Scopus Indexed Publications
Paper Details
- Title
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Comprehensive Performance Assessment of Deep Learning Models in Early Prediction and Risk Identification of Chronic Kidney Disease
- Author
-
,
Md. Ashiqul Islam,
Md. Sagar Hossen,
Puza Rani Sarkar,
Wasik Ahmmed Fahim,
- Email
-
ashiqul15-951@diu.edu.bd
- Abstract
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The incidence of chronic
kidney disease (CKD) is rising rapidly around the globe. Asymptomatic
CKD is common and guideline-directed monitoring to predict CKD by
various factors is underutilized. Computer-aided automated diagnostic
(CAD) can play a major role to predict CKD. CAD systems such as deep
learning algorithms are pivotal in disease diagnosis due to their high
classification accuracy. In this paper, various clinical features of CKD
were utilized and seven state-of-the-art deep learning algorithms (ANN,
LSTM, GRU, Bidirectional LSTM, Bidirectional GRU, MLP, and Simple RNN)
were implemented for the prediction and classification of CKD. The
proposed algorithms were applied based on artificial intelligence by
extracting and evaluating features using five different approaches from
pre-processed and fitted CKD datasets. In this study, we have measured
accuracy, precision, recall, and calculated the loss and validation loss
in prediction. Further, the study analyzed computation time and
prediction ratio, and AUC to evaluate the model performance along with
statistical significance to compare their performances. While
classifying CKD, algorithms such as ANN, Simple RNN, and MLP provided
high accuracy of 99%, 96%, 97% respectively, and a good prediction ratio
along with reduced time. The model outperforms traditional data
classification techniques by providing superior predictive ability.
Subsequently, the study proposed the integration of best performing DL
models in the IoMT. This proposal will assist predictive analytics to
advance CKD prediction by using deep learning more efficiently and
effectively. The study is the first fundamental step toward a
comprehensive performance assessment to classify and predict CKD using
deep learning models and its associated risk factors.
- Keywords
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Artificial neural network , chronic kidney disease , classification , deep learning
- Journal or Conference Name
- IEEE Access
- Publication Year
-
2021
- Indexing
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scopus