Multi-Modal Stacking Ensemble for the Diagnosis of Cardiovascular Diseases.

Taeyoung Yoon, Daesung Kang
Author Information
  1. Taeyoung Yoon: Department of Healthcare Information Technology, Inje University, 197, Inje-ro, Gimhae-si 50834, Republic of Korea.
  2. Daesung Kang: Department of Healthcare Information Technology, Inje University, 197, Inje-ro, Gimhae-si 50834, Republic of Korea.

Abstract

BACKGROUND: Cardiovascular diseases (CVDs) are a leading cause of death worldwide. Deep learning methods have been widely used in the field of medical image analysis and have shown promising results in the diagnosis of CVDs.
METHODS: Experiments were performed on 12-lead electrocardiogram (ECG) databases collected by Chapman University and Shaoxing People's Hospital. The ECG signal of each lead was converted into a scalogram image and an ECG grayscale image and used to fine-tune the pretrained ResNet-50 model of each lead. The ResNet-50 model was used as a base learner for the stacking ensemble method. Logistic regression, support vector machine, random forest, and XGBoost were used as a meta learner by combining the predictions of the base learner. The study introduced a method called multi-modal stacking ensemble, which involves training a meta learner through a stacking ensemble that combines predictions from two modalities: scalogram images and ECG grayscale images.
RESULTS: The multi-modal stacking ensemble with a combination of ResNet-50 and logistic regression achieved an AUC of 0.995, an accuracy of 93.97%, a sensitivity of 0.940, a precision of 0.937, and an F1-score of 0.936, which are higher than those of LSTM, BiLSTM, individual base learners, simple averaging ensemble, and single-modal stacking ensemble methods.
CONCLUSION: The proposed multi-modal stacking ensemble approach showed effectiveness for diagnosing CVDs.

Keywords

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Grants

  1. 2020R1G1A1102881/National Research Foundation of Korea

Word Cloud

Created with Highcharts 10.0.0ensemblestackingusedECGlearner0CVDslearningimageResNet-50basemulti-modalCardiovasculardiseasesmethodsleadscalogramgrayscalemodelmethodregressionmachinemetapredictionsimagesBACKGROUND:leadingcausedeathworldwideDeepwidelyfieldmedicalanalysisshownpromisingresultsdiagnosisMETHODS:Experimentsperformed12-leadelectrocardiogramdatabasescollectedChapmanUniversityShaoxingPeople'sHospitalsignalconvertedfine-tunepretrainedLogisticsupportvectorrandomforestXGBoostcombiningstudyintroducedcalledinvolvestrainingcombinestwomodalities:RESULTS:combinationlogisticachievedAUC995accuracy9397%sensitivity940precision937F1-score936higherLSTMBiLSTMindividuallearnerssimpleaveragingsingle-modalCONCLUSION:proposedapproachshowedeffectivenessdiagnosingMulti-ModalStackingEnsembleDiagnosisDiseasescardiovasculardeep

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