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1
Intro
2
Clinical example
3
Health AI industry
4
Augmentation
5
Intelligent devices
6
Data needs
7
Narrative reports
8
Transformer models
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How they work
10
Knowledge graphs
11
Results
12
Bone Age
13
Study
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Underdiagnosis bias
15
Ethical machine learning
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Generalizability
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Reliability
18
Algorithm performance
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Heatmaps
20
Explainability
21
Reading Race
22
High Pass vs Low Pass
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MR Physics
24
Thank you
25
Questions
26
Deep reinforcement learning
27
Ethnicity detection
28
Physics training
29
Data collection
30
Differential privacy
31
Synthetic data
32
Data sharing
Description:
Explore the intersection of artificial intelligence and healthcare in this 59-minute conference talk by Stanford University's Curt Langlotz. Delve into cutting-edge machine learning methods designed to enhance patient care and support healthcare professionals. Examine the unique data privacy and security challenges in the medical field. Investigate the crucial role of interpretability in improving the accuracy and safety of human-machine collaboration. Learn about clinical examples, the health AI industry, and intelligent devices. Understand the importance of data needs, narrative reports, and transformer models in healthcare AI. Discover knowledge graphs and their applications. Analyze case studies on bone age assessment and underdiagnosis bias. Explore ethical machine learning, generalizability, and algorithm performance. Gain insights into explainability techniques, including heatmaps. Investigate the impact of reading race in medical imaging and the differences between high-pass and low-pass filters in MR physics. Conclude with discussions on deep reinforcement learning, ethnicity detection, physics training, data collection methods, differential privacy, synthetic data generation, and data sharing in healthcare AI. Read more

Preserving Patient Safety as AI Transforms Clinical Care - Curt Langlotz, Stanford University

Alan Turing Institute
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