METHOD ADAPTED TO DIAGNOSE AIRWAY OBSTRUCTION AND SYSTEM THEREOF
20170365052 · 2017-12-21
Assignee
Inventors
- Argon CHEN (Taipei City, TW)
- Yi-li LEE (Taipei City, TW)
- Chun-Hsiang YANG (Taipei City, TW)
- Edward Chia-Hao LIU (Taipei City, TW)
Cpc classification
A61B8/4483
HUMAN NECESSITIES
A61B8/5223
HUMAN NECESSITIES
A61B8/483
HUMAN NECESSITIES
A61B8/4461
HUMAN NECESSITIES
G16H50/30
PHYSICS
International classification
Abstract
A method adapted to diagnose airway obstruction in a subject is disclosed. The method comprises the following steps: providing plural cross-sectional ultrasound images of a region of the respiratory tract during the subject's normal breathing, wherein each ultrasound image has plural pixels and each pixel has a color scale value; selecting a region of interest in each ultrasound image; calculating a respective first statistic value. The pixels in each of the region of interest are identified to define a respective airspace region by the color scale values larger than or equal to the respective first statistic value. A respective width of the respiratory tract is calculated and based on the distribution of the pixels in the respective airspace region. The status about an airway obstruction in the subject is classified according to the second statistic value obtained by the calculation of the widths of the respiratory tract.
Claims
1. A computer-implemented method for determining a width of a respiratory tract, comprising: providing an ultrasound image of a region from the respiratory tract, the ultrasound image having a plurality of pixels, and each pixel having a color scale value; selecting a region of interest in the ultrasound image, and calculating a first statistic value of color scale value of the pixels therein; identifying pixels in the region of interest which have a color scale value larger than or equal to the first statistic value to define an airspace region; and calculating a width of the respiratory tract based on the distribution of the pixels in the airspace region.
2. The method of claim 1, wherein the ultrasound image is a plurality of cross-sectional images of said region of the respiratory tract from a plurality of respective sectioning angles.
3. The method of claim 2, wherein said region of the respiratory tract is a retro-glossal region or a retro-palatal region of the respiratory tract.
4. The method of claim 1, wherein the first statistic value is a sum of a measure of location (ML) of the plurality of color scale values plus a constant multiplied by a measure of dispersion (MD), and satisfies the following condition:
ML+a*MD.
5. A system for determining a width of a respiratory tract, comprising: an ultrasound imaging device for collecting an ultrasound image of a region of the respiratory tract, the ultrasound image having a plurality of pixels, and each pixel having a color scale value; and a computing device coupled to the ultrasound imaging device, comprising: an input module for receiving the ultrasound image, allowing a user to select a region of interest, and calculating a first statistic value of color scale value of the pixels therein; a classifier module for identifying pixels in the region of interest which have a color scale value larger than or equal to the first statistic value to define an airspace region, and for calculating a width of the respiratory tract based on the distribution of the pixels in the airspace region; and an output module for outputting the width of the respiratory tract and displaying the ultrasound image.
6. The system of claim 5, wherein the ultrasound imaging device is a 2D ultrasonic probe or a 3D ultrasonic probe, and the ultrasound image is obtained by parallel scanning, fan-like scanning, or free-surface scanning.
7. A method adapted to diagnose airway obstruction in a subject, comprising: a. providing a plurality of cross-sectional ultrasound images of a region of the respiratory tract during the subject's normal breathing, each ultrasound image having a plurality of pixels, and each pixels having a color scale value; b. selecting a region of interest in each ultrasound image, and calculating a respective first statistic value of color scale value of the pixels therein; c. identifying pixels in each the region of interest which have a color scale value larger than or equal to the respective first statistic value to define a respective airspace region; d. calculating a respective width of the respiratory tract based on the distribution of the pixels in the respective airspace region; e. calculating a second statistic value of the widths of the respiratory tract; and f. classifying the status about an airway obstruction in the subject based on the second statistic value.
8. The method of claim 7, wherein the plurality of cross-sectional ultrasound images are a plurality of cross-sectional images of said region of the respiratory tract from a plurality of respective sectioning angles.
9. The method of claim 7, wherein said region of the respiratory tract is a retro-glossal region or a retro-palatal region of the respiratory tract.
10. The method of claim 7, wherein the first statistic value is a sum of a measure of location (ML) of the plurality of color scale values plus a constant multiplied by a measure of dispersion MD, and satisfies the following condition:
ML+a*MD.
11. The method of claim 7, wherein the second statistic value is selected from the group consisting of a measure of dispersion and a measure of location.
12. The method of claim 7, further comprising: g. repeating the steps a through f to obtain a third statistic value during the subject is asked to breathe in a specific manner; and h. determining whether the subject has an airway obstruction by comparing the second statistic value and the third statistic value.
13. The method of claim 12, wherein the specific manner is a tidal breathing method, a forced inspiration, or a Muller maneuver.
14. A system adapted to diagnose airway obstruction in a subject, comprising: an ultrasound imaging device for obtaining an ultrasound image of a region of the respiratory tract, the ultrasound image having a plurality of pixels, and each pixel having a color scale value; a first computing device coupled to the ultrasound imaging device, comprising: an input module for receiving the ultrasound image, allowing a user to select a region of interest, and calculating a first statistic value of color scale value of the pixels therein; a classifier module for identifying pixels in the region of interest which have a color scale value larger than or equal to the first statistic value to define an airspace region, and for calculating a width of the respiratory tract based on the distribution of the pixels in the airspace region; and an output module for outputting the width of the respiratory tract and displaying the ultrasound image; a second computing device coupled to the first computing device, for calculating a second statistic value of the widths of the respiratory tract; and an identifying device coupled to the second computing device and adapted to classify the status about an airway obstruction in the subject.
15. The system of claim 14, wherein the ultrasound imaging device is a 2D ultrasonic probe or a 3D ultrasonic probe, and the ultrasound image is obtained by parallel scanning, fan-like scanning, or free-surface scanning.
16. The system of claim 14, further comprising a determining device coupled to the identifying device, for determining whether the subject has an airway obstruction by comparing the second statistic value and a third statistic value which are calculated by the second computing device.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0014] The foregoing summary, as well as the following detailed description of the invention, will be better understood when read in conjunction with the appended drawing. In the drawings:
[0015]
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[0022]
DESCRIPTION OF THE INVENTION
[0023] Unless defined otherwise, all technical and scientific terms used herein have the same meaning as commonly understood by a person skilled in the art to which this invention belongs.
[0024] As used herein, the singular form's “a”, “an”, and “the” include plural referents unless the context clearly dictates otherwise. Thus, for example, reference to “a sample” includes a plurality of such samples and equivalents thereof known to those skilled in the art.
[0025] As used herein the term “Measure of Location (ML)” refers to an average value of an interval value. It is an appropriate value which represents whole data of the interval, which may be an arithmetic mean value, a statistical percentile value, a geometric mean value, a harmonic mean value, a median value, a mode value, a weighted arithmetic mean or other measures used for representing a value of central tendency. According to the embodiment of the present invention, ML is a value selected from the group consisting of a mode value, a statistical percentile value, an average value and other measures used for representing value of central tendency.
[0026] The term “Measure of Dispersion (MD)” as used herein refers to a statistical characteristic which denotes the extent of distribution set of data. It is also called “dispersion”. MD is categorized into a dispersion variation and a non-dispersion variation. According to the embodiment of the present invention, MD is a value selected from the group consisting of a standard deviation, a whole range and other measures used for representing value of central dispersion.
[0027] The disclosure provides a computer-implemented method for determining a width of a respiratory tract and a method adapted to diagnose airway obstruction in a subject in need thereof. The methods are applied to an ultrasonic sensing device. Moreover, the methods are applied to a computer or a microprocessor which is connected to the ultrasonic sensing devices for collecting and saving image data. Additionally, the methods are programmable and saved in a recording media with micro processing unit, or a device with the recording media. The device is, but not limited to, a hard disc, floppy disc, a compact disc, a magneto-optical device, an integrated circuit (IC) chip, or a random access memory.
[0028] Please refer to
[0029] Referring to
[0030] As shown in
[0031] As shown in
[0032] In a specific embodiment of the invention, the first statistic value is a sum of a measure of location (ML) of the color scale values plus a constant multiplied by a measure of dispersion (MD). Namely, the first statistic value satisfies the following condition:
ML+a*MD.
[0033] The MD is selected from the group consisting of a standard deviation, a whole range and other dispersion values. The ML is selected from the group consisting of a mode value, a statistical percentile value, an average value or other location dispersion. The constant a is, but not limited to, a positive number, and representing a value of central dispersion, which is selected by medical personnel.
[0034] Please refer to
[0035] The computing device 320 is coupled to the ultrasound imaging device 310. Furthermore, the ultrasound imaging device 310 comprises an input module 321, a classifier module 322 and an output module 323. In one embodiment, the computing device 320 is, but not limited to, a computer or a handheld device. Preferably, the computing device 320 is a computer with a memory and a central processing unit (CPU). A proper program is installed in the memory to operate the computer-implemented method with the CPU.
[0036] The input module 321 of the computing device 320 is used for receiving the ultrasound image. A user is allowed to input a command to select a region of interest. Additionally, the input module 321 is used for calculating a respective first statistic value of the color scale values of the pixels. In one embodiment, the input module 321 is a signal input terminal of the computing device 320. The input module 321 is wiredly or wirelessly connected to the ultrasound imaging device 310. For example, the input module 321 is, but not limited to, a touch screen or a mouse.
[0037] The classifier module 322 is used for identifying the pixels in the region of interest which have a color scale value larger than or equal to the first statistic value, to define an airspace region. Additionally, the classifier module 322 is for calculating a width of the respiratory tract based on the distribution of the pixels in the airspace region. In one embodiment, the classifier module 322 is, but not limited to, a CPU.
[0038] The output module 323 is used for outputting the width of the respiratory tract and displaying the ultrasound image. The ultrasound image has the region of interest, the airspace region and a non-airspace region. In one embodiment, the output module 323 is a signal output terminal of the computing device 320 and wiredly or wirelessly connected to a storage device or an output interface. For example, the output module 323 is, but not limited to, a touch screen.
[0039] Please refer to
[0040] Additionally, the method for diagnosing airway obstruction comprises the following step. A third statistic value is obtained by repeating the steps S3020 through S3060 during the subject is asked to breathe in a specific manner. Whether the subject has an airway obstruction or not is determined by comparing the second statistic value and the third statistic value determines.
[0041] Please refer to
[0042] Similarly, as shown in
[0043] In one embodiment, the statistic values are obtained by the subject being asked to breathe normally are compared to the statistic values obtained by the subject being asked to breathe in a specific manner, to determine whether the subject has an airway obstruction or not. In a specific embodiment, a second statistic value and a third statistic value are obtained by measuring the width of the respiratory tracts. Then, the compared values are obtained by comparing those two values (e.g. subtracting or dividing those two values) to confirm if the subject has an airway obstruction.
[0044] In one embodiment, the ultrasound image is collected by the ultrasound imaging device, and the respective first statistic value is a sum of the ML plus the constant multiplied by the MD. In one embodiment, the ML is an arithmetic mean value of the color scale values in the region of interest, and the constant a is equal to 1. Namely, the respective first statistic value satisfies the following condition:
ML+1*MD.
[0045] Please refer to
[0046] For example, the compared values of the S-OSA patient are larger than a first threshold 710. The compared values of the M-OSA patient are between the first threshold 710 and a second threshold 720. Additionally, the compared values of the N-OSA patient are less than the second threshold 720.
[0047] Referring to
[0048] The first computing device 420 is coupled to the ultrasound imaging device 410. Furthermore, the ultrasound imaging device 410 comprises an input module 421, a classifier module 422 and an output module 423. In one embodiment, the first computing device 420 is, but not limited to, a computer or a handheld device. Preferably, the first computing device 420 is a computer with a memory and a central processing unit (CPU). A proper program is installed in the memory to operate the computer-implemented method with the CPU.
[0049] The input module 421 of the first computing device 420 is used for receiving the ultrasound image. A user is allowed to input a command to select a region of interest. Additionally, the input module 421 is used for calculating a respective first statistic value of the color scale values of the pixels. In one embodiment, the input module 421 is a signal input terminal of the first computing device 420. The input module 421 is wiredly or wirelessly connected to the ultrasound imaging device 410. For example, the input module 421 is, but not limited to, a touch screen or a mouse.
[0050] The classifier module 422 is used for identifying the pixels in the region of interest which have a color scale value larger than or equal to the respective first statistic value, to define a respective airspace region. Additionally, the classifier module 422 is for calculating a respective width of the respiratory tract based on the distribution of the pixels in the respective airspace region. In one embodiment, the classifier module 422 is, but not limited to, a CPU.
[0051] The output module 423 is used for outputting the respective width of the respiratory tract and displaying the ultrasound image. The ultrasound image has the region of interest, the respective airspace region and a non-airspace region. In one embodiment, the output module 423 is a signal output terminal of the first computing device 420 and wiredly or wirelessly connected to a storage device or an output interface. For example, the output module 423 is, but not limited to, a touch screen.
[0052] The second computing device 430 is coupled to the first computing device 420, for calculating a second statistic value of the widths of the respiratory tract. The identifying device 440 is coupled to the second computing device 430. Moreover, the identifying device 440 is adapted to classify the status about an airway obstruction in the subject.
[0053] In one embodiment, the system further comprises a determining device (not shown in figures). The determining device is coupled to the identifying device 440. When the second statistic value and a third statistic value are calculated and obtained by measuring the width of the respiratory tracts, the determining device is adapted to determine whether the subject has an airway obstruction by comparing the second statistic value and the third statistic value which are calculated by the second computing device. For example, compared values are obtained by comparing the second statistic value and the third statistic value (e.g. subtracting or dividing those two values) to confirm if the subject has an airway obstruction.
[0054] In prior art, there is no accurate method of diagnosing the airway obstruction. Therefore, the disclosure provides the computer-implemented method for determining the width of the respiratory tract and system thereof. Since the width of the respiratory tract is determined according to the quantitative analysis of the ultrasound image, the manual error can be reduced. Additionally, the disclosure provides the method for diagnosing airway obstruction based on the width of the respiratory tract, and comparing the different statistic values to determine whether the subject has an airway obstruction or not.
[0055] It is believed that a person of ordinary knowledge in the art can utilize the present invention to its broadest scope based on the descriptions herein with no need of further illustration. Therefore, the descriptions and claims only serve as an illustration, instead of limitation of the present invention.