Deep Learning Analysis of Upright-Supine High-Efficiency SPECT Myocardial Perfusion Imaging for Prediction of Obstructive Coronary Artery Disease: A Multicenter Study

被引:98
作者
Betancur, Julian [1 ,2 ,3 ]
Hu, Lien-Hsin [1 ,2 ,3 ]
Commandeur, Frederic [1 ,2 ,3 ]
Sharir, Tali [4 ,5 ]
Einstein, Andrew J. [6 ,7 ,8 ]
Fish, Mathews B. [9 ]
Ruddy, Terrence D. [10 ]
Kaufmann, Philipp A. [11 ]
Sinusas, Albert J. [12 ]
Miller, Edward J. [12 ]
Bateman, Timothy M. [13 ]
Dorbala, Sharmila [14 ]
Di Carli, Marcelo [14 ]
Germano, Guido [1 ,2 ,3 ]
Otaki, Yuka [1 ,2 ,3 ]
Liang, Joanna X. [1 ,2 ,3 ]
Tamarappoo, Balaji K. [1 ,2 ,3 ]
Dey, Damini [1 ,2 ,3 ]
Berman, Daniel S. [1 ,2 ,3 ]
Slomka, Piotr J. [1 ,2 ,3 ]
机构
[1] Cedars Sinai Med Ctr, Dept Imaging, Div Nucl Med, Los Angeles, CA 90048 USA
[2] Cedars Sinai Med Ctr, Dept Med, Los Angeles, CA 90048 USA
[3] Cedars Sinai Med Ctr, Dept Biomed Sci, Los Angeles, CA 90048 USA
[4] Assuta Med Ctr, Dept Nucl Cardiol, Tel Aviv, Israel
[5] Ben Gurion Univ Negev, Beer Sheva, Israel
[6] Columbia Univ, Dept Med, Div Cardiol, Irving Med Ctr, New York, NY USA
[7] New York Presbyterian Hosp, New York, NY USA
[8] Columbia Univ, Dept Radiol, Irving Med Ctr, New York, NY USA
[9] Sacred Heart Med Ctr, Oregon Heart & Vasc Inst, Springfield, OR USA
[10] Univ Ottawa, Div Cardiol, Heart Inst, Ottawa, ON, Canada
[11] Univ Hosp Zurich, Dept Nucl Med, Cardiac Imaging, Zurich, Switzerland
[12] Yale Univ, Sch Med, Dept Internal Med, Sect Cardiovasc Med, New Haven, CT 06510 USA
[13] Cardiovasc Imaging Technol LLC, Kansas City, MO USA
[14] Brigham & Womens Hosp, Dept Radiol, Div Nucl Med & Mol Imaging, 75 Francis St, Boston, MA 02115 USA
基金
美国国家卫生研究院;
关键词
obstructive coronary artery disease; SPECT myocardial perfusion imaging; deep learning; convolutional neural network; total perfusion deficit; VALIDATION;
D O I
10.2967/jnumed.118.213538
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
Combined analysis of SPECT myocardial perfusion imaging (MPI) performed with a solid-state camera on patients in 2 positions (semiupright, supine) is routinely used to mitigate attenuation artifacts. We evaluated the prediction of obstructive disease from combined analysis of semiupright and supine stress MPI by deep learning (DL) as compared with standard combined total perfusion deficit (TPD). Methods: 1,160 patients without known coronary artery disease (64% male) were studied. Patients underwent stress Tc-99m-sestamibi MPI with new-generation solid-state SPECT scanners in 4 different centers. All patients had on-site clinical reads and invasive coronary angiography correlations within 6 mo of MPI. Obstructive disease was defined as at least 70% narrowing of the 3 major coronary arteries and at least 50% for the left main coronary artery. Images were quantified at Cedars-Sinai. The left ventricular myocardium was segmented using standard clinical nuclear cardiology software. The contour placement was verified by an experienced technologist. Combined stress TPD was computed using sex-and camera-specific normal limits. DL was trained using polar distributions of normalized radiotracer counts, hypoperfusion defects, and hypoperfusion severities and was evaluated for prediction of obstructive disease in a novel leave-one-center-out crossvalidation procedure equivalent to external validation. During the validation procedure, 4 DL models were trained using data from 3 centers and then evaluated on the 1 center left aside. Predictions for each center were merged to have an overall estimation of the multicenter performance. Results: 718 (62%) patients and 1,272 of 3,480 (37%) arteries had obstructive disease. The area under the receiver operating characteristics curve for prediction of disease on a per-patient and per-vessel basis by DL was higher than for combined TPD (per-patient, 0.81 vs. 0.78; per-vessel, 0.77 vs. 0.73; P < 0.001). With the DL cutoff set to exhibit the same specificity as the standard cutoff for combined TPD, per-patient sensitivity improved from 61.8% (TPD) to 65.6% (DL) (P < 0.05), and per-vessel sensitivity improved from 54.6% (TPD) to 59.1% (DL) (P < 0.01). With the threshold matched to the specificity of a normal clinical read (56.3%), DL had a sensitivity of 84.8%, versus 82.6% for an on-site clinical read (P = 0.3). Conclusion: DL improves automatic interpretation of MPI as compared with current quantitative methods.
引用
收藏
页码:664 / 670
页数:7
相关论文
共 24 条
  • [1] [Anonymous], 2015, Nature, DOI [10.1038/nature14539, DOI 10.1038/NATURE14539]
  • [2] [Anonymous], J NUCL CARDIOL
  • [3] [Anonymous], 2014, ACM INT C MULTIMEDIA
  • [4] Improved accuracy of myocardial perfusion SPECT for detection of coronary artery disease by machine learning in a large population
    Arsanjani, Reza
    Xu, Yuan
    Dey, Damini
    Vahistha, Vishal
    Shalev, Aryeh
    Nakanishi, Rine
    Hayes, Sean
    Fish, Mathews
    Berman, Daniel
    Germano, Guido
    Slomka, Piotr J.
    [J]. JOURNAL OF NUCLEAR CARDIOLOGY, 2013, 20 (04) : 553 - 562
  • [5] Comparison of Fully Automated Computer Analysis and Visual Scoring for Detection of Coronary Artery Disease from Myocardial Perfusion SPECT in a Large Population
    Arsanjani, Reza
    Xu, Yuan
    Hayes, Sean W.
    Fish, Mathews
    Lemley, Mark, Jr.
    Gerlach, James
    Dorbala, Sharmila
    Berman, Daniel S.
    Germano, Guido
    Slomka, Piotr
    [J]. JOURNAL OF NUCLEAR MEDICINE, 2013, 54 (02) : 221 - 228
  • [6] Prognostic Value of Combined Clinical and Myocardial Perfusion Imaging Data Using Machine Learning
    Betancur, Julian
    Otaki, Yuka
    Motwani, Manish
    Fish, Mathews B.
    Lemley, Mark
    Dey, Damini
    Gransar, Heidi
    Tamarappoo, Balaji
    Germano, Guido
    Sharir, Tali
    Berman, Daniel S.
    Slomka, Piotr J.
    [J]. JACC-CARDIOVASCULAR IMAGING, 2018, 11 (07) : 1000 - 1009
  • [7] Deep Learning for Prediction of Obstructive Disease From Fast Myocardial Perfusion SPECT A Multicenter Study
    Betancur, Julian
    Commandeur, Frederic
    Motlagh, Mahsaw
    Sharir, Tali
    Einstein, Andrew J.
    Bokhari, Sabahat
    Fish, Mathews B.
    Ruddy, Terrence D.
    Kaufmann, Philipp
    Sinusas, Albert J.
    Miller, Edward J.
    Bateman, Timothy M.
    Dorbala, Sharmila
    Di Carli, Marcelo
    Germano, Guido
    Otaki, Yuka
    Tamarappoo, Balaji K.
    Dey, Damini
    Berman, Daniel S.
    Slomka, Piotr J.
    [J]. JACC-CARDIOVASCULAR IMAGING, 2018, 11 (11) : 1654 - 1663
  • [8] Automatic Valve Plane Localization in Myocardial Perfusion SPECT/CT by Machine Learning: Anatomic and Clinical Validation
    Betancur, Julian
    Rubeaux, Mathieu
    Fuchs, Tobias A.
    Otaki, Yuka
    Arnson, Yoav
    Slipczuk, Leandro
    Benz, Dominik C.
    Germano, Guido
    Dey, Damini
    Lin, Chih-Jen
    Berman, Daniel S.
    Kaufmann, Philipp A.
    Slomka, Piotr J.
    [J]. JOURNAL OF NUCLEAR MEDICINE, 2017, 58 (06) : 961 - 967
  • [9] External validation is necessary in, prediction research: A clinical example
    Bleeker, SE
    Moll, HA
    Steyerberg, EW
    Donders, ART
    Derksen-Lubsen, G
    Grobbee, DE
    Moons, KGM
    [J]. JOURNAL OF CLINICAL EPIDEMIOLOGY, 2003, 56 (09) : 826 - 832
  • [10] COMPARING THE AREAS UNDER 2 OR MORE CORRELATED RECEIVER OPERATING CHARACTERISTIC CURVES - A NONPARAMETRIC APPROACH
    DELONG, ER
    DELONG, DM
    CLARKEPEARSON, DI
    [J]. BIOMETRICS, 1988, 44 (03) : 837 - 845