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, biostatistics, or closely related fields. Key Responsibilities Through post-doctoral research the scientist will: • Independently develop or apply tools to analyze high throughput multiomic data, including DNA
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year at Yale in dual affiliation with the Yale Child Study Center and the Yale Center for Brain and Mind Health (CBMH). Originally rooted in clinical psychological science, the Cha Lab strives to embody
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disease, and identify causal genes and variants using xQTL analysis and integrating our data sets from hundreds of brains (sn-RNAseq, sn-ATAC-seq, sn-long-read PacBio RNAseq, high-resolution spatial
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. Qualifications We are seeking candidates who meet the following criteria: A PhD or equivalent degree, already obtained, in a related field e.g., philosophy, law, computer science, data science, social sciences
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have a strong research track record and must hold a Ph.D. and/or M.D. degree. A background in nucleic acid biochemistry, bioinformatics, and/or data science is advantageous, but we welcome talented
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for hearing loss in mouse models. Experiences on molecular & cellular biology, biochemistry, or AD research are preferred. Preferred qualifications also include but not limit mobility and ability to work
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, including supporting clinical trials operations, analyzing data, and supporting and leading empirical manuscripts regarding LGBTQ mental health. The Yale LGBTQ Mental Health Initiative is currently conducting
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techniques, animal experiments, and data analytics are encouraged to apply. The ideal candidate will spend at least two years in the position and be passionate about scientific investigation to advance cancer
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, microvascular function, cognition, or COVID-19. Candidates with advanced quantitative data analytic skills, including computational modeling, are particularly encouraged to apply. Familiarity with medical
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residency. Please send application (including CV and contact information for at least three references) by email to Prof. Joel Gelernter at joel.gelernter@yale.edu. More information about our work is