Stacking ensemble approach to diagnosing the disease of diabetes

Diabetes is a very common disease today and has acquired a worrying focus in the field of public health globally, in fact, it is estimated that the number of people with diabetes worldwide has reached 415 million. Propose a method and 4 combined models based on Stacking ensemble to diagnose Diabetes...

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Veröffentlicht in:Informatics in medicine unlocked 2024, Vol.44, p.101427, Article 101427
Hauptverfasser: Daza, Alfredo, Ponce Sánchez, Carlos Fidel, Apaza-Perez, Gonzalo, Pinto, Juan, Zavaleta Ramos, Karoline
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Sprache:eng
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Zusammenfassung:Diabetes is a very common disease today and has acquired a worrying focus in the field of public health globally, in fact, it is estimated that the number of people with diabetes worldwide has reached 415 million. Propose a method and 4 combined models based on Stacking ensemble to diagnose Diabetes. In addition, a web interface was developed with the best model proposed in this study. The dataset collected from the Diabetes Dataset composed of 768 patient records was used. The data was then pre-processed using the Python programming language. To balance the data, it was divided into 4 values and an oversampling method was applied to distribute the data proportionally. Then, divisions were made on the balanced data using the cross-validation method for data training, and the models were calibrated. Regarding the development of base algorithms, 7 independent algorithms were used, and 4 combined algorithms based on Stacking were proposed, and finally obtain the evaluation of the model with their respective metrics. Stacking 1A (Logistic regression) with Oversampling reached the best value of Accuracy = 91.5 %, Sensitivity = 91.6 %, F1-Score = 91.49 % and Precision = 91.5 %, while with respect to the metric ROC Curve, Stacking 1A (Logistic regression) with Oversampling, Stacking 2A (Random Forest) with oversampling, and Random Forest (Independent) reached the best percentage, this being 97 %. Implementing 4 stacking models using the oversampling method, helps to make an adequate diagnosis of diabetes. Therefore, by using the combined method, an improvement in diabetes prediction was observed, surpassing the performance of the independent algorithms used.
ISSN:2352-9148
2352-9148
DOI:10.1016/j.imu.2023.101427