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Ensemble Modelling for Early Breast Cancer Prediction from Diet and Lifestyle

Brindha Senthil Kumar, Doris Zodinpuii, Lalawmpuii Pachuau, Saia Chenkual, John Zohmingthanga, Nachimuthu Senthil Kumar, Lal Hmingliana

2022IFAC-PapersOnLine20 citationsDOIOpen Access PDF

Abstract

The present work aims to compare and evaluate the performance of five ensemble models in predicting breast cancer using 15 diet and lifestyle factors among the Mizo women. The dataset for developing ensemble learning models contains 148 breast cancer cases and 173 healthy individuals. Learning curves are constructed for five classifiers (AdaBoost, Gradient Boost, extra trees, bagging, and random forest) to find the best fit models for the present dataset. The performances of models are evaluated using 10-fold cross validation (CV), leave one out cross validation (LOOCV), and accuracy. Extra trees classifier outperformed other four ensemble classifiers with an accuracy of 96.3% and 95.5% using LOOCV and CV, respectively. The prediction accuracies of above-two cross validation methods have shown a Pearson correlation index of 97.45% which have strengthened the performances of the ensemble models. Thus, the lack of physical activity, less intake of fruits, vegetables, and water, high consumption of saum (fermented pork fat), smoked meat and vegetables, addiction of chewing pan (beetle leaves with arcane nut), using smokeless tobacco product: sahadh, and tuibur (aqueous tobacco extract) are the possible factors to cause breast cancer in Mizo population.

Topics & Concepts

Random forestCross-validationArtificial intelligenceEnsemble learningMachine learningMathematicsBreast cancerAdaBoostPredictive modellingStatisticsClassifier (UML)MedicineComputer scienceCancerInternal medicineNutritional Studies and DietAI in cancer detectionGene expression and cancer classification
Ensemble Modelling for Early Breast Cancer Prediction from Diet and Lifestyle | Litcius