Quantitative estimation of pulmonary artery wedge pressure from chest radiographs by a regression convolutional neural network

被引:9
作者
Saito, Yuki [1 ]
Omae, Yuto [2 ]
Fukamachi, Daisuke [1 ]
Nagashima, Koichi [1 ]
Mizobuchi, Saki [1 ]
Kakimoto, Yohei [2 ]
Toyotani, Jun [2 ]
Okumura, Yasuo [1 ]
机构
[1] Nihon Univ, Dept Med, Div Cardiol, Sch Med,Itabashi Ku, 30-1 Ohyaguchi Kamicho, Tokyo 1738610, Japan
[2] Nihon Univ, Coll Ind Technol, Dept Ind Engn & Management, Chiba, Japan
关键词
Artificial intelligence; Deep learning; Heart failure; Diagnostic method; HEART-FAILURE; X-RAY;
D O I
10.1007/s00380-022-02043-w
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Recent studies reported that a convolutional neural network (CNN; a deep learning model) can detect elevated pulmonary artery wedge pressure (PAWP) from chest radiographs, the diagnostic images most commonly used for assessing pulmonary congestion in heart failure. However, no method has been published for quantitatively estimating PAWP from such radiographs. We hypothesized that a regression CNN, an alternative type of deep learning, could be a useful tool for quantitatively estimating PAWP in cardiovascular diseases. We retrospectively enrolled 936 patients with cardiovascular diseases who had undergone right heart catheterization (RHC) and chest radiography and estimated PAWP by constructing a regression CNN based on the VGG16 model. We randomly categorized 80% of the data as training data (training group, n = 748) and 20% as test data (test group, n = 188). Moreover, we tuned the learning rate-one of the model parameters-by 5-hold cross-validation of the training group. Correlations between PAWP measured by RHC [ground truth (GT) PAWP] and PAWP derived from the regression CNN (estimated PAWP) were tested. To visualize how the regression CNN assessed the images, we created a regression activation map (RAM), a visualization technique for regression CNN. Estimated PAWP correlated significantly with GT PAWP in both the training (r = 0.76, P < 0.001) and test group (r = 0.62, P < 0.001). Bland-Altman plots found a mean (SEM) difference between GT and estimated PAWP of - 0.23 (0.16) mm Hg in the training and - 0.05 (0.41) mm Hg in the test group. The RAM showed that our regression CNN model estimated high PAWP by focusing on the cardiomegaly and pulmonary congestion. In the test group, the area under the curve (AUC) for detecting elevated PAWP (>= 18 mm Hg) produced by the regression CNN model was similar to the AUC of an experienced cardiologist (0.86 vs 0.83, respectively; P = 0.24). This proof-of-concept study shows that regression CNN can quantitatively estimate PAWP from standard chest radiographs in cardiovascular diseases.
引用
收藏
页码:1387 / 1394
页数:8
相关论文
共 28 条
  • [1] The Global Health and Economic Burden of Hospitalizations for Heart Failure Lessons Learned From Hospitalized Heart Failure Registries
    Ambrosy, Andrew P.
    Fonarow, Gregg C.
    Butler, Javed
    Chioncel, Ovidiu
    Greene, Stephen J.
    Vaduganathan, Muthiah
    Nodari, Savina
    Lam, Carolyn S. P.
    Sato, Naoki
    Shah, Ami N.
    Gheorghiade, Mihai
    [J]. JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2014, 63 (12) : 1123 - 1133
  • [2] Estimating Left Ventricular Filling Pressure by Echocardiography
    Andersen, Oyvind S.
    Smiseth, Otto A.
    Dokainish, Hisham
    Abudiab, Muaz M.
    Schutt, Robert C.
    Kumar, Arnav
    Sato, Kimi
    Harb, Serge
    Gude, Einar
    Remme, Espen W.
    Andreassen, Arne K.
    Ha, Jong-Won
    Xu, Jiaqiong
    Klein, Allan L.
    Nagueh, Sherif F.
    [J]. JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2017, 69 (15) : 1938 - 1948
  • [3] THE ROLE OF THE CHEST-X-RAY IN THE EVALUATION OF CHRONIC SEVERE HEART-FAILURE - THINGS ARE NOT ALWAYS AS THEY APPEAR
    COSTANZO, WE
    FEIN, SA
    [J]. CLINICAL CARDIOLOGY, 1988, 11 (07) : 486 - 488
  • [4] DASH H, 1980, BRIT HEART J, V44, P322
  • [5] 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
  • [6] Dermatologist-level classification of skin cancer with deep neural networks
    Esteva, Andre
    Kuprel, Brett
    Novoa, Roberto A.
    Ko, Justin
    Swetter, Susan M.
    Blau, Helen M.
    Thrun, Sebastian
    [J]. NATURE, 2017, 542 (7639) : 115 - +
  • [7] FILLING PRESSURES IN RIGHT AND LEFT SIDES OF HEART IN ACUTE MYOCARDIAL INFARCTION - REAPPRAISAL OF CENTRAL-VENOUS-PRESSURE MONITORING
    FORRESTE.JS
    DIAMOND, G
    MCHUGH, TJ
    SWAN, HJC
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 1971, 285 (04) : 190 - &
  • [8] Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs
    Gulshan, Varun
    Peng, Lily
    Coram, Marc
    Stumpe, Martin C.
    Wu, Derek
    Narayanaswamy, Arunachalam
    Venugopalan, Subhashini
    Widner, Kasumi
    Madams, Tom
    Cuadros, Jorge
    Kim, Ramasamy
    Raman, Rajiv
    Nelson, Philip C.
    Mega, Jessica L.
    Webster, R.
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2016, 316 (22): : 2402 - 2410
  • [9] ACCURACY OF LEFT ATRIAL AND PULMONARY-ARTERY WEDGE PRESSURE IN PURE MITRAL REGURGITATION IN PREDICTING LEFT-VENTRICULAR END-DIASTOLIC PRESSURE
    HASKELL, RJ
    FRENCH, WJ
    [J]. AMERICAN JOURNAL OF CARDIOLOGY, 1988, 61 (01) : 136 - 141
  • [10] Clinical Research Deep Learning for Detection of Elevated Pulmonary Artery Wedge Pressure Using Standard Chest X-Ray
    Hirata, Yukina
    Kusunose, Kenya
    Tsuji, Takumasa
    Fujimori, Kohei
    Kotoku, Junichi
    Sata, Masataka
    [J]. CANADIAN JOURNAL OF CARDIOLOGY, 2021, 37 (08) : 1198 - 1206