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machine learning in the integration of simple variables for identifying patients with myocardial ischemia
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نویسنده
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juarez-orozco luis eduardo ,knol remco j.j. ,sanchez-catasus carlos a. ,martinez-manzanera octavio ,zant friso m. van der ,knuuti juhani
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منبع
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journal of nuclear cardiology - 2020 - دوره : 27 - شماره : 1 - صفحه:147 -155
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چکیده
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A significant number of variables are obtained when characterizing patients suspected with myocardial ischemia or at risk of mace. guidelines typically use a handful of them to support further workup or therapeutic decisions. however, it is likely that the numerous available predictors maintain intrinsic complex interrelations. machine learning (ml) offers the possibility to elucidate complex patterns within data to optimize individual patient classification. we evaluated the feasibility and performance of ml in utilizing simple accessible clinical and functional variables for the identification of patients with ischemia or an elevated risk of mace as determined through quantitative pet myocardial perfusion reserve (mpr). 1,234 patients referred to nitrogen-13 ammonia pet were analyzed. demographic (4), clinical (8), and functional variables (9) were retrieved and input into a cross-validated ml workflow consisting of feature selection and modeling. two pet-defined outcome variables were operationalized: (1) any myocardial ischemia (regional mpr < 2.0) and (2) an elevated risk of mace (global mpr < 2.0). roc curves were used to evaluate ml performance. 16 features were included for boosted ensemble ml. ml achieved an auc of 0.72 and 0.71 in identifying patients with myocardial ischemia and with an elevated risk of mace, respectively. ml performance was superior to logistic regression when the latter used the esc guidelines risk models variables for both pet-defined labels (p < .001 and p = .01, respectively). ml is feasible and applicable in the evaluation and utilization of simple and accessible predictors for the identification of patients who will present myocardial ischemia and an elevated risk of mace in quantitative pet imaging.
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کلیدواژه
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machine learning ,myocardial ischemia ,risk of mace ,pet
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آدرس
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university of turku and turku university hospital, turku pet centre, finland, northwest clinics, cardiac imaging division alkmaar, department of nuclear medicine, the netherlands, university medical center groningen, university of groningen, the netherlands, university medical center groningen, university of groningen, department of neurology, the netherlands, northwest clinics, cardiac imaging division alkmaar, department of nuclear medicine, the netherlands, university of turku and turku university hospital, turku pet centre, finland
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Authors
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