Computational Medical Imaging Analysis Chapter 4: Image Visualization

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Computational Medical Imaging Analysis Chapter 4: Image Visualization Jun Zhang Laboratory for Computational Medical Imaging & Data Analysis Department of Computer Science University of Kentucky Lexington, KY 40506 Chapter 4: CS689 1

4.1a: Visualization Methods Visualization of medical images is for the determination of the quantitative information about the properties of anatomic tissues and their functions that relate to and are affected by disease For 2D visualization, three types of multiplanar sectioning and display, including orthogonal, oblique, and curved planes For 3D visualization, two types of display, including surface renderings and volume renderings (both projection and surface types) Chapter 4: CS689 2

4.1b: Two-dimensional Image Generation and Visualization The utility of 2D images depends on the physical orientation of the image plane with respect to the structure of interest Most biomedical imaging systems have limited capability to create optimal 2D image directly, as structure positioning and scanner orientation are generally restricted We need techniques to generate and display optimal 2D images from 3D images, and to allow the orientation of 2D image plane to ultimately result in clear, unrestricted view of important features Chapter 4: CS689 3

4.1c: Multiplanar Reformating 3D isotropic volume images allow for simple and efficient computation of images that lie along the nonacquired orthogonal orientations of the volume This is achieved by readdressing the order of voxels in the volume images With anatomic reference, the orthogonal planes can be depicted by the terms for orthogonal orientation: transaxial, coronal, and sagittal Display of multiplanar images usually consists of multipanel displays Chapter 4: CS689 4

4.1d: Example of Multiplanar Images Chapter 4: CS689 5

4.1d: Multiplanar Image (Lung) Axial view Coronal view Sagittal-right Sagittal-left Chapter 4: CS689 6

4.1: Multiplanar Sectioning Chapter 4: CS689 7

4.1e: Oblique Sectioning (I) The desired 2D image may not be parallel to the orthogonal orientation of the 3D image Oblique images are less intuitive and harder to compute, as simple readdressing of the voxels in a given order will not generate the proper oblique image Specification of the orientation and efficient generation of the oblique image require additional visualization and compuation techniques Chapter 4: CS689 8

4.1f: Oblique Sectioning (II) Specification and identification of oblique image can be done using structural landmarks in the orthogonal image data Several images need to be presented to allow unambiguous selection of landmarks, through multiplanar orthogonal images Selection of any three points or landmarks will uniquely define the orientation of the plane Two selected points define an axis along which oblique planes perpendicular to the axis can be generated (not uniquely) Chapter 4: CS689 9

4.1g: Oblique Sectioning (III) Interactive oblique sectioning involves some method of visualization for plane placement and orientation verification One method is to superimpose a line on orthogonal images indicating the intersection of the oblique images with the orthogonal images Another depicts the intersection of oblique plane with a rendered surface image providing direct 3D visual feedback with familiar structural features Chapter 4: CS689 10

Example of Oblique Sectioning (II) Chapter 4: CS689 11

Curved Sectioning A trace along an arbitrary path on any orthogonal image defines a set of pixels in the orthogonal image that have a corresponding row of voxels through the volume image Each row of voxels for each pixel on the trace can be displayed as a line of a new image This is useful for curved structures that remain constant in shape through one orthogonal dimension, like the spinal canal, orbits of the eyes Chapter 4: CS689 12

Example of Curved Sectioning Chapter 4: CS689 13

4.2a: Three-dimensional Image Generation and Display Visualization of 3D volume images can be divided into two techniques characteristically: surface rendering and volume rendering Both produce a visualization of selected structures in the 3D volume image, but the methods involved are quite different Selection of techniques is predicted on the particular nature of the biomedical image data, the application to which the visualization is being applied, and the desired result of visualization Chapter 4: CS689 14

4.2b: Surface Rendering Surface rendering techniques require the extraction of contours (edges) that define the surface of the structure to be visualized An algorithm is applied to place surface patches or tiles at each contour point, and with hidden surface removal and shading, the surface is rendered visible They use a relatively small amount of contour data, resulting in fast rendering speeds Chapter 4: CS689 15

4.2c: Surface Rendering (II) Standard computer graphics techniques can be applied, including shading models Particular graphics hardware of the computer can be utilized to speed up the geometric transformation and rendering processes Contour descriptions are transformed into analytical descriptions Other analytically defined structures can be easily superposed with the surface-rendered structures Chapter 4: CS689 16

4.2d: Surface Rendering - Drawbacks The need to discretely extract the contours defining the structures to be visualized Other volume image information may be lost in the extraction process, which may be important for slice generation or value measurement Difficult to interactive and dynamic determination of the surface to be rendered Prone to sampling and aliasing artifacts on the rendered surface due to the discrete nature of the surface patch placement Chapter 4: CS689 17

4.2e: Surface Rendering Examples Chapter 4: CS689 18

4.3a: Volume Rendering (I) The most popular volume rendering methods in 3D biomedical image visualization are ray-casting algorithms They provide direct visualization of the volume images without the need for prior surface or object segmentation, preserving the values and context of the original image data The rendered surface can be dynamically determined by changing the ray-casting and surface recognition conditions during the rendering process Chapter 4: CS689 19

4.3b: Volume Rendering (II) Volume rendering can display surfaces with shading and other parts of the volume simultaneously 3D biomedical volume image data sets are characteristically large, taxing the computation abilities of volume rendering algorithms and the computer systems Given the discrete voxel-based nature of the volume image, there is no direct connection to other geometric objects, which may be desired for inclusion in the rendering or for output of the rendered structure to other devices Chapter 4: CS689 20

4.3c: Example Volume Rendering (I) Chapter 4: CS689 21

4.3e: Example of Volume Rendering (II) Rendered from CT scans 256X256X226 Chapter 4: CS689 22

4.3f: A Volume Rendering Model A source point (the eye) A focal point (where the eye is looking) A matrix of pixels (the screen) The visible object to display (scene) is in the projection path within a truncated volume (viewing pyramid) The purpose of a ray-tracing model is to define geometry of the rays cast through the scene A ray is defined as a straight line from the source point passing through the pixel Chapter 4: CS689 23

4.3g: Diagram of Ray Casting Rendering Chapter 4: CS689 24

4.3e: High Quality Volume Rending Chapter 4: CS689 25

4.3f: CT Angiography Chapter 4: CS689 26

4.4a: Surgery Planning and Rehearsal Patients with brain tumors, arterial venous malformations, or other complicated internal brain pathology undergo multimodality image scanning preoperatively to help neurosurgeons understand the anatomy of interest Direct scans can be co-registered in order to produce single visualizations of complementary information Specific anatomical objects may be identified and segmented Chapter 4: CS689 27

4.4b: Neurosurgery Visualization procedures enable more precise and expedient navigation to the target site and provide more accurate delineation of margins for resection in brain surgery than traditional procedures It can provide online, updated information to accommodate any shifts in brain position during the operational procedure This results in significantly increased physician performance, reduction in time in the operating room, and an associated increase in patient throughput and decrease in healthcare costs Chapter 4: CS689 28

4.4b: Brain Internal Tissues Chapter 4: CS689 29

4.4c: Isolating Brain Tumor Chapter 4: CS689 30

4.4d: Understanding Environment Chapter 4: CS689 31

4.4e: A Movie of Neurosurgical Planning 3D Reconstruction of MRI data of a patient with an intraparenchymal lesion in the right temporal lobe Chapter 4: CS689 32