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Applications of Machine Learning to Medical Imaging

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Title: Applications of Machine Learning to Medical Imaging


1
Applications of Machine Learning to Medical
Imaging
  • Daniela S. Raicu, PhD
  • Associate Professor, CDM
  • DePaul University
  • Email draicu_at_cs.depaul.edu
  • Lab URL http//facweb.cs.depaul.edu/research/vc/

2
About me
  • BS in Mathematics from University of Bucharest,
    Romania

3
My dissertation work
  • Research areas Data Mining Computer Vision
  • Dissertation topic Content-based image retrieval
  • Research hypothesis
  • A picture is worth thousands of words
  • There is enough information in the image content
    to perform image retrieval whose similarity
    results correspond to the human perceived
    similarity.

4
My dissertation work (cont)
  • Research hypothesis
  • There is enough information in the image content
    to perform image retrieval whose similarity
    results correspond to the human perceived
    similarity.
  • Methodology
  • 1) extract color image features, 2) define
    color-based similarity, 3) cluster images based
    on color, 4) retrieve similar images
  • Output
  • Color-based CBIR for general purpose image
    datasets

5
Towards an academic career
  • Assistant Professor at DePaul, 2002-2008
  • Associate Professor, 2008- Present
  • Teaching areas research interests
  • data analysis, data mining, image processing,
    computer vision medical informatics
  • Co-director of the Intelligent Multimedia
    Processing, Medical Informatics lab the NSF REU
    Program in Medical Informatics

6
Outline
  • Part I Introduction to Medical Informatics
  • Medical Informatics
  • Clinical Decision Making
  • Imaging Modalities and Medical Imaging
  • Basic Concepts in Image Processing
  • Part II Advances in Medical Imaging Research
  • Computer-Aided Diagnosis
  • Computer-Aided Diagnostic Characterization
  • Texture-based Classification
  • Content-based Image Retrieval

7
Medical informatics research
  • What is medical informatics?
  • Medical informatics is the application of
    computers, communications and information
    technology and systems to all fields of medicine
  • - medical care
  • - medical education
  • - medical research.
  • MF Collen, MEDINFO '80, Tokyo

8
What is medical informatics?
  • Medical informatics is the branch of science
    concerned with the use of computers and
    communication technology to acquire, store,
    analyze, communicate, and display medical
    information and knowledge to facilitate
    understanding and improve the accuracy,
    timeliness, and reliability of decision-making.
  • Warner, Sorenson and Bouhaddou, Knowledge
    Engineering in Health Informatics, 1997

9
Clinical decision making
  • Making sound clinical decisions requires
  • right information, right time, right format
  • Clinicians face a surplus of information
  • ambiguous, incomplete, or poorly organized
  • Rising tide of information
  • Expanding knowledge sources
  • 40K new biomedical articles per month
  • Publicly accessible online health info
  • Hundreds of pictures per scan for one patient

10
Clinical decision making What is the problem?
  • Man is an imperfect data processor
  • We are sensitive to the quantity and
    organization of information
  • Army officers and pilots commit fatal errors
    when given too many, too few, or poorly organized
    data
  • The same is true for clinicians who watch for
    events
  • Clinicians are particularly susceptible to errors
    of omission

11
Clinical decision making What is the problem?
  • Humans are non-perfectable data processors
  • - Better performance requires more time to
    process
  • - Irony
  • Clinicians increasingly face productivity
    expectations
  • Clinicians face increasing administrative
    tasks

12
Subdomains of medical informatics (by Wikipedia)
  • imaging informatics
  • clinical informatics
  • nursing informatics
  • consumer health informatics
  • public health informatics
  • dental informatics
  • clinical research informatics
  • bioinformatics
  • pharmacy informatics

13
What is medical imaging (MI)?


The study of medical imaging is concerned with
the interaction of all forms of radiation with
tissue and the
development of appropriate technology to extract
clinically useful information (usually displayed
in an image format) from observation of this
technology.

Sources of Images
  • Structural/anatomical information (CT, MRI, US) -
    within each elemental volume, tissue-differentiati
    ng properties are measured.
  • Information about function (PET, SPECT, fMRI).

14
Examples of medical images
15
The imaging chain
Reconstruction
Filtering
Raw data
Raw data
Signal acquisition
Processing
Analysis
123 2346.. 65789 6578..
Quantitative output
16
Image analysis Turning an image into data
  • User extracted qualitative features
  • User extracted quantitative features
  • Semi automated
  • Automated

Exam Level Feature 1 Feature 2 Feature 3
. . Finding Feature 1 Feature
2 . .
17
Major advances in medical imaging
  • Image Segmentation
  • Image Classification
  • Computer-Aided Diagnosis Systems
  • Computer-Aided Diagnostic Characterization
  • Content-based Image Retrieval
  • Image Annotation
  • These major advances can play a major role in
    early detection, diagnosis, and computerized
    treatment planning in cancer radiation therapy.

18
Computer-Aided Diagnosis
  • Computed Aided Diagnosis (CAD) is diagnosis made
    by a radiologist when the output of computerized
    image analysis methods has been incorporated into
    his or her medical decision-making process.
  • CAD may be interpreted broadly to incorporate
    both
  • the detection of the abnormality task and
  • the classification task likelihood that the
    abnormality represents a malignancy

19
Motivation for CAD systems
  • The amount of image data acquired during a CT
    scan is becoming overwhelming for human vision
    and the overload of image data for interpretation
    may result in oversight errors.
  • Computed Aided Diagnosis for
  • Breast Cancer
  • Lung Cancer
  • A thoracic CT scan generates about 240 section
    images for radiologists to interpret.
  • Colon Cancer
  • CT colonography (virtual colonoscopy) is being
    examined as a potential screening device (400-700
    images)

20
CAD for Breast Cancer
  • A mammogram is an X-ray of breast tissue used as
    a screening tool searching for cancer when there
    are no symptoms of anything being wrong. A
    mammogram detects lumps, changes in breast tissue
    or calcifications when they're too small to be
    found in a physical exam.
  • Abnormal tissue shows up a dense white on
    mammograms.
  • The left scan shows a normal breast while the
    right one shows malignant calcifications.

21
CAD for Lung Cancer
  • Identification of lung nodules in thoracic CT
    scan the identification is complicated by the
    blood vessels
  • Once a nodule has been detected, it may be
    quantitatively analyzed as follows
  • The classification of the nodule as benign or
    malignant
  • The evaluation of the temporal size in the nodule
    size.

22
CAD for Colon Cancer
  • Virtual colonoscopy (CT colonography) is a
    minimally invasive imaging technique that
    combines volumetrically acquired helical CT data
    with advanced graphical software to create two
    and three-dimensional views of the colon.

Three-dimensional endoluminal view of the colon
showing the appearance of normal haustral folds
and a small rounded polyp.
23
Role of Image Analysis Machine Learning for CAD
  • An overall scheme for computed aided diagnosis
    systems

24
SoC Medical imaging research projects
  • 1. Computer-aided characterization for lung
    nodules
  • Goal establish the link between computer-based
    image features of lung nodules in CT scans and
    visual descriptors defined by human experts
    (semantic concepts) for automatic interpretation
    of lung nodules
  • Example This lung nodule has a solid texture
    and has a sharp margin

25
Why computer-aided characterization?
Reader 1 Reader 2
Reader 3 Reader 4
Lobulation4 Malignancy5 highly
suspicious Sphericity2
Lobulation1 marked Malignancy5 highly
suspicious Sphericity4

Lobulation2 Malignancy5 highly
suspicious Sphericity5 round
Lobulation5 none Malignancy5 highly
suspicious Sphericity3 ovoid
  • Ratings and Boundaries across radiologists are
    different!!!

25
26
Computer-aided characterization
  • Research Hypothesis
  • The working hypothesis is that certain
    radiologists assessments can be mapped to the
    most important low-level image features.
  • Methodology
  • new semi-supervised probabilistic learning
    approaches that will deal with both the
    inter-observer variability and the small set of
    labeled data (annotated lung nodules).
  • Our proposed learning approach will be based on
    an ensemble of classifiers (instead of a single
    classifier as with most CAD systems) built to
    emulate the LIDC ensemble (panel) of
    radiologists.

27
Computer-aided characterization (cont.)
  • Expected outcome
  • an optimal set of quantitative diagnostic
    features linked to the visual descriptors
    (semantic concepts).
  • Significance
  • The derived mappings can serve to show
  • the computer interpretation of the corresponding
    radiologist rating in terms of a set of standard
    and objective image features,
  • automatically annotate new images,
  • and augment the lung nodule retrieval results
    with their probabilistic diagnostic
    interpretations.

28
Computer-aided characterization
  • Preliminary results
  • NIH Lung Image Database Consortium (LIDC)
  • 149 distinct nodules from about 85
    cases/patients
  • four radiologists marked the nodules using 9
    semantic characteristics on a scale from 1 to 5
    except for calcification (1 to 6) and internal
    structure (1 to 4)

29
Computer-aided characterization
  • LIDC high level concepts ratings

Characteristic Possible Scores
Margin 1. Poorly Defined 2. . 3. . 4. . 5. Sharp
Sphericity 1. Linear 2. . 3. Ovoid 4. . 5. Round
Spiculation 1. Marked 2. . 3. . 4. . 5. None
Subtlety 1. Extremely Subtle 2. Moderately Subtle 3. Fairly Subtle 4. Moderately Obvious 5. Obvious
Texture 1. Non-Solid 2. . 3. Part Solid/(Mixed) 4. . 5. Solid
Characteristic Possible Scores
Calcification 1. Popcorn 2. Laminated 3. Solid 4. Non-central 5. Central 6. Absent
Internal structure 1. Soft Tissue 2. Fluid 3. Fat 4. Air
Lobulation 1. Marked 2. . 3. . 4. . 5. None
Malignancy 1. Highly Unlikely 2. Moderately Unlikely 3. Indeterminate 4. Moderately Suspicious 5. Highly Suspicious
29
30
Computer-aided characterization
  • Low-level image features

Shape Features Size Features Intensity Features Texture Features
Circularity Area MinIntensity 11 Haralick features calculated from co-occurrence matrices
Roughness ConvexArea Maxintensity 24 Gabor features
Elongation Perimeter SDIntensity 5 Markov Random Field features
Compactness ConvexPerimeter MinIntensityBG  
Eccentricity EquivDiameter MaxIntensityBG  
Solidity MajorAxisLength MeanIntensityBG  
Extent MinorAxisLength SDIntensityBG  
RadialDistanceSD   IntensityDifference  
30
31
Computer-aided characterization
  • Accuracy results

Characteristics Decision trees Add instances predicted with high confidence (60) Add instances predicted with high confidence (60) and instances with low margin (5)
Lobulation 27.44 81.00 69.66
Malignancy 42.22 96.31 96.31
Margin 35.36 98.68 96.83
Sphericity 36.15 91.03 90.24
Spiculation 36.15 63.06 58.84
Subtlety 38.79 93.14 92.88
Texture 53.56 97.10 97.36
Average 38.52 88.62 86.02
31
32
Computer-aided characterization
  • Challenges
  • Small number of training samples and large
    number of features curse of dimensionality
    problem
  • Nodule size
  • Variation in the nodules boundaries
  • Different types of imaging acquisition
    parameters
  • Clinical evaluation observer performance studies
  • require collaboration with medical schools or
    hospitals

33
SoC Medical imaging research projects

-
2. Texture-based Pixel Classification - tissue
segmentation - context-sensitive tools for
radiology reporting

Organ Segmentation
34
Texture-based Pixel Classification
  • Texture Feature extraction consider texture
    around the pixel of interest.
  • Capture texture characteristic based on
  • estimation of joint conditional probability
  • of pixel pair occurrences Pij(d,?).
  • Pij denotes the normalized co-occurrence matrix
    of specify by displacement vector (d) and angle
    (?).

35
Haralick Texture Features
36
Haralick Texture Features
37
Examples of Texture Images
Texture images original image, energy and
cluster tendency, respectively. M. Kalinin, D. S.
Raicu, J. D. Furst, D. S. Channin,, " A
Classification Approach for Anatomical Regions
Segmentation", The IEEE International Conference
on Image Processing (ICIP), Genoa, Italy,
September 11-14, 2005.
38
Texture Classification of Tissues in CT
Chest/Abdomen
Example of Liver Segmentation (J.D. Furst, R.
Susomboon, and D.S. Raicu, "Single Organ
Segmentation Filters for Multiple Organ
Segmentation", IEEE 2006 International Conference
of the Engineering in Medicine and Biology
Society (EMBS'06))
Region growing at 70
Region growing at 60
Segmentation Result
39
Classification models challenges
  • (a) Optimal selection of an adequate set of
    textural features is a challenge, especially with
    the limited data we often have to deal with in
    clinical problems. Consequently, the
    effectiveness of any classification system will
    always be conditional on two things
  • (i) how well the selected features describe the
    tissues
  • (ii) how well the study group reflects the
    overall target patient population for the
    corresponding diagnosis

40
Classification models challenges
  • (b) how other type of information can be
    incorporated into the classification models
  • - metadata
  • - image features from other imaging modalities
    (need of image fusion)
  • (c) how stable and general the classification
    models are

41
Content-based medical image retrieval (CBMS)
systems

-
Definition of Content-based Image
Retrieval Content-based image retrieval is a
technique for retrieving images on the basis of
automatically derived image features such as
texture and shape.
  • Applications of Content-based Image Retrieval
  • Teaching
  • Research
  • Diagnosis
  • PACS and Electronic Patient Records

42
Diagram of a CBIR
http//viper.unige.ch/muellerh/demoCLEFmed/index.
php
43
CBIR as a Diagnosis Aid


An image retrieval system can help when the
diagnosis depends strongly on direct visual
properties of images in the context of
evidence-based medicine or case-based reasoning.

44
CBIR as a Teaching Tool
An image retrieval system will allow
students/teachers to browse available data
themselves in an easy and straightforward fashion
by clicking on show me similar images.
Advantages - stimulate self-learning and a
comparison of similar cases - find optimal cases
for teaching

  • Teaching files
  • Casimage http//www.casimage.com
  • myPACS http//www.mypacs.net

45
CBIR as a Research Tool
  • Image retrieval systems can be used
  • to complement text-based retrieval methods
  • for visual knowledge management whereby the
    images and associated textual data can be
    analyzed together
  • multimedia data mining can be applied to learn
    the unknown links between visual features and
    diagnosis or other patient information
  • for quality control to find images that might
    have been misclassified


46
CBIR as a tool for lookup and reference in CT
chest/abdomen
  • Case Study lung nodules retrieval
  • Lung Imaging Database Resource for Imaging
    Research http//imaging.cancer.gov/programsandres
    ources/Inf ormationSystems/LIDC/page7
  • 29 cases, 5,756 DICOM images/slices, 1,143 nodule
    images
  • 4 radiologists annotated the images using 9
    nodule characteristics calcification, internal
    structure, lobulation, malignancy, margin,
    sphericity, spiculation, subtlety, and texture
  • Goals
  • Retrieve nodules based on image features
  • Texture, Shape, and Size
  • Find the correlations between the image features
    and the radiologists annotations

47
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48
M. Lam, T. Disney, M. Pham, D. Raicu, J. Furst,
Content-Based Image Retrieval for Pulmonary
Computed Tomography Nodule Images, SPIE Medical
Imaging Conference, San Diego, CA, February 2007
49
Retrieved Images
50
CBIR systems challenges
  • Type of features
  • image features
  • - texture features statistical, structural,
    model and filter-based
  • - shape features
  • textual features (such as physician annotations)
  • Similarity measures
  • -point-based and distribution based metrics
  • Retrieval performance
  • precision and recall
  • clinical evaluation

51
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