A machine learning-based approach to identify peripheral artery disease using texture features from contrast-enhanced magnetic resonance imaging

被引:3
|
作者
Khagi, Bijen [1 ]
Belousova, Tatiana [5 ]
Short, Christina M. [2 ]
Taylor, Addison [2 ,4 ]
Nambi, Vijay [2 ,3 ,4 ]
Ballantyne, Christie M. [2 ,3 ]
Bismuth, Jean [6 ]
Shah, Dipan J. [5 ]
Brunner, Gerd [1 ,2 ,7 ]
机构
[1] Penn State Univ, Coll Med, Penn State Heart & Vasc Inst, Hershey, PA USA
[2] Baylor Coll Med, Dept Med, Sect Cardiovasc Res, Houston, TX USA
[3] Baylor Coll Med, Dept Med, Sect Cardiol, Houston, TX USA
[4] Michael E DeBakey VA Med Ctr, Houston, TX USA
[5] Houston Methodist Hosp, Methodist DeBakey Heart & Vasc Ctr, Houston, TX USA
[6] USF Hlth Morsani Sch Med, Div Vasc Surg, Tampa, FL USA
[7] 500 Univ Dr H047, Hershey, PA 17033 USA
基金
美国国家卫生研究院;
关键词
Peripheral artery disease; Magnetic resonance imaging; Machine learning; Atherosclerosis; Texture features; CLASSIFICATION; IMAGES; RISK; MRI; IDENTIFICATION;
D O I
10.1016/j.mri.2023.11.014
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
Diagnosing and assessing the risk of peripheral artery disease (PAD) has long been a focal point for medical practitioners. The impaired blood circulation in PAD patients results in altered microvascular perfusion patterns in the calf muscles which is the primary location of intermittent claudication pain. Consequently, we hypothesized that changes in perfusion and increase in connective tissue could lead to alterations in the appearance or texture patterns of the skeletal calf muscles, as visualized with non-invasive imaging techniques. We designed an automatic pipeline for textural feature extraction from contrast-enhanced magnetic resonance imaging (CE-MRI) scans and used the texture features to train machine learning models to detect the heterogeneity in the muscle pattern among PAD patients and matched controls. CE-MRIs from 36 PAD patients and 20 matched controls were used for preparing training and testing data at a 7:3 ratio with cross-validation (CV) techniques. We employed feature arrangement and selection methods to optimize the number of features. The proposed method achieved a peak accuracy of 94.11% and a mean testing accuracy of 84.85% in a 2-class classification approach (controls vs. PAD). A three-class classification approach was performed to identify a high-risk PAD sub-group which yielded an average test accuracy of 83.23% (matched controls vs. PAD without diabetes vs. PAD with diabetes). Similarly, we obtained 78.60% average accuracy among matched controls, PAD treadmill exercise completers, and PAD exercise treadmill non-completers. Machine learning and imaging-based texture features may be of interest in the study of lower extremity ischemia.
引用
收藏
页码:31 / 42
页数:12
相关论文
共 50 条
  • [21] Magnetic resonance imaging based modeling of microvascular perfusion in patients with peripheral artery disease
    Gimnich, Olga A.
    Singh, Jaykrishna
    Bismuth, Jean
    Shah, Dipan J.
    Brunner, Gerd
    JOURNAL OF BIOMECHANICS, 2019, 93 : 147 - 158
  • [22] Scar detection by contrast-enhanced magnetic resonance imaging in chronic coronary artery disease: a comparison with nuclear imaging and echocardiography
    Catalano, O
    Moro, G
    Cannizzaro, G
    Mingrone, R
    Opasich, C
    Perotti, M
    Rognone, F
    Frascaroli, M
    Baldi, M
    Tramarin, R
    JOURNAL OF CARDIOVASCULAR MAGNETIC RESONANCE, 2005, 7 (04) : 639 - 647
  • [23] Peripheral Nerve Perfusion by Dynamic Contrast-Enhanced Magnetic Resonance Imaging Demonstration of Feasibility
    Baeumer, Philipp
    Reimann, Maximilian
    Decker, Clemens
    Radbruch, Alexander
    Bendszus, Martin
    Heiland, Sabine
    Pham, Mirko
    INVESTIGATIVE RADIOLOGY, 2014, 49 (08) : 518 - 523
  • [24] Dynamic contrast-enhanced magnetic resonance imaging: fundamentals and application to the evaluation of the peripheral perfusion
    Gordon, Yaron
    Partovi, Sasan
    Mueller-Eschner, Matthias
    Amarteifio, Erick
    Baeuerle, Tobias
    Weber, Marc-Andre
    Kauczor, Hans-Ulrich
    Rengier, Fabian
    CARDIOVASCULAR DIAGNOSIS AND THERAPY, 2014, 4 (02) : 147 - 164
  • [25] Investigation of imaging features in contrast-enhanced magnetic resonance imaging of benign and malignant breast lesions
    Kubota, Kazunori
    Fujioka, Tomoyuki
    Tateishi, Ukihide
    Mori, Mio
    Yashima, Yuka
    Yamaga, Emi
    Katsuta, Leona
    Yamaguchi, Ken
    Tozaki, Mitsuhiro
    Sasaki, Michiro
    Uematsu, Takayoshi
    Monzawa, Shuichi
    Isomoto, Ichiro
    Suzuki, Mizuka
    Satake, Hiroko
    Nakahara, Hiroshi
    Goto, Mariko
    Kikuchi, Mari
    JAPANESE JOURNAL OF RADIOLOGY, 2024, 42 (07) : 720 - 730
  • [26] Segmentation of Peripheral Nerves From Magnetic Resonance Neurography: A Fully-Automatic, Deep Learning-Based Approach
    Balsiger, Fabian
    Steindel, Carolin
    Arn, Mirjam
    Wagner, Benedikt
    Grunder, Lorenz
    El-Koussy, Marwan
    Valenzuela, Waldo
    Reyes, Mauricio
    Scheidegger, Olivier
    FRONTIERS IN NEUROLOGY, 2018, 9
  • [27] Machine learning-based classification of pineal germinoma from magnetic resonance imaging
    Supbumrung, Suchada
    Kaewborisutsakul, Anukoon
    Tunthanathip, Thara
    WORLD NEUROSURGERY-X, 2023, 20
  • [28] Machine Learning-Based Segmentation of Left Ventricular Myocardial Fibrosis from Magnetic Resonance Imaging
    Zabihollahy, Fatemeh
    Rajan, S.
    Ukwatta, E.
    CURRENT CARDIOLOGY REPORTS, 2020, 22 (08)
  • [29] Texture analysis using machine learning-based 3-T magnetic resonance imaging for predicting recurrence in breast cancer patients treated with neoadjuvant chemotherapy
    Eun, Na Lae
    Kang, Daesung
    Son, Eun Ju
    Youk, Ji Hyun
    Kim, Jeong-Ah
    Gweon, Hye Mi
    EUROPEAN RADIOLOGY, 2021, 31 (09) : 6916 - 6928
  • [30] Associations between Dynamic Contrast-Enhanced Magnetic Resonance Imaging with Histopathological Features in Cholangiocarcinoma
    Meyer, Hans-Jonas
    Potratz, Johann
    Jechorek, Doerthe
    Schramm, Kai Ina
    Borggrefe, Jan
    Surov, Alexey
    DIGESTIVE DISEASES, 2024, : 46 - 53