Claims
- 1. A method for detecting the presence of an abnormality in at least one medical image, comprising:
obtaining image data including pixels of an organ; segmenting the image data into organ image data and non-organ image data; extracting predetermined features from said organ image data to produce a set of image features; comparing said set of image features with a reference set of organ image features derived from known abnormal image data and known normal image data; and producing a comparison result.
- 2. The method of claim 1, wherein said obtaining image data comprises:
obtaining lung image data.
- 3. The method of claim 1, wherein said obtaining image data comprises:
obtaining a high-resolution (HR) computed tomography (CT) image.
- 4. The method of claim 1, wherein said comparing step comprises:
comparing with an artificial neural network (ANN).
- 5. The method of claim 1, wherein said comparing step comprises:
comparing with a Bayesian classifier.
- 6. The method of claim 1, wherein said comparing said set of image features comprises comparing with reference organ features selected from the set consisting of:
a normal opacity; a ground-glass opacity; a reticular/linear opacity; a nodular opacity; a honeycombing pattern; an emphysematous change pattern; and a consolidation pattern.
- 7. The method of claim 1, wherein said comparing said set of image features comprises comparing with each of:
a normal opacity; a ground-glass opacity; a reticular/linear opacity; a nodular opacity; a honeycombing pattern; an emphysematous change pattern; and a consolidation pattern.
- 8. The method of claim 6, wherein said comparing said set of image features comprises comparing with reference organ features selected from the set consisting of:
a non-specific diffuse opacity; and an abnormality including each of
atelectasis, pleural thickening, bronchectasis, pleural effusion, bulla, a focal lung lesion, and an artifact.
- 9. The method of claim 7, wherein said comparing said set of image features comprises comparing with each of:
a non-specific diffuse opacity; and atelectasis; pleural thickening; bronchectasis; pleural effusion; bulla; a focal lung lesion; and an artifact.
- 10. The method of claim 1, wherein said extracting step comprises:
determining at least one measure of gray-level distribution of pixel values in one of a 2D region of interest (ROI) and a 3D volume of interest (VOI); and determining at least one geometric feature.
- 11. The method of claim 10, wherein said determining at least one measure of gray-level distribution comprises:
determining at least one of a mean, a standard deviation, and a fraction of an area with air density components.
- 12. The method of claim 10, wherein said determining at least one measure of gray-level distribution comprises:
determining each of a mean, a standard deviation, and a fraction of an area with air density components.
- 13. The method of claim 11, wherein said determining a fraction of an area with air density components comprises:
determining an area having CT values between −910 and −1000 HU, inclusively.
- 14. The method of claim 10, wherein said determining at least one geometric feature comprises:
determining at least one of a nodular geometric feature, a line geometric feature, and a multi-locular geometric feature.
- 15. The method of claim 10, wherein said determining at least one geometric feature comprises:
determining each of a nodular geometric feature, a line geometric feature, and a multi-locular geometric feature.
- 16. The method of claim 14, wherein said determining a nodular geometric feature comprises:
applying a morphological white top-hat transform to the one of a 2D ROI and a 3D VOI to produce a nodule candidate; and calculating one of a degree of circularity and a degree of sphericity of said nodule candidate to produce a nodule candidate.
- 17. The method of claim 14, wherein said determining a line geometric feature comprises:
applying a morphological white top-hat transform to said one of a 2D ROI and a 3D VOI to produce a nodule candidate; calculating one of a degree of circularity and a degree of sphericity to said nodule candidate to produce a nodule estimate; and applying a gray-level threshold to said nodule estimate to produce a thresholded nodule estimate.
- 18. The method of claim 14, wherein said determining a multi-locular geometric feature comprises:
applying a morphological black top-hat transform to the one of a 2D ROI and a 3D VOI to produce a nodule candidate; and calculating a standard deviation of said nodule candidate.
- 19. The method of claim 10, wherein said determining at least one measure comprises:
determining a measure of gray-level distribution for a first 2D ROI; and determining a measure of gray-level distribution for a second 2D ROI, said second 2D ROI selectively set to be larger than said first 2D ROI.
- 20. The method of claim 10, wherein said determining at least one measure comprises:
determining a measure of gray-level distribution for a first 3D VOI; and determining a measure of gray-level distribution for a second 3D VOI, said second 3D VOI selectively set to be larger than said first 3D VOI.
- 21. The method of claim 10, wherein said 2D region of interest (ROI) comprises:
determining a measure of gray-level distribution for a 16×16 mm ROI; and determining a measure of gray-level distribution for a 48×48 mm ROI.
- 22. The method of claim 4, wherein said comparing with an ANN comprises:
comparing with an ANN having
12 input units, 10 hidden units, and 7 output units.
- 23. The method of claim 10, wherein said pixel values comprise CT values.
- 24. The method of claim 1, wherein said extracting step comprises:
determining at least one feature from a gray-level distribution of pixel values one of in a 2D region of interest (ROI) and a 3D volume of interest (VOI).
- 25. The method of claim 24, wherein said determining step comprises:
determining a measure of gray-level distribution for a first 2D ROI; and determining a measure of gray-level distribution for a second 2D ROI, said second 2D ROI selectively set to be larger than said first 2D ROI.
- 26. The method of claim 24, wherein said determining step comprises:
determining a measure of gray-level distribution for a first 3D VOI; and determining a measure of gray-level distribution for a second 3D VOI, said second 3D VOI selectively set to be larger than said first 3D VOI.
- 27. The method of claim 1, wherein said obtaining step comprises:
obtaining 2D data including data derived from one of an axial plane, a sagittal plane, and a coronal plane.
- 28. The method of claim 1, wherein said obtaining step comprises:
obtaining 3D data including data derived from an axial plane, a sagittal plane, and a coronal plane.
- 29. A system for implementing the method recited in any one of claims 1-28.
- 30. A computer program product storing instructions for execution on a computer system, which when executed by the computer system, causes performance of the method recited in any one of claims 1-28.
Government Interests
[0001] The present invention was made in part with U.S. Government support under USPHS grants CA62625. The U.S. Government may have certain rights to this invention.
Provisional Applications (1)
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Number |
Date |
Country |
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60422473 |
Oct 2002 |
US |