Method and system for machine learning based assessment of fractional flow reserve

US9700219B2 · US · B2

Patent metadata
FieldValue
Publication numberUS-9700219-B2
Application numberUS-201414516163-A
CountryUS
Kind codeB2
Filing dateOct 16, 2014
Priority dateOct 17, 2013
Publication dateJul 11, 2017
Grant dateJul 11, 2017

How to read this patent

A practical reading order for non-experts. Skip the full description unless you need deep technical detail.

  1. Title

    What the patent document calls the invention.

  2. Abstract

    A short plain-language summary of the technical disclosure.

  3. Assignees and inventors

    Who owns or filed the patent and who is credited as inventor.

  4. Key dates

    Filing, priority, publication, and grant dates set the timeline.

  5. First independent claim

    The legal scope of protection — read this for what is actually claimed.

  6. CPC / IPC classifications

    Technology tags used to group this patent with similar filings.

  7. Citations and related patents

    Prior art links and similar publications in this corpus.

Abstract

Official abstract text for this publication.

A method and system for determining fractional flow reserve (FFR) for a coronary artery stenosis of a patient is disclosed. In one embodiment, medical image data of the patient including the stenosis is received, a set of features for the stenosis is extracted from the medical image data of the patient, and an FFR value for the stenosis is determined based on the extracted set of features using a trained machine-learning based mapping. In another embodiment, a medical image of the patient including the stenosis of interest is received, image patches corresponding to the stenosis of interest and a coronary tree of the patient are detected, an FFR value for the stenosis of interest is determined using a trained deep neural network regressor applied directly to the detected image patches.

First claim

Opening claim text (preview).

The invention claimed is: 1. A method for determining fractional flow reserve (FFR) for a stenosis of interest for a patient, comprising: receiving a medical image of the patient including the stenosis of interest; detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient; and determining an FFR value for the stenosis of interest using a trained deep neural network regressor applied directly to the detected image patches without first extracting features from the medical image, wherein the trained deep neural network regressor is trained using a first set of training image patches without corresponding FFR values to train weights of layers other than a final layer of the deep neural network regressor and a second set of training image patches including identified stenosis image patches and corresponding FFR values to refine the weights of all layers including the final layer of the deep neural network regressor. 2. The method of claim 1 , wherein detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient comprises: detecting image patches corresponding to the stenosis of interest, coronary ostia, coronary vessels, and coronary bifurcation and trifurcations. 3. The method of claim 1 , wherein detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient comprises: detecting the image patches in a series of marginal parameter spaces using a respective trained deep neural network for each of the marginal parameter spaces. 4. The method of claim 3 , wherein the series of marginal parameter spaces comprises a position parameter space, a position-orientation parameter space, and a position-orientation-scale parameter space. 5. The method of claim 3 , wherein the respective trained deep neural network for each of the marginal parameter spaces comprises a deep neural network regressor trained that inputs hypotheses in the respective parameter space and for each hypothesis, outputs a displacement vector that provides a prediction for an image patch in the respective parameter space. 6. The method of claim 3 , wherein the respective trained deep neural network for each of the marginal parameter spaces comprises a discriminative deep neural network that inputs hypotheses in the respective parameters space, and for each hypothesis outputs a probability for the image patch corresponding to the hypothesis. 7. The method of claim 3 , wherein the respective deep neural network for each of the marginal parameter spaces is a deep multi-layer neural network trained using one of a convolutional neural network (CNN), a stacked restricted Boltzmann machine (RBM), or a stacked auto-encoder (AE). 8. The method of claim 1 , wherein the trained deep neural network regressor is a deep neural network with a plurality of layers and the final layer calculates a stenosis specific FFR value. 9. The method of claim 8 , wherein the trained deep neural network is trained by tuning weights for each layer other than the final layer using the first set of training image patches without corresponding FFR values using restricted Boltzmann machines (RBM) contrastive divergences or Auto-encoders algorithms and then refining the weights for each layer including the final layer based on the second set of training image patches with corresponding FFR values using gradient descent back-propagation. 10. The method of claim 1 , wherein the trained deep neural network regressor includes a first hidden layer at which learned weights map raw image data from the detected image patches to a first set of latent variables, a second hidden layer at which learned weights map the first set of latent variables to a second set of latent variables, a third hidden layer at which learned weights map the second set of latent variables to a third set of latent variables, and the final layer at which learned weights map the third set of latent variables to a stenosis specific FFR value. 11. An apparatus for determining fractional flow reserve (FFR) for a stenosis of interest for a patient, comprising: a processor; and a memory storing computer program instructions, which when executed by the processor cause the processor to perform operations comprising: receiving a medical image of the patient including the stenosis of interest; detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient; and determining an FFR value for the stenosis of interest using a trained deep neural network regressor applied directly to the detected image patches without first extracting features from the medical image, wherein the trained deep neural network regressor is trained using a first set of training image patches without corresponding FFR values to train weights of layers other than a final layer of the deep neural network regressor and a second set of training image patches including identified stenosis image patches and corresponding FFR values to refine the weights of all layers including the final layer of the deep neural network regressor. 12. The apparatus of claim 11 , wherein detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient comprises: detecting image patches corresponding to the stenosis of interest, coronary ostia, coronary vessels, and coronary bifurcation and trifurcations. 13. The apparatus of claim 11 , wherein detecting image patches corresponding to the stenosis of interest and a coronary tree of the patient comprises: detecting the image patches in a series of marginal parameter spaces using a respective trained deep neural network for each of the marginal parameter spaces. 14. The apparatus of claim 13 , wherein the series of marginal parameter spaces comprises a position parameter space, a position-orientation parameter space, and a position-orientation-scale parameter space. 15. The apparatus of claim 13 , wherein the respective trained deep neural network for each of the marginal parameter spaces comprises a deep neural network regressor trained that inputs hypotheses in the respective parameter space and for each hypothesis, outputs a displacement vector that provides a prediction for an image patch in the respective parameter space. 16. The apparatus of claim 13 , wherein the respective trained deep neural network for each of the marginal parameter spaces comprises a discriminative deep neural network that inputs hypotheses in the respective parameters space, and for each hypothesis outputs a probability for the image patch corresponding to the hypothesis. 17. The apparatus of claim 13 , wherein the respective deep neural network for each of the marginal parameter spaces is a deep multi-layer neural network trained using one of a convolutional neural network (CNN), a stacked restricted Boltzmann machine (RBM), or a stacked auto-encoder (AE). 18. The apparatus of claim 11 , wherein the trained deep neural network regressor is a deep neural network with a plurality of layers and the final layer calculates a stenosis specific FFR value. 19. The apparatus of claim 18 , wherein the trained deep neural network is trained by tuning weights for each layer other than the final layer using the first set of training image patches without corresponding FFR values using restricted Boltzmann machines (RBM) contrastive divergences or Auto-encoders algorithms and then refining the weights for each layer including the final layer based on the second set of training image patches with corresponding

Assignees

Inventors

Classifications

  • G06V10/774Primary

    Generating sets of training patterns; Bootstrap methods, e.g. bagging or boosting · CPC title

  • A61B5/026Primary

    Measuring blood flow {(A61B3/1233, A61B3/1241 take precedence)} · CPC title

  • Generating training patterns; Bootstrap methods, e.g. bagging or boosting · CPC title

  • involving temporal comparison · CPC title

  • Measuring blood flow · CPC title

Patent family

Related publications grouped by family.

External sources

Frequently asked questions

Answers are generated from the same data shown on this page.

What does patent US9700219B2 cover?
A method and system for determining fractional flow reserve (FFR) for a coronary artery stenosis of a patient is disclosed. In one embodiment, medical image data of the patient including the stenosis is received, a set of features for the stenosis is extracted from the medical image data of the patient, and an FFR value for the stenosis is determined based on the extracted set of features using…
Who is the assignee on this patent?
Siemens Healthcare Gmbh
What technology area does this patent fall under?
Primary CPC classification G06V10/774. Mapped technology areas include Physics.
When was this patent published?
Publication date Tue Jul 11 2017 00:00:00 GMT+0000 (Coordinated Universal Time) (B2). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 1 related publication on this page (citations in our corpus or others sharing the same primary CPC).