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. The PACE lab uses basic neuroscience approaches, preclinical models, and behavioral pharmacology to develop new drugs for the treatment of traumatic stress related disorders. The lab focuses on projects
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researchers engaged in a Defense Health Agency project on spatial orientation modeling and disorientation mitigation. The research fellow will participate in generating a report for the Spatial Orientation
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research-operational partnerships and learning about systems involving forest fuels and fire emissions modeling. They will gain experience with modeling, coding, and database management in support of a
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updates in a landscape evaluation toolkit, which include new models for listed and sensitive species. These models can inform managers during planning on how to improve forest health and reduce adverse
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metabolomics in crops tissues such as grains, seeds and fruits. Learn methods to isolate phytochemicals to be used in dietary studies using pre-clinical models and humans. Mentor(s): The mentor
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will receive hands-on training and mentorship while contributing to high-impact studies that combine cell-based systems, transgenic/gene-targeted mouse models, and natural hosts (cattle, deer, and sheep
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internationally known, unique facilities. This team has developed state-of-the-art experimental and computational models for solving water resource problems worldwide. CHL research and development addresses water
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modeling, experimental testing, and validation. AFIT is pursing cutting edge research in these areas with a variety of academic, government, and national laboratory partners. Appointment activities may
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used to assess transfer of pathogen loads to fruits and vegetables. The microbial community changes and its influence on pathogen levels will also be quantified. These data will fit into models
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that pose a threat to US agriculture and public health. Potential areas of research include genomic epidemiology, virus evolution, ecological surveillance, ecological modeling and modeling of viral