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Machine learning for prediction of all-cause mortality in patients with suspected coronary artery disease: a 5-year multicentre prospective registry analysis.

Authors :
Motwani, Manish
Motwani, Manish
Dey, Damini
Berman, Daniel S
Germano, Guido
Achenbach, Stephan
Al-Mallah, Mouaz H
Andreini, Daniele
Budoff, Matthew J
Cademartiri, Filippo
Callister, Tracy Q
Chang, Hyuk-Jae
Chinnaiyan, Kavitha
Chow, Benjamin JW
Cury, Ricardo C
Delago, Augustin
Gomez, Millie
Gransar, Heidi
Hadamitzky, Martin
Hausleiter, Joerg
Hindoyan, Niree
Feuchtner, Gudrun
Kaufmann, Philipp A
Kim, Yong-Jin
Leipsic, Jonathon
Lin, Fay Y
Maffei, Erica
Marques, Hugo
Pontone, Gianluca
Raff, Gilbert
Rubinshtein, Ronen
Shaw, Leslee J
Stehli, Julia
Villines, Todd C
Dunning, Allison
Min, James K
Slomka, Piotr J
Motwani, Manish
Motwani, Manish
Dey, Damini
Berman, Daniel S
Germano, Guido
Achenbach, Stephan
Al-Mallah, Mouaz H
Andreini, Daniele
Budoff, Matthew J
Cademartiri, Filippo
Callister, Tracy Q
Chang, Hyuk-Jae
Chinnaiyan, Kavitha
Chow, Benjamin JW
Cury, Ricardo C
Delago, Augustin
Gomez, Millie
Gransar, Heidi
Hadamitzky, Martin
Hausleiter, Joerg
Hindoyan, Niree
Feuchtner, Gudrun
Kaufmann, Philipp A
Kim, Yong-Jin
Leipsic, Jonathon
Lin, Fay Y
Maffei, Erica
Marques, Hugo
Pontone, Gianluca
Raff, Gilbert
Rubinshtein, Ronen
Shaw, Leslee J
Stehli, Julia
Villines, Todd C
Dunning, Allison
Min, James K
Slomka, Piotr J
Source :
European heart journal; vol 38, iss 7, 500-507; 0195-668X
Publication Year :
2017

Abstract

AimsTraditional prognostic risk assessment in patients undergoing non-invasive imaging is based upon a limited selection of clinical and imaging findings. Machine learning (ML) can consider a greater number and complexity of variables. Therefore, we investigated the feasibility and accuracy of ML to predict 5-year all-cause mortality (ACM) in patients undergoing coronary computed tomographic angiography (CCTA), and compared the performance to existing clinical or CCTA metrics.Methods and resultsThe analysis included 10 030 patients with suspected coronary artery disease and 5-year follow-up from the COronary CT Angiography EvaluatioN For Clinical Outcomes: An InteRnational Multicenter registry. All patients underwent CCTA as their standard of care. Twenty-five clinical and 44 CCTA parameters were evaluated, including segment stenosis score (SSS), segment involvement score (SIS), modified Duke index (DI), number of segments with non-calcified, mixed or calcified plaques, age, sex, gender, standard cardiovascular risk factors, and Framingham risk score (FRS). Machine learning involved automated feature selection by information gain ranking, model building with a boosted ensemble algorithm, and 10-fold stratified cross-validation. Seven hundred and forty-five patients died during 5-year follow-up. Machine learning exhibited a higher area-under-curve compared with the FRS or CCTA severity scores alone (SSS, SIS, DI) for predicting all-cause mortality (ML: 0.79 vs. FRS: 0.61, SSS: 0.64, SIS: 0.64, DI: 0.62; P< 0.001).ConclusionsMachine learning combining clinical and CCTA data was found to predict 5-year ACM significantly better than existing clinical or CCTA metrics alone.

Details

Database :
OAIster
Journal :
European heart journal; vol 38, iss 7, 500-507; 0195-668X
Notes :
application/pdf, European heart journal vol 38, iss 7, 500-507 0195-668X
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287365073
Document Type :
Electronic Resource