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Detecting Semantics in Endoscopic Videos with Deep Neural Networks
1. Detecting Semantics in Endoscopic
Videos with Deep Neural Networks
Klaus Schöffmann
Institut für Informationstechnologie
Klagenfurt University, Austria
Jörg Keckstein
Medizinische Fakultät
Ulm University, Germany
2. • Grant/Research Support
• European Regional Development Fund (ERDF) – 20214
• Carinthian Economic Promotion Fund (KWF) and Lakeside Labs
3520/26336/38165
Disclosures
Klaus Schöffmann, Klagenfurt University EEC2018 2
3. • Currently, there are many ways of delivering video signals to the
operation room, in order to perform a surgery or inspection
• Endoscopes in different endoscopic surgeries
• Capsules for minimally-invasive inspections of the GI-tract
• Microscopes with mounted cameras in case of microscopic surgery
• Video streams for robot-assisted surgery
Multitude of Videos in Medicine
Klaus Schöffmann, Klagenfurt University EEC2018 3
4. Video Streams/Recordings – added value?
Klaus Schöffmann, Klagenfurt University EEC2018 4
Post-surgical use
• Documentation
• Education and training
• Treatment planning
• Case re-visitation
• Legal …
Problems
• Manual analysis
time-consuming/tedious
• Multiple hours-long
surgeries per day:
huge video archives
What is needed
• Capable systems
aiding surgeons during
or post surgery
• Finding content of
interest and making
archives manageable
How to proceed
• Automatic content
analysis: detecting
relevant scenes
• Machine learning of
relevant scenes from
many examples
Patient
names Suturing
Cutting
Injection
Coagulation?
? ?
? ?
5. What semantics may we want to find?
Klaus Schöffmann, Klagenfurt University EEC2018 5
?
? ?
? ?
Image/Video Archive
Instruments
Anatomy
Pathology
Surgical Actions
Irrelevant Scenes
Technical Errors
Surgery Phases
1. Access
2. Dissection
3. Clipping
4. Cutting
5. Separation
6. Recognizing Surgical Actions in Laparoscopic Gynecology
Klaus Schöffmann, Klagenfurt University EEC2018 6
Dissection (blunt) Coagulation Cutting (cold)
Cutting (high frequency) Sling (Hysterectomy) Injection
SuturingSuction & Irrigation
Andreas Leibetseder, Stefan Petscharnig, Manfred Jürgen Primus, Sabrina Kletz,
Bernd Münzer, Klaus Schoeffmann, and Jörg Keckstein. 2018. Lapgyn4: a dataset for
4 automatic content analysis problems in the domain of laparoscopic gynecology. In
Proceedings of the 9th ACM Multimedia Systems Conference (MMSys '18). ACM,
New York, NY, USA, 357-362.
31.000 images
111 surgeries
7. Demo: Surgical Action Recognition
Klaus Schöffmann, Klagenfurt University EEC2018 7
Petscharnig, S., & Schöffmann, K. (2017). Learning laparoscopic video shot classification for gynecological surgery. Multimedia Tools and Applications, 1-19.
8. Quantitative Evaluation: LapGyn4 (4-part Dataset)
Klaus Schöffmann, Klagenfurt University EEC2018 8
Surgical Actions (~31K samples) Anatomical Structures (~3K samples)
Very high performance using modern
machine learning standard:
• >95% recognition accuracy
• >91% recall
Andreas Leibetseder, Stefan Petscharnig, Manfred Jürgen Primus, Sabrina Kletz, Bernd Münzer, Klaus Schoeffmann, and Jörg Keckstein. 2018. Lapgyn4: a dataset for 4 automatic content analysis problems in the domain of laparoscopic
gynecology. In Proceedings of the 9th ACM Multimedia Systems Conference (MMSys '18). ACM, New York, NY, USA, 357-362.
9. Quantitative Evaluation: LapGyn4 (4-part Dataset)
Klaus Schöffmann, Klagenfurt University EEC2018 9
Suturing on Anatomy (~1K samples)Instrument Count (~22K samples)
Andreas Leibetseder, Stefan Petscharnig, Manfred Jürgen Primus, Sabrina Kletz, Bernd Münzer, Klaus Schoeffmann, and Jörg Keckstein. 2018. Lapgyn4: a dataset for 4 automatic content analysis problems in the domain of laparoscopic
gynecology. In Proceedings of the 9th ACM Multimedia Systems Conference (MMSys '18). ACM, New York, NY, USA, 357-362.
Comparatively poor performance:
• 80% accuracy
• 62% recall
• Not enough samples (~1.000 images)
• Visual context perhaps too similar
Still good performance:
• >92% accuracy
• >84% recall
• best in classifying zero instruments (acc: 96%)
10. Towards Endometriosis Recognition – former approach
Klaus Schöffmann, Klagenfurt University EEC2018 10
• Tool for supporting experts in
annotating Endometriosis
• Annotating affected regions
via ENZIAN/rASRM score
• Problems
• Too many examples
needed for every single
ENZIAN/rASRM category
required for machine learning
• Too much effort for few expert
annotators
A. Leibetseder, B. Münzer, K. Schoeffmann and J. Keckstein, "Endometriosis Annotation in Endoscopic Videos," 2017 IEEE International Symposium on Multimedia (ISM), Taichung, 2017, pp. 364-365.
11. Future work: Region-based Endometriosis Detection
Klaus Schöffmann, Klagenfurt University EEC2018 11
Endometriosis/Adhesion Database (expert annotations)
• Purpose: supporting surgeons
by suggesting suspicious regions
• Goals: localized detection using 3 categories of diseases:
adhesions, endometriosis suspicion, endometriosis
• Methodology
• Creating endometriosis/adhesion database
• Training and evaluating suitable machine learning models for classification
Machine
Learning
(e.g. R-CNN)
No Endometriosis
Adhesions
Endometriosis
Prediction
Model Endometriosis Suspicion
12. Automatic Smoke Detection (Real-Time Support)
Klaus Schöffmann, Klagenfurt University EEC2018 12
Detection Runtime
+ Machine Learning (acc: 94%)
– Saturation Analysis (acc: 81%)
+ Saturation Analysis (12ms)
– Machine Learning (150ms)
Andreas Leibetseder, Manfred J. Primus, Stefan Petscharnig, and Klaus Schoeffmann. “Image-based Smoke Detection in Laparoscopic Videos“.
Proceedings of Computer Assisted and Robotic Endoscopy and Clinical Image-Based Procedures: 4th International Workshop, CARE 2017, and
6th International Workshop, CLIP 2017, held in Conjunction with MICCAI 2017, Quebec City, QC, Canada, September 14, 2017, pp. 70-87
Leibetseder A., Primus M.J., Schoeffmann K. (2018) Automatic Smoke Classification
in Endoscopic Video. In: Schoeffmann K. et al. (eds) MultiMedia Modeling. MMM
2018. Lecture Notes in Computer Science, vol 10705. Springer, Cham
13. • High potential in full video documentation
• Enables and aids additional usage scenarios
• Post-operative and real-time support
• Facilitating education and training
• Technical skill assessment
• Improving case re-visitations
• Aiding medical staff during interventions
• Needs a system to organize and analyze videos
• To detect important semantics/scenes
• Machine learning can help a lot with this, but also it requires:
• Many and diverse training examples
• Computational power
• Experts for creating correct training examples
Conclusions
Klaus Schöffmann, Klagenfurt University EEC2018 13
14. Klaus Schöffmann, Klagenfurt University EEC2018 14
Thank You!
Q/A
Assoc.-Prof. PD Dr. Klaus Schöffmann
Institut für Informationstechnologie
Alpen-Adria-Universität Klagenfurt
www.EndoscopicVideo.com