From High Resolution
Tandem Mass Spectrometry to Pollutant
Toxicity AI-Based Prediction: A Case Study of 7 Endocrine Disruptors
Endpoints
Posted on 2025-03-03 - 06:03
Based on high-resolution mass spectrometry (HRMS), nontarget
analysis
(NTA) can rapidly identify and characterize numerous hazardous substances
in complex environmental samples. However, the intricate identification
process often results in the underutilization of many mass spectrometry
features. Even when chemical structures are identified, their toxicological
effects and health outcomes may remain unknown. To address these challenges,
this study introduces MSFragTox, a novel approach that leverages the
rich fragmentation spectra inherent in high resolution tandem mass
spectrometry (MS/MS) to directly predict toxicity. This method integrates
MS/MS data with high-throughput screening (HTS) assays, focusing on
seven endocrine disruption-related endpoints from Tox21, and uses
MS-derived fingerprints: substructure fragmentation probability vectors
to construct toxicity predictions using machine learning algorithms.
The best model demonstrated robust performance with an average area
under the receiver operating characteristic curve (AUROC) of 0.845
on the test set, outperforming models based on traditional molecular
fingerprints and descriptors. Additionally, a web client (http://ms.envwind.site:8500) is provided for users to screen toxicity based on chemical MS/MS
data. Furthermore, in-depth analyses of commonalities and differences
in substructures reveal the mechanisms underlying across toxicity
endpoints. Using MSFragTox, we validated the potential endocrine-disrupting
effects of substances corresponding to MS/MS from real samples, highlighting
the feasibility of directly studying toxicity through MS/MS and its
potential applications in risk prediction and early warning for environmental
samples.
CITE THIS COLLECTION
DataCiteDataCite
No result found
Zhang, Xin; Han, Xiaoxiao; Xiang, Tongtong; Liu, Yanna; Pan, Wenxiao; Xue, Qiao; et al. (2025). From High Resolution
Tandem Mass Spectrometry to Pollutant
Toxicity AI-Based Prediction: A Case Study of 7 Endocrine Disruptors
Endpoints. ACS Publications. Collection. https://doi.org/10.1021/acs.est.4c11417Â