ConvXGDFU - Ensemble Learning Techniques for Diabetic Foot Ulcer Detection

Medical practitioners have been studying Diabetic Foot Ulcers (DFU) as a critical subject for treatment purposes. The fundamental objective is to achieve a mechanism for early detection and identification of DFU, ensuring effective treatment before progressing to a critical stage. The traditional cl...

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Published in2022 4th International Conference on Advances in Computing, Communication Control and Networking (ICAC3N) pp. 1551 - 1557
Main Authors Kedia, Priyansh, Soni, Priyansh, Gupta, Pranjal, Pillai, Rohan, Chaudhary, Abhishek
Format Conference Proceeding
LanguageEnglish
Published IEEE 16.12.2022
Subjects
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DOI10.1109/ICAC3N56670.2022.10074466

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Abstract Medical practitioners have been studying Diabetic Foot Ulcers (DFU) as a critical subject for treatment purposes. The fundamental objective is to achieve a mechanism for early detection and identification of DFU, ensuring effective treatment before progressing to a critical stage. The traditional clinical techniques have drawbacks, such as a high diagnosis cost, high clinical workload, and an extended treatment time. Moreover, the cost of delayed detection and treatment can lead to significant significance. Although this approach yields outstanding results, a remote, cost-effective, and easy DFU diagnostic method is required. In recent times, Machine Eearning and Deep Learning methods have proven to be very effective and efficient in medical diagnosis and disease detection. The fundamental objective of this study is to build an efficient Artificial Intelligence model for detecting DFUs. We have proposed a novel Deep Learning model using CNNs and XGBoost for DFU detection. Our proposed model is called ConvXGDFU, which can efficiently classify DFU vs Normal Skin patches. Results show that our devised model achieved an accuracy and F1 score of 99.90% and 99.60% for both classes.
AbstractList Medical practitioners have been studying Diabetic Foot Ulcers (DFU) as a critical subject for treatment purposes. The fundamental objective is to achieve a mechanism for early detection and identification of DFU, ensuring effective treatment before progressing to a critical stage. The traditional clinical techniques have drawbacks, such as a high diagnosis cost, high clinical workload, and an extended treatment time. Moreover, the cost of delayed detection and treatment can lead to significant significance. Although this approach yields outstanding results, a remote, cost-effective, and easy DFU diagnostic method is required. In recent times, Machine Eearning and Deep Learning methods have proven to be very effective and efficient in medical diagnosis and disease detection. The fundamental objective of this study is to build an efficient Artificial Intelligence model for detecting DFUs. We have proposed a novel Deep Learning model using CNNs and XGBoost for DFU detection. Our proposed model is called ConvXGDFU, which can efficiently classify DFU vs Normal Skin patches. Results show that our devised model achieved an accuracy and F1 score of 99.90% and 99.60% for both classes.
Author Chaudhary, Abhishek
Gupta, Pranjal
Kedia, Priyansh
Pillai, Rohan
Soni, Priyansh
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Snippet Medical practitioners have been studying Diabetic Foot Ulcers (DFU) as a critical subject for treatment purposes. The fundamental objective is to achieve a...
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StartPage 1551
SubjectTerms Computational modeling
Costs
Deep Convolutional Neural Networks
Deep learning
Diabetes
Diabetic Foot Ulcer
ensemble methods
Machine Learning
Medical diagnosis
Object recognition
Skin
Title ConvXGDFU - Ensemble Learning Techniques for Diabetic Foot Ulcer Detection
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