Automatic reorientation by deep learning to generate short-axis SPECT myocardial perfusion images

被引:3
|
作者
Zhu, Fubao [1 ]
Wang, Guojie [1 ]
Zhao, Chen [2 ]
Malhotra, Saurabh [3 ,4 ]
Zhao, Min [5 ]
He, Zhuo [2 ]
Shi, Jianzhou
Jiang, Zhixin [8 ]
Zhou, Weihua [2 ,6 ,7 ]
机构
[1] Zhengzhou Univ Light Ind, Sch Comp & Commun Engn, Zhengzhou 450000, Henan, Peoples R China
[2] Michigan Technol Univ, Dept Appl Comp, Houghton, MI 49931 USA
[3] Cook Cty Hlth & Hosp Syst, Div Cardiol, Chicago, IL 60612 USA
[4] Rush Med Coll, Div Cardiol, Chicago, IL 60612 USA
[5] Cent South Univ, Xiangya Hosp, Dept Nucl Med, Changsha 410008, Peoples R China
[6] Michigan Technol Univ, Inst Comp & Cybersyst, Ctr Biocomp & Digital Hlth, 1400 Townsend Dr, Houghton, MI 49931 USA
[7] Michigan Technol Univ, Hlth Res Inst, 1400 Townsend Dr, Houghton, MI 49931 USA
[8] Nanjing Med Univ, Affiliated Hosp 1, Dept Cardiol, Guangzhou Rd 300, Nanjing 210029, Jiangsu, Peoples R China
基金
中国国家自然科学基金;
关键词
SPECT MPI; reorientation; deep learning; convolutional neural networks; VENTRICULAR LONG-AXIS;
D O I
10.1007/s12350-023-03226-2
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundSingle photon emission computed tomography (SPECT) myocardial perfusion images (MPI) can be displayed both in traditional short-axis (SA) cardiac planes and polar maps for interpretation and quantification. It is essential to reorient the reconstructed transaxial SPECT MPI into standard SA slices. This study is aimed to develop a deep-learning-based approach for automatic reorientation of MPI.MethodsA total of 254 patients were enrolled, including 226 stress SPECT MPIs and 247 rest SPECT MPIs. Fivefold cross-validation with 180 stress and 201 rest MPIs was used for training and internal validation; the remaining images were used for testing. The rigid transformation parameters (translation and rotation) from manual reorientation were annotated by an experienced nuclear cardiologist and used as the reference standard. A convolutional neural network (CNN) was designed to predict the transformation parameters. Then, the derived transform was applied to the grid generator and sampler in spatial transformer network (STN) to generate the reoriented image. A loss function containing mean absolute errors for translation and mean square errors for rotation was employed. A three-stage optimization strategy was adopted for model optimization: (1) optimize the translation parameters while fixing the rotation parameters; (2) optimize rotation parameters while fixing the translation parameters; (3) optimize both translation and rotation parameters together.ResultsIn the test set, the Spearman determination coefficients of the translation distances and rotation angles between the model prediction and the reference standard were 0.993 in X axis, 0.992 in Y axis, 0.994 in Z axis, 0.987 along X axis, 0.990 along Y axis and 0.996 along Z axis, respectively. For the 46 stress MPIs in the test set, the Spearman determination coefficients were 0.858 in percentage of profusion defect (PPD) and 0.858 in summed stress score (SSS); for the 46 rest MPIs in the test set, the Spearman determination coefficients were 0.9 in PPD and 0.9 in summed rest score (SRS).ConclusionsOur deep learning-based LV reorientation method is able to accurately generate the SA images. Technical validations and subsequent evaluations of measured clinical parameters show that it has great promise for clinical use.
引用
收藏
页码:1825 / 1835
页数:11
相关论文
共 50 条
  • [1] Automatic reorientation by deep learning to generate short-axis SPECT myocardial perfusion images
    Fubao Zhu
    Guojie Wang
    Chen Zhao
    Saurabh Malhotra
    Min Zhao
    Zhuo He
    Jianzhou Shi
    Zhixin Jiang
    Weihua Zhou
    Journal of Nuclear Cardiology, 2023, 30 : 1825 - 1835
  • [2] Automatic reorientation to generate short-axis myocardial PET images
    Yang, Yuling
    Wang, Fanghu
    Han, Xu
    Xu, Hui
    Zhang, Yangmei
    Xu, Weiping
    Wang, Shuxia
    Lu, Lijun
    EJNMMI PHYSICS, 2024, 11 (01):
  • [3] AUTOMATIC REORIENTATION OF 3-DIMENSIONAL, TRANSAXIAL MYOCARDIAL PERFUSION SPECT IMAGES
    GERMANO, G
    KAVANAGH, PB
    SU, HT
    MAZZANTI, M
    KIAT, H
    HACHAMOVITCH, R
    VANTRAIN, KF
    AREEDA, JS
    BERMAN, DS
    JOURNAL OF NUCLEAR MEDICINE, 1995, 36 (06) : 1107 - 1114
  • [4] Automatic reorientation algorithm for myocardial perfusion SPECT using segmentation
    Vijande, Ezequiel
    Campisi, Roxana
    Juarez-Orozco, Luis Eduardo
    Aguero, Roberto
    Geronazzo, Ricardo
    Namias, Mauro
    EUROPEAN JOURNAL OF CLINICAL INVESTIGATION, 2025, 55
  • [5] Deep learning to automate SPECT MPI myocardial reorientation
    Hijazi, Waseem
    Miller, Robert J. H.
    JOURNAL OF NUCLEAR CARDIOLOGY, 2023, 30 (05) : 1836 - 1837
  • [6] Deep learning to automate SPECT MPI myocardial reorientation
    Waseem Hijazi
    Robert J. H. Miller
    Journal of Nuclear Cardiology, 2023, 30 : 1836 - 1837
  • [7] Automatic hybrid ventricular segmentation of short-axis cardiac MRI images
    Nageswararao, A., V
    Srinivasan, S.
    Peter, Babu S.
    BIOMEDICAL RESEARCH-INDIA, 2017, 28 (13): : 5816 - 5824
  • [8] Automatic valve plane localization in myocardial perfusion SPECT images using machine learning
    Betancur, Julian
    Rubeaux, Mathieu
    Fuchs, Tobias
    Slipczuk, Leandro
    Germano, Guido
    Dey, Damini
    Berman, Daniel
    Kaufmann, Philipp
    Slomka, Piotr
    JOURNAL OF NUCLEAR MEDICINE, 2016, 57
  • [9] Combined long- and short-axis myocardial perfusion cardiovascular magnetic resonance
    Elkington, AG
    Gatehouse, PD
    Prasad, SK
    Moon, JC
    Firmin, DN
    Pennell, DJ
    JOURNAL OF CARDIOVASCULAR MAGNETIC RESONANCE, 2004, 6 (04) : 811 - 816
  • [10] An automatic contour extraction algorithm for short-axis cardiac magnetic resonance images
    Zimmer, Y
    Akselrod, S
    MEDICAL PHYSICS, 1996, 23 (08) : 1371 - 1379