System and Method of Identifying a Potential Lung Nodule
First Claim
1. A method of identifying a potential lung nodule, the method embodied in a set of machine-readable instructions executed on a processor and stored on a tangible medium, the method comprising:
- (a) identifying a subregion of a lung on a computed tomography (CT) image;
(b) defining a nodule centroid for a nodule class of pixels and a background centroid for a background class of pixels within the subregion in the CT image based on two or more versions of the CT image;
(c) determining a nodule distance between a pixel and the nodule centroid and a background distance between the pixel and the background centroid;
(d) assigning the pixel to the nodule class or to the background class based on the first and second distances;
(e) storing in a memory the identification of the pixel if assigned to the nodule class; and
(f) analyzing the nodule class to determine the likelihood of each pixel cluster being a true nodule.
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Accused Products
Abstract
A computer assisted method of detecting and classifying lung nodules within a set of CT images to identify the regions of the CT images in which to search for potential lung nodules. The lungs are processed to identify a subregion of a lung on a CT image. The computer defines a nodule centroid for a nodule class of pixels and a background centroid for a background class of pixels within the subregion in the CT image; and determines a nodule distance between a pixel and the nodule centroid and a background distance between the pixel and the background centroid. Thereafter, the computer assigns the pixel to the nodule class or to the background class based on the first and second distances; stores the identification in a memory; and analyzes the nodule class to determine the likelihood of each pixel cluster being a true nodule.
82 Citations
18 Claims
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1. A method of identifying a potential lung nodule, the method embodied in a set of machine-readable instructions executed on a processor and stored on a tangible medium, the method comprising:
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(a) identifying a subregion of a lung on a computed tomography (CT) image; (b) defining a nodule centroid for a nodule class of pixels and a background centroid for a background class of pixels within the subregion in the CT image based on two or more versions of the CT image; (c) determining a nodule distance between a pixel and the nodule centroid and a background distance between the pixel and the background centroid; (d) assigning the pixel to the nodule class or to the background class based on the first and second distances; (e) storing in a memory the identification of the pixel if assigned to the nodule class; and (f) analyzing the nodule class to determine the likelihood of each pixel cluster being a true nodule. - View Dependent Claims (2, 3, 4, 5, 6, 7, 8, 9)
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10. A lung nodule detection system comprising:
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identification means for identifying a subregion of a lung on a computed tomography (CT) image; means for defining a nodule centroid for a nodule class of pixels and a background centroid for a background class of pixels within the subregion in the CT image based on two or more versions of the CT image; determining means for determining a nodule distance between a pixel and the nodule centroid and a background distance between the pixel and the background centroid; means for assigning the pixel to the nodule class or to the background class based on the first and second distances by determining a similarity measure from the nodule distance and the background distance and comparing the similarity measure to a threshold; means for storing in a memory the identification of the pixel if assigned to the nodule class; and means for analyzing the nodule class to determine the likelihood of each pixel cluster being a true nodule. - View Dependent Claims (11, 12, 13, 14, 15)
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16. A method of identifying a potential lung nodule, the method embodied in a set of machine-readable instructions executed on a processor and stored on a tangible medium, the method comprising:
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(a) identifying a subregion of a lung on a computed tomography (CT) image; (b) defining a nodule centroid for a nodule class of pixels and a background centroid for a background class of pixels within the subregion in the CT image based on the CT image and a filtered version of the CT image;
wherein the filtered version of the CT image is selected from the group of filtered image scans consisting of;
a median filter, a gradient filter, and a maximum intensity projection filter.(c) determining a nodule distance between a pixel and the nodule centroid and a background distance between the pixel and the background centroid; (d) assigning the pixel to the nodule class or to the background class based on the first and second distances; (e) storing in a memory the identification of the pixel if assigned to the nodule class; (f) redefining the nodule centroid and the background centroid after each pixel in the region of interest has been assigned to the nodule class or to the background class and repeating (c) and (d) for each pixel in the region of interest; and (g) analyzing the nodule class to determine the likelihood of each pixel cluster being a true nodule. - View Dependent Claims (17, 18)
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Specification