Machine learning methods for endocrine disrupting potential identification based on single-cell data

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dc.contributor.author Aghayev, Zahir
dc.contributor.author Szafran, Adam T.
dc.contributor.author Tran, Anh
dc.contributor.author Ganesh, Hari S.
dc.contributor.author Stossi, Fabio
dc.contributor.author Zhou, Lan
dc.contributor.author Mancin, Michael A.
dc.contributor.author Pistikopoulos, Efstratios N.
dc.contributor.author Beykal, Burcu
dc.coverage.spatial United States of America
dc.date.accessioned 2023-08-25T10:16:52Z
dc.date.available 2023-08-25T10:16:52Z
dc.date.issued 2023-11
dc.identifier.citation Aghayev, Zahir; Szafran, Adam T.; Tran, Anh; Ganesh, Hari S.; Stossi, Fabio; Zhou, Lan ; Mancin, Michael A.; Pistikopoulos, Efstratios N.; Beykal, Burcu, "Machine learning methods for endocrine disrupting potential identification based on single-cell data", Chemical Engineering Science, DOI: 10.1016/j.ces.2023.119086, vol. 281, Nov. 2023.
dc.identifier.issn 0009-2509
dc.identifier.uri https://doi.org/10.1016/j.ces.2023.119086
dc.identifier.uri https://repository.iitgn.ac.in/handle/123456789/9123
dc.description.abstract Humans are continuously exposed to a variety of toxicants and chemicals which is exacerbated during and after environmental catastrophes such as floods, earthquakes, and hurricanes. The hazardous chemical mixtures generated during these events threaten the health and safety of humans and other living organisms. This necessitates the development of rapid decision-making tools to facilitate mitigating the adverse effects of exposure on the key modulators of the endocrine system, such as the estrogen receptor alpha (ER alpha), for example. The mechanistic stages of the estrogenic transcriptional activity can be measured with high content/high throughput microscopy-based biosensor assays at the single-cell level, which generates millions of object-based minable data points. By combining computational modeling and experimental analysis, we built a highly accurate data-driven classification framework to assess the endocrine disrupting potential of environmental compounds. The effects of these compounds on the ER? pathway are predicted as being receptor agonists or antagonists using the principal component analysis (PCA) projections of high throughput, high content image analysis descriptors. The framework also combines rigorous preprocessing steps and nonlinear machine learning algorithms, such as the Support Vector Machines and Random Forest classifiers, to develop highly accurate mathematical representations of the separation between ER alpha agonists and antagonists. The results show that Support Vector Machines classify the unseen chemicals correctly with more than 96% accuracy using the proposed framework, where the preprocessing and the PCA steps play a key role in suppressing experimental noise and unraveling hidden patterns in the dataset.
dc.description.statementofresponsibility by Zahir Aghayev, Adam T. Szafran, Anh Tran, Hari S. Ganesh, Fabio Stossi, Lan Zhou, Michael A. Mancin, Efstratios N. Pistikopoulos and Burcu Beykal
dc.format.extent vol. 281
dc.language.iso en_US
dc.publisher Elsevier
dc.subject Machine learning
dc.subject Endocrine disrupting chemicals
dc.subject Estrogen receptor activity
dc.subject Predictive modeling
dc.subject High throughput microscopy
dc.title Machine learning methods for endocrine disrupting potential identification based on single-cell data
dc.type Article
dc.relation.journal Chemical Engineering Science


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