Employer Active
Job Alert
You will be updated with latest job alerts via emailJob Alert
You will be updated with latest job alerts via emailNot Disclosed
Salary Not Disclosed
1 Vacancy
We are seeking a highly motivated postdoctoral fellow to join our new interdisciplinary lab at Mount Sinai. The fellow will focus on developing and applying computer vision and multimodal AI methods to advance womens health. The project leverages unique clinical imaging and genomic datasets and the fellow will work closely with both computational and clinical mentors to design and validate translational AI tools.
Requirements
Preferred
Environment
Heavy menstrual bleeding affects nearly one in three women of reproductive age and is a leading cause of iron deficiency worldwide. Yet it remains one of the most under-recognized challenges in medicine. Our lab at the intersection between the Artificial Intelligence and Human Health Department and the Department for Obstetrics Gynecology and Reproductive Sciences at Mount Sinai has been awarded a Wellcome Leap Missed Vital Sign grant to change this.
We are building a new interdisciplinary group at the intersection of AI human health and obstetrics & gynecology. Our mission is to harness state-of-the-art methods in machine learning and multimodal data integration to close critical gaps in womens healthand to translate these advances into solutions that matter for patients and clinicians.
As a founding member you will help shape a lab designed for openness collaboration and translation. You will have access to unique resources including Mount Sinais genome-linked EHR biobank (the Sinai Million) AIRMS (AI-ready Mount Sinai Integrated Data and Analytics Platform) the Minerva HPC cluster and eHive a digital platform for wearable and real-world data collection. Partnerships with the Hasso Plattner Institute in Germany create further opportunities for international collaboration.
This is a chance to join at the ground level of a lab committed to impact: bringing computational innovation directly into womens health.
Full-Time