Obtenez 3 mois à 0,99 $/mois

OFFRE D'UNE DURÉE LIMITÉE
Page de couverture de Pixels 2 Patients

Pixels 2 Patients

Pixels 2 Patients

Auteur(s): Pixels 2 Patients
Écouter gratuitement

À propos de cet audio

Pixels 2 Patients goes behind the research shaping the future of AI in medical imaging and healthcare.

Hosted by PhD Researcher Dhruv Gupta, each episode features in-depth conversations with the first authors and researchers pushing the boundaries of machine learning for radiology and clinical care. Together, we explore how their work came to life, the challenges they faced, and what their findings reveal about the limitations, opportunities, and next directions for medical imaging AI.

From self-supervised learning to foundation models and real-world deployment, Pixels 2 Patients looks at how innovation moves from code to clinic.

Hygiène et mode de vie sain Science Troubles et maladies
Épisodes
  • AI-Powered Education for Dr's with Mohammed Baharoon
    Nov 19 2025

    In this episode, I speak with Mohammed Baharoon, MMSc candidate in Biomedical Informatics at Harvard Medical School and researcher in the Rajpurkar Lab. We discuss his latest work at the intersection of radiology AI, dataset creation, and AI-powered medical education.

    Our conversation focuses on two of his recent projects: ReXGroundingCT, an open-source dataset that links free-text CT reports with pixel-level segmentations to improve grounding and explainability in radiology AI and RadGame, a new interactive, gamified platform designed to enhance radiology education using AI-driven case generation and feedback. We explore how these ideas developed, what challenges he encountered while building them, and how they fit into the broader future of trustworthy and effective medical imaging AI.

    ReXGroundingCT: https://arxiv.org/abs/2507.22030

    RadGame: https://arxiv.org/abs/2509.13270

    radgame.io

    Voir plus Voir moins
    1 h et 23 min
  • Scaling Laws for Radiology Foundation Models with Max Ilse
    Nov 5 2025

    In this first episode of Pixels 2 Patients, I’m joined by Max Ilse, Senior Researcher at Microsoft Health Futures, to discuss his latest paper, Data Scaling Laws for Radiology Foundation Models (arXiv:2509.12818).

    We dive into the core findings of his research, exploring how scaling laws, long studied in natural language processing and vision, apply to the medical imaging domain. We talk about the trade-offs between building large, generalist models that perform across many tasks versus developing highly specialised models that excel within a particular population or modality.

    Max also shares his thoughts on the current bottlenecks facing radiology foundation models, underexplored areas of research in the field, and what he sees as the next frontiers in scaling and deploying AI systems for healthcare.

    If you’re interested in where medical imaging AI is heading — and what it takes to move from scaling experiments to clinical impact — this is a conversation you won’t want to miss.

    Voir plus Voir moins
    55 min
Pas encore de commentaire