About this job
Technologies
Job description
Permanent scientist position in CEA (Atomic Energy Commission), Life Sciences Division, NeuroSpin neuroimaging center (http://www-dsv.cea.fr/en/institutes/institute-of-biomedical-imaging-i2bm/departments/neurospin-neurospin) within the BrainOmics team. This team consists of 3 scientist + 2 postdocs + 1 or 2 PhD students for the research theme "imaging-genetics".
Context
The BrainOmics Team (lead: V Frouin) is in charge of the research and development in imaging-genetics (see http://en.wikipedia.org/wiki/Imaging_genetics) which is a field at the intersection of neuroinformatics, bioInformatics, applied statistics, and machine learning [1, 2]. The team is involved in several French and European projects (ANR IA Brainomics, FP6-FP7 IMAGEN and IMI-EU-AIMS).
The team has collaborations with other groups in NeuroSpin for Image Processing (team LNAO, lead: JF Mangin) or functional MRI (team INRIA-CEA/Parietal, lead; B Thirion). NeuroSpin is an international research institute in which very high field MRIs are designed and operated to carry out studies in neurosciences, and clinical/pre-clinical research. NeuroSpin co-leads the CATI platform (French Plan Alzheimer).
Description
The researcher will develop algorithms to explore the role of genetics and environmental disturbances in the variability of rich phenotypes originating from imaging and/or medical, behavioural scores. Applications are expected for new biomarker discovery and basic research in neurosciences (e.g. development, ageing). The research will be (not exclusively) performed on the neuroimaging-genetics cohorts being built at NeuroSpin (IMAGEN, EU-AIMS, Senior, ...) for studies in neuroscience, neurodegenerative diseases, psychiatric syndromes, and even oncology or preclinical studies.
Essential Skills and Qualifications
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Ph.D. in applied mathematics, computer science, bioinformatics, image processing, biostatistics, machine learning, genetic epidemiology or related disciplines.The initial training may include biology, medical imaging.
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Experience in applying and developing Machine Learning techniques in massive high-dimensional data (n~10^3, p~10^6). Any experience related to the use/development of univariate/multivariate methods for association/heritability studies between imaging phenotypes and genetic measures, epigenetic and gene expression.
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Strong experience in scientific programming C/C++, ideally in Python language.
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Good communication skills to work in a multi-professional team. Interest and knowledge in neuroimaging neuroinformatics and bioinformatics will be appreciated. The candidate has a PhD and spent one or more PostDoc periods in scientific fields related with imaging-genetics. She/He published several papers as a first author, and built a working relationship network in related scientific fields. She/He potentially already wrote funding requests and managed scientific projects.
Skills & requirements
- Ph.D. in applied mathematics, computer science, bioinformatics, image processing, biostatistics, machine learning, genetic epidemiology or related disciplines.The initial training may include biology, medical imaging.
- Experience in applying and developing Machine Learning techniques in massive high-dimensional data (n~10^3, p~10^6). Any experience related to the use/development of univariate/multivariate methods for association/heritability studies between imaging phenotypes and genetic measures, epigenetic and gene expression.
- Strong experience in scientific programming C/C++, ideally in Python language.
- Good communication skills to work in a multi-professional team. Interest and knowledge in neuroimaging neuroinformatics and bioinformatics will be appreciated. The candidate has a PhD and spent one or more PostDoc periods in scientific fields related with imaging-genetics. She/He published several papers as a first author, and built a working relationship network in related scientific fields. She/He potentially already wrote funding requests and managed scientific projects.