Calendar

May
21
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
May 21 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Faculty Lab Showcase

 

1:30-2:00 PM | Dr. Sandip Biswal, M.D.

Biswal Lab for Pain Imaging

Associate Professor of Radiology

Stanford University

 

2:00-2:30 PM | Dr. Lei Xing, Ph.D.

Xing Lab: Where Sciences & Engineering Meet Medicine

Jacob Haimson Professor and Professor, by courtesy, of Electrical Engineering

Stanford University

 

MIPS Roundtables will be every Thursday from 1:30-2:30pm showcasing various topics and are open to all interested.

 

Please note Zoom information does change week to week.

5/21 Meeting URL: https://stanford.zoom.us/j/98018934679
Dial: +1 650 724 9799 or +1 833 302 1536
Meeting ID: 980 1893 4679

May
28
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
May 28 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Faculty Lab Showcase

 

1:30-2:00 PM | Dr. Jianghong Rao, Ph.D.

Cellular and Molecular Imaging Laboratory (CMIL)

Professor of Radiology and, by courtesy, of Chemistry

Stanford University

 

2:00-2:30 PM | Dr. Zhen Cheng, Ph.D.

Cancer Molecular Imaging Chemistry Laboratory (CMICL)

Associate Professor of Radiology

Stanford University

 

MIPS Roundtables will be every Thursday from 1:30-2:30pm showcasing various topics and are open to all interested.

 

Please note Zoom information does change week to week.

5/28 Meeting URL: https://stanford.zoom.us/j/92834097988
Dial: +1 650 724 9799 or +1 833 302 1536
Meeting ID: 928 3409 7988

Jun
11
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
Jun 11 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Meet our MIPS Instructors 

 

1:30-2:00 PM | Dr. Katie Wilson, Ph.D.
“Optical and Acoustic Molecular Imaging to Identify Lymph Node Metastasis in Head and Neck Cancer.”
Instructor, Radiology
Stanford University

2:00-2:30 PM | Dr. Corinne Beinat, Ph.D.
“Molecular Imaging of Tumor Metabolism”
Instructor, Radiology
Stanford University

 

MIPS Roundtables are every other Thursday from 1:30-2:30pm showcasing various topics and are open to all interested.

 

Please note Zoom information does change week to week.

6/11 Meeting URL: https://stanford.zoom.us/j/95475611159
Dial: +1 650 724 9799 or +1 833 302 1536
Meeting ID: 954 7561 1159

Jun
25
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
Jun 25 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Faculty Lab Showcase

 

MIPS Roundtables are every other Thursday from 1:30-2:30pm showcasing various topics and are open to all interested.

 

1:30-2:00 PM | Dr. Brian Rutt, Ph.D.
Cellular & Molecular MRI Laboratory (CMMRIL)
Professor of Radiology
Stanford University

2:00-2:30 PM | Dr. Kathy Ferrara, Ph.D.
Ferrara Laboratory: Image-guided Drug Delivery
Professor of Radiology
Stanford University

 

Please note Zoom information does change week to week.

6/25 Webinar URL: https://stanford.zoom.us/j/91635637393?pwd=c09vUXYyeU5VeHJBaUJVRHQrT3FJdz09
Dial: +1 650 724 9799 or +1 833 302 1536
Webinar ID: 916 3563 7393
Webinar Password: 271364

Jul
9
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
Jul 9 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Meet our MIPS Instructors 

 

MIPS Roundtables are every other Thursday from 1:30-2:30pm showcasing various topics and are open to all interested. Note we will take a break through late July and August. 

 

1:30-2:00 PM | Dr. Ahmed El Kaffas, Ph.D.
Translational Ultrasound for Tissue Characterization and Stimulation
Instructor, Radiology
Stanford University

 

2:00-2:30 PM | Dr. Brett Fite, Ph.D.
Combining Focal and Immunotherapies
Instructor, Radiology
Stanford University

 

Please note Zoom information does change week to week.

7/9 Webinar URL: https://stanford.zoom.us/j/91909413178
Dial: +1 650 724 9799 or +1 833 302 1536
Webinar ID: 919 0941 3178
Password: 572746

Jul
16
Thu
2020
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link
Jul 16 @ 1:30 pm – 2:30 pm
Thursday MIPS Roundtable @ Zoom - See Description for Zoom Link

Thursday MIPS Roundtable: Meet our MIPS Instructors 

 

MIPS Roundtables are Thursdays from 1:30-2:30pm showcasing various topics and are open to all interested. Note this will be our last summer Roundtable and we will take a break through late July and August. 

 

1:30-2:00 PM | Dr. Josquin Foiret, Ph.D.
High throughput ultrasound imaging for improved diagnosis
Instructor, Radiology
Stanford University

 

2:00-2:30 PM | Dr. Jinghang Xie, Ph.D.
TESLA probes for imaging T cell-mediated cytotoxic response to immunotherapy
Instructor, Radiology
Stanford University

 

Please note Zoom information does change week to week.

7/16 Webinar URL: https://stanford.zoom.us/j/94952044130
Dial: +1 650 724 9799 or +1 833 302 1536
Webinar ID: 949 5204 4130
Password: 963699

Aug
5
Wed
2020
AIMI Symposium @ Livestream: details to come
Aug 5 @ 8:30 am – 4:30 pm
AIMI Symposium @ Livestream: details to come

Location & Timing

August 5, 2020
8:30am-4:30pm
Livestream: details to come

This event is free and open to all!
Registration and Event details

Overview
Advancements of machine learning and artificial intelligence into all areas of medicine are now a reality and they hold the potential to transform healthcare and open up a world of incredible promise for everyone. Sponsored by the Stanford Center for Artificial Intelligence in Medicine and Imaging, the 2020 AIMI Symposium is a virtual conference convening experts from Stanford and beyond to advance the field of AI in medicine and imaging. This conference will cover everything from a survey of the latest machine learning approaches, many use cases in depth, unique metrics to healthcare, important challenges and pitfalls, and best practices for designing building and evaluating machine learning in healthcare applications.

Our goal is to make the best science accessible to a broad audience of academic, clinical, and industry attendees. Through the AIMI Symposium we hope to address gaps and barriers in the field and catalyze more evidence-based solutions to improve health for all.

Sep
16
Wed
2020
IBIIS & AIMI Seminar – Judy Gichoya, MD @ Zoom - See Description for Zoom Link
Sep 16 @ 12:00 pm – 1:00 pm
IBIIS & AIMI Seminar - Judy Gichoya, MD @ Zoom - See Description for Zoom Link

Judy Gichoya, MD
Assistant Professor
Emory University School of Medicine

Measuring Learning Gains in Man-Machine Assemblage When Augmenting Radiology Work with Artificial Intelligence

Abstract
The work setting of the future presents an opportunity for human-technology partnerships, where a harmonious connection between human-technology produces unprecedented productivity gains. A conundrum at this human-technology frontier remains – will humans be augmented by technology or will technology be augmented by humans? We present our work on overcoming the conundrum of human and machine as separate entities and instead, treats them as an assemblage. As groundwork for the harmonious human-technology connection, this assemblage needs to learn to fit synergistically. This learning is called assemblage learning and it will be important for Artificial Intelligence (AI) applications in health care, where diagnostic and treatment decisions augmented by AI will have a direct and significant impact on patient care and outcomes. We describe how learning can be shared between assemblages, such that collective swarms of connected assemblages can be created. Our work is to demonstrate a symbiotic learning assemblage, such that envisioned productivity gains from AI can be achieved without loss of human jobs.

Specifically, we are evaluating the following research questions: Q1: How to develop assemblages, such that human-technology partnerships produce a “good fit” for visually based cognition-oriented tasks in radiology? Q2: What level of training should pre-exist in the individual human (radiologist) and independent machine learning model for human-technology partnerships to thrive? Q3: Which aspects and to what extent does an assemblage learning approach lead to reduced errors, improved accuracy, faster turn-around times, reduced fatigue, improved self-efficacy, and resilience?

Zoom: https://stanford.zoom.us/j/93580829522?pwd=ZVAxTCtEdkEzMWxjSEQwdlp0eThlUT09

Nov
9
Mon
2020
Megastars of Molecular Imaging @ Virtual Event
Nov 9 @ 5:30 am – Nov 10 @ 9:30 am
Megastars of Molecular Imaging @ Virtual Event
Join us for two FREE ‘Megastars of Molecular Imaging’ half-day seminars on 9th and 10th November 13:30-17:30 GMT

About this Event

This two-day seminar series brings together the brightest minds in molecular imaging to discuss their latest research. Each talk will last 30 min with a full 15 min dedicated for Q&A, related both to their science and their career. So bring that question you’ve always wanted to ask!

 

Agenda (Note all times are in GMT)

Day 1 (9th November)

13:30 – Ferdia Gallagher (Cambridge University) ‘Clinical imaging of tumour metabolism’

14:15 – David Lewis (CRUK Beatson Institute) ‘Illuminating metabolic vulnerabilities in lung cancer’

15:00 – Federica Pisaneschi (MD Anderson Cancer Center) ‘Imaging ROS burst during myeloid cell activation with 4-[18F]fluoronaphthol’

15:45 – Break

16:00 – Adam Shuhendler (University of Ottawa) ‘Activity-based Sensing by CEST-MRI’

16:45 – Israt Alam (Stanford University) ‘A tale of two biomarkers: visualizing T cell activation with immunoPET’

Day 2 (10th November)

13:30 – André Neves (Cambridge University) ‘Molecular imaging of aberrant glycosylation in cancer’

14:15 – Gilbert Fruhwirth (King’s College London) ‘How non-invasive in vivo cell tracking supports the development of advanced immunotherapeutics’

15:00 – Sarah Bohndiek (Cambridge University) ‘Shedding light on the tumour vasculature’

15:45 – Break

16:00 – John Ronald (Robarts Research Institute) ‘Reporter genes and genome editing for MRI cell tracking: Maybe MRI doesn’t suck?’

16:45 – Michelle James (Stanford University) ‘Shedding light on the immune system to improve detection and treatment of brain diseases using PET’

Nov
18
Wed
2020
IBIIS & AIMI Seminar: Deep Tomographic Imaging @ Zoom: https://stanford.zoom.us/j/96731559276?pwd=WG5zcEFwSGlPcDRsOUFkVlRhcEs2Zz09
Nov 18 @ 12:00 pm – 1:00 pm

Ge Wang, PhD
Clark & Crossan Endowed Chair Professor
Director of the Biomedical Imaging Center
Rensselaer Polytechnic Institute
Troy, New York

Abstract:
AI-based tomography is an important application and a new frontier of machine learning. AI, especially deep learning, has been widely used in computer vision and image analysis, which deal with existing images, improve them, and produce features. Since 2016, deep learning techniques are actively researched for tomography in the context of medicine. Tomographic reconstruction produces images of multi-dimensional structures from externally measured “encoded” data in the form of various transforms (integrals, harmonics, and so on). In this presentation, we provide a general background, highlight representative results, and discuss key issues that need to be addressed in this emerging field.

About:
AI-based X-ray Imaging System (AXIS) lab is led by Dr. Ge Wang, affiliated with the Department of Biomedical Engineering at Rensselaer Polytechnic Institute and the Center for Biotechnology and Interdisciplinary Studies in the Biomedical Imaging Center. AXIS lab focuses on innovation and translation of x-ray computed tomography, optical molecular tomography, multi-scale and multi-modality imaging, and AI/machine learning for image reconstruction and analysis, and has been continuously well funded by federal agencies and leading companies. AXIS group collaborates with Stanford, Harvard, Cornell, MSK, UTSW, Yale, GE, Hologic, and others, to develop theories, methods, software, systems, applications, and workflows.