Sivashankari Rajadurai’s research while affiliated with Vellore Institute of Technology University and other places

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Publications (1)


Hodgkin lymphoma and non-Hodgkin lymphoma (NHL).
The malignant lymphoma image samples of CLL, FL, and MCL.
Non-ensemble transfer learning architecture.
Ensemble transfer learning architecture. (a) Proposed method of Stacked Ensemble Technique steps.
VGG16 architecture summary.

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PrecisionLymphoNet: Advancing Malignant Lymphoma Diagnosis via Ensemble Transfer Learning with CNNs
  • Article
  • Full-text available

February 2024

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54 Reads

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6 Citations

Sivashankari Rajadurai

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Kumaresan Perumal

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Malignant lymphoma, which impacts the lymphatic system, presents diverse challenges in accurate diagnosis due to its varied subtypes—chronic lymphocytic leukemia (CLL), follicular lymphoma (FL), and mantle cell lymphoma (MCL). Lymphoma is a form of cancer that begins in the lymphatic system, impacting lymphocytes, which are a specific type of white blood cell. This research addresses these challenges by proposing ensemble and non-ensemble transfer learning models employing pre-trained weights from VGG16, VGG19, DenseNet201, InceptionV3, and Xception. For the ensemble technique, this paper adopts a stack-based ensemble approach. It is a two-level classification approach and best suited for accuracy improvement. Testing on a multiclass dataset of CLL, FL, and MCL reveals exceptional diagnostic accuracy, with DenseNet201, InceptionV3, and Xception exceeding 90% accuracy. The proposed ensemble model, leveraging InceptionV3 and Xception, achieves an outstanding 99% accuracy over 300 epochs, surpassing previous prediction methods. This study demonstrates the feasibility and efficiency of the proposed approach, showcasing its potential in real-world medical applications for precise lymphoma diagnosis.

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Citations (1)


... Rajadurai et al. [10] utilized two Kaggle datasets for their research: a smaller dataset with 374 TIF-formatted samples (109 CLL, 124 FL, 109 MCL) and a larger dataset consisting of 15,000 images (5,000 for each subtype: CLL, FL, and MCL). The methodology involved transfer learning with pre-trained CNN models, including VGG16, VGG19, DenseNet201, InceptionV3, and Xception, alongside a stacked ensemble approach that combined InceptionV3 and Xception. ...

Reference:

Diagnosis of Malignant Lymphoma Cancer Using Hybrid Optimized Techniques Based on Dense Neural Networks
PrecisionLymphoNet: Advancing Malignant Lymphoma Diagnosis via Ensemble Transfer Learning with CNNs