Positron Emission Tomography (PET) Images Using Deep Neural Networks

Sponsor
Sheba Medical Center (Other)
Overall Status
Unknown status
CT.gov ID
NCT04140565
Collaborator
Computational Imaging Lab , Dr. Arnaldo Mayer (Other)
200
1
24
8.3

Study Details

Study Description

Brief Summary

PET images are based on detecting two annihilation 511 KeV photons that are produced by positron emitting isotopes. The longer the acquisition time, the more photons are detected and processed, resulting in better image quality. However, long scan times (typically 20-40 minutes per scan) are less convenient to patients, and may result in patient motion and misalignment.

several studies have used machine learning to produce diagnostic images from low quality images.The goal of our study is to produce diagnostic PET images with 10 seconds acquisition time per bed position using DNN algorithms

Condition or Disease Intervention/Treatment Phase

    Detailed Description

    Positron emission tomography (PET)/ computerized tomography (CT), with the use of several tracers, among which fluoro deoxyglucose (FDG) is the most prevalent, has become a principal imaging modality in oncology. The PET and CT components reflect metabolic and anatomic information, respectively. PET images are based on detecting two annihilation 511 KeV photons that are produced by positron emitting isotopes. The longer the acquisition time, the more photons are detected and processed, resulting in better image quality. However, long scan times (typically 20-40 minutes per scan) are less convenient to patients, and may result in patient motion and misalignment. Over the years, several methods, such as 3D and time of flight acquisitions, have been developed to compensate for the degradation in image quality as a result of shortening of the scanning time. Recently, several studies have used machine learning to produce diagnostic images from low quality images. Xiang et al compared PET images of the brain that were acquired in 3 minutes (i.e., low-quality PET (LPET)) with standard PET images (i.e., SPET) that were acquired in 12 minutes. They have combined LPET and T1 weighted images using deep neural networks (DNN) to produce diagnostic PET images equivalent to SPET images.

    The goal of our study is to produce diagnostic PET images with 10 seconds acquisition time per bed position using DNN algorithms developed at the CILAB laboratory in the imaging department of Sheba.

    The algorithms were previously successfully validated for the denoising of ultra-low dose chest CT scans, making them suitable for lung cancer screening. The algorithms are based on the locally-consistent non-local means (LC-NLM) algorithm.

    The LC-NLM algorithm uses fast approximate nearest neighbors (ANN) to find the most similar high-SNR patch, in a purposely built database, for each noisy patch in the input image (Green et al.) ] We propose to use the recently introduced non-local neural networks (Wang et al.) in order to stack the LC-NLM into a fully trainable, locally-consistent nonlocal block (LC-NLB). The original non-local networks combines the ideas of the classical non-local means (NLM) algorithm (Buades et al.) into a neural network block, which computes the output at a specific position as a weighted sum of the features at all positions.

    Study Design

    Study Type:
    Observational [Patient Registry]
    Anticipated Enrollment :
    200 participants
    Observational Model:
    Cohort
    Time Perspective:
    Prospective
    Official Title:
    Extraction of Diagnostic Positron Emission Tomography (PET) Images From 10 Seconds Bed-position Acquisition, Using Deep Neural Networks
    Anticipated Study Start Date :
    Nov 1, 2019
    Anticipated Primary Completion Date :
    Nov 1, 2021
    Anticipated Study Completion Date :
    Nov 1, 2021

    Outcome Measures

    Primary Outcome Measures

    1. Production of diagnostic PET images using deep neural networks algorithms [2 years]

      To produce PET images form very short bed positions equivalent in quality to the standard PET images

    Eligibility Criteria

    Criteria

    Ages Eligible for Study:
    18 Years and Older
    Sexes Eligible for Study:
    All
    Accepts Healthy Volunteers:
    Yes

    Inclusion Criteria:Patients who perform FDG PET/CT -

    Exclusion Criteria:1. Under 18 years old. 2. PET/CT performed with a radioisotope other then FDG.

    -

    Contacts and Locations

    Locations

    Site City State Country Postal Code
    1 Sheba Medical Center Hospital- Tel Hashomer Ramat Gan Israel 52621

    Sponsors and Collaborators

    • Sheba Medical Center
    • Computational Imaging Lab , Dr. Arnaldo Mayer

    Investigators

    • Principal Investigator: Liran Domachevsky, MD, Sheba Medical Center

    Study Documents (Full-Text)

    None provided.

    More Information

    Publications

    None provided.
    Responsible Party:
    Dr. Liran Domachevsky, Chair, Department of Nuclear Medicine Sheba Medical Center, Sheba Medical Center
    ClinicalTrials.gov Identifier:
    NCT04140565
    Other Study ID Numbers:
    • SHEBA-19-6267-LD-CTIL
    First Posted:
    Oct 28, 2019
    Last Update Posted:
    Oct 30, 2019
    Last Verified:
    Oct 1, 2019
    Individual Participant Data (IPD) Sharing Statement:
    No
    Plan to Share IPD:
    No
    Studies a U.S. FDA-regulated Drug Product:
    No
    Studies a U.S. FDA-regulated Device Product:
    No
    Keywords provided by Dr. Liran Domachevsky, Chair, Department of Nuclear Medicine Sheba Medical Center, Sheba Medical Center

    Study Results

    No Results Posted as of Oct 30, 2019