Literature DB >> 31237495

Scoring of Coronary Artery Disease Characteristics on Coronary CT Angiograms by Using Machine Learning.

Kevin M Johnson1, Hilary E Johnson1, Yang Zhao1, David A Dowe1, Lawrence H Staib1.   

Abstract

Background Coronary CT angiography contains prognostic information but the best method to extract these data remains unknown. Purpose To use machine learning to develop a model of vessel features to discriminate between patients with and without subsequent death or cardiovascular events. Performance was compared with that of conventional scores. Materials and Methods Coronary CT angiography was analyzed by radiologists into four features for each of 16 coronary segments. Four machine learning model types were explored. Five conventional vessel scores were computed for comparison including the Coronary Artery Disease Reporting and Data System (CAD-RADS) score. The National Death Index was retrospectively queried from January 2004 through December 2015. Outcomes were all-cause mortality, coronary heart disease deaths, and coronary deaths or nonfatal myocardial infarctions. Score performance was assessed by using area under the receiver operating characteristic curve (AUC). Results Between February 2004 and November 2009, 6892 patients (4452 men [mean age ± standard deviation, 51 years ± 11] and 2440 women [mean age, 57 years ± 12]) underwent coronary CT angiography (median follow-up, 9.0 years; interquartile range, 8.2-9.8 years). There were 380 deaths of all causes, 70 patients died of coronary artery disease, and 43 patients reported nonfatal myocardial infarctions. For all-cause mortality, the AUC was 0.77 (95% confidence interval: 0.76, 0.77) for machine learning (k-nearest neighbors) versus 0.72 (95% confidence interval: 0.72, 0.72) for CAD-RADS (P < .001). For coronary artery heart disease deaths, AUC was 0.85 (95% confidence interval: 0.84, 0.85) for machine learning versus 0.79 (95% confidence interval: 0.78, 0.80) for CAD-RADS (P < .001). When deciding whether to start statins, if the choice is made to tolerate treating 45 patients to be sure to include one patient who will later die of coronary disease, the use of the machine learning score ensures that 93% of patients with events will be administered the drug; if CAD-RADS is used, only 69% will be treated. Conclusion Compared with Coronary Artery Disease Reporting and Data System and other scores, machine learning methods better discriminated patients who subsequently experienced an adverse event from those who did not. © RSNA, 2019 Online supplemental material is available for this article. See also the editorial by Schoepf and Tesche in this issue.

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Year:  2019        PMID: 31237495     DOI: 10.1148/radiol.2019182061

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  13 in total

1.  Artificial intelligence and radiomics in nuclear medicine: potentials and challenges.

Authors:  Cumali Aktolun
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2.  Spontaneous modulations of high-frequency cortical activity.

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Authors:  Jiahui Liao; Lanfang Huang; Meizi Qu; Binghui Chen; Guojie Wang
Journal:  Front Cardiovasc Med       Date:  2022-06-17

4.  Machine Learning Approach for Cardiovascular Risk and Coronary Artery Calcification Score.

Authors:  C R Aditya; Naveen Chakravarthy Sattaru; Kumaraguruparan Gopal; R Rahul; G Chandra Shekara; Omaima Nasif; Sulaiman Ali Alharbi; S S Raghavan; S Arockia Jayadhas
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5.  Development and application of artificial intelligence in cardiac imaging.

Authors:  Beibei Jiang; Ning Guo; Yinghui Ge; Lu Zhang; Matthijs Oudkerk; Xueqian Xie
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6.  Artificial Intelligence to Assist in Exclusion of Coronary Atherosclerosis During CCTA Evaluation of Chest Pain in the Emergency Department: Preparing an Application for Real-world Use.

Authors:  Richard D White; Barbaros S Erdal; Mutlu Demirer; Vikash Gupta; Matthew T Bigelow; Engin Dikici; Sema Candemir; Mauricio S Galizia; Jessica L Carpenter; Thomas P O'Donnell; Abdul H Halabi; Luciano M Prevedello
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Review 7.  Machine Learning for Assessment of Coronary Artery Disease in Cardiac CT: A Survey.

Authors:  Nils Hampe; Jelmer M Wolterink; Sanne G M van Velzen; Tim Leiner; Ivana Išgum
Journal:  Front Cardiovasc Med       Date:  2019-11-26

8.  Segmentation and Classification of Heart Angiographic Images Using Machine Learning Techniques.

Authors:  Muhammad Hameed Siddiqi; Yousef Salamah Alhwaiti; Ibrahim Alrashdi; Amjad Ali; Mohammad Faisal
Journal:  J Healthc Eng       Date:  2021-01-28       Impact factor: 2.682

9.  Effect of Calcification Based on Computer-Aided System on CT-Fractional Flow Reserve in Diagnosis of Coronary Artery Lesion.

Authors:  Dongliang Fu; Xiang Xiao; Tong Gao; Lina Feng; Chunliang Wang; Peng Yang; Xianlun Li
Journal:  Comput Math Methods Med       Date:  2022-01-17       Impact factor: 2.238

Review 10.  Artificial Intelligence: A Shifting Paradigm in Cardio-Cerebrovascular Medicine.

Authors:  Vida Abedi; Seyed-Mostafa Razavi; Ayesha Khan; Venkatesh Avula; Aparna Tompe; Asma Poursoroush; Alireza Vafaei Sadr; Jiang Li; Ramin Zand
Journal:  J Clin Med       Date:  2021-12-06       Impact factor: 4.241

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