Revolutionizing Breast Cancer Diagnosis: A Concatenated Precision through Transfer Learning in Histopathological Data Analysis
Permanent lenke
https://hdl.handle.net/10037/34704Dato
2024-02-14Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Jaganathan, Dhayanithi; Balasubramaniam, Sathiyabhama; Sureshkumar, Vidhushavarshini; Dhanasekaran, SeshathiriSammendrag
Breast cancer remains a significant global public health concern, emphasizing the critical
role of accurate histopathological analysis in diagnosis and treatment planning. In recent years,
the advent of deep learning techniques has showcased notable potential in elevating the precision
and efficiency of histopathological data analysis. The proposed work introduces a novel approach
that harnesses the power of Transfer Learning to capitalize on knowledge gleaned from pre-trained
models, adapting it to the nuanced landscape of breast cancer histopathology. Our proposed model,
a Transfer Learning-based concatenated model, exhibits substantial performance enhancements
compared to traditional methodologies. Leveraging well-established pretrained models such as
VGG-16, MobileNetV2, ResNet50, and DenseNet121—each Convolutional Neural Network architecture designed for classification tasks—this study meticulously tunes hyperparameters to optimize
model performance. The implementation of a concatenated classification model is systematically
benchmarked against individual classifiers on histopathological data. Remarkably, our concatenated
model achieves an impressive training accuracy of 98%. The outcomes of our experiments underscore the efficacy of this four-level concatenated model in advancing the accuracy of breast cancer
histopathological data analysis. By synergizing the strengths of deep learning and transfer learning,
our approach holds the potential to augment the diagnostic capabilities of pathologists, thereby
contributing to more informed and personalized treatment planning for individuals diagnosed with
breast cancer. This research heralds a promising stride toward leveraging cutting-edge technology to
refine the understanding and management of breast cancer, marking a significant advancement in
the intersection of artificial intelligence and healthcare.
Forlag
MDPISitering
Jaganathan, Balasubramaniam, Sureshkumar, Dhanasekaran. Revolutionizing Breast Cancer Diagnosis: A Concatenated Precision through Transfer Learning in Histopathological Data Analysis. Diagnostics (Basel). 2024;14(4)Metadata
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