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Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying...

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Machine Learning in Medical Imaging: Learning from Large-scale populations www.cir.meduniwien.ac.at Georg Langs CIR Lab Department of Biomedical Imaging and Image Guided Therapy Medical University of Vienna CSAIL MIT contextflow www.contextflow.com
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Page 1: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Machine Learning in Medical Imaging: Learning from Large-scale populations

www.cir.meduniwien.ac.at

Georg Langs

CIR Lab Department of Biomedical Imaging and Image Guided Therapy Medical University of Vienna

CSAIL MIT

contextflow

www.contextflow.com

Page 2: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

4 problems to solve

• Predict progression and response • Learn from clinical routine data• Detect meaningful disease patterns• Discover groups in populations

2

Page 3: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.cir.meduniwien.ac.at

I. Prediction and treatment response

3

Page 4: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Retinal disease

4

Page 5: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Predicting progression and outcome

• Can we predict outcome from available information?• Can we predict course of disease and treatment?• Identify the predictive features

5

Time ?

[Vogl et al. 2015]

Vogl WD, Waldstein SM, Gerendas BS, Simader C, Glodan AM, Podkowinski D, Schmidt-Erfurth U, Langs G. Spatio-Temporal Signatures to Predict Retinal Disease Recurrence. in Advances in Information Processing in Medical Imaging., IPMI 2015;24:152-63. link

Page 6: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Predicting disease progression

• Predict if recurrence occurs• Predict time to recurrence to ensure timely treatment

6

[Vogl et al. 2015]

Vogl WD, Waldstein SM, Gerendas BS, Simader C, Glodan AM, Podkowinski D, Schmidt-Erfurth U, Langs G. Spatio-Temporal Signatures to Predict Retinal Disease Recurrence. in Advances in Information Processing in Medical Imaging., IPMI 2015;24:152-63. link

Page 7: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Challenges

• Learn from existing data: heterogeneous images and rich but largely unstructured textual information

• Weird biases • Link subtle multivariate observations to future

disease progression or treatment response• Discover and verify new categories relevant for

prognosis

7

Page 8: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.cir.meduniwien.ac.at

II. Learning from clinical routine data

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Page 9: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

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Study data vs. routine data

9

1 month: MR/CT

>4TB

1px = 10MB

Page 10: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

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Sampling of the body

10

M. Dorfer, R. Donner, and G. Langs, Constructing an un-biased whole body atlas from clinical imaging data by fragment bundling. in proceedings of MICCAI 2013, 2013, pp. 219–226

Page 11: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.cir.meduniwien.ac.at

Whole body mapping

11Work by Hofmanninger, Krenn, Holzer [Dorfer et al. 2013]

[Dorfer et al. 2013 ]

M. Dorfer, R. Donner, and G. Langs, Constructing an un-biased whole body atlas from clinical imaging data by fragment bundling. in proceedings of MICCAI 2013, 2013, pp. 219–226

Page 12: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Rich but unstructured information

www.cir.meduniwien.ac.at tinyurl.com/medim2015Georg Langs 12

Page 13: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

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II. Detecting disease patterns

13

Page 14: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.cir.meduniwien.ac.at

Lung pattern classification

• We can learn with minimal supervision

• Transfer models across clinical sites, manufacturers

14MEDICAL UNIVERSITY OF VIENNA

Inject unlabelled data to improve representation

Have a small set of labelled data to train classification

[Schlegl et al. MICCAI-MCV 2014]

T. Schlegl, J. Ofner, G. Langs. Unsupervised pre-training across domains improves lung tissue classification. In Proc. of MICCAI MCV'14, 2014

Page 15: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Re-mapping visual features

15

[Hofmanninger et al. CVPR 2015]

J. Hofmanninger and G. Langs. Mapping visual features to semantic profiles for retrieval in medical imaging. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pages 457–465, 2015 link

Page 16: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Learn to identify clinical findings

16

Images and reports Computational maps

Algorithm

[Hofmanninger et al. CVPR 2015]

J. Hofmanninger and G. Langs. Mapping visual features to semantic profiles for retrieval in medical imaging. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pages 457–465, 2015 link

Page 17: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Learn to identify clinical findings

17

Images and reports Computational maps

Expert

[Hofmanninger et al. CVPR 2015]

J. Hofmanninger and G. Langs. Mapping visual features to semantic profiles for retrieval in medical imaging. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pages 457–465, 2015 link

Page 18: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Beyond annotation

18

[Valentinitsch et al. 2013]

A. Valentinitsch, J. M. Patsch, A. J. Burghardt, T. M. Link, S. Majumdar, L. Fischer, C. Schueller-Weidekamm, H. Resch, F. Kainberger, G. Langs. Computational identification and quantification of trabecular microarchitecture classes by 3D texture analysis-based clustering. in Bone 54(1):133-140, 2013 (link)

Page 19: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

7.2010 9.2010 11.2011

Disease pattern

Time

UIP

NSIP/EAA

www.cir.meduniwien.ac.at

Identifying disease paths

19

[Vogl et al. 2014]

Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang, Ursula Schmidt-Erfurth, and Georg Langs. Longitudinal Alignment of Disease Progression in Fibrosing Interstitial Lung Disease. In Proc. MICCAI'14, 2014 link

Page 20: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

From categories to relationships

20

query

Page 21: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Search engine: find related cases

21

• KHRESMOI (FP7)- building large scale search engines for medical data

• Resulted in spin-off further developing this search engine: contextflow

www.contextflow.com

Page 22: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.cir.meduniwien.ac.at

IV. Unsupervised learning to understand populations

22

Page 23: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Identify patient groups

• Chest CTs

• t-SNE embedding based on visual features on the right

• Find structure in a population

• Collaboration with TEAMPLAY

23

[Hofmanninger et al. 2016 MICCAI]

J. Hofmanninger, M. Krenn, M. Holzer, T. Schlegl, H. Prosch, G. Langs Unsupervised Identification of Clinically Relevant Clusters in Routine Imaging Data. in Proceedings of MICCAI 2016.

Page 24: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Can we find meaningful structure?

24

[Hofmanninger et al. 2016 MICCAI]

Terms in reports

J. Hofmanninger, M. Krenn, M. Holzer, T. Schlegl, H. Prosch, G. Langs Unsupervised Identification of Clinically Relevant Clusters in Routine Imaging Data. in Proceedings of MICCAI 2016.

Page 25: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Clusters correspond to findings

25

Zyste, P: <0.001, OddsR: 2.6 Lymphom, P: <0.001, OddsR: 4.2Läsion, P: <0.001, OddsR: 2.1

Erguss, P: <0.001, OddsR: 4.2Pneumothorax, P: <0.001, OddsR: 4.8Atelektase, P: <0.001, OddsR: 3.1

Pneumonie, P: <0.001, OddsR: 7.6Erguss, P: <0.001, OddsR: 5.4Stauung, P: <0.001, OddsR: 5.31

Zyste, P: <0.001, OddsR: 2.6 Lymphom, P: <0.001, OddsR: 4.2Läsion, P: <0.001, OddsR: 2.1

Erguss, P: <0.001, OddsR: 4.2Pneumothorax, P: <0.001, OddsR: 4.8Atelektase, P: <0.001, OddsR: 3.1

Pneumonie, P: <0.001, OddsR: 7.6Erguss, P: <0.001, OddsR: 5.4Stauung, P: <0.001, OddsR: 5.31

Zyste, P: <0.001, OddsR: 2.6 Lymphom, P: <0.001, OddsR: 4.2Läsion, P: <0.001, OddsR: 2.1

Erguss, P: <0.001, OddsR: 4.2Pneumothorax, P: <0.001, OddsR: 4.8Atelektase, P: <0.001, OddsR: 3.1

Pneumonie, P: <0.001, OddsR: 7.6Erguss, P: <0.001, OddsR: 5.4Stauung, P: <0.001, OddsR: 5.31

Cluster

Findings in corresponding

reports

Clustering based on visual data Evaluation based on reported findings

[Hofmanninger et al. 2016 MICCAI]

J. Hofmanninger, M. Krenn, M. Holzer, T. Schlegl, H. Prosch, G. Langs Unsupervised Identification of Clinically Relevant Clusters in Routine Imaging Data. in Proceedings of MICCAI 2016.

Page 26: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

Conclusion

• Machine learning enables the use of large-scale data to guide feature construction

• Resulting in powerful classificiation-, regression-, and prediction models

• Identification of predictive markers and novel categories in data

• Key: finding marker patterns in heterogeneous very large-scale imaging data

26

www.cir.meduniwien.ac.atwww.contextflow.com

Page 27: Machine Learning in Medical Imaging: Learning from Large ...€¦ · UIP NSIP/EAA Identifying disease paths 19 [Vogl et al. 2014] Wolf-Dieter Vogl, Helmut Prosch, Christina Mueller-Mang,

www.VISCERAL.eu

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www.cir.meduniwien.ac.at


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