SlideShare a Scribd company logo
1 of 33
Download to read offline
Automated Organ Localisation
in Fetal Magnetic Resonance Imaging
K. Keraudren
Thesis viva
Supervisors: Prof. D. Rueckert & Prof. J.V. Hajnal
1) Introduction
2) Localising the brain of the fetus
3) Localising the body of the fetus
4) Conclusion
Introduction
Imaging the developing fetus with MRI
4
Fast MRI acquisition methods
MRI data is acquired as stacks of 2D slices
that freeze in-plane motion
but form an incoherent 3D volume.
5
Retrospective motion correction
Orthogonal stacks of
misaligned 2D slices
3D volume
Localising fetal organs can be used to initialise motion correction.
B. Kainz et al., “Fast Volume Reconstruction from Motion Corrupted Stacks of 2D Slices,”
in IEEE Transactions on Medical Imaging, 2015.
6
Retrospective motion correction
Orthogonal stacks of
misaligned 2D slices
3D volume
Localising fetal organs can be used to initialise motion correction.
B. Kainz et al., “Fast Volume Reconstruction from Motion Corrupted Stacks of 2D Slices,”
in IEEE Transactions on Medical Imaging, 2015.
6
Challenges in localising fetal organs
1 Arbitrary orientation of the fetus
2 Variability of surrounding maternal tissues
3 Variability due to fetal growth
7
Automated organ localisation
Image registration:
Warp annotated templates to new image
Machine learning:
Learn an abstract model from annotated examples
Implicitly model variability:
age
pose (articulated body)
maternal tissues
8
Automated organ localisation
Image registration:
Warp annotated templates to new image
Machine learning:
Learn an abstract model from annotated examples
Implicitly model variability:
age
pose (articulated body)
maternal tissues
8
Localising the fetal brain
10
10
Contributions: brain detection (Chapter 4)
Preselection of candidate brain regions with MSER detection
Filtering by size based on gestational age OFDOFD
BPDBPD
Slice-by-slice approach robust to the presence of motion
K. Keraudren et al., “Localisation of the Brain in Fetal MRI using Bundled SIFT Features,”
in MICCAI, 2013
11
Localisation results for the fetal brain (Chapter 4)
Size inferred from gestational age
Median error: 5.7 mm
Improved results compared to Ison et al. (2012):
10 mm reported median error
12
Contributions: brain segmentation (Chapter 5)
Label propagation from selected MSER
Brain segmentation integrated with motion correction
Fully automated motion correction
K. Keraudren et al., “Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction,”
in NeuroImage, 2014
15
Segmentation results for the fetal brain (Chapter 5)
Fully automated motion correction in 85% of cases.
Place holder, place holder, place holder.
16
Segmentation results for the fetal brain (Chapter 5)
Improved results compared with the method of Taleb et al. (2013):
Dice score of 93% versus 80%.
16
Localising the body of the fetus
18
18
Localising the body of the fetus
Brain largest organ, ellipsoidal shape
Lungs & liver irregular shapes
Motivates 3D approach despite motion corruption
(only coarse localisation)
19
Contributions: body detection (Chapter 6)
Size normalisation based on gestational age
24 weeks 30 weeks 38 weeks
Sequential localisation of fetal organs
Image features steered by the fetal anatomy
K. Keraudren et al., “Automated Localization of Fetal Organs in MRI Using Random Forests with
Steerable Features,” in MICCAI, 2015
20
uu
vv
Contributions: body detection (Chapter 6)
Size normalisation based on gestational age
24 weeks 30 weeks 38 weeks
Sequential localisation of fetal organs
Image features steered by the fetal anatomy
K. Keraudren et al., “Automated Localization of Fetal Organs in MRI Using Random Forests with
Steerable Features,” in MICCAI, 2015
20
uu
vv
Localisation results for the fetal organs (Chapter 6)
24 weeks
29 weeks
37 weeks
Coronal plane Sagittal plane Transverse plane
In 90% of cases, heart center detected with less than 10 mm error
21
Localisation results for the fetal organs (Chapter 6)
24 weeks
29 weeks
37 weeks
Coronal plane Sagittal plane Transverse plane
Automated motion correction in 73% of cases 21
Example localisation results
Conclusion
Conclusion
Automated localisation of fetal organs in MRI:
Brain, heart, lungs & liver
Training one model across all ages
Account for the unknown orientation of the fetus
First method for a fully automated localisation of fetal organs
beyond the brain
Segmentation results enable fully automated motion correction
25
Thanks!
Source code and trained models:
github.com/kevin-keraudren/fetus-detector

More Related Content

Viewers also liked

Protein interaction networks
Protein interaction networksProtein interaction networks
Protein interaction networks
Lars Juhl Jensen
 

Viewers also liked (20)

Specificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction NetworksSpecificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction Networks
 
Harrower Heravi RDA P4 Social media
Harrower Heravi RDA P4 Social mediaHarrower Heravi RDA P4 Social media
Harrower Heravi RDA P4 Social media
 
Towards Biomedical Data Integration for Analyzing the Evolution of Cognition
Towards Biomedical Data Integration for Analyzing the Evolution of CognitionTowards Biomedical Data Integration for Analyzing the Evolution of Cognition
Towards Biomedical Data Integration for Analyzing the Evolution of Cognition
 
Beyond Journalism Chicago
Beyond Journalism ChicagoBeyond Journalism Chicago
Beyond Journalism Chicago
 
Linked data in the digital humanities skills workshop for realising the oppo...
Linked data in the digital humanities  skills workshop for realising the oppo...Linked data in the digital humanities  skills workshop for realising the oppo...
Linked data in the digital humanities skills workshop for realising the oppo...
 
Using structural information to predict protein-protein interaction and enyzm...
Using structural information to predict protein-protein interaction and enyzm...Using structural information to predict protein-protein interaction and enyzm...
Using structural information to predict protein-protein interaction and enyzm...
 
From protein interaction networks to human phenotypes
From protein  interaction networks to human phenotypesFrom protein  interaction networks to human phenotypes
From protein interaction networks to human phenotypes
 
Combining sequence motifs and protein interactions to unravel complex phospho...
Combining sequence motifs and protein interactions to unravel complex phospho...Combining sequence motifs and protein interactions to unravel complex phospho...
Combining sequence motifs and protein interactions to unravel complex phospho...
 
Protein-Protein Interaction using SVM based kernel,Jacob Coefficient and Gene...
Protein-Protein Interaction using SVM based kernel,Jacob Coefficient and Gene...Protein-Protein Interaction using SVM based kernel,Jacob Coefficient and Gene...
Protein-Protein Interaction using SVM based kernel,Jacob Coefficient and Gene...
 
Aidan's PhD Viva
Aidan's PhD VivaAidan's PhD Viva
Aidan's PhD Viva
 
Leveraging Wikipedia-based Features for Entity Relatedness and Recommendations
Leveraging Wikipedia-based Features for Entity Relatedness and RecommendationsLeveraging Wikipedia-based Features for Entity Relatedness and Recommendations
Leveraging Wikipedia-based Features for Entity Relatedness and Recommendations
 
Data Café — A Platform For Creating Biomedical Data Lakes
Data Café — A Platform For Creating Biomedical Data LakesData Café — A Platform For Creating Biomedical Data Lakes
Data Café — A Platform For Creating Biomedical Data Lakes
 
2016 07 12_purdue_bigdatainomics_seandavis
2016 07 12_purdue_bigdatainomics_seandavis2016 07 12_purdue_bigdatainomics_seandavis
2016 07 12_purdue_bigdatainomics_seandavis
 
Sabrina Kirrane INSIGHT Viva Presentation
Sabrina Kirrane INSIGHT Viva Presentation Sabrina Kirrane INSIGHT Viva Presentation
Sabrina Kirrane INSIGHT Viva Presentation
 
Industry Report: The State of Customer Data Integration in 2013
Industry Report: The State of Customer Data Integration in 2013Industry Report: The State of Customer Data Integration in 2013
Industry Report: The State of Customer Data Integration in 2013
 
Data Journalism - Start working with Data
Data Journalism  - Start working with DataData Journalism  - Start working with Data
Data Journalism - Start working with Data
 
Semantic annotation of biomedical data
Semantic annotation of biomedical dataSemantic annotation of biomedical data
Semantic annotation of biomedical data
 
Protein interaction networks from yeast to human
Protein interaction networks from yeast to humanProtein interaction networks from yeast to human
Protein interaction networks from yeast to human
 
Systematic discovery of phosphorylation networks - Combining linear motifs an...
Systematic discovery of phosphorylation networks - Combining linear motifs an...Systematic discovery of phosphorylation networks - Combining linear motifs an...
Systematic discovery of phosphorylation networks - Combining linear motifs an...
 
Protein interaction networks
Protein interaction networksProtein interaction networks
Protein interaction networks
 

Similar to PhD viva - 11th November 2015

Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
Kevin Keraudren
 
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
Kevin Keraudren
 
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
Kevin Keraudren
 
Spine Motion Azam Basheer MD CNS AANS 2013
Spine Motion Azam Basheer MD CNS AANS 2013Spine Motion Azam Basheer MD CNS AANS 2013
Spine Motion Azam Basheer MD CNS AANS 2013
Azam Basheer
 
From sci-fi to reality: Next generation imaging tools
From sci-fi to reality: Next generation imaging toolsFrom sci-fi to reality: Next generation imaging tools
From sci-fi to reality: Next generation imaging tools
Trimed Media Group
 
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
Dr Brendan O'Sullivan
 

Similar to PhD viva - 11th November 2015 (20)

Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction (...
 
Slides presented at the Steiner Unit, Hammersmith Hospital, 08/06/2012
Slides presented at the Steiner Unit, Hammersmith Hospital, 08/06/2012Slides presented at the Steiner Unit, Hammersmith Hospital, 08/06/2012
Slides presented at the Steiner Unit, Hammersmith Hospital, 08/06/2012
 
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
Automatic Localisation of the Brain in Fetal MRI (Miccai 2013)
 
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
Automated Localization of Fetal Organs in MRI Using Random Forests with Steer...
 
SCT course
SCT courseSCT course
SCT course
 
ARTIFICIAL INTELLIGENCE IN ASSISTED REPRODUCTIVE TECHNOLOGY.pptx
ARTIFICIAL INTELLIGENCE IN ASSISTED REPRODUCTIVE TECHNOLOGY.pptxARTIFICIAL INTELLIGENCE IN ASSISTED REPRODUCTIVE TECHNOLOGY.pptx
ARTIFICIAL INTELLIGENCE IN ASSISTED REPRODUCTIVE TECHNOLOGY.pptx
 
OHBM2015poster_ACE
OHBM2015poster_ACEOHBM2015poster_ACE
OHBM2015poster_ACE
 
Spine Motion Azam Basheer MD CNS AANS 2013
Spine Motion Azam Basheer MD CNS AANS 2013Spine Motion Azam Basheer MD CNS AANS 2013
Spine Motion Azam Basheer MD CNS AANS 2013
 
From sci-fi to reality: Next generation imaging tools
From sci-fi to reality: Next generation imaging toolsFrom sci-fi to reality: Next generation imaging tools
From sci-fi to reality: Next generation imaging tools
 
The Skeletal & Muscular Systems ;
The  Skeletal & Muscular Systems ; The  Skeletal & Muscular Systems ;
The Skeletal & Muscular Systems ;
 
Detection of abnormalities in Fetus using Medical Image Processing
Detection of abnormalities in Fetus using Medical Image ProcessingDetection of abnormalities in Fetus using Medical Image Processing
Detection of abnormalities in Fetus using Medical Image Processing
 
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion CorrectionAutomated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction
Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction
 
Detection of Cancer in Pap smear Cytological Images Using Bag of Texture Feat...
Detection of Cancer in Pap smear Cytological Images Using Bag of Texture Feat...Detection of Cancer in Pap smear Cytological Images Using Bag of Texture Feat...
Detection of Cancer in Pap smear Cytological Images Using Bag of Texture Feat...
 
A01110107
A01110107A01110107
A01110107
 
White Paper: In vivo Fiberoptic Fluorescence Microscopy in freely behaving mice
White Paper: In vivo Fiberoptic Fluorescence Microscopy in freely behaving miceWhite Paper: In vivo Fiberoptic Fluorescence Microscopy in freely behaving mice
White Paper: In vivo Fiberoptic Fluorescence Microscopy in freely behaving mice
 
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
Visuomotor Learning: A Positron Emission Tomography Study by Ryuta Kawashima,...
 
IEEE Medical image Title and Abstract 2016
IEEE Medical image Title and Abstract 2016 IEEE Medical image Title and Abstract 2016
IEEE Medical image Title and Abstract 2016
 
Automatic brain tumor detection using adaptive region growing with thresholdi...
Automatic brain tumor detection using adaptive region growing with thresholdi...Automatic brain tumor detection using adaptive region growing with thresholdi...
Automatic brain tumor detection using adaptive region growing with thresholdi...
 
Big datalittlebrains
Big datalittlebrainsBig datalittlebrains
Big datalittlebrains
 
Active self correction of back posture
Active self correction of back postureActive self correction of back posture
Active self correction of back posture
 

More from Kevin Keraudren

Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
Kevin Keraudren
 
Keraudren-K-2015-PhD-Thesis
Keraudren-K-2015-PhD-ThesisKeraudren-K-2015-PhD-Thesis
Keraudren-K-2015-PhD-Thesis
Kevin Keraudren
 
Slides on Photosynth.net, from my MSc at Imperial
Slides on Photosynth.net, from my MSc at ImperialSlides on Photosynth.net, from my MSc at Imperial
Slides on Photosynth.net, from my MSc at Imperial
Kevin Keraudren
 

More from Kevin Keraudren (10)

Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (Miaab 2011)
 
Keraudren-K-2015-PhD-Thesis
Keraudren-K-2015-PhD-ThesisKeraudren-K-2015-PhD-Thesis
Keraudren-K-2015-PhD-Thesis
 
PyData London 2015 - Localising Organs of the Fetus in MRI Data Using Python
PyData London 2015 - Localising Organs of the Fetus in MRI Data Using PythonPyData London 2015 - Localising Organs of the Fetus in MRI Data Using Python
PyData London 2015 - Localising Organs of the Fetus in MRI Data Using Python
 
Sparsity Based Spectral Embedding: Application to Multi-Atlas Echocardiograph...
Sparsity Based Spectral Embedding: Application to Multi-Atlas Echocardiograph...Sparsity Based Spectral Embedding: Application to Multi-Atlas Echocardiograph...
Sparsity Based Spectral Embedding: Application to Multi-Atlas Echocardiograph...
 
Endocardial 3D Ultrasound Segmentation using Autocontext Random ForestsPresen...
Endocardial 3D Ultrasound Segmentation using Autocontext Random ForestsPresen...Endocardial 3D Ultrasound Segmentation using Autocontext Random ForestsPresen...
Endocardial 3D Ultrasound Segmentation using Autocontext Random ForestsPresen...
 
Faceccrumbs: Manifold Learning on 1M Face Images, MSc group project
Faceccrumbs: Manifold Learning on 1M Face Images, MSc group projectFaceccrumbs: Manifold Learning on 1M Face Images, MSc group project
Faceccrumbs: Manifold Learning on 1M Face Images, MSc group project
 
Slides on Photosynth.net, from my MSc at Imperial
Slides on Photosynth.net, from my MSc at ImperialSlides on Photosynth.net, from my MSc at Imperial
Slides on Photosynth.net, from my MSc at Imperial
 
Reading group - 22/05/2013
Reading group - 22/05/2013Reading group - 22/05/2013
Reading group - 22/05/2013
 
Introduction to cython: example of GCoptimization
Introduction to cython: example of GCoptimizationIntroduction to cython: example of GCoptimization
Introduction to cython: example of GCoptimization
 
Segmenting Epithelial Cells in High-Throughput RNAi Screens (MIAAB 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (MIAAB 2011)Segmenting Epithelial Cells in High-Throughput RNAi Screens (MIAAB 2011)
Segmenting Epithelial Cells in High-Throughput RNAi Screens (MIAAB 2011)
 

Recently uploaded

Biopesticide (2).pptx .This slides helps to know the different types of biop...
Biopesticide (2).pptx  .This slides helps to know the different types of biop...Biopesticide (2).pptx  .This slides helps to know the different types of biop...
Biopesticide (2).pptx .This slides helps to know the different types of biop...
RohitNehra6
 
Disentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOSTDisentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOST
Sérgio Sacani
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
PirithiRaju
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and Classifications
Areesha Ahmad
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
PirithiRaju
 
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroidsHubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
Sérgio Sacani
 
Formation of low mass protostars and their circumstellar disks
Formation of low mass protostars and their circumstellar disksFormation of low mass protostars and their circumstellar disks
Formation of low mass protostars and their circumstellar disks
Sérgio Sacani
 
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
ssuser79fe74
 
Seismic Method Estimate velocity from seismic data.pptx
Seismic Method Estimate velocity from seismic  data.pptxSeismic Method Estimate velocity from seismic  data.pptx
Seismic Method Estimate velocity from seismic data.pptx
AlMamun560346
 

Recently uploaded (20)

Biopesticide (2).pptx .This slides helps to know the different types of biop...
Biopesticide (2).pptx  .This slides helps to know the different types of biop...Biopesticide (2).pptx  .This slides helps to know the different types of biop...
Biopesticide (2).pptx .This slides helps to know the different types of biop...
 
Disentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOSTDisentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOST
 
Vip profile Call Girls In Lonavala 9748763073 For Genuine Sex Service At Just...
Vip profile Call Girls In Lonavala 9748763073 For Genuine Sex Service At Just...Vip profile Call Girls In Lonavala 9748763073 For Genuine Sex Service At Just...
Vip profile Call Girls In Lonavala 9748763073 For Genuine Sex Service At Just...
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
 
Zoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdfZoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdf
 
Nanoparticles synthesis and characterization​ ​
Nanoparticles synthesis and characterization​  ​Nanoparticles synthesis and characterization​  ​
Nanoparticles synthesis and characterization​ ​
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
 
Biological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdfBiological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdf
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and Classifications
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
 
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroidsHubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
 
Pulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceuticsPulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceutics
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdf
 
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
 
Forensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdfForensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdf
 
Formation of low mass protostars and their circumstellar disks
Formation of low mass protostars and their circumstellar disksFormation of low mass protostars and their circumstellar disks
Formation of low mass protostars and their circumstellar disks
 
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
 
Isotopic evidence of long-lived volcanism on Io
Isotopic evidence of long-lived volcanism on IoIsotopic evidence of long-lived volcanism on Io
Isotopic evidence of long-lived volcanism on Io
 
Seismic Method Estimate velocity from seismic data.pptx
Seismic Method Estimate velocity from seismic  data.pptxSeismic Method Estimate velocity from seismic  data.pptx
Seismic Method Estimate velocity from seismic data.pptx
 

PhD viva - 11th November 2015

  • 1. Automated Organ Localisation in Fetal Magnetic Resonance Imaging K. Keraudren Thesis viva Supervisors: Prof. D. Rueckert & Prof. J.V. Hajnal
  • 2. 1) Introduction 2) Localising the brain of the fetus 3) Localising the body of the fetus 4) Conclusion
  • 4. Imaging the developing fetus with MRI 4
  • 5. Fast MRI acquisition methods MRI data is acquired as stacks of 2D slices that freeze in-plane motion but form an incoherent 3D volume. 5
  • 6. Retrospective motion correction Orthogonal stacks of misaligned 2D slices 3D volume Localising fetal organs can be used to initialise motion correction. B. Kainz et al., “Fast Volume Reconstruction from Motion Corrupted Stacks of 2D Slices,” in IEEE Transactions on Medical Imaging, 2015. 6
  • 7. Retrospective motion correction Orthogonal stacks of misaligned 2D slices 3D volume Localising fetal organs can be used to initialise motion correction. B. Kainz et al., “Fast Volume Reconstruction from Motion Corrupted Stacks of 2D Slices,” in IEEE Transactions on Medical Imaging, 2015. 6
  • 8. Challenges in localising fetal organs 1 Arbitrary orientation of the fetus 2 Variability of surrounding maternal tissues 3 Variability due to fetal growth 7
  • 9. Automated organ localisation Image registration: Warp annotated templates to new image Machine learning: Learn an abstract model from annotated examples Implicitly model variability: age pose (articulated body) maternal tissues 8
  • 10. Automated organ localisation Image registration: Warp annotated templates to new image Machine learning: Learn an abstract model from annotated examples Implicitly model variability: age pose (articulated body) maternal tissues 8
  • 12. 10
  • 13. 10
  • 14. Contributions: brain detection (Chapter 4) Preselection of candidate brain regions with MSER detection Filtering by size based on gestational age OFDOFD BPDBPD Slice-by-slice approach robust to the presence of motion K. Keraudren et al., “Localisation of the Brain in Fetal MRI using Bundled SIFT Features,” in MICCAI, 2013 11
  • 15. Localisation results for the fetal brain (Chapter 4) Size inferred from gestational age Median error: 5.7 mm Improved results compared to Ison et al. (2012): 10 mm reported median error 12
  • 16.
  • 17.
  • 18. Contributions: brain segmentation (Chapter 5) Label propagation from selected MSER Brain segmentation integrated with motion correction Fully automated motion correction K. Keraudren et al., “Automated Fetal Brain Segmentation from 2D MRI Slices for Motion Correction,” in NeuroImage, 2014 15
  • 19. Segmentation results for the fetal brain (Chapter 5) Fully automated motion correction in 85% of cases. Place holder, place holder, place holder. 16
  • 20. Segmentation results for the fetal brain (Chapter 5) Improved results compared with the method of Taleb et al. (2013): Dice score of 93% versus 80%. 16
  • 21. Localising the body of the fetus
  • 22. 18
  • 23. 18
  • 24. Localising the body of the fetus Brain largest organ, ellipsoidal shape Lungs & liver irregular shapes Motivates 3D approach despite motion corruption (only coarse localisation) 19
  • 25. Contributions: body detection (Chapter 6) Size normalisation based on gestational age 24 weeks 30 weeks 38 weeks Sequential localisation of fetal organs Image features steered by the fetal anatomy K. Keraudren et al., “Automated Localization of Fetal Organs in MRI Using Random Forests with Steerable Features,” in MICCAI, 2015 20 uu vv
  • 26. Contributions: body detection (Chapter 6) Size normalisation based on gestational age 24 weeks 30 weeks 38 weeks Sequential localisation of fetal organs Image features steered by the fetal anatomy K. Keraudren et al., “Automated Localization of Fetal Organs in MRI Using Random Forests with Steerable Features,” in MICCAI, 2015 20 uu vv
  • 27. Localisation results for the fetal organs (Chapter 6) 24 weeks 29 weeks 37 weeks Coronal plane Sagittal plane Transverse plane In 90% of cases, heart center detected with less than 10 mm error 21
  • 28. Localisation results for the fetal organs (Chapter 6) 24 weeks 29 weeks 37 weeks Coronal plane Sagittal plane Transverse plane Automated motion correction in 73% of cases 21
  • 30.
  • 32. Conclusion Automated localisation of fetal organs in MRI: Brain, heart, lungs & liver Training one model across all ages Account for the unknown orientation of the fetus First method for a fully automated localisation of fetal organs beyond the brain Segmentation results enable fully automated motion correction 25
  • 33. Thanks! Source code and trained models: github.com/kevin-keraudren/fetus-detector