Report on the AAPM deep-learning spectral CT Grand Challenge

被引:3
|
作者
Sidky, Emil Y. [1 ]
Pan, Xiaochuan [1 ]
机构
[1] Univ Chicago, Dept Radiol, Chicago, IL 60637 USA
基金
美国国家卫生研究院;
关键词
adaptive radiotherapy; deformable image registration; quality assurance;
D O I
10.1002/mp.16363
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundThis Special Report summarizes the 2022 AAPM Grand Challenge on Deep-Learning spectral Computed Tomography (DL-spectral CT) image reconstruction. PurposeThe purpose of the challenge is to develop the most accurate image reconstruction algorithm possible for solving the inverse problem associated with a fast kilovolt switching dual-energy CT scan using a three tissue-map decomposition. Participants could choose to use a deep-learning (DL), iterative, or a hybrid approach. MethodsThe challenge is based on a 2D breast CT simulation, where the simulated breast phantom consists of three tissue maps: adipose, fibroglandular, and calcification distributions. The phantom specification is stochastic so that multiple realizations can be generated for DL approaches. A dual-energy scan is simulated where the x-ray source potential of successive views alternates between 50 and 80 kilovolts (kV). A total of 512 views are generated, yielding 256 views for each source voltage. We generate 50 and 80 kV images by use of filtered back-projection (FBP) on negative logarithm processed transmission data. For participants who develop a DL approach, 1000 cases are available. Each case consists of the three 512 x 512 tissue maps, 50 and 80-kV transmission data sets and their corresponding FBP images. The goal of the DL network would then be to predict the material maps from either the transmission data, FBP images, or a combination of the two. For participants developing a physics-based approach, all of the required modeling parameters are made available: geometry, spectra, and tissue attenuation curves. The provided information also allows for hybrid approaches where physics is exploited as well as information about the scanned object derived from the 1000 training cases. Final testing is performed by computation of root-mean-square error (RMSE) for predictions on the tissue maps from 100 new cases. ResultsTest phase submission were received from 18 research groups. Of the 18 submissions, 17 were results obtained with algorithms that involved DL. Only the second place finishing team developed a physics-based image reconstruction algorithm. Both the winning and second place teams had highly accurate results where the RMSE was nearly zero to single floating point precision. Results from the top 10 also achieved a high degree of accuracy; and as a result, this special report outlines the methodology developed by each of these groups. ConclusionsThe DL-spectral CT challenge successfully established a forum for developing image reconstruction algorithms that address an important inverse problem relevant for spectral CT.
引用
收藏
页码:772 / 785
页数:14
相关论文
共 50 条
  • [41] Diagnosis of skull-base invasion by nasopharyngeal tumors on CT with a deep-learning approach
    Junichi Nakagawa
    Noriyuki Fujima
    Kenji Hirata
    Taisuke Harada
    Naoto Wakabayashi
    Yuki Takano
    Akihiro Homma
    Satoshi Kano
    Kazuyuki Minowa
    Kohsuke Kudo
    [J]. Japanese Journal of Radiology, 2024, 42 : 450 - 459
  • [42] Metal artifact reduction with deep learning based spectral CT
    Lai, Zhuoxing
    Li, Linhao
    Cao, Wenchao
    [J]. 2021 14TH INTERNATIONAL CONGRESS ON IMAGE AND SIGNAL PROCESSING, BIOMEDICAL ENGINEERING AND INFORMATICS (CISP-BMEI 2021), 2021,
  • [43] A trial of deep-learning detection in colonoscopy
    Dickson I.
    [J]. Nature Reviews Gastroenterology & Hepatology, 2020, 17 (4) : 194 - 194
  • [44] Advantages of Spectral Energy CT Data for Deep Learning Applications
    Chatterjee, A.
    Vallieres, M.
    Seuntjens, J.
    Forghani, R.
    [J]. MEDICAL PHYSICS, 2020, 47 (06) : E575 - E575
  • [45] A Deep-Learning Neural Network Based Reconstruction Algorithm for Sparse-View CT
    Herrera, I.
    Mandke, P.
    Feng, W.
    Cao, G.
    [J]. MEDICAL PHYSICS, 2020, 47 (06) : E508 - E508
  • [46] Development of a Deep-Learning Model for Diagnosing Lumbar Spinal Stenosis Based on CT Images
    Li, Kai-Yu
    Weng, Jun-Jie
    Li, Hua-Lin
    Ye, Hao-Bo
    Xiang, Jian-Wei
    Tian, Nai-Feng
    [J]. SPINE, 2024, 49 (12) : 884 - 891
  • [47] Study on spectral CT material decomposition via deep learning
    Wu, Xiaochuan
    He, Peng
    Long, Zourong
    Li, Pengcheng
    Wei, Biao
    Feng, Peng
    [J]. 15TH INTERNATIONAL MEETING ON FULLY THREE-DIMENSIONAL IMAGE RECONSTRUCTION IN RADIOLOGY AND NUCLEAR MEDICINE, 2019, 11072
  • [48] A Deep-Learning Based Lower-Dose CT Simulation Technique in Image Domain
    Gong, H.
    Leng, S.
    McCollough, C.
    Yu, L.
    [J]. MEDICAL PHYSICS, 2019, 46 (06) : E189 - E189
  • [49] Prediction of osteoporosis using MRI and CT scans with unimodal and multimodal deep-learning models
    Kucukciloglu, Yasemin
    Sekeroglu, Boran
    Adali, Terin
    Senturk, Niyazi
    [J]. DIAGNOSTIC AND INTERVENTIONAL RADIOLOGY, 2024, 30 (01): : 9 - 20
  • [50] Detection and classification of intracranial haemorrhage on CT images using a novel deep-learning algorithm
    Ji Young Lee
    Jong Soo Kim
    Tae Yoon Kim
    Young Soo Kim
    [J]. Scientific Reports, 10