Automated uncertainty estimation of lesion segmentation
US-2020302596-A1 · Sep 24, 2020 · US
US11717183B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11717183-B2 |
| Application number | US-202117144786-A |
| Country | US |
| Kind code | B2 |
| Filing date | Jan 8, 2021 |
| Priority date | Mar 20, 2014 |
| Publication date | Aug 8, 2023 |
| Grant date | Aug 8, 2023 |
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A method for automatic identification of a measurement item is provided. The method comprises acquiring, via an image acquisition module, gray values of pixels of a specified section image corresponding to ultrasonic echoes generated by reflection of ultrasound waves by a tissue under examination; identifying, via an identification module, at least one measurement item corresponding to the specified section image based on the gray values of the pixels; and measuring, via a measuring module, a measurement item parameter of the specified section image based on the measurement item identified. Because the measurement item of a specified section image can be automatically identified based on the content thereof, the user does not need to move a trackball to select measurement items, and therefore efficiency is increased.
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What is claimed is: 1. A method for automatic identification of a measurement item, comprising: acquiring gray values of pixels of a specified section image, wherein the gray values of the pixels correspond to ultrasound echoes generated by reflection of ultrasound waves by a tissue under examination; automatically determining a section type of the specified section image based on one or more characteristics defined by the gray values of the pixels, the section type identifying a particular section of a particular area of the tissue from which the specified section image was acquired, wherein the determined section type is a head circumference section which contains a skull of a fetus, an abdominal circumference section which contains an abdomen of a fetus or a femur section which contains a thigh bone of a fetus; obtaining a correspondence between the section type and one or more measurement items which are measurable in an image of the section type; automatically identifying at least one measurement item which is measurable in the specified section image according to the correspondence and the section type of the specified section image; and obtaining a value of the identified at least one measurement item according to the specified section image. 2. The method of claim 1 , wherein the measurement item is identified based on a comparative analysis of the gray values of the pixels with a preset data model. 3. The method of claim 2 , further comprising acquiring a measuring mode used during tissue examination. 4. The method of claim 1 , wherein automatically determining the section type of the specified section image based on the one or more characteristics defined by the gray values of the pixels comprises: generating a characteristic of the specified section image based on the gray values of the pixels of the specified section image; comparing the characteristic of the specified section image with characteristics of training samples in a preset training sample model, respectively; and searching a training sample whose characteristic is most similar to the characteristic of the specified section image and determining a section type of the training sample searched out as the section type of the specified section image. 5. The method of claim 3 , wherein automatically determining the section type of the specified section image based on the one or more characteristics defined by the gray values of the pixels comprises: extracting a high intensity portion from the specified section image based on the gray values of the pixels of the specified section image; and performing an identification on the high intensity portion based on the measuring mode to determine the section type of the specified section image. 6. The method of claim 1 , wherein obtaining the value of the identified at least one measurement item comprises obtaining the value of the identified at least one measurement item manually, semi-automatically or automatically. 7. The method of claim 1 , wherein the particular section of the section type corresponds to a direction along which a desired section image is acquired from the particular area of the tissue. 8. The method of claim 1 , wherein automatically determining the section type of the specified section image based on the one or more characteristics defined by the gray values of the pixels comprises: extracting section type characteristics of the specified section image based on which one section type is distinguished with another section type; and determining the section type of the specified section imaged based on the extracted section type characteristics. 9. The method of claim 1 , wherein the one or more characteristics defined by the gray values of the pixels are a shape, a brightness range or a size define by the gray values of the pixels. 10. A method for automatic identification of a measurement item, comprising: acquiring gray values of pixels of a specified section image, wherein the gray values of the pixels correspond to ultrasound echoes generated by reflection of ultrasound waves by a tissue under examination; automatically identifying at least one measurement item which is measurable in the specified section image; determining an object corresponding to the identified at least one measurement item in the specified section image, wherein determining the object corresponding to the identified at least one measurement item in the specified section image comprises: automatically determining the object corresponding to the identified at least one measurement item in the specified section image; or detecting a trace operation of an operator on the specified section image, and determining the object corresponding to the identified at least one measurement item in the specified section image according to the detected trace operation; and obtaining a value of the identified at least one measurement item by performing a measurement on the determined object. 11. The method of claim 10 , wherein automatically identifying the at least one measurement item which is measurable in the specified section image comprises: generating a characteristic of the specified section image based on the gray values of the pixels of the specified section image; comparing the characteristic of the specified section image with characteristics of training samples in a preset training sample model, respectively; and searching a training sample whose characteristic is most similar to the characteristic of the specified section image and outputting a measurement item corresponding to the training sample searched out as the at least one measurement item which is measurable in the specified section image. 12. The method of claim 11 , wherein the characteristic of the specified section image comprises an eigenvalue or an eigenvector calculated based on the values of the pixels. 13. The method of claim 10 , wherein obtaining the value of the identified at least one measurement item comprises obtaining the value of the identified at least one measurement item manually, semi-automatically or automatically. 14. A method for automatic identification of a measurement item, comprising: acquiring gray values of pixels of a specified section image, wherein the gray values of the pixels correspond to ultrasound echoes generated by reflection of ultrasound waves by a tissue under examination; automatically identifying at least one measurement item which is measurable in the specified section image, wherein automatically identifying the at least one measurement item which is measurable in the specified section image comprises: generating a characteristic of the specified section image based on the gray values of the pixels of the specified section image, wherein the characteristic of the specified section image comprises an eigenvalue or an eigenvector calculated based on the gray values of the pixels; comparing the characteristic of the specified section image with characteristics of training samples in a preset training sample model, respectively; and searching a training sample whose characteristic is most similar to the characteristic of the specified section image and outputting a measurement item corresponding to the training sample searched out as the at least one measurement item which is measurable in the specified section image; determining an object corresponding to the identified at least one measurement item in the specified section image; and obtaining a value of the identified at least one measurement item by performing a measurement on the determined object.
for measuring dimensions by non-invasive methods, e.g. for determining thickness of tissue layer (A61B8/0858 takes precedence) · CPC title
involving training the classification device · CPC title
Clinical applications (A61B8/02, A61B8/04, A61B8/06 take precedence) · CPC title
involving foetal diagnosis; pre-natal or peri-natal diagnosis of the baby · CPC title
for diagnosis of bone · CPC title
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