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Maximization of the usage of coronary CTA derived plaque information using a machine learning based algorithm to improve risk stratification; insights from the CONFIRM registry.

Authors :
van Rosendael, Alexander R
van Rosendael, Alexander R
Maliakal, Gabriel
Kolli, Kranthi K
Beecy, Ashley
Al'Aref, Subhi J
Dwivedi, Aeshita
Singh, Gurpreet
Panday, Mohit
Kumar, Amit
Ma, Xiaoyue
Achenbach, Stephan
Al-Mallah, Mouaz H
Andreini, Daniele
Bax, Jeroen J
Berman, Daniel S
Budoff, Matthew J
Cademartiri, Filippo
Callister, Tracy Q
Chang, Hyuk-Jae
Chinnaiyan, Kavitha
Chow, Benjamin JW
Cury, Ricardo C
DeLago, Augustin
Feuchtner, Gudrun
Hadamitzky, Martin
Hausleiter, Joerg
Kaufmann, Philipp A
Kim, Yong-Jin
Leipsic, Jonathon A
Maffei, Erica
Marques, Hugo
Pontone, Gianluca
Raff, Gilbert L
Rubinshtein, Ronen
Shaw, Leslee J
Villines, Todd C
Gransar, Heidi
Lu, Yao
Jones, Erica C
Peña, Jessica M
Lin, Fay Y
Min, James K
van Rosendael, Alexander R
van Rosendael, Alexander R
Maliakal, Gabriel
Kolli, Kranthi K
Beecy, Ashley
Al'Aref, Subhi J
Dwivedi, Aeshita
Singh, Gurpreet
Panday, Mohit
Kumar, Amit
Ma, Xiaoyue
Achenbach, Stephan
Al-Mallah, Mouaz H
Andreini, Daniele
Bax, Jeroen J
Berman, Daniel S
Budoff, Matthew J
Cademartiri, Filippo
Callister, Tracy Q
Chang, Hyuk-Jae
Chinnaiyan, Kavitha
Chow, Benjamin JW
Cury, Ricardo C
DeLago, Augustin
Feuchtner, Gudrun
Hadamitzky, Martin
Hausleiter, Joerg
Kaufmann, Philipp A
Kim, Yong-Jin
Leipsic, Jonathon A
Maffei, Erica
Marques, Hugo
Pontone, Gianluca
Raff, Gilbert L
Rubinshtein, Ronen
Shaw, Leslee J
Villines, Todd C
Gransar, Heidi
Lu, Yao
Jones, Erica C
Peña, Jessica M
Lin, Fay Y
Min, James K
Source :
Journal of cardiovascular computed tomography; vol 12, iss 3, 204-209; 1934-5925
Publication Year :
2018

Abstract

INTRODUCTION:Machine learning (ML) is a field in computer science that demonstrated to effectively integrate clinical and imaging data for the creation of prognostic scores. The current study investigated whether a ML score, incorporating only the 16 segment coronary tree information derived from coronary computed tomography angiography (CCTA), provides enhanced risk stratification compared with current CCTA based risk scores. METHODS:From the multi-center CONFIRM registry, patients were included with complete CCTA risk score information and ≥3 year follow-up for myocardial infarction and death (primary endpoint). Patients with prior coronary artery disease were excluded. Conventional CCTA risk scores (conventional CCTA approach, segment involvement score, duke prognostic index, segment stenosis score, and the Leaman risk score) and a score created using ML were compared for the area under the receiver operating characteristic curve (AUC). Only 16 segment based coronary stenosis (0%, 1-24%, 25-49%, 50-69%, 70-99% and 100%) and composition (calcified, mixed and non-calcified plaque) were provided to the ML model. A boosted ensemble algorithm (extreme gradient boosting; XGBoost) was used and the entire data was randomly split into a training set (80%) and testing set (20%). First, tuned hyperparameters were used to generate a trained model from the training data set (80% of data). Second, the performance of this trained model was independently tested on the unseen test set (20% of data). RESULTS:In total, 8844 patients (mean age 58.0 ± 11.5 years, 57.7% male) were included. During a mean follow-up time of 4.6 ± 1.5 years, 609 events occurred (6.9%). No CAD was observed in 48.7% (3.5% event), non-obstructive CAD in 31.8% (6.8% event), and obstructive CAD in 19.5% (15.6% event). Discrimination of events as expressed by AUC was significantly better for the ML based approach (0.771) vs the other scores (ranging from 0.685 to 0.701), P < 0.001. Net reclassification impr

Details

Database :
OAIster
Journal :
Journal of cardiovascular computed tomography; vol 12, iss 3, 204-209; 1934-5925
Notes :
application/pdf, Journal of cardiovascular computed tomography vol 12, iss 3, 204-209 1934-5925
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287414028
Document Type :
Electronic Resource