3D Human Airway Segmentation for Virtual Bronchoscopy

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3D Human Airway Segmentation for Virtual Bronchoscopy Atilla P. Kiraly,1 William E. Higgins,1,2 Eric A. Hoffman,2 Geoffrey McLennan,2 and Joseph M. Reinhardt2 1Penn State University, University Park, PA 16802 2University of Iowa, Iowa City, IA 52246 SPIE Medical Imaging 2002, San Diego, CA, 24 February 2002

4. Virtual Bronchoscopy Applications Outline 1. Introduction 2. Method 3. Segmentation Results 4. Virtual Bronchoscopy Applications Here is the outline of the talk, in the introduction we’ll review the images we are analyzing Along with the data contained in the images

Introduction New 3D CT Images can be large: 512 X 512 X 400 Partial volume effects Reconstruction artifacts Patient breathing artifacts Airway segmentation necessary for Virtual Bronchoscopy Path planning, rendering, quantitative analysis * Manual segmentation not an option …analysis can be very dependent on segmentation results

Previous Research 1. Knowledge-based W. Park et al., IEEE Trans. Med. Imaging, Aug. 1998 2. Central-axis analysis R. Swift et al., Comp. Med. Imag. Graph., Feb. 2002 3. 3D Region growing (RG)  not robust R. M. Summers et al., Radiology, Sept. 1996 K. Mori et al., 13th ICPR, 1996 4. Mathematical morphology  too slow F. Preteux et al., J. Elect. Imaging, Jan. 1999 D. Bilgen et al., IEEE Trans. Med. Imaging, submitted 2001 VB systems need pre-processing of the data segmentation and path planning most important Sonka – knowledge based – structural relationships Park improved on specificity via fuzzy logic ---not tested on human data, more robust(less knowledge dept. methods exist) Law genetic algorithm --global threshold , partial volume effects Morph 2 step process, candidate determination followed by reconstruction Fetita – fractal analysis --time consuming

Proposed Hybrid Approach Combines 3D RG and Morphology based methods Use filtering to improve robustness of both methods Use results of 3D RG to reduce application area of the larger operators in the Morphology method Order of magnitude improvement in execution time Our proposed approach combines… In addition We add filtering

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology This shows an overview of the segmentation method Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology This shows an overview of the segmentation method Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

Optional Pre-Filtering of the Data PURPOSE: 3D RG can successfully complete without parenchymal leakage Can help reduce false candidates in morphology method COST: Lose some peripheral branches METHODS: 4-connected or 3 X 3 Median filter applied to each slice on 2D basis

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology This shows an overview of the segmentation method Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

Modified Adaptive 3D Region Growing Seed = s Threshold = T T = T + 1 Volume < Explosion Yes No T = T - 1 3D Region Growing Post Processing

Post Processing PURPOSE: 1. RG result contains cavities due to noisy data 2. Edges of segmentation can be very rough METHOD: Cavity deletion and binary closing of RG segmentation

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology PURPOSE: Mask area of the lungs to constrain operator area METHOD: Partial version of S. Hu et al., IEEE Trans. Med. Imaging, June 2001 Perform 3D RG at root-site with optimally determined threshold Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology This shows an overview of the segmentation method Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

Morphology-Based Segmentation Two-Step Process 1. 2D Candidate Labeling Identify potential airways on a 2D basis Uses gray-scale reconstruction with different operators 2. 3D Reconstruction HYBRID: Use results of 3D RG and Lung Region Definition to limit application area of step 1

2D Candidate Labeling Basis Operator bth order homothetic operators

1 Sample and threshold slice z from Image I 2D Candidate Labeling 1 Sample and threshold slice z from Image I J inf. The local min smaller then operator 20% diff bet max and min values

2D Candidate Labeling Perform gray-scale closing with operator of size b Erode image and take maximum with original Repeat above step until max no longer involves S J inf. The local min smaller then operator 20% diff bet max and min values

2D Candidate Labeling Threshold result into binary image C Union of results for all b determines candidate locations

3D Airway Segmentation Overview 3D image I Modified 3D Region Growing Optional Filter Lung Region Definition Optional Filter W Morphology This shows an overview of the segmentation method Wi i{1,…,Zsize} 2D Candidate Labeling 3D Reconstruction Airway Segmentation IS

3D Reconstruction PURPOSE: Determine valid candidates to form final result METHOD: Closed space dilation with unit kernel radius 3D 6-connected region growing IS

Case h006: 512X512X574 287MB (0. 72mm X 0.72mm X 0.60mm) Results: case h006 Maximum Intensity Projections (MIP) of resultant segmentations 3D RG Hybrid Morphology Morphology method failed Different branches segmented No filtering used Case h006: 512X512X574 287MB (0. 72mm X 0.72mm X 0.60mm) Case h006_512_85, root site=(273,248,0), seger=(RegGrow,no filter,explode at T=50000)

Case h007: 512X512X488 244MB (0.65mm X 0. 65mm X 0.60mm) Results: case h007 MIP of resultant segmentations 3D RG Hybrid Morphology 4-connected median filter 3D RG and Morphology methods show leakage Case h007: 512X512X488 244MB (0.65mm X 0. 65mm X 0.60mm) Case h007_512_85, root site=(266,221,0), seger=(RegGrow,star median,explode at T=50000)

Case h007: 512X512X488 244MB (0.65mm X 0. 65mm X 0.60mm) Results: case h007 Tree Renderings 3D RG Hybrid Morphology 4-connected median filter 3D RG and Morphology methods show leakage Case h007: 512X512X488 244MB (0.65mm X 0. 65mm X 0.60mm) Case h007_512_85, root site=(266,221,0), seger=(RegGrow,star median,explode at T=50000)

Case h008: 512X512X389 194MB (0.59mm X 0.59mm X 0.06mm) Results: case h008 MIP of resultant segmentations 3D RG Hybrid Morphology Only hybrid method succeeded No filtering used Case h008: 512X512X389 194MB (0.59mm X 0.59mm X 0.06mm) Case h008_512_85, root site=(242,211,0), seger=(RegGrow,no filter,explode at T=50000)

Segmentation Time Results Method Labeling seconds Reconstruction Total 3D RG N.A. 64 Hybrid 1700 1580 3280 Morphology 15380 3200 18580 Over order of magnitude increase in labeling speed – concerning the labeling portion Improved results over standard method in some cases Hybrid demonstrates 10X improvement in labeling time

Edge Localization Segmented by both RG and Hybrid methods Segmented by Hybrid method only Hybrid method demonstrates better edge localization

H012 case: papilloma (-1000,-800) WINDOWING Hybrid and Morphology method fail in capturing papilloma

Virtual Bronchoscopy Applications Airway Analysis Peripheral Nodule Biopsy Mediastinal Lymph-Node Biopsy Use the Virtual Navigator. Sherbondy et al., SPIE Medical Imaging 2000, vol. 3978 Helferty et al., SPIE Medical Imaging 2001, vol. 4321 Helferty et al., ICIP 2002 We now apply our segmentation methodology to three application in Virtual Bronchoscopy: Airway analysis, peripheral nodule biopsy, and mediastinal lymph-node biopsy. For this work, we use our previously devised Virtual Bronchoscopy system, the Virtual Navigator, introduced in these publications.

Virtual Navigator: architecture Data Sources CT Scan Bronchoscope Stage 1: 3D CT Assessment Identify Target ROI Sites Segment Airway Tree Calculate Centerline Paths Virtual Endoluminal Movies Cross-Section Area Calculations Volume Slices, Slabs, Projections Stage 2: Live Bronchoscopy Capture Endoscope Video Correct Barrel Distortion Interactive Virtual Views Register Virtual CT to Video Draw Target Regions on Video Image Processing Analysis The physician applies the Virtual Navigator in two Stages. In Stage 1, the physician uses a 3D CT scan to identify target biopsy sites, construct the main airway tree, and define centerline paths through the major airways. This information is stored in a Case Study. Later, during Stage 2 Live Bronchoscopy, the Virtual Navigator is interfaced directly to the bronchoscope. The case study information is used during live bronchoscopy to help guide biopsy. HTML Multimedia Case Report ROI List Segmented Airway Tree Centerline Paths Screen Snapshots Recorded Movies Physician Notes

Virtual Navigator: Hardware Video Stream AVI File Endoscope Scope Monitor Scope Processor Light Source RGB,Sync,Video Matrox Cable Matrox PCI card Main Thread Video Tracking OpenGL Rendering Worker Thread Mutual Information Dual CPU System Video AGP card Capture Rendered Image Polygons, Viewpoint PC Enclosure The Virtual Navigator runs on a standard Windows-based PC. It uses a Matrox frame grabber card to interface to a bronchoscope. All software is written in Visual C++ and draws upon vtk and OpenGL. The system resides on a standard Windows-based PC. A Matrox video card serves as the interface between the PC and the videobronchoscope. The main software system,written in Visual C++, can run on an inexpensive laptop computer.

Airway Analysis (work in progress) Discuss. Point out that it’s a work in progress. Case h16_512_85, root site=(263,233,45), seger=(RegGrow,star median,explode at T=50000)

Peripheral Nodule Biopsy (work in progress) For Peripheral Nodule Biopsy, we: (1) segment the main airway tree, (2) compute centerline paths, and (3) define the nodule of interest. We use the tools of the Virtual Navigator to interrogate the case VIRTUALLY, before the procedure. DESCRIBE BRIEFLY. Point out the nodule on the views. This could then conceivably be used to guide live bronchoscopic biopsy of the nodule. This is a work in progress. Case h001_512_85, root site=(273,292,0), seger=(RegGrow,star median,explode at T=-948),slab=(focus=20,vision=30,maxwin=400)

VB-Guided Mediastinal Lymph-Node Biopsy Human Study underway 29 cases to date (2/2002) VB-Guided approach being compared to standard approach which uses CT film.

Mediastinal Lymph-Node Biopsy (study underway progress) Case h005_512_85. Root site = (253,217,0), seger = (RegGrow, no filter), ROI #2 considered (Blue)

Integrated segmentation tool-kit used for VB Conclusion Hybrid method Clinically feasible Similar results to Morphology No method superior No method consistently recovered more airways Hybrid and Morphology methods localize edges better Only Region Growing succeeded in papilloma case Integrated segmentation tool-kit used for VB