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What: Virtual lecture series on topics across machine learning in medicine, featuring extensive Q & A and panel discussions

Why: To reduce academia’s carbon footprint, accommodate the schedules of the world’s top scientists and maintain social distancing

Who: All are welcome!

Where: Zoom Webinar

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Recordings of previous talks can be found here

We are currently inviting speakers for Fall 2024! If you are interested or would like to nominate a speaker, please fill out this nomination form

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Daniel Coelho de Castro, PhD
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When: Friday, September 13th, 2024, 10am-11am EST
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Title: MAIRA – Multimodal AI for Radiology Applications
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Abstract: Radiology reporting is a complex task that requires detailed image understanding, integration of multiple inputs, comparison with prior imaging, and precise language generation. This makes it ideal for the development and use of generative multimodal models. Our recent work extends report generation to include the localisation of individual findings on the image – a task we call grounded report generation. Grounding is important for clarifying image understanding and interpreting AI-generated text, and therefore stands to improve the utility and transparency of automated report drafting. We propose a novel evaluation framework for grounded reporting that leverages large language models (LLMs) to assesses the factuality of individual generated sentences, as well as correctness of generated spatial annotations when present. The talk will introduce MAIRA-2, a multimodal model combining our specialised image encoder with a LLM, and trained for the new task of grounded report generation on chest X-rays. MAIRA-2 uses more comprehensive inputs than explored previously: the current frontal and lateral images, the prior frontal image and report, as well as additional sections of the current report. I'll then show that these additions significantly improve report quality and reduce hallucinations, establishing a new state-of-the-art on plain findings generation on MIMIC-CXR while demonstrating the feasibility of grounded reporting as a novel and richer task.

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Bio: Dr. Daniel Coelho de Castro is a senior researcher in the Biomedical Imaging team at Microsoft Research Health Futures, in Cambridge, UK. He has worked on a variety of applications of deep learning in medical image analysis—including chest radiography, computational pathology, and neuroimaging—and is particularly interested in integration of multimodal data sources. Daniel has a strong focus on combining methodological rigour, domain knowledge, and interdisciplinary collaboration to ensure reliability of machine-learning models in healthcare. Prior to joining Microsoft Research, he completed his MRes and PhD work in machine learning for medical imaging at Imperial College London, after graduating from École Centrale Paris (Dipl. Ing.) and PUC-Rio (BSc).

Erica Berlin Baller, MD, MS
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When: Friday, October 4th, 2024, 10am-11am EST
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Title:  TBD
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Abstract: TBD

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Bio: TBD

Maryam Shanechi, PhD, SM
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When: Friday, October 18th, 2024, 10am-11am EST
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Title:  TBD
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Abstract: TBD

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Bio: TBD

Gregory Goldgof, MD, PhD, MS
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When: Friday, November 1st, 2024, 10am-11am EST
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Title:  TBD
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Abstract: TBD

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Bio: TBD

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Anant Madabhushi, PhD
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When: Friday, December 6th, 2024, 10am-11am EST
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Title:  Sequence-based deep learning models for understanding gene regulation and disease genetics
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Abstract: 

Traditional biology generally looks at only a few aspects of an organism at a time and

attempts to molecularly dissect diseases and study them part by part with the hope that the sum of knowledge of parts would help explain the operation of the whole. Rarely has this been a successful strategy to understand the causes and cures for complex diseases. The motivation

for a systems based approach to disease understanding aims to understand how large numbers of interrelated health variables, gene expression profiling, its cellular architecture and

microenvironment, as seen in its histological image features, its 3 dimensional tissue

architecture and vascularization, as seen in dynamic contrast enhanced (DCE) MRI, and its

metabolic features, as seen by Magnetic Resonance Spectroscopy (MRS) or Positron Emission

Tomography (PET), result in emergence of definable phenotypes. Within our group has been

developing novel computerized knowledge alignment, representation, and fusion tools for

integrating and correlating heterogeneous biological data spanning different spatial and

temporal scales, modalities, and functionalities. These tools include computerized feature

analysis methods for extracting subvisual attributes for characterizing disease appearance and

behavior on radiographic (radiomics) and digitized pathology images (pathomics). In this talk I

will discuss the development work in our group on new radiomic and pathomic approaches for

capturing intra-tumoral heterogeneity and modeling tumor appearance. I will also focus my talk on how these radiomic and pathomic approaches can be applied to predicting disease outcome, recurrence, progression and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung cancers. Additionally I will also discuss some recent work on looking at use of pathomics in the context of racial health disparity and creation of more precise and tailored prognostic and response prediction models.

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Bio:

Dr. Anant Madabhushi is the Robert W Woodruff Professor of Biomedical Engineering; and on the faculty in the Departments of Pathology, Biomedical Informatics, and Radiology and Imaging Sciences at Emory University. He is also a Research Health Scientist at the Atlanta Veterans Administration Medical Center. Dr. Madabhushi has authored more than 475 peer-reviewed publications and more than 100 patents issued or pending. He is a, Fellow of the American Institute of Medical and Biological Engineering (AIMBE), and the Institute for Electrical and Electronic Engineers (IEEE) and the National Academy of Inventors (NAI). His work on "Smart Imaging Computers for Identifying lung cancer patients who need chemotherapy" was called out by Prevention Magazine as one of the top 10 medical breakthroughs of 2018. In 2019, Nature Magazine hailed him as one of 5 scientists developing "offbeat and innovative approaches for cancer research". Dr. Madabhushi was named to The Pathologist’s Power List in 2019, 2020, 2021 and 2022.

Derek Beaton, PhD 
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When: Friday, December 13th, 2024, 10am-11am EST
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Title:  TBD
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Abstract: TBD

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Bio: TBD

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