Literature DB >> 32820382

Quantification of Myocardial Blood Flow by Machine Learning Analysis of Modified Dual Bolus MRI Examination.

Minna Husso1, Isaac O Afara2,3, Mikko J Nissi2, Antti Kuivanen4, Paavo Halonen4, Miikka Tarkia5, Jarmo Teuho5, Virva Saunavaara5,6, Pauli Vainio7, Petri Sipola7, Hannu Manninen7, Seppo Ylä-Herttuala4,8, Juhani Knuuti5, Juha Töyräs7,2,3.   

Abstract

Contrast-enhanced magnetic resonance imaging (MRI) is a promising method for estimating myocardial blood flow (MBF). However, it is often affected by noise from imaging artefacts, such as dark rim artefact obscuring relevant features. Machine learning enables extracting important features from such noisy data and is increasingly applied in areas where traditional approaches are limited. In this study, we investigate the capacity of machine learning, particularly support vector machines (SVM) and random forests (RF), for estimating MBF from tissue impulse response signal in an animal model. Domestic pigs (n = 5) were subjected to contrast enhanced first pass MRI (MRI-FP) and the impulse response at different regions of the myocardium (n = 24/pig) were evaluated at rest (n = 120) and stress (n = 96). Reference MBF was then measured using positron emission tomography (PET). Since the impulse response may include artefacts, classification models based on SVM and RF were developed to discriminate noisy signal. In addition, regression models based on SVM, RF and linear regression (for comparison) were developed for estimating MBF from the impulse response at rest and stress. The classification and regression models were trained on data from 4 pigs (n = 168) and tested on 1 pig (n = 48). Models based on SVM and RF outperformed linear regression, with higher correlation (R SVM 2  = 0.81, R RF 2  = 0.74, R linear_regression 2  = 0.60; ρSVM = 0.76, ρRF = 0.76, ρlinear_regression = 0.71) and lower error (RMSESVM = 0.67 mL/g/min, RMSERF = 0.77 mL/g/min, RMSElinear_regression = 0.96 mL/g/min) for predicting MBF from MRI impulse response signal. Classifier based on SVM was optimal for detecting impulse response signals with artefacts (accuracy = 92%). Modified dual bolus MRI signal, combined with machine learning, has potential for accurately estimating MBF at rest and stress states, even from signals with dark rim artefacts. This could provide a protocol for reliable and easy estimation of MBF, although further research is needed to clinically validate the approach.

Entities:  

Keywords:  Machine learning; Magnetic resonance imaging; Modified dual bolus method; Myocardial perfusion imaging; Random forest; Support vector machine

Year:  2020        PMID: 32820382      PMCID: PMC7851105          DOI: 10.1007/s10439-020-02591-0

Source DB:  PubMed          Journal:  Ann Biomed Eng        ISSN: 0090-6964            Impact factor:   3.934


  18 in total

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Authors:  A A Qayyum; J Kastrup
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8.  Artificial intelligence, bias and clinical safety.

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Journal:  BMJ Qual Saf       Date:  2019-01-12       Impact factor: 7.035

9.  Quantification of porcine myocardial perfusion with modified dual bolus MRI - a prospective study with a PET reference.

Authors:  Minna Husso; Mikko J Nissi; Antti Kuivanen; Paavo Halonen; Miikka Tarkia; Jarmo Teuho; Virva Saunavaara; Pauli Vainio; Petri Sipola; Hannu Manninen; Seppo Ylä-Herttuala; Juhani Knuuti; Juha Töyräs
Journal:  BMC Med Imaging       Date:  2019-07-26       Impact factor: 1.930

10.  A machine-learning approach to predict postprandial hypoglycemia.

Authors:  Wonju Seo; You-Bin Lee; Seunghyun Lee; Sang-Man Jin; Sung-Min Park
Journal:  BMC Med Inform Decis Mak       Date:  2019-11-06       Impact factor: 2.796

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2.  Fast prediction of blood flow in stenosed arteries using machine learning and immersed boundary-lattice Boltzmann method.

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