Radio and PodcastRadio and PodcastLive Radio & Podcasts
214: AI and Automation in Modern Hematologic Diagnostics artwork
Science & Medicine

214: AI and Automation in Modern Hematologic Diagnostics

Digital Pathology Podcast by Aleksandra Zuraw, DVM, PhD

Apr 2, 202622:29Science & Medicine

Send us Fan Mail Paper Discussed in this Episode: Molecular Pathology, Artificial Intelligence, and New Technologies in Hematologic Diagnostics: Translational Opportunities and Practical Considerations. Alnoor F, Mukherj...

About This Episode

214: AI and Automation in Modern Hematologic Diagnostics is an episode from Digital Pathology Podcast by Aleksandra Zuraw, DVM, PhD. Send us Fan Mail Paper Discussed in this Episode: Molecular Pathology, Artificial Intelligence, and New Tec...

Podcast

This episode belongs to Digital Pathology Podcast.

Listen Online

Use the player on this page to stream the episode online.

Episode Details

Published Apr 2, 2026, 22:29 long, audio available.

Questions About This Episode

What is 214: AI and Automation in Modern Hematologic Diagnostics about?

Send us Fan Mail Paper Discussed in this Episode: Molecular Pathology, Artificial Intelligence, and New Technologies in Hematologic Diagnostics: Translational Opportunities and Practical Considerations. Alnoor F, Mukherjee S, Menon MP, Ng D, Li P, Ohgami RS. Diagnostics 2026. Episode Summary: In this deep dive, we explore how hematology labs are tackling a massive rise in diagnostic complexity combined with persistent staffing shortages. The solution isn't just working harder—it's an entirely new workflow powered by robotics and AI. We unpack a comprehensive 2026 review that looks at the cutting-edge transformation of hematopathology, moving from manual microscopes to collaborative robots (cobots), digital morphology, and AI-driven genomic analysis. Can machines handle the grueling pre-analytical work and help experts diagnose leukemia faster and more accurately? In This Episode, We Cover: • The Modern Lab Crisis : How the latest WHO and International Consensus Classification (ICC) frameworks demand high-volume, multi-modal genomic and morphologic data, stretching human pathologists to their limits. • Enter the "Cobots" : Collaborative robots are taking over the repetitive benchwork. We discuss systems like the UR5 cobots in Denmark that sort 3,000 blood tubes a day, and the Pramana Spectral HT robotic-arm scanners that digitize over 1,000 slides daily, freeing up human staff for higher-level tasks. • The Digital Eye (Morphology & AI) : How platforms like CellaVision and Scopio turn glass slides into AI-analyzed data. ◦ Peripheral Blood : AI pre-classifies cells with 85-98% concordance to manual microscopy, prioritizing blasts and abnormal cells for expert review to improve efficiency. ◦ Bone Marrow : Deep learning isn't just counting cells; it's accurately quantifying reticulin fibrosis and identifying leukemia subtypes with human-level performance. • Flow Cytometry Gets an Upgrade : High-dimensional flow cytometry data meets deep learning. AI models are now achieving expert-level performance in classifying mature B-cell neoplasms and accurately distinguishing acute leukemias from non-leukemic samples. • The Molecular Frontier : AI is making sense of complex genomic datasets. We discuss breakthroughs like the MARLIN neural network, which achieves rapid epigenomic classification of acute leukemia in under two hours, and how AI assists in tracking measurable residual disease (MRD) longitudinally. • The Economics of Automation : Digital pathology is a smart financial investment. We review projections showing potential savings of $18 million over five years for integrated health systems, driven by improved efficiency, higher throughput, and fewer diagnostic errors. Key Takeaway: The integration of artificial intelligence and robotics is not meant to replace hematopathologists; rather, these technologies serve as essential scaling tools designed to absorb grueling physical labor and routine analytical tasks. By building a workflow where machines handle the sorting, scanning, and initial pattern recognition, experts can focus their time on final diagnostic synthesis—ultimately delivering faster, more precise patient care Support the show Get the "Digital Pathology 101" FREE E-book and join us!

Where can I listen to 214: AI and Automation in Modern Hematologic Diagnostics?

You can listen to 214: AI and Automation in Modern Hematologic Diagnostics online on Radio and Podcast. Open the player on this page to stream the available audio.

Which podcast is 214: AI and Automation in Modern Hematologic Diagnostics from?

214: AI and Automation in Modern Hematologic Diagnostics is an episode from Digital Pathology Podcast by Aleksandra Zuraw, DVM, PhD.

How long is this episode?

This episode is 22:29 long.

When was this episode published?

This episode was published on Apr 2, 2026.

Can I save 214: AI and Automation in Modern Hematologic Diagnostics for later?

Yes. Use the heart button on the episode page to add it to your favorite episodes list.

Are there related episodes from Digital Pathology Podcast?

Yes. This page shows related episodes from Digital Pathology Podcast when more episodes are available from the podcast feed.

Quick Answers About This Episode

Where can I listen to 214: AI and Automation in Modern Hematologic Diagnostics?

You can listen to 214: AI and Automation in Modern Hematologic Diagnostics on this page when the episode audio is available from the podcast feed.

Which podcast is this episode from?

214: AI and Automation in Modern Hematologic Diagnostics is from Digital Pathology Podcast by Aleksandra Zuraw, DVM, PhD.

What are the episode details?

Published Apr 2, 2026 and 22:29 long