2022
DOI: 10.3390/electronics11172737
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Deep LSTM Model for Diabetes Prediction with Class Balancing by SMOTE

Abstract: Diabetes is an acute disease that happens when the pancreas cannot produce enough insulin. It can be fatal if undiagnosed and untreated. If diabetes is revealed early enough, it is possible, with adequate treatment, to live a healthy life. Recently, researchers have applied artificial intelligence techniques to the forecasting of diabetes. As a result, a new SMOTE-based deep LSTM system was developed to detect diabetes early. This strategy handles class imbalance in the diabetes dataset, and its prediction acc… Show more

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Cited by 43 publications
(15 citation statements)
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“…Finally, classification to predict the cervical lesion stage of patients and experimental verification through a total of 125 collected case data, excluding the data for cases that have developed into cervical cancer, was carried out. Comparative experimental analysis between the CLS algorithm proposed in this study and SMOTE-LSTM ( 22 ) was conducted.…”
Section: Resultsmentioning
confidence: 99%
“…Finally, classification to predict the cervical lesion stage of patients and experimental verification through a total of 125 collected case data, excluding the data for cases that have developed into cervical cancer, was carried out. Comparative experimental analysis between the CLS algorithm proposed in this study and SMOTE-LSTM ( 22 ) was conducted.…”
Section: Resultsmentioning
confidence: 99%
“…To evaluate the performance of the proposed approach, the evaluation metrics were calculated for the prediction results achieved by the proposed BER-LSTM model and six other models, namely, standard LSTM [41], bidirectional LSTM (BILSTM) [42], gated recurrent unit (GRU) [43], multiple LSTMs [44], multiple BILSTMs [42], and convolutional LSTMs (CONVLSTMs) [45]. The achieved results are presented in Table 4 using the training set.…”
Section: The Achieved Resultsmentioning
confidence: 99%
“…Model complexity and real-time applications are also significant challenges. Studies like those conducted by Yang et al [9], Alex et al [10], and Srinivasu et al [14] highlight the computational intensity of LSTM models. This complexity poses significant challenges for real-time deployment in clinical settings, where swift decision-making is crucial.…”
Section: Related Studiesmentioning
confidence: 90%
“…Techniques like Synthetic Minority Over-sampling Technique (SMOTE), as employed in the study by Alex et al [10] and Srinivasu et al [14], address class imbalance. However, they may introduce synthetic biases that could affect the real-world applicability and fairness of the models.…”
Section: Related Studiesmentioning
confidence: 99%