Claims
- 1. A method of providing a three-dimensional image representation of an object, said object capable of detectably attenuating a signal resulting from scanning, comprising:
a. scanning said object with a scanning-medium capable of producing a signal corresponding to a three-dimensional image of said object; and b. obtaining a signal corresponding to said three-dimensional image of said object; and c. supersampling said three-dimensional image signal to a degree greater than the highest spatial frequency of said signal.
- 2. A method as in claim 1 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 3. A method as in claim 1 wherein said scanning-medium is x-ray.
- 4. A method as in claim 1 wherein said supersampling comprises:
a. imposing three-dimensional units of image representation on said three-dimensional image signal, and b. increasing the number of three-dimensional image representation units to reduce contribution of error per unit.
- 5. A method as in claim 1 wherein said supersampling is conducted to produce three-dimensional isotropic space.
- 6. A method as in claim 1 wherein said object is located in a host body.
- 7. A method as in claim 6 wherein said object is a tissue mass.
- 8. A method as in claim 6 wherein said object is a growth.
- 9. A method as in claim 8 wherein said growth is a tumor.
- 10. A method as in claim 6 wherein said object is a pulmonary nodule.
- 11. A method as in claim 10 wherein said nodule is not greater than 10 mm in diameter.
- 12. A method as in claim 4 which further comprises segmenting said object from other structures found proximal to said object and scanned with said object in step “1a”.
- 13. A method as in claim 12 wherein said segmenting comprises subtracting attached structures and other objects from said object.
- 14. A method as in claim 12 wherein said segmenting comprises subtracting said object from adjacent structures and other objects.
- 15. A method as in claim 12 wherein said segmenting further comprises restoring volumetric and surface characteristics of said object.
- 16. An article of manufacture for providing a three-dimensional image representation of an object, said object capable of detectably attenuating a signal resulting from scanning, comprising:
a machine readable-medium containing one or more programs which when executed implement the steps of: a. scanning said object with a scanning-medium capable of producing a signal corresponding to a three-dimensional image of said object; and b. obtaining a signal corresponding to said three-dimensional image of said object; and c. supersampling said three-dimensional image signal to a degree greater than the highest spatial frequency of said signal.
- 17. An article of manufacture as in claim 16 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 18. An article of manufacture as in claim 17 wherein said scanning-medium is x-ray.
- 19. An article of manufacture as in claim 16 wherein said supersampling comprises:
a. imposing three-dimensional units of image representation on said three-dimensional image signal, and b. increasing the number of three-dimensional image representation units to reduce contribution of error per unit.
- 20. A method as in claim 16 wherein said supersampling is conducted to produce three-dimensional isotropic space.
- 21. An article of manufacture as in claim 16 wherein said object is located in a host body.
- 22. An article of manufacture as in claim 21 wherein said object is a tissue mass.
- 23. An article of manufacture as in claim 21 wherein said object is a growth.
- 24. An article of manufacture as in claim 23 wherein said growth is a tumor.
- 25. An article of manufacture as in claim 21 wherein said object is a pulmonary nodule.
- 26. An article of manufacture as in claim 25 wherein said nodule is not greater than 10 mm in diameter.
- 27. An article of manufacture as in claim 20 which further comprises segmenting said object from other structures found proximal said object and scanned with said object in step “16a”.
- 28. An article of manufacture as in claim 27 wherein said segmenting comprises subtracting attached structures and other objects from said object.
- 29. An article of manufacture as in claim 27 wherein said segmenting comprises subtracting said object from adjacent structures and other objects.
- 30. An article of manufacture as in claim 27 wherein said segmenting further comprises restoring volumetric and surface characteristics of said object.
- 31. A system for providing a three-dimensional image representation of an object, said object capable of detectably attenuating a signal resulting from scanning, comprising:
a. a scanner for scanning an object with a scanning-medium capable of producing a signal corresponding to a three-dimensional image of an object; b. a receiver which retrieves said signal for processing; and c. a processor configured to receive said signal from said receiver and supersample said three-dimensional image signal to a degree greater than the highest spatial frequency of said signal.
- 32. A system as in claim 31 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 33. A system as in claim 32 wherein said scanning-medium is x-ray.
- 34. A system as in claim 31 wherein said supersampling of said processor comprises:
a. imposing units of image representation on said three-dimensional image signal, and b. increasing the number of image representation units to reduce contribution of error per unit whereby estimation of object boundary is improved.
- 35. A system as in claim 31 wherein said supersampling is conducted to produce three-dimensional isotropic space.
- 36. A system as in claim 31 wherein said object is located in a host body.
- 37. A system as in claim 36 wherein said object is a tissue mass.
- 38. A system as in claim 36 wherein said object is a growth.
- 39. A system as in claim 38 wherein said growth is a tumor.
- 40. A system as in claim 36 wherein said object is a pulmonary nodule.
- 41. A system as in claim 40 wherein said nodule is not greater than 10 mm in diameter.
- 42. A system as in claim 34 wherein said processor is configured to segment said object from other structures found proximal said object and scanned with said object.
- 43. A system as in claim 42 wherein said segmenting subtracting attached structures and other objects from said object.
- 44. A system as in claim 42 wherein said segmenting subtracting said object from adjacent structures and other objects.
- 45. A system as in claim 42 wherein said segmenting further comprises restoring volumetric and surface characteristics of said object.
- 46. A method for three-dimensional segmentation of a region of interest in a host body to differentiate an object in said region, comprising:
a. scanning said region of interest with a scanning-medium capable of providing a signal corresponding to a three-dimensional representation of said region; b. imposing three-dimensional units of image representation on said three-dimensional signal; c. identifying image representation units as having object signal, background signal, and as boundary units having both object and background signal; d. thresholding to separate background from object image; and e. conducting three-dimensional connected component analysis to identify as images those objects contiguous in three-dimensional space.
- 47. A method as in claim 46 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 48. A method as in claim 46 wherein said scanning-medium is x-ray.
- 49. A method as in claim 46 wherein said thresholding comprises iterative threshold selection.
- 50. A method as in claim 46 wherein said three-dimensional connected component analysis comprises connected component labeling in three dimensions.
- 51. A method as in claim 50 wherein said connected component labeling is selected from one of (i) recursive connected component labeling, and (ii) iterative connected component labeling.
- 52. A method as in claim 50 wherein said connected component analysis further comprises selecting objects based on said connected component labeling.
- 53. A method as in claim 50 which further comprises supersampling in three dimensions said signal corresponding to a three-dimensional representation of said region.
- 54. A method as in claim 50 which further comprises three-dimensional morphologically filtering images identified as a result of steps a-e.
- 55. A method as in claim 54 wherein said filtering comprises three-dimensional opening of said images.
- 56. A method as in claim 55 wherein said opening comprises erosion followed by dilation of said images in three-dimensions.
- 57. A method as in claim 54 which further comprises closing of a three-dimensional region of background signal units resulting from steps a-e.
- 58. A method as in claim 57 wherein said closing comprises a dilation followed by an erosion of said background region in three dimensions.
- 59. A method as in claim 55 which further comprises three-dimensionally regrowing images to approximate original surface characteristics of said images.
- 60. A method as in claim 59 wherein said regrowing comprises iterative constrained dilation in three dimensions.
- 61. A method as in claim 60 wherein the entire morphological filtering process is as follows:
begin with an initial binary image I J=(I⊖Sd)⊕Sd{Perform opening using a spherical kernel Sd of diameter d}Perform connected component analysis, keeping the component of interest while s>=2 {Number of useful dilations}
J=J⊕Ss {Perform dilation using a spherical kernel of diameter s}J=JI {Perform a voxel-by-voxel logical AND}s=s/p {where “p” is a constant greater than 1.0 (does not have to be an integer)}end
- 62. A method as in claim 50 which further comprises eliminating structures adjacent to images of interest.
- 63. A method as in claim 62 wherein said image of interest is a nodule and said structure comprises thoracic components.
- 64. A method as in claim 63 wherein said nodule is a juxtapleural nodule and said structure comprises pleural surface and thoracic wall.
- 65. A method as in claim 62 wherein said eliminating comprises:
i. determining in three dimensions angles describing orientation of the surface of structure to be eliminated; ii. based on the angles found in (i) performing an opening operation to detect a majority of said structure to the exclusion of said image of interest; and iii. three-dimensionally subtracting said structure from said image of interest.
- 66. A method as in claim 65 wherein said determining of step (i) comprises conducting three-dimensional moment analysis.
- 67. A method as in claim 65 which further comprises morphologically filtering in three dimensions said image of interest.
- 68. A method as in claim 65 wherein said eliminating is described as follows:
begin with an initial binary image I, using moments, determine the orientation of the pleural surface, generate a disk-shaped kernel D, oriented parallel to the pleural surface J=(I⊖D)⊕D {Perform morphological opening using D}K=I−J {Perform image subtraction}Continue with iterative morphological filtering.
- 69. A method as in claim 50 which further comprises generating a smoothed surface representation of an image of interest.
- 70. An article of manufacture for three-dimensional segmentation of a region of interest in a host body to differentiate an object in said region, comprising:
a machine readable-medium containing one or more programs which when executed implement the steps of: a. scanning said region of interest with a scanning-medium capable of providing a signal corresponding to a three-dimensional representation of said region; b. imposing three-dimensional units of image representation on said three-dimensional signal; c. identifying image representation units as having object signal, background signal, and as boundary units having both object and background signal; d. thresholding to separate background from object image; and e. conducting three-dimensional connected component analysis to identify as images those objects contiguous in three-dimensional space.
- 71. An article of manufacture as in claim 70 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 72. An article of manufacture as in claim 70 wherein said scanning-medium is x-ray.
- 73. An article of manufacture as in claim 70 wherein said thresholding comprises iterative threshold selection.
- 74. An article of manufacture as in claim 70 wherein said three-dimensional connected component analysis comprises connected component labeling in three dimensions.
- 75. An article of manufacture as in claim 74 wherein said connected component labeling is selected from one of (i) recursive connected component labeling, and (ii) iterative connected component labeling.
- 76. An article of manufacture as in claim 74 wherein said connected component analysis further comprises selecting objects based on said connected component labeling.
- 77. An article of manufacture as in claim 70 which further comprises supersampling in three dimensions said signal corresponding to a three-dimensional representation of said region.
- 78. An article of manufacture as in claim 70 which further comprises three-dimensional morphologically filtering images identified as a result of steps a-e.
- 79. An article of manufacture as in claim 78 wherein said filtering comprises three-dimensional opening of said images.
- 80. An article of manufacture as in claim 79 wherein said opening comprises erosion followed by dilation of said images in three dimensions.
- 81. An article of manufacture as in claim 78 which further comprises closing of a three-dimensional region of background signal units resulting from steps a-e.
- 82. An article of manufacture as in claim 81 wherein said closing comprises a dilation followed by an erosion of said background region in three dimensions.
- 83. An article of manufacture as in claim 79 which further comprises three-dimensionally regrowing images to approximate original surface characteristics of said images.
- 84. An article of manufacture as in claim 83 wherein said regrowing comprises iterative constrained dilation in three dimensions.
- 85. An article of manufacture as in claim 84 wherein the entire morphological filtering process is as follows:
- 86. An article of manufacture as in claim 70 which further comprises eliminating structures adjacent to images of interest.
- 87. An article of manufacture as in claim 86 wherein said image of interest is a nodule and said structure comprises thoracic components.
- 88. An article of manufacture as in claim 87 wherein said nodule is a juxtapleural nodule and said structure comprises pleural surface and thoracic wall.
- 89. An article of manufacture as in claim 86 wherein said eliminating comprises:
i. determining in three dimensions angles describing orientation of the surface of structure to be eliminated; ii. based on the angles found in (i) performing an opening operation to detect a majority of said structure to the exclusion of said image of interest; and iii. three-dimensionally subtracting said structure from said image of interest.
- 90. An article of manufacture as in claim 89 wherein said determining of step (i) comprises conducting three-dimensional moment analysis.
- 91. An article of manufacture as in claim 89 which further comprises morphologically filtering in three dimensions said image of interest.
- 92. An article of manufacture as in claim 89 wherein said eliminating is described as follows:
begin with an initial binary image I, using moments, determine the orientation of the pleural surface, generate a disk-shaped kernel D, oriented parallel to the pleural surface J=(I⊖D)⊕D {Perform morphological opening using D}K=I−J {Perform image subtraction}Continue with iterative morphological filtering.
- 93. An article of manufacture as in claim 70 which further comprises generating a smoothed surface representation of an image of interest.
- 94. A system for three-dimensional segmentation of a region of interest in a host body to differentiate an object in said region, comprising:
a. a scanner which scans said region of interest with a scanning-medium capable of providing a signal corresponding to a three-dimensional representation of said region; and b. a processor configured to
(i) impose three-dimensional units of image representation on said three-dimensional signal; (ii) identify image representation units as having object signal, background signal, and as boundary units having both object and background signal; (iii) threshold to separate background from object image; and (iv) conduct three-dimensional connected component analysis to identify as images those objects contiguous in three-dimensional space.
- 95. A system as in claim 94 wherein said scanning-medium is selected from the group consisting of x-ray, magnetic field, ultrasound, laser, electrical current, visible light, ultraviolet light, infrared light, and radio frequency.
- 96. A system as in claim 94 wherein said scanning-medium is x-ray.
- 97. A system as in claim 94 wherein said threshold comprises iterative threshold selection.
- 98. A system as in claim 94 wherein said three-dimensional connected component analysis comprises connected component labeling in three dimensions.
- 99. A system as in claim 98 wherein said connected component labeling is selected from one of (i) recursive connected component labeling, and (ii) iterative connected component labeling.
- 100. A system as in claim 98 wherein said connected component analysis further comprises selecting objects based on said connected component labeling.
- 101. A system as in claim 94 wherein said processor is further configured to supersampling in three dimensions said signal corresponding to a three-dimensional representation of said region.
- 102. A system as in claim 94 wherein said processor is further configured to three-dimensional morphologically filter said images.
- 103. A system as in claim 102 wherein said processor filters said images by three-dimensional opening of said images.
- 104. A system as in claim 103 wherein said opening comprises erosion followed by dilation of said images in three dimensions.
- 105. A system as in claim 102 wherein said processor is further configured to close a three-dimensional region of background signal units.
- 106. A system as in claim 105 wherein said processor closes said background region by a dilation followed by an erosion of said background region in three dimensions.
- 107. A system as in claim 103 wherein said processor is further configured to three-dimensionally regrow images to approximate original surface characteristics of said images.
- 108. A system as in claim 107 wherein said processor regrows said images by iterative constrained dilation in three dimensions
- 109. A system as in claim 108 wherein said processor is configured to morphologically filter as follows:
- 110. A system as in claim 94 wherein said processor is further configured to eliminate structures adjacent to images of interest.
- 111. A system as in claim 110 wherein said image of interest is a nodule and said structure comprises thoracic components.
- 112. A system as in claim 111 wherein said nodule is a juxtapleural nodule and said structure comprises pleural surface and thoracic wall.
- 113. A system as in claim 110 wherein said processor is configured to eliminate by:
i. determining in three dimensions angles describing orientation of the surface of structure to be eliminated; ii. based on the angles found in (i) performing an opening operation to detect a majority of said structure to the exclusion of said image of interest; and iii. three-dimensionally subtracting said structure from said image of interest.
- 114. A system as in claim 113 wherein said determining further comprises conducting three-dimensional moment analysis.
- 115. A system as in claim 113 wherein said processor is further configured to morphologically filter in three dimensions said image of interest.
- 116. A system as in claim 113 wherein said processor eliminates structures as follows:
begin with an initial binary image I, using moments, determine the orientation of the pleural surface, generate a disk-shaped kernel D, oriented parallel to the pleural surface J=(I⊖D)⊕D {Perform morphological opening using D}K=I−J {Perform image subtraction}Continue with iterative morphological filtering.
- 117. A system as in claim 94 wherein said processor is further configured to generate a smoothed surface representation of an image of interest.
- 118. A method of generating a smoothed surface representation of a three-dimensional voxel representation of a three-dimensional image comprising:
a. segmenting a three-dimensional image to provide a segmented voxelated three-dimensional signal; b. modified tessellating said segmented 3D image to provide a 3D triangulated surface representation; and c. filtering said 3D representation resulting from (b) to smooth said 3D triangulated surface representation.
- 119. A method as in claim 118 wherein said modified tessellating is as follows:
- 120. A method as in claim 118 wherein said filtering comprises signal processing as follows:
- 121. An article of manufacture for generating a smoothed surface representation of a three-dimensional voxel representation of a three-dimensional image comprising:
a machine readable-medium containing one or more programs which when executed implement the steps of: a. segmenting a three-dimensional image to provide a segmented voxelated three-dimensional signal; b. modified tessellating said segmented 3D image to provide a 3D triangulated surface representation; and c. filtering said 3D representation resulting from (b) to smooth said 3D triangulated surface representation.
- 122. An article of manufacture as in claim 121 wherein said modified tessellating is as follows:
- 123. An article of manufacture as in claim 121 wherein said filtering comprises signal processing as follows:
- 124. A system for generating a smoothed surface representation of a three-dimensional voxel representation of a three-dimensional image comprising:
a processor configured to: a. segment a three-dimensional image to provide a segmented voxelated three-dimensional signal; b. tessellate said segmented 3D image to provide a 3D triangulated surface representation; and c. filter said 3D representation resulting from (b) to smooth said 3D triangulated surface representation.
- 125. A system as in claim 124 wherein said processor tessellates as follows:
- 126. A system as in claim 124 wherein said processor filters said 3D representation by signal processing as follows:
- 127. A method of estimating volumetric doubling time (DT) of an object which changes size, said object found in a mammalian host, comprising:
a. obtaining a measurement of a change of a volumetric characteristic of an object in a mammal over a time period, said object characterized as changing in size, over a time period, b. relating said change in said volumetric characteristic found in step (a) to said time period via an exponential size change model; and c. determining an estimated doubling time (DT) by comparing volume change over said time period.
- 128. A method as in claim 122 wherein said measurement is obtained by two three-dimensional volumetric assessments of an existing object at a first time (t1) and again at later second time (t2).
- 129. A method as in claim 128 wherein said exponential size change model is
- 130. A method as in claim 129 wherein said doubling time (DT) is determined as follows:
- 131. A method as in claim 127 which further comprises combining a retardation factor (R) with said standard exponential size change model.
- 132. A method as in claim 127 wherein said measurements are obtained from three-dimensional images provided from signals bearing three-dimensional data produced from scanning said host.
- 133. A method as in claim 132 wherein said image has been supersampled.
- 134. A method as in claim 132 wherein said image has been segmented.
- 135. A method as in claim 132 wherein said image has been supersampled and segmented.
- 136. A method as in claim 132 wherein said host is human and said object is a growth.
- 137. A method as in claim 127 and wherein said growth is a pulmonary nodule.
- 138. A method as in claim 137 wherein said pulmonary nodule is not greater than 10 mm in diameter.
- 139. A method as in claim 137 wherein said measurement of volume change is obtained from an object which is not detected at a first time (t1), but which is detected at a second time(t2).
- 140. A method as in claim 139 which comprises:
(i) defining a minimum-detectable size dimension β; and (ii) calculating doubling time using volume measurement a t2 and a volume measurement derived from said minimum-detectable growth dimension β, and the time period (Δts) between t1 and t2.
- 141. A method as in claim 140 which comprises a determination of doubling time estimation as follows:
- 142. A method as in claim 127 wherein said volumetric characteristic is mean density and said change is change in mean density.
- 143. An article of manufacture for estimating volumetric doubling time (DT) of an object which changes size, said object found in a mammalian host, comprising:
a machine readable-medium containing one or more programs which when executed implement the steps of: a. obtaining a measurement of a change of a volumetric characteristic of an object in a mammal over a time period, said object characterized as changing in size, over a time period, b. relating said change in said volumetric characteristic found in step (a) to said time period via an exponential size change model; and c. determining an estimated doubling time (DT) by comparing volume change over said time period.
- 144. An article of manufacture as in claim 143 wherein said measurement is obtained by two three-dimensional volumetric assessments of an existing object at a first time (t1) and again at later second time (t2).
- 145. An article of manufacture as in claim 144 wherein said exponential size change model is
- 146. An article of manufacture as in claim 145 wherein said doubling time (DT) is determined as follows:
- 147. An article of manufacture as in claim 143 which further comprises combining a retardation factor (R) with said standard exponential size change model.
- 148. An article of manufacture as in claim 143 wherein said measurements are obtained from three-dimensional images provided from signals bearing three-dimensional data produced from scanning said host.
- 149. An article of manufacture as in claim 148 wherein said image has been supersampled.
- 150. An article of manufacture as in claim 148 wherein said image has been segmented.
- 151. An article of manufacture as in claim 148 wherein said image has been supersampled and segmented.
- 152. An article of manufacture as in claim 143 wherein said host is human and said object is a growth.
- 153. An article of manufacture as in claim 143 and wherein said growth is a pulmonary nodule.
- 154. An article of manufacture as in claim 153 wherein said pulmonary nodule is not greater than 10 mm in diameter.
- 155. An article of manufacture as in claim 143 wherein said measurement of volume change is obtained from an object which is not detected at a first time (t1), but which is detected at a second time(t2).
- 156. An article of manufacture as in claim 155 which comprises:
(i) defining a minimum-detectable size dimension β; and (ii) calculating doubling time using volume measurement a t2 and a volume measurement derived from said minimum-detectable growth dimension β, and the time period (Δts) between t1 and t2.
- 157. An article of manufacture as in claim 156 which comprises a determination of doubling time estimation as follows:
- 158. An article of manufacture as in claim 143 wherein said volumetric characteristic is mean density and said change is change in mean density.
- 159. A system for estimating volumetric doubling time (DT) of an object which changes size, said object found in a mammalian host, comprising:
a processor configured to: a. obtain a measurement of a change of a volumetric characteristic of an object in a mammal over a time period, said object characterized as changing in size, over a time period, b. relate said change in said volumetric characteristic found in step (a) to said time period via an exponential size change model; and c. determine an estimated doubling time (DT) by comparing volume change over said time period.
- 160. A system as in claim 159 wherein said processor is further configured to obtain said measurement by two three-dimensional volumetric assessments of an existing object at a first time (t1) and again at later second time (t2).
- 161. A system as in claim 160 wherein said exponential size change model is
- 162. A system as in claim 161 wherein said doubling time (DT) is determined as follows:
- 163. A system as in claim 159 wherein said processor is further configured to combine a retardation factor (R) with said standard exponential size change model.
- 164. A system as in claim 159 wherein said processor is further configured to obtain said measurement from three-dimensional images provided from signals bearing three-dimensional data produced from scanning said host.
- 165. A system as in claim 164 wherein said image has been supersampled.
- 166. A system as in claim 164 wherein said image has been segmented.
- 167. A system as in claim 164 wherein said image has been supersampled and segmented.
- 168. A system as in claim 159 wherein said host is human and said object is a growth.
- 169. A system as in claim 159 wherein said growth is a pulmonary nodule.
- 170. A system as in claim 169 wherein said pulmonary nodule is not greater than 10 mm in diameter.
- 171. A system as in claim 159 wherein said measurement of volume change is obtained from an object which is not detected at a first time (t1), but which is detected at a second time (t2).
- 172. A system as in claim 171 wherein said processor is further configured to:
Government Interests
[0001] The invention was made with government support under R01CA63393 and RO1CA78905 by the National Cancer Institute. The government has certain rights to the invention.
PCT Information
Filing Document |
Filing Date |
Country |
Kind |
PCT/US01/11820 |
4/10/2001 |
WO |
|
Provisional Applications (2)
|
Number |
Date |
Country |
|
60196208 |
Apr 2000 |
US |
|
60253974 |
Nov 2000 |
US |