Image processing device, medical device, and program
10402968 ยท 2019-09-03
Assignee
Inventors
Cpc classification
G01R33/543
PHYSICS
G01R33/5608
PHYSICS
G01R33/5601
PHYSICS
G01R33/5635
PHYSICS
International classification
Abstract
An image processing apparatus comprising an image producing unit 101 for producing an axial image of a body part to be imaged including an aorta and an esophagus; a map generating unit 102 for generating a map M2 for locating a region in which a probability that the aorta lies is high in the axial image; a detecting unit 103 for detecting a temporary position of the aorta based on the map M2; and a deciding unit 104 for making a decision on whether or not the temporary position of the aorta falls within the region of the aorta in the axial image based on a distribution model DM containing information representing a reference position (x.sub.e, y.sub.e) of the esophagus and information representing a range over which the aorta distributes relative to the reference position (x.sub.e, y.sub.e) of the esophagus, and on the map M2.
Claims
1. An image processing apparatus comprising: an image producing unit for producing an image of a body part to be imaged including a first body part and a second body part of a subject; a map generating unit for generating a first map for locating a region in which a probability that said first body part lies is high in said image; a unit for determining a temporary position of said first body part based on said first map; a deciding unit for making a decision on whether or not the temporary position of said first body part falls within the region of said first body part in said image based on a model containing information representing a reference position of said second body part and information representing a range over which said first body part distributes relative to said reference position, and on said first map; a plane calculating unit for calculating a plane longitudinally cutting the first body part; and a display section for displaying the determined first body part in the plane.
2. The image processing apparatus as recited in claim 1, wherein said deciding unit generates a second map based on said model and said first map, said second map being for making said decision.
3. The image processing apparatus as recited in claim 2, wherein said deciding unit generates said second map by multiplying said model by said first map.
4. The image processing apparatus as recited in claim 3, wherein said deciding unit generates said second map by multiplying said distribution model by said first map so that the reference position of said second body part in said distribution model matches the temporary position of said first body part in said map.
5. The image processing apparatus as recited in claim 2, wherein said deciding unit makes the decision on whether or not the temporary position of said first body part falls within the region of said first body part in said image based on a largest one of pixel values in said second map.
6. The image processing apparatus as recited in claim 5, wherein said deciding unit makes the decision on whether or not the temporary position of said first body part falls within the region of said first body part in said image by calculating a threshold for deciding whether said largest value is a small value or a large value, and comparing said threshold with said largest value, wherein the threshold is calculated based on a pixel value of one of a plurality of pixels included in said first map, and wherein said one of the plurality of pixels included in said first map pixel is at the temporary position of said first body part.
7. The image processing apparatus as recited in claim 1, wherein said first body part includes a blood vessel, and said second body part includes an esophagus.
8. A medical apparatus comprising: a scanning section for performing a scan for acquiring data of a body part to be imaged including a first body part and a second body part of a subject; an image producing unit for producing an image of said body part to be imaged based on the data acquired by said scan; a map generating unit for generating a first map for locating a region in which a probability that said first body part lies is high in said image; a unit for determining a temporary position of said first body part based on said first map; and a deciding unit for making a decision on whether or not the temporary position of said first body part falls within the region of said first body part in said image based on a model containing information representing a reference position of said second body part and information representing a range over which said first body part distributes relative to said reference position, and on said first map; a plane calculating unit for calculating a plane longitudinally cutting the first body part; and a display section for displaying the determined first body part in the plane.
9. The medical apparatus as recited in claim 8, wherein said first body part includes a blood vessel, and said second body part includes an esophagus.
10. A magnetic resonance imaging (MRI) method comprising: producing an image of a body part including a first body part and a second body part of a subject; generating a first map for locating a region in which a probability that the first body part lies is high in the image; determining a temporary position of the first body part based on the first map; deciding whether the temporary position of the first body part falls within the region of the first body part in the image based on a model and the first map, wherein the model contains information representing a reference position of the second body part and information representing a range over which the first body part distributes relative to the reference position; calculating a plane longitudinally cutting the first body part; and displaying the determined first body part in the plane.
11. The MRI method as recited in claim 10, wherein deciding whether the temporary position of the first body part falls within the region comprises: generating a second map by multiplying the model by the first map; comparing a largest pixel value in the second map with a threshold; in response to the largest pixel value being smaller than the threshold, deciding that the temporary position falls within the region.
12. The MRI method as recited in claim 11, further comprising: in response to the largest pixel value being larger than the threshold, deciding that the temporary position falls outside of the region; and determining position of a pixel with the largest pixel value as position of the first body part.
13. The MRI method as recited in claim 10, wherein the first body part includes a blood vessel, and the second body part includes an esophagus.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
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DETAILED DESCRIPTION
(26) Now embodiments for practicing the invention will be described hereinbelow, although the present invention is not limited thereto.
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(28) The magnet 2 has a reception space 21 in which a subject 14 is received. Moreover, the magnet 2 has a superconductive coil 22, a gradient coil 23, and an RF coil 24. The superconductive coil 22 applies a static magnetic field, the gradient coil 23 applies a gradient pulse, and the RF coil 24 applies an RF pulse. A permanent magnet may be employed in place of the superconductive coil 22.
(29) The table 3 has a cradle 3a for carrying the subject 14. It is by the cradle 3a that the subject 14 is carried into the reception space 21.
(30) The receive coil 4 is attached to the subject 14. The receive coil 4 receives magnetic resonance signals from the subject 14. The contrast injection apparatus 5 injects a contrast medium into the subject 14.
(31) The MR apparatus 1 further comprises a control section 6, a transmitter 7, a gradient power supply 8, a receiver 9, a processing apparatus 10, a storage section 11, an operating section 12, and a display section 13.
(32) The control section 6 receives from the processing apparatus 10 data containing waveform information, the time for application, etc. of the RF pulse and gradient pulse used in a sequence. The control section 6 then controls the transmitter 7 based on the data for the RF pulse, and controls the gradient power supply 8 based on the data for the gradient pulse. The control section 6 also performs control of the start time for injection of the contrast medium in the contrast injection apparatus 5, control of movement of the cradle 3a, etc. While the control section 6 performs control of the contrast injection apparatus 5, transmitter 7, gradient power supply 8, cradle 3a, etc. in
(33) The transmitter 7 supplies electric current to the RF coil 24 based on the data received from the control section 6. The gradient power supply 8 supplies electric current to the gradient coil 23 based on the data received from the control section 6.
(34) The receiver 9 applies processing, such as demodulation/detection, to magnetic resonance signals received by the receive coil 4, and outputs the resulting signals to the processing apparatus 10. It should be noted that a combination of the magnet 2, receive coil 4, control section 6, transmitter 7, gradient power supply 8, and receiver 9 constitute the scanning section.
(35) The storage section 11 stores therein programs executed by the processing apparatus 10, and the like. The storage section 11 may be a non-transitory storage medium, such as a hard disk or CD-ROM. The processing apparatus 10 loads a program stored in the storage section 11, and operates as a processor executing processing written in the program. By executing processing written in the program, the processing apparatus 10 implements several kinds of units.
(36) Image producing unit 101 produces an image of a body part to be imaged in the subject 14. Map generating unit 102 generates a map for locating a region in which a probability that an aorta lies is high in an image produced by the image producing unit 101. Detecting unit 103 detects a temporary position of the aorta based on the map. Deciding unit 104 decides whether or not the temporary position of the aorta falls within the region of the aorta. Determining unit 105 determines a position of the aorta. Plane calculating unit 106 calculates a plane longitudinally cutting the aorta. Defining unit 107 defines a tracker region for detecting the contrast medium based on information input from the operating section 12.
(37) The MR apparatus 1 comprises a computer including the processing apparatus 10. The processing apparatus 10 implements the image producing unit 101 to defining unit 106, etc. by loading programs stored in the storage section 11. The processing apparatus 10 may implement the image producing unit 101 to defining unit 106 by a single processor, or by two or more processors. Moreover, some of the image producing unit 101 to defining unit 106 may be executed by the control section 6. The programs executed by the processing apparatus 10 may be stored in a single storage section, or separately in a plurality of storage sections. The processing apparatus 10 constitutes the image processing apparatus. Referring back to
(38) The operating section 12 is operated by an operator to input several kinds of information to the computer 8. The display section 13 displays several kinds of information. The MR apparatus 1 is configured as described above.
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(40) The localizer scan LS is a scan for defining a range to be imaged and obtaining an image used for detecting an aorta. Subsequent to the localizer scan LS, the main scan MS is performed.
(41) In the main scan MS, a contrast medium is injected into the subject, and a sequence for detecting the contrast medium from a tracker region (see
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(44) In performing the localizer scan LS, the control section 6 (see
(45) The image producing unit 101 (see
(46) Moreover, slices SL.sub.1 and SL.sub.2 among the slices SL.sub.1 to SL.sub.10 intersect an esophagus. Therefore, the axial images D.sub.1 and D.sub.2 also render cross sections of the esophagus.
(47) The sequence used in the localizer scan LS is designed to inhibit as much as possible echo signals from blood with high flow velocity from being focused. Therefore, the signals from blood with high flow velocity may be fully diminished. Now consider the flow velocity of blood passing through the aorta A, for example: since the flow velocity of blood passing through the aorta A is high, signals from blood in the aorta A may be fully diminished. Therefore, signals from blood in the aorta A in each of the axial images D.sub.1 to D.sub.10 should be ideally fully diminished.
(48) In cardiac systole, however, the flow velocity of blood in the aorta A is reduced, and accordingly, signals from blood in the aorta A cannot be fully diminished depending on timing of data acquisition. Therefore, in practice, axial images D.sub.1 to D.sub.10 may include some images in which signals from blood in the aorta A are not fully diminished.
(49) In
(50) Moreover, in the axial images D.sub.1 and D.sub.2 for the slices intersecting the esophagus, the esophagus is rendered with low signals, as well as the aorta A. After the axial images D.sub.1 to D.sub.10 are produced, the flow goes to Step ST2.
(51) At Step ST2, processing for locating a position of the aorta A is performed on an axial image-by-axial image basis. In the present embodiment, a classifier for identifying the aorta A is used to locate a position of the aorta A. Now a method of creating a classifier will be described below.
(52) A classifier is prepared beforehand prior to imaging of the subject. In the present embodiment, the classifier is created by machine learning. Specifically, training data is prepared, and is learned by machine learning to thereby create a classifier C suitable for detecting the aorta A (see
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(54) For training data V, the training data V is classified into two kinds of training data: training data v.sub.11 to v.sub.1p and training data v.sub.21 to v.sub.2q.
(55) For training data v.sub.11 to v.sub.1p, the training data v.sub.11 to v.sub.1p are defined so that the cross section of the aorta lies in a generally central portion of the rectangular region. The training data v.sub.11 to v.sub.1p are data in which signals from blood in the aorta are fully diminished. The aorta in the training data v.sub.11 to v.sub.1p is represented in black.
(56) For training data v.sub.21 to v.sub.2q, the training data v.sub.21 to v.sub.2q are defined so that the cross section of the aorta lies in a generally central portion of the rectangular region. The training data v.sub.21 to v.sub.2q are data in which signals from blood in the aorta are not fully diminished. The aorta in the training data v.sub.21 to v.sub.2q is represented in gray.
(57) For training data W, the training data W includes training data w.sub.1 to w.sub.s representing signals from tissues other than the aorta. The tissues other than the aorta are the liver and the kidney, for example.
(58) Such training data V and W are prepared, and are learned by machine learning, whereby a classifier C suitable for detecting the aorta from within an axial image is created.
(59) At Step ST2, the thus-created classifier C is used to locate a position of the aorta A. Now Step ST2 will be described below. Step ST2 has Steps ST21 to ST25, which will be described one by one.
(60) At Step ST21, the map generating unit 102 (see
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(62) At Step ST21, first, a region to be searched for searching for the aorta is defined.
(63) After defining the region R.sub.s to be searched, the map generating unit 102 defines a window W around a pixel P.sub.11 at coordinates (x1, y1) in the region R.sub.s to be searched.
(64) After defining the window W, the map generating unit 102 uses the classifier C to determine a pixel value of a pixel Q.sub.11 at coordinates (x1, y1) in the map M1 (see
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(66) In
(67) After the output value OV=OV.sub.11 of the classifier C is obtained, the map generating unit 102 shifts the position of the window W from the pixel P.sub.11 to a next pixel P.sub.21.
(68) Similarly thereafter, the window W is shifted one-pixel by one-pixel, and each time the window W is shifted, the classifier C outputs a value for deciding whether the probability that the aorta A in the axial image D.sub.1 is contained in the window W is high or low based on the data extracted from within the window W.
(69) Similarly thereafter, each time the position of the window W is shifted, an output value OV is output. Since the output value OV of the classifier C can thus be obtained for each pixel in the region R.sub.s to be searched, the map M1 (an example of the first map) may be generated.
(70) At Step ST22, the detecting unit 103 (see
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(72) In detecting a temporary position of the aorta A, the detecting unit 103 locates a position of a pixel having a largest pixel value from within the map M1. In
(73) Referring to the axial image D.sub.1, the pixel P.sub.ij representing the temporary position of the aorta A falls within the region of the aorta. This proves that the position of the aorta A is correctly detected by using the map M1 in
(74) Next, the axial image D.sub.2 is picked up to describe Steps ST21 and ST22.
(75) For the axial image D.sub.2, signals from blood in the aorta are not fully diminished (see
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(78) In the map M2, a pixel value d.sub.rs of a pixel Q.sub.rs in the region R2 of the esophagus at coordinates (x.sub.r, y.sub.s) is larger by d than the pixel value of the pixel Q.sub.ij in the region R1 of the aorta at the coordinates (x.sub.i, y.sub.i). Therefore, the detecting unit 103 detects the position of the pixel P.sub.rs in the axial image D.sub.2 at the coordinates (x.sub.r, y.sub.s) as a temporary position of the aorta A. The pixel P.sub.rs, however, is a pixel lying in the inside of the region of the esophagus E, which proves that the position of the aorta A is not correctly detected. Accordingly, in the present embodiment, after determining the temporary position of the aorta at Step ST22, a decision is made on whether or not the temporary position of the aorta falls within the region of the aorta A at Step ST23. Now a decision method at Step ST23 will be described below.
(79) Step ST23 uses a distribution model representing a range over which the aorta distributes relative to the position of the esophagus to decide whether or not the temporary position of the aorta is an actual position of the aorta A. The distribution model is prepared beforehand prior to imaging of the subject. Now an example of a method of creating the distribution model will be described hereinbelow, and Step ST23 will be specifically described thereafter.
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(81) First, a creator (for example, an image processing specialist) of a distribution model specifies a position of the esophagus and a position of the aorta for each of the images H.sub.1 to H.sub.n. In
(82) The positions e.sub.1 to e.sub.n of the esophagus may be the position of a centroid of the cross section of the esophagus, for example, while the positions a.sub.1 to a.sub.n of the aorta may be the position of a centroid of the cross section of the aorta, for example.
(83) After the positions e.sub.1 to e.sub.n of the esophagus and positions a.sub.1 to a.sub.n of the aorta are specified, images H.sub.1 to H.sub.n are superimposed over one another so that the positions e.sub.1 to e.sub.n of the esophagus in the images H.sub.1 to H.sub.n are overlaid on one another.
(84) In
(85) At Step ST23, the map obtained at Step ST21 is multiplied by the distribution model DM described above to generate a multiplied map, which will be discussed later. Based on the multiplied map, a decision is then made on whether or not the temporary position of the aorta falls within the region of the aorta. By using the distribution model DM to generate a multiplied map, it is possible to decide whether or not the temporary position of the aorta falls within the region of the aorta A regardless of which of the map M1 or M2 is obtained. Now Step ST23 will be specifically described below. In the following description, to clarify a reason why whether or not the temporary position of the aorta falls within the region of the aorta A may be decided based on the multiplied map, the principle of the decision method Step ST23 will be briefly explained before specifically describing Steps ST23a and ST23b included in Step ST23. After explaining the principle of the decision method, Step ST23a and ST23b in Step ST23 will be specifically described.
(86)
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(88) The multiplied map RM1 is rendered in grayscale. A color closer to white indicates a larger pixel value, while a color closer to black indicates a smaller pixel value. In the upper right of the multiplied map RM1 is schematically shown a waveform W11 (solid line) representing the pixel value along line L-L intersecting the region R1 of the aorta in the multiplied map RM1. It should be noted that in
(89) At Step ST23, as described above, the map M1 is multiplied by the distribution model DM so that the coordinates (x.sub.i, y.sub.i) of the pixel Q.sub.ij (temporary position of the aorta) in the map M1 match the coordinates (x.sub.e, y.sub.e) of the pixel G.sub.ee of the esophagus (reference position of the esophagus) in the distribution model DM. In the distribution model DM, pixels in a region above the pixel G.sub.ee (the esophagus) have pixel values close to zero. Therefore, by multiplying the map M1 by the distribution model DM, the pixel Q.sub.ij and pixels in its nearby region in the map M1 come to have small pixel values. The multiplied map RM1 thus has significantly small pixel values as compared with the map M1.
(90) In contrast, when the map M2 obtained from the axial image D.sub.2 is multiplied by the distribution model DM, a multiplied map as described below is obtained (see
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(92) At Step ST23, as described above, the map M2 is multiplied by the distribution model DM so that the coordinates (x.sub.r, y.sub.s) of the pixel Q.sub.rs (temporary position of the aorta) in the map M2 match the coordinates (x.sub.e, y.sub.e) of the pixel G.sub.ee of the esophagus (reference position of the esophagus) in the distribution model DM. In the distribution model DM, pixels in a region above the pixel G.sub.ee (the esophagus) have pixel values close to zero. Therefore, by multiplying the map M2 by the distribution model DM, pixels in the region R2 of the esophagus in the map M2 come to have small pixel values. Moreover, the distribution model DM has large pixel values in a region lower right to the reference position (x.sub.e, y.sub.e) of the esophagus. Therefore, by multiplying the map M2 by the distribution model DM, pixels in the region R1 of the aorta in the map M2 still keep their large values. Thus, as compared with the map M2, the multiplied map RM2 has significantly small values for pixel values in the region R2 of the esophagus E, while it has sufficiently large values for pixel values in the region R1 of the aorta A.
(93) Therefore, when the temporary position of the aorta falls within the region R1 of the aorta (see
(94) Now the flow of Step ST23 for making a decision based on the principle described above will be specifically described below. In the following description, for convenience of explanation, the decision method at Step ST23 wherein the temporary position of the aorta A detected at Step ST22 falls within the region of the aorta A (see
(95) For the decision method at Step ST23 wherein the temporary position of the aorta A detected at Step ST22 falls within the region of the aorta A (see
(96) As described earlier, the multiplied map RM1 has small pixel values. After obtaining the multiplied map RM1, the flow goes to Step ST23b.
(97)
(98) At Step ST23b, first, the deciding unit 104 locates a position of a pixel having a largest pixel value from within the multiplied map RM1. It is assumed here that a pixel Q.sub.mn at coordinates (x.sub.m, y.sub.n) has a largest pixel value d=d.sub.mn. Therefore, the deciding unit 104 identifies the coordinates (x.sub.m, y.sub.n) of the pixel Q.sub.mn as the position of a pixel having a largest pixel value.
(99) After locating the position of the pixel Q.sub.mn, the deciding unit 104 calculates a threshold TH for deciding whether the largest value d.sub.mn is a small value or a large value. The following equation is used here to calculate the threshold TH:
TH=k*d.sub.ijEquation (1)
(100) Symbol d.sub.ij in Equation (1) denotes a largest one of pixel values in the map M1, and a coefficient kin Equation (1) is a value set to satisfy 0<k<1. The threshold TH may be calculated according to Equation (1). It should be noted that k of too large or small value may prevent the threshold TH from being set with an appropriate value. Therefore, the value of k is desirably set so that an appropriate threshold TH may be obtained. An example of k may be k=0.5, for example.
(101) After calculating the threshold TH, the deciding unit 104 compares the largest value d.sub.mn of pixel values in the multiplied map RM1 with the threshold TH to decide whether or not d.sub.mn<TH. When d.sub.mn<TH, d.sub.mn is decided to be small, while when d.sub.mnTH, d.sub.mn is decided to be a large value. In
(102) As described earlier, when the temporary position (x.sub.i, y.sub.j) of the aorta in the map M1 lies within the region R1 of the aorta, the pixel values in the multiplied map RM1 have small values. Therefore, when d.sub.mn<TH, the deciding unit 104 decides that the temporary position (x.sub.i, y.sub.j) of the aorta falls within the region R1 of the aorta. When the temporary position is decided to fall within the region R1 of the aorta, the flow goes to Step ST24. At Step ST24, the determining unit 105 (see
(103) Thus, when the temporary position (x.sub.i, y.sub.j) of the aorta falls within the region of the aorta, the temporary position (x.sub.i, y.sub.j) of the aorta may be determined as an actual position of the aorta.
(104) For the flow of the decision method at Step ST23 wherein the temporary position of the aorta A detected at Step ST22 does not fall within the region of the aorta A (see
(105) As described earlier, in the multiplied map RM2, the pixel values in the region R1 of the aorta keep their large values. After obtaining the multiplied map RM2, the flow goes to Step ST23b.
(106)
(107) After locating the position of the pixel Q.sub.mn, the deciding unit 104 calculates a threshold TH for deciding whether the largest value d.sub.mn is small or large. The following equation is used here to calculate the threshold TH:
TH=k*d.sub.rsEquation (2)
(108) Symbol d.sub.rs in Equation (2) denotes a largest one of pixel values in the map M2, and a coefficient kin Equation (2) is a value set to satisfy 0<k<1. The threshold TH may be calculated according to Equation (2). An example of k may be k=0.5, for example.
(109) After calculating the threshold TH, the deciding unit 104 compares the largest value d.sub.mn of pixel values in the multiplied map RM2 with the threshold TH to decide whether or not d.sub.mn<TH. In
(110) As described earlier, when the temporary position (x.sub.i, y.sub.i) of the aorta in the map M2 does not lie within the region R1 of the aorta, the pixel values in the region R1 of the aorta in the multiplied map RM2 keep their large values. Therefore, when d.sub.mn>TH, the deciding unit 104 decides that the temporary position (x.sub.i, y.sub.j) of the aorta does not fall within the region R1 of the aorta. When the temporary position is decided not to fall within the region R1 of the aorta, the flow goes to Step ST25.
(111) At Step ST25, the determining unit 105 determines the position of the aorta based on the multiplied map RM2 (see
(112)
(113) Thus, even when the temporary position (x.sub.i, y.sub.j) of the aorta does not fall within the region of the aorta, the position (x.sub.m, y.sub.n) of the aorta may be determined.
(114) In the present embodiment, Step ST2 is performed for each of the axial images D.sub.1 to D.sub.10. Therefore, the position of the aorta may be determined for each axial image.
(115) At Step ST3, the plane calculating unit 106 (see
(116) First, the plane calculating unit 106 locates a region of the cross section of the aorta for each axial image based on the positions PA1 to PA10 of the aorta. A segmentation technique such as a Level Set method may be used as a method of locating a region of the cross section of the aorta. After locating the region of the cross section of the aorta, a center of the cross section of the aorta is found. Since the cross section of the aorta A may be considered to have a generally circular shape, the center of the aorta A may be found by regarding the located region as a circle.
(117) After finding the center of the aorta A, the plane calculating unit 106 calculates such a plane that a squared sum of a distance between the position the center of the aorta and the plane is minimized.
(118) At Step ST4, a tracker region for detecting the contrast medium is defined. Now a method of defining a tracker region will be described below.
(119)
(120) After the plane FS is displayed, the operator operates the operating section 12 to input information for defining a tracker region while referring to a positional relationship among organs and the aorta displayed in the plane FS. Once the information has been input, the defining unit 107 (see
(121) At Step ST5, a main scan MS (see
(122) In the present embodiment, a temporary position of the aorta is determined, and then, a distribution model DM is used to generate a multiplied map. A pixel value in the multiplied map is then compared with a threshold TH to decide whether or not the temporary position of the aorta falls within a region of the aorta. When the pixel values in the multiplied map are small, the temporary position of the aorta is decided to fall within the region of the aorta, which proves that the position of the aorta is successfully and correctly detected. On the other hand, when the pixel values in the multiplied map are large, the temporary position of the aorta is decided not to fall within the region of the aorta, which proves that the position of the aorta is wrongly detected. When the position of the aorta is wrongly detected, the position of the aorta may be determined from within the region R1 of the aorta based on the pixel values in the multiplied map. Therefore, by using the distribution model DM to obtain a multiplied map, a correct position of the aorta may be located even when the position of the aorta is wrongly detected.
(123) The present embodiment shows a case in which the esophagus is wrongly detected as an aorta. The present invention, however, may be applied to a case in which an organ, a physical apparatus, or a tissue other than the esophagus is wrongly detected as an aorta. Moreover, while the present embodiment detects the aorta A, the present invention may be applied to a case in which a temporary position of an organ, a physical apparatus, or a tissue other than the aorta A (a temporary position of a vein, for example) is detected.
(124) In the present embodiment, a localizer scan is a 2D scan for obtaining an axial image for each slice. The localizer scan, however, is not limited to the 2D scan, and may be a 3D scan for obtaining a 3D image of a body part to be imaged. From the 3D image of the body part to be imaged obtained by the 3D scan, an axial image at each slice position may be produced, and the processing of determining a position of the aorta may be executed based on these axial images.
(125) While the present embodiment detects a temporary position of the aorta based on an axial image, the temporary position of the aorta may be detected based on an image in a plane other than the axial plane (for example, an oblique plane intersecting the axial plane at an angle).
(126) While in the present embodiment the window W is rectangular, it may have a different shape (an elliptical shape, for example).
(127) The present embodiment addresses a case in which a subject is imaged using a contrast medium. The present invention, however, may be applied to a case in which non-contrast enhanced imaging using no contrast enhancement is performed, insofar as there is a need for determining a temporary position of a body part of interest based on data obtained by imaging, and deciding whether or not the determined temporary position falls within a region of the body part of interest.
(128) While the present embodiment is described with reference to images obtained by an MR apparatus, the present invention may be applied to images obtained by a medical apparatus different from the MR apparatus (a CT apparatus, for example).