Pranav Rajpurkar
Stanford University
April 17, 2019
The use of algorithms in clinical care demands a very high performance level for accurate detection and classification of disease. Deep learning (DL) offers a powerful toolkit necessary to handle the complex variations present in medical data, which traditional statistical or machine learning approaches have historically been unable to capture. In this talk, I will describe the challenges and approaches for the development of high-performance DL algorithms and curation of datasets for problems in diagnostic radiology and cardiology. I will also discuss the use of these algorithms as diagnostic support tools for clinicians, and challenges for the potential translation of these algorithms from the lab setting to clinical practice.
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0:00 Introduction
0:37 Traditional Model of Clinical
2:42 Diagnostic Procedure with Al
4:02 Information Gathering Step
5:44 Diagnostic Testing with Al
6:49 Machine Learning Framework
8:54 Next Paradigm shift?
10:08 Arrhythmia detection
10:49 Future of continuous monitoring
11:56 Holter Monitor
12:27 Amount of data capture
15:16 Automated Detection Challenges
18:20 Previous Approaches
19:10 Setup
20:29 Network Architecture
20:50 Residual Networks
21:42 Wide ResNets
23:05 Dataset - Test Set
30:48 Medical Errors
36:36 Chest Radiograph Interpretation
37:02 Chest X-ray exam
37:19 Detecting Abnormalities
37:32 X-ray findings of pneumonia
37:46 Detecting Pneumonia
38:30 DenseNets
39:17 Dataset - Train Set
39:52 Evaluation -- Limitations
41:49 Class Activation Maps
42:07 Interpretations
42:39 Future of diagnostic access
46:53 Diagnosis Clinical Decision Support
48:34 Knee MR
49:26 Input
50:38 Dataset Training on
51:07 Interpretability
53:28 External Validation
55:44 Diagnostic Future with Al
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