COMPUTATIONAL APPROACHES IN TOXICOLOGY AND PHARMACOLOGY: ADVANCING CHEMICAL HAZARD PRIORITIZATION, INTERVENTION, AND CHARACTERIZATION
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Habiballah_colostate_0053A_19510.pdf (2.68 MB)Access status: Embargo until 2027-06-05 ,
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Abstract
This dissertation develops computational approaches to address complementary challenges in toxicology and pharmacology spanning hazard prioritization, intervention discovery, and hazard characterization. Project I establishes an anticipatory framework for chemical hazard prioritization using data-driven models applied to under-characterized chemical space. Project II develops a computational strategy for prioritizing antidote candidates under experimental constraints by integrating efficacy, central nervous system accessibility, and synthetic feasibility. Project III establishes an integrated modeling framework for microcystin-LR hazard characterization that links external exposure to internal dose metrics to support crossspecies interpretation relevant to human safety. Collectively, this work illustrates how computational approaches can support forward-looking, decision-relevant toxicological assessment across the chemical life cycle
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Embargo expires: 06/05/2027.
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Hazard identification
ML-based predictive models
PBPK-PD integration
MC-LR public health
Drug discovery
ML-based virtual screening
