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Genomics of Particulate Matter Exposure Associated Cardiopulmonary Disease: A Narrative Review

Citron, Julia; Willcocks, Emma; Crowley, George; Kwon, Sophia; Nolan, Anna
Particulate matter (PM) exposure is associated with the development of cardiopulmonary disease. Our group has studied the adverse health effects of World Trade Center particulate matter (WTC-PM) exposure on firefighters. To fully understand the complex interplay between exposure, organism, and resultant disease phenotype, it is vital to analyze the underlying role of genomics in mediating this relationship. A PubMed search was performed focused on environmental exposure, genomics, and cardiopulmonary disease. We included original research published within 10 years, on epigenetic modifications and specific genetic or allelic variants. The initial search resulted in 95 studies. We excluded manuscripts that focused on work-related chemicals, heavy metals and tobacco smoke as primary sources of exposure, as well as reviews, prenatal research, and secondary research studies. Seven full-text articles met pre-determined inclusion criteria, and were reviewed. The effects of air pollution were evaluated in terms of methylation (n = 3), oxidative stress (n = 2), and genetic variants (n = 2). There is evidence to suggest that genomics plays a meditating role in the formation of adverse cardiopulmonary symptoms and diseases that surface after exposure events. Genomic modifications and variations affect the association between environmental exposure and cardiopulmonary disease, but additional research is needed to further define this relationship.
PMID: 31703266
ISSN: 1660-4601
CID: 4190622

Quantitative lung morphology: semi-automated measurement of mean linear intercept

Crowley, George; Kwon, Sophia; Caraher, Erin J; Haider, Syed Hissam; Lam, Rachel; Batra, Prag; Melles, Daniel; Liu, Mengling; Nolan, Anna
BACKGROUND:Quantifying morphologic changes is critical to our understanding of the pathophysiology of the lung. Mean linear intercept (MLI) measures are important in the assessment of clinically relevant pathology, such as emphysema. However, qualitative measures are prone to error and bias, while quantitative methods such as mean linear intercept (MLI) are manually time consuming. Furthermore, a fully automated, reliable method of assessment is nontrivial and resource-intensive. METHODS:We propose a semi-automated method to quantify MLI that does not require specialized computer knowledge and uses a free, open-source image-processor (Fiji). We tested the method with a computer-generated, idealized dataset, derived an MLI usage guide, and successfully applied this method to a murine model of particulate matter (PM) exposure. Fields of randomly placed, uniform-radius circles were analyzed. Optimal numbers of chords to assess based on MLI were found via receiver-operator-characteristic (ROC)-area under the curve (AUC) analysis. Intraclass correlation coefficient (ICC) measured reliability. RESULTS: > 63.83 pixels) and excellent reliability (ICC = 0.9998, p < 0.0001). We provide a guide to optimize the number of chords to sample based on MLI. Processing time was 0.03 s/image. We showed elevated MLI in PM-exposed mice compared to PBS-exposed controls. We have also provided the macros that were used and have made an ImageJ plugin available free for academic research use at https://med.nyu.edu/nolanlab. CONCLUSIONS:Our semi-automated method is reliable, equally fast as fully automated methods, and uses free, open-source software. Additionally, we quantified the optimal number of chords that should be measured per lung field.
PMCID:6842138
PMID: 31706309
ISSN: 1471-2466
CID: 4186642

Assessing the Protective Metabolome Using Machine Learning in World Trade Center Particulate Exposed Firefighters at Risk for Lung Injury

Crowley, George; Kwon, Sophia; Ostrofsky, Dean F; Clementi, Emily A; Haider, Syed Hissam; Caraher, Erin J; Lam, Rachel; St-Jules, David E; Liu, Mengling; Prezant, David J; Nolan, Anna
The metabolome of World Trade Center (WTC) particulate matter (PM) exposure has yet to be fully defined and may yield information that will further define bioactive pathways relevant to lung injury. A subset of Fire Department of New York firefighters demonstrated resistance to subsequent loss of lung function. We intend to characterize the metabolome of never smoking WTC-exposed firefighters, stratified by resistance to WTC-Lung Injury (WTC-LI) to determine metabolite pathways significant in subjects resistant to the loss of lung function. The global serum metabolome was determined in those resistant to WTC-LI and controls (n = 15 in each). Metabolites most important to class separation (top 5% by Random Forest (RF) of 594 qualified metabolites) included elevated amino acid and long-chain fatty acid metabolites, and reduced hexose monophosphate shunt metabolites in the resistant cohort. RF using the refined metabolic profile was able to classify cases and controls with an estimated success rate of 93.3%, and performed similarly upon cross-validation. Agglomerative hierarchical clustering identified potential influential pathways of resistance to the development of WTC-LI. These pathways represent potential therapeutic targets and warrant further research.
PMID: 31481674
ISSN: 2045-2322
CID: 4069072

Quantifying Cardiopulmonary Collagen Deposition in a Murine Model of WTC-PM Exposure [Meeting Abstract]

Mikhail, M.; Crowley, G.; Veerappan, A.; Haider, S.; Caraher, E.; Lam, R.; Kwon, S.; Ostrofsky, D.; Nolan, A.
ISI:000466771101269
ISSN: 1073-449x
CID: 3909992

World Trade Center Particulate Matter Associated Cardiopulmonary Dysfunction and Injury: Incorporating Echocardiography in a Murine Model [Meeting Abstract]

Veerappan, A.; Oskuei, A.; Vaidyanathan, S.; Crowley, G.; Wadghiri, Y.; Nolan, A.
ISI:000466771102336
ISSN: 1073-449x
CID: 3896762

Validation of Biomarkers of World Trade Center (WTC) Lung Injury: Design of a Case Cohort Control [Meeting Abstract]

Riggs, J.; Kwon, S.; Crowley, G.; Ostrofsky, D.; Talusan, A.; Mikhail, M.; Kim, J.; Zeig-Owens, R.; Schwartz, T.; Prezant, D. J.; Liu, M.; Nolan, A.
ISI:000466771102339
ISSN: 1073-449x
CID: 3896792

Clinical Biomarkers of World Trade Center Airway Hyperreactivity: A 16-Year Longitudinal Study [Meeting Abstract]

Kwon, S.; Clementi, E.; Crowley, G.; Schwartz, T.; Zeig-Owens, R.; Liu, M.; Prezant, D. J.; Nolan, A.
ISI:000466771102337
ISSN: 1073-449x
CID: 3896772

Nutritional Assessment of the World Trade Center-Health Program Fire Department of New York Cohort [Meeting Abstract]

Lam, R.; Riggs, J.; Sunseri, M.; Kwon, S.; Crowley, G.; Schwartz, T.; Zeig-Owens, R.; Halpren, A.; Liu, M.; Prezant, D. J.; Nolan, A.
ISI:000466776701069
ISSN: 1073-449x
CID: 3896812

Synergistic Interleukin-1 alpha Elaboration Due to World Trade Center Particulate Matter and Lipid Co-Exposure In Vitro Is Not NF-kappa B Dependent [Meeting Abstract]

Ostrofsky, D.; Lam, R.; Haider, S.; Crowley, G.; Talusan, A.; Kwon, S.; Zhang, L.; Liu, M.; Nolan, A.
ISI:000466771102342
ISSN: 1073-449x
CID: 3896802

Novel Use of mu-PET/CT Imaging to Detect Cardiopulmonary Changes in a Murine Model Following World Trade Center Particular Matter Exposure [Meeting Abstract]

Oskuei, A.; Veerappan, A.; Vaidyanathan, S.; Crowley, G.; Wadghiri, Y.; Nolan, A.
ISI:000466771102338
ISSN: 1073-449x
CID: 3896782