Gyemin Lee1, Hitinder S Gurm, Zeeshan Syed. 1. Department of Electronic and IT Media Engineering, Seoul National University of Science and Technology, Seoul, Republic of Korea. gyemin@seoultech.ac.kr
Abstract
OBJECTIVE: To explore the feasibility of a novel approach using an augmented one-class learning algorithm to model in-laboratory complications of percutaneous coronary intervention (PCI). MATERIALS AND METHODS: Data from the Blue Cross Blue Shield of Michigan Cardiovascular Consortium (BMC2) multicenter registry for the years 2007 and 2008 (n=41 016) were used to train models to predict 13 different in-laboratory PCI complications using a novel one-plus-class support vector machine (OP-SVM) algorithm. The performance of these models in terms of discrimination and calibration was compared to the performance of models trained using the following classification algorithms on BMC2 data from 2009 (n=20 289): logistic regression (LR), one-class support vector machine classification (OC-SVM), and two-class support vector machine classification (TC-SVM). For the OP-SVM and TC-SVM approaches, variants of the algorithms with cost-sensitive weighting were also considered. RESULTS: The OP-SVM algorithm and its cost-sensitive variant achieved the highest area under the receiver operating characteristic curve for the majority of the PCI complications studied (eight cases). Similar improvements were observed for the Hosmer-Lemeshow χ(2) value (seven cases) and the mean cross-entropy error (eight cases). CONCLUSIONS: The OP-SVM algorithm based on an augmented one-class learning problem improved discrimination and calibration across different PCI complications relative to LR and traditional support vector machine classification. Such an approach may have value in a broader range of clinical domains.
OBJECTIVE: To explore the feasibility of a novel approach using an augmented one-class learning algorithm to model in-laboratory complications of percutaneous coronary intervention (PCI). MATERIALS AND METHODS: Data from the Blue Cross Blue Shield of Michigan Cardiovascular Consortium (BMC2) multicenter registry for the years 2007 and 2008 (n=41 016) were used to train models to predict 13 different in-laboratory PCI complications using a novel one-plus-class support vector machine (OP-SVM) algorithm. The performance of these models in terms of discrimination and calibration was compared to the performance of models trained using the following classification algorithms on BMC2 data from 2009 (n=20 289): logistic regression (LR), one-class support vector machine classification (OC-SVM), and two-class support vector machine classification (TC-SVM). For the OP-SVM and TC-SVM approaches, variants of the algorithms with cost-sensitive weighting were also considered. RESULTS: The OP-SVM algorithm and its cost-sensitive variant achieved the highest area under the receiver operating characteristic curve for the majority of the PCI complications studied (eight cases). Similar improvements were observed for the Hosmer-Lemeshow χ(2) value (seven cases) and the mean cross-entropy error (eight cases). CONCLUSIONS: The OP-SVM algorithm based on an augmented one-class learning problem improved discrimination and calibration across different PCI complications relative to LR and traditional support vector machine classification. Such an approach may have value in a broader range of clinical domains.
Entities:
Keywords:
Computing Methodologies; Decision Support Systems; Percutaneous Coronary Intervention; Statistical Model; Support Vector Machines
Authors: C P Cannon; A Battler; R G Brindis; J L Cox; S G Ellis; N R Every; J T Flaherty; R A Harrington; H M Krumholz; M L Simoons; F J Van De Werf; W S Weintraub; K R Mitchell; S L Morrisson; R G Brindis; H V Anderson; D S Cannom; W R Chitwood; J E Cigarroa; R L Collins-Nakai; S G Ellis; R J Gibbons; F L Grover; P A Heidenreich; B K Khandheria; S B Knoebel; H L Krumholz; D J Malenka; D B Mark; C R Mckay; E R Passamani; M J Radford; R N Riner; J B Schwartz; R E Shaw; R J Shemin; D B Van Fossen; E D Verrier; M W Watkins; D R Phoubandith; T Furnelli Journal: J Am Coll Cardiol Date: 2001-12 Impact factor: 24.094
Authors: Mauro Moscucci; Eva Kline Rogers; Cecelia Montoye; Dean E Smith; David Share; Michael O'Donnell; Ann Maxwell-Eward; William L Meengs; Anthony C De Franco; Kirit Patel; Richard McNamara; John G McGinnity; Sandeep M Jani; Sanjaya Khanal; Kim A Eagle Journal: Circulation Date: 2006-02-06 Impact factor: 29.690
Authors: M Moscucci; E Kline-Rogers; D Share; M O'Donnell; A Maxwell-Eward; W L Meengs; P Kraft; A C DeFranco; J L Chambers; K Patel; J G McGinnity; K A Eagle Journal: Circulation Date: 2001-07-17 Impact factor: 29.690