical space accessible through LC–ESI–HRMS before conducting any physical sample analysis.
The implications of this discovery are profound. When applied, MFP indicated that the number of distinct chemicals realistically measurable through a single LC–ESI–HRMS run is fewer than a few thousand. In stark contrast, the theoretical chemical space—comprising the vast multitude of possible chemical compounds—is astronomically larger. Quantitatively, this corresponds to a mere 0.01% coverage, underscoring that what was assumed to be comprehensive analysis is, in fact, profoundly limited.
Understanding the fundamentals of why such constraints occur requires a dive into the instrumental and molecular dynamics at play. Electrospray ionization, while versatile, does not ionize all molecules with equal efficiency, favoring particular chemical structures over others. Likewise, liquid chromatography parameters dictate retention and separation efficacy based on molecular properties, further narrowing the spectrum of detectable chemicals. These method-specific biases and efficiency bottlenecks collectively sculpt the observable chemical landscape, carving out blind spots that may harbor environmentally and biologically significant molecules.
The developmental journey of Measurable Feature Prediction was spearheaded by postdoctoral researcher Lapo Renai, supported by the EU’s Marie Skłodowska-Curie Actions and the University of Amsterdam’s Data Science Centre. The integration of advanced computational modeling with analytical chemistry exemplifies the power of interdisciplinary collaboration, driving forward tools that do not just interpret data but pre-emptively predict analytical potential. Such foresight can reshape experimental design, focusing efforts where measurement certainty is maximized and exposure to blind spots diminished.
In addition to exposing current limitations, the research advocates for strategic diversification of analytical approaches. The concept of an orthogonal methodology—employing complementary instruments and techniques with non-overlapping biases—emerges as a crucial pathway toward expanding coverage of the chemical universe. By mapping out each method’s blind spots, scientists can systematically bridge gaps, constructing a more holistic depiction of environmental chemical landscapes.
The findings prompt a subtle but critical shift in narrative around NTA. Instead of viewing these techniques as universally comprehensive, stakeholders are urged to appreciate the nuanced reality that existing methods deliver partial glimpses rather than complete vistas. This paradigm shift carries weighty implications not only for environmental screening but for fields such as exposomics, where understanding the full array of chemical exposures is vital for unraveling links to human health outcomes.
Samanipour emphasizes the need to address these “blind spots” with urgency, framing them as emerging frontiers that may harbor the key human and ecological risk factors of the future. Recognizing the vastness of unseen chemical space can galvanize investment and research into new ionization sources, alternative separation technologies, and integrative computational algorithms—all aimed at amplifying chemical coverage and confidence in analytical results.
Moreover, the MFP framework’s predictive power may catalyze smarter method development, guiding researchers toward parameter optimizations and instrument configurations that maximize measurable chemical diversity. This approach offers a route to mitigate measurement uncertainty and enhance reproducibility, which are perennial challenges in complex environmental and biological analyses.
The research published in the esteemed journal Analytical Chemistry marks a seminal advancement in the comprehension of LC–ESI–HRMS nontargeted analysis capabilities. By quantifying and making explicit the boundaries imposed by current instrumentation and methodologies, it lays the foundation for a future where chemical surveillance is more transparent, targeted, and effective.
Ultimately, this work calls upon the scientific community to embrace a more measured understanding of NTA’s reach, to innovate beyond current limitations, and to collaborate across disciplines to reveal the hidden dimensions of our chemical environment. In doing so, society will be better equipped to monitor, assess, and safeguard health against the invisible threats lurking within the chemical shadows.
Subject of Research: Not applicable
Article Title: Measurable Feature Prediction for Estimating Chemical Space Coverage in LC–ESI–HRMS Nontargeted Analysis
News Publication Date: 1-Mar-2026
Web References: http://dx.doi.org/10.1021/acs.analchem.5c07705
Image Credits: HIMS / UvA
Keywords
Nontargeted Analysis, LC–ESI–HRMS, Chemical Space Coverage, Measurable Feature Prediction, Environmental Screening, Mass Spectrometry, Ionization Efficiency, Retention Time Prediction, Computational Modeling, Exposomics, Analytical Chemistry, Chemical Blind Spots

