Literature DB >> 29420321

Texture Analysis and Machine Learning for Detecting Myocardial Infarction in Noncontrast Low-Dose Computed Tomography: Unveiling the Invisible.

Manoj Mannil, Jochen von Spiczak, Robert Manka, Hatem Alkadhi.   

Abstract

OBJECTIVES: The aim of this study was to test whether texture analysis and machine learning enable the detection of myocardial infarction (MI) on non-contrast-enhanced low radiation dose cardiac computed tomography (CCT) images.
MATERIALS AND METHODS: In this institutional review board-approved retrospective study, we included non-contrast-enhanced electrocardiography-gated low radiation dose CCT image data (effective dose, 0.5 mSv) acquired for the purpose of calcium scoring of 27 patients with acute MI (9 female patients; mean age, 60 ± 12 years), 30 patients with chronic MI (8 female patients; mean age, 68 ± 13 years), and in 30 subjects (9 female patients; mean age, 44 ± 6 years) without cardiac abnormality, hereafter termed controls. Texture analysis of the left ventricle was performed using free-hand regions of interest, and texture features were classified twice (Model I: controls versus acute MI versus chronic MI; Model II: controls versus acute and chronic MI). For both classifications, 6 commonly used machine learning classifiers were used: decision tree C4.5 (J48), k-nearest neighbors, locally weighted learning, RandomForest, sequential minimal optimization, and an artificial neural network employing deep learning. In addition, 2 blinded, independent readers visually assessed noncontrast CCT images for the presence or absence of MI.
RESULTS: In Model I, best classification results were obtained using the k-nearest neighbors classifier (sensitivity, 69%; specificity, 85%; false-positive rate, 0.15). In Model II, the best classification results were found with the locally weighted learning classification (sensitivity, 86%; specificity, 81%; false-positive rate, 0.19) with an area under the curve from receiver operating characteristics analysis of 0.78. In comparison, both readers were not able to identify MI in any of the noncontrast, low radiation dose CCT images.
CONCLUSIONS: This study indicates the ability of texture analysis and machine learning in detecting MI on noncontrast low radiation dose CCT images being not visible for the radiologists' eye.

Entities:  

Mesh:

Year:  2018        PMID: 29420321     DOI: 10.1097/RLI.0000000000000448

Source DB:  PubMed          Journal:  Invest Radiol        ISSN: 0020-9996            Impact factor:   6.016


  43 in total

1.  Parametric-based feature selection via spherical harmonic coefficients for the left ventricle myocardial infarction screening.

Authors:  Gelareh Valizadeh; Farshid Babapour Mofrad; Ahmad Shalbaf
Journal:  Med Biol Eng Comput       Date:  2021-05-13       Impact factor: 2.602

2.  Artificial intelligence in medical imaging: A radiomic guide to precision phenotyping of cardiovascular disease.

Authors:  Evangelos K Oikonomou; Musib Siddique; Charalambos Antoniades
Journal:  Cardiovasc Res       Date:  2020-11-01       Impact factor: 10.787

Review 3.  Machine Learning and Deep Neural Networks in Thoracic and Cardiovascular Imaging.

Authors:  Tara A Retson; Alexandra H Besser; Sean Sall; Daniel Golden; Albert Hsiao
Journal:  J Thorac Imaging       Date:  2019-05       Impact factor: 3.000

Review 4.  Functional cardiac CT-Going beyond Anatomical Evaluation of Coronary Artery Disease with Cine CT, CT-FFR, CT Perfusion and Machine Learning.

Authors:  Joyce Peper; Dominika Suchá; Martin Swaans; Tim Leiner
Journal:  Br J Radiol       Date:  2020-08-12       Impact factor: 3.039

5.  Quality of science and reporting for radiomics in cardiac magnetic resonance imaging studies: a systematic review.

Authors:  Suyon Chang; Kyunghwa Han; Young Joo Suh; Byoung Wook Choi
Journal:  Eur Radiol       Date:  2022-03-01       Impact factor: 5.315

Review 6.  Artificial intelligence in personalized cardiovascular medicine and cardiovascular imaging.

Authors:  Ikram-Ul Haq; Iqraa Haq; Bo Xu
Journal:  Cardiovasc Diagn Ther       Date:  2021-06

7.  Improvement diagnostic accuracy of sinusitis recognition in paranasal sinus X-ray using multiple deep learning models.

Authors:  Hyug-Gi Kim; Kyung Mi Lee; Eui Jong Kim; Jin San Lee
Journal:  Quant Imaging Med Surg       Date:  2019-06

8.  Development and application of artificial intelligence in cardiac imaging.

Authors:  Beibei Jiang; Ning Guo; Yinghui Ge; Lu Zhang; Matthijs Oudkerk; Xueqian Xie
Journal:  Br J Radiol       Date:  2020-02-06       Impact factor: 3.039

9.  Predicting Chronic Myocardial Ischemia Using CCTA-Based Radiomics Machine Learning Nomogram.

Authors:  Zhen-Yu Shu; Si-Jia Cui; Yue-Qiao Zhang; Yu-Yun Xu; Shng-Che Hung; Li-Ping Fu; Pei-Pei Pang; Xiang-Yang Gong; Qin-Yang Jin
Journal:  J Nucl Cardiol       Date:  2020-06-18       Impact factor: 5.952

10.  Applicability of radiomics in interstitial lung disease associated with systemic sclerosis: proof of concept.

Authors:  K Martini; B Baessler; M Bogowicz; C Blüthgen; M Mannil; S Tanadini-Lang; J Schniering; B Maurer; T Frauenfelder
Journal:  Eur Radiol       Date:  2020-10-06       Impact factor: 5.315

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.