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Page 1: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

AI For Healthcare

Pranav RajpurkarPhD Candidate, Computer ScienceStanford ML Group

Page 2: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Diabetic Retinopathy from retinal fundus photos (Gulshan et al., 2016)Melanomas from photos of skin lesions (Esteva et al., 2017)Lymph node metastases from H&E slides (Bejnordi et al., 2018)Arrhythmias from ECG signals (Hannun & Rajpurkar et al., 2019)

Page 3: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Rajpurkar & Irvin et al., PLOS Medicine, 2018Rajpurkar & Irvin et al., MIDL, 2018Bien & Rajpurkar et al., PLOS Medicine, 2018Park & Chute & Rajpurkar et al., JAMA Network Open. 2019

CheXNeXt MURA MRNet HeadXNet

Page 4: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

What are challenges for building and deploying AI for medical image

interpretation?

What are opportunities for making AI medical image interpretation routine

part of clinical care?

Page 5: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Challenges for AI inMedical Image Interpretation

Data Deployment

Page 6: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 7: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Rajpurkar & Irvin et al., PLOS Medicine, 2018

CheXNeXt

Page 8: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

yx

Model

Rajpurkar & Irvin et al., PLOS Medicine, 2018

Page 9: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 10: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Normal Normal Nodule Normal

Prevalence Challenge

Page 11: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

ImageNet ChestX-Ray14

Page 12: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Training Data as seen in real world

Learning Algorithm

Poor Test Set Performance

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

Page 13: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Training Data as seen in real world

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

Page 14: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Cost Sensitive Learning

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

1

1

1

1

1

1

1

1

Normal NoduleTotal Contribution

26

Page 15: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Cost Sensitive Learning

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

6/8

6/8

2/8

2/8

2/8

2/8

2/8

2/8

Page 16: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Cost Sensitive Learning

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

6/8

6/8

2/8

2/8

2/8

2/8

2/8

2/8

Normal NoduleTotal Contribution

2 x 6/8 = 12/86 x 2/8 = 12/8

Page 17: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.

6/8

6/8

2/8

2/8

2/8

2/8

2/8

2/8

Learning Algorithm

Good Test Set Performance

Cost Sensitive Learning

Page 18: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

P2 NormalP1 Normal

P3 NormalP4 NoduleP5 NormalP6 Normal

P8 NormalP7 Nodule

Weiss et al. Learning When Training Data are Costly: The Effect of Class Distribution on Tree Induction. 2003Buda et al. A systematic study of the class imbalance problem in convolutional neural networks. 2018.Rajpurkar & Irvin et al., PLOS Medicine, 2018

6/8

6/8

2/8

2/8

2/8

2/8

2/8

2/8

Learning Algorithm

Good Test Set Performance

Cost Sensitive Learning

Page 19: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 20: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Noisy Labels Challenge

Page 21: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Noisy Labels

Oakden-Rayner. Exploring the ChestXray14 dataset: problems. 2017

Page 22: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Keeping the Noise

Joulin et al. Learning Visual Features from Large Weakly Supervised Data. ECCV 2016.Krause et al. The Unreasonable Effectiveness of Noisy Data for Fine-Grained Recognition. ECCV 2016.

Noisy Label

Classifier

Page 23: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Keeping the Noise

Noisy Label

Classifier

Rajpurkar & Irvin et al., PLOS Medicine, 2018

Page 24: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Keeping the Noise

Noisy Label

Classifier

PathologyPrevalence (examples) Algorithms

Effusion 11,000 0.901

Hernia 110 0.851

Diabetic Retinopathy from retinal fundus photos (Gulshan et al., 2016)Melanomas from photos of skin lesions (Esteva et al., 2017)Joulin et al. Learning Visual Features from Large Weakly Supervised Data. ECCV 2016.Rajpurkar & Irvin et al., PLOS Medicine, 2018

Page 25: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Correcting Noise via Self-Training

Yarowsky et al. Unsupervised word sense disambiguation rivaling supervised methods. ACL. 1995.Xie et al. Self-training with Noisy Student improves ImageNet classification. 2019.Rajpurkar & Irvin et al., PLOS Medicine, 2018

Noisy Label

Classifier

Corrected Label

Classifier

Train

Label

Train

Page 26: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Correcting Noise

Rajpurkar & Irvin et al., PLOS Medicine, 2018

Noisy Label

Classifier

Corrected Label

Classifier

Train

Label

Train

Page 27: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 28: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Evaluation Challenge

Page 29: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Evaluation Challenge

Noisy Ground

Truth Label

Trai

ning

Set

Test

Set

Strong Ground

Truth

Classifier

Train

Page 30: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Evaluation Challenge

Noisy Ground

Truth Label

Trai

ning

Set

Test

Set

Diabetic Retinopathy from retinal fundus photos (Gulshan et al., 2016)Melanomas from photos of skin lesions (Esteva et al., 2017)Joulin et al. Learning Visual Features from Large Weakly Supervised Data. ECCV 2016.Rajpurkar & Irvin et al., PLOS Medicine, 2018

Page 31: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Ground Truth

Reader

Test

Set

AI

v.s.

Page 32: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Model Comparable to

Radiologists

Except when small number of

examples (e.g. Hernia)

Page 33: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Baltruschat et al., Scientific Reports, 2019

Recent study comparing several chest x-ray models

CheXNeXt training strategy

competitive

Page 34: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Cost-Sensitive Learning

Weak-Supervision at Scale

Strong Ground Truth Collection

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 35: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Design Datasets

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 36: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Design datasets that solve data challenges

Irvin & Rajpurkar et al. 2019, AAAI; Bien & Rajpurkar et al, PLOS Medicine; Rajpurkar & Irvin et al. 2018, MIDL

200k Chest X-Rays 1,370 Knee MRI exams 40k Bone x-rays

Work with Dr. Matt Lungren, Dr. Curt Langlotz and many others at the Stanford Med School

Page 37: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Irvin & Rajpurkar et al. 2019, AAAI

CheXpert

Page 38: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Prevalence

Irvin & Rajpurkar et al. 2019, AAAI

200k Chest X-Rays

Page 39: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Noisy Labels

Page 40: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Noisy Labels

Open-Sourced Report Labeler

Page 41: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Noisy Labels

Johnson et al. 2019. MIMIC-CXR. 2019

MIMIC-CXR Database

Page 42: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Noisy Labels

Peng Y et al. NegBio. AMIA 2018 Informatics Summit. 2018.Wang X et al. ChestX-ray8. CVPR 2017.

Page 43: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Evaluation

Irvin & Rajpurkar et al. 2019, AAAI

Ground Truth Readers

Page 44: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Designing to Tackle Evaluation

Irvin & Rajpurkar et al. 2019, AAAI

2400 Downloads84 Teams Competing

Page 45: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Design Datasets

Data Challenges● Prevalence● Noisy Labels● Evaluation

Page 46: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Challenges for AI inMedical Image Interpretation

Data Deployment

Page 47: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Deployment Challenges● Algorithm Translation● Clinical Impact

Page 48: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Deployment Challenges● Algorithm Translation● Clinical Impact

Page 49: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Algorithm Translation Challenge

Model

Translation Engineering

Page 50: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Engineering for Translation: XRay4All

With Amir Kiani, Dr. Matt Lungren, and others, Stanford ML Group

Page 51: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Engineering for Translation: XRay4All

Page 53: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Deployment Challenges● Algorithm Translation● Clinical Impact

Page 54: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Clinical Impact Challenge

Model

Clinician

Performance

Performance

Model

Page 55: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Park & Chute & Rajpurkar et al., JAMA Network Open. 2019

HeadXNet

Page 56: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Pneumonia y2D CNNx

x y3D CNN

Page 57: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

HeadXNet takes in a series of CTA images and outputs segmentation for each voxel.

Park & Chute & Rajpurkar et al, JAMA Network Open, 2019

Page 58: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Park & Chute & Rajpurkar et al, JAMA Network Open, 2019

High Sensitivity Model for Detecting Aneurysms

Page 59: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Park & Chute & Rajpurkar et al, Jama Network Open, 2019

Page 60: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Park & Chute & Rajpurkar et al, JAMA Network Open. 2019

MetricWithout Augmentation(95% CI)

With Augmentation (95% CI) P-value

Sensitivity 0.831 (0.794, 0.862) 0.890 (0.858, 0.915) 0.01

Specificity 0.960 (0.937, 0.974) 0.975 (0.957, 0.986) 0.16

Accuracy 0.893 (0.782, 0.912) 0.932 (0.913, 0.946) 0.02

0.06 increase in sensitivity of detecting aneurysms.

Specificity difference is positive, but not significant.

Page 61: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Park & Chute & Rajpurkar et al, JAMA Network Open. 2019

Greatest improvement for clinician with lowest unaugmented score.

Smallest improvement for clinician with highest unaugmented score.

Page 62: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Deployment Challenges● Algorithm Translation● Clinical Impact

EngineeringFor Translation

Clinician Studies

Page 63: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Opportunities for AI inMedical Image Interpretation

Data Deployment

Page 64: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Opportunities● Fundamental Advances in Small Data and

Transfer Learning

Deployment Opportunities● ML Generalizability and Clinical Impact

Studies

Page 65: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Data Opportunities● Fundamental Advances in Small Data and

Transfer Learning

Page 66: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Transfer learning on images effective

Pre-training on ImageNet

Fine-tuning on Medical Dataset

Page 67: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Rajpurkar & Irvin & Park et al. In Review.

Transfer learning on video effective for small datasets

Page 68: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Class imbalance addressed to focus more on the hard-classified samples

DualCheXNet: dual asymmetric feature learning for thoracic disease classification in chest X-rays, Chen et al., 2019

Page 69: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Idea comes from the Focal Loss Paper

Focal Loss for Dense Object Detection, Lin et al., 2018

Page 70: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Transfer learning on CheXNet has little effect on performance

Transfusion: Understanding Transfer Learning with Applications to Medical Imaging, Raghu et al., 2019

Page 71: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Pre-Training is an effective transfer learning Strategy

Strategy AUC (95% CI)

Performance on TB task

with CheXpert pre-training0.831 (0.751, 0.910)

Performance on TB task

without CheXpert pre-training0.714 (0.618, 0.810)

Rajpurkar & O’Connell & Schechter et al., in submission

Page 72: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Deployment Opportunities● ML Generalizability and Clinical Impact

Studies

Page 73: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Generalizability to Photo Deployment

Page 74: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Black Box Assistant

Bien & Rajpurkar et al, PLOS Medicine, 2018

Probability of Abnormality, ACL tear and MCL tear.

Page 75: AI For Healthcarecs230.stanford.edu/winter2020/lecture5_guest.pdfLymph node metastases from H&E slides (Bejnordi et al., 2018) Arrhythmias from ECG signals (Hannun & Rajpurkar et al.,

Interactive AI Assistant

Rajpurkar & Uyumazturk & Kiani et al, 2019

Cancer Type A: 90%Cancer Type B: 10%

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Incorporation of Clinical Variables in Field Simulation

Rajpurkar & O’Connell & Schechter et al., in submission

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Opportunities forAI + Medicine

Community

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Open invite to the world to participate in competitions w/ hidden test set

Irvin & Rajpurkar et al. 2019, AAAI; Bien & Rajpurkar et al, PLOS Medicine; Rajpurkar & Irvin et al. 2018, MIDL

2400 Users80+ Teams Competing

1213 Users 3600 Users70+ Teams Competing

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Weekly Newsletter on latest AI For Healthcare Research

http://doctorpenguin.com

1000+ Regular Weekly Readers

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AI For HealthcareBootcamp

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2-quarter program that provides Stanford

students an opportunity to do cutting-edge

research at the intersection of AI and

healthcare.

AI For HealthcareBootcamp

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Training from PhD students and faculty in the medical school to work on

high-impact research in small interdisciplinary

teams.

AI For HealthcareBootcamp

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Automated Cell Sorting Embedded Deployment

Depression Outcome Prediction

Histopathology Assistance

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https://stanfordmlgroup.github.io/programs/aihc-bootcamp/or Google “AI For Healthcare Bootcamp Stanford”