A hyperbolic evidential learning approach for hierarchical consistency and false-negative minimization in lung carcinoma subtyping
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BRAC University
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Abstract
Lung carcinoma is among the most prevalent and fatal cancers across the globe,
and an accurate clinical classification of the disease subtypes is necessary to plan
the treatment.Computed tomography (CT) imaging has become the primary tool
in the diagnosis of lung cancer, and automated subtyping with the help of deep
learning continues to present significant obstacles. Most of the models available
consider subtyping as a flat classification problem and do not consider the hierarchical
nature of relationships between the categories of lung carcinoma. Furthermore,
these models tend to give confident predictions, but without much indication of reliability
of these predictions, thus restricting their application in practical clinical
practice. This thesis proposes a hierarchical subtyping of lung carcinoma utilizing
hyperbolic evidential learning. The suggested methodology simulates the inherent
hierarchy of the lung cancer subtypes in a hyperbolic space, which promotes
predictions that are consistent with clinical experiences. Parallel to this, predictive
uncertainty is estimated using evidential learning, which enables the model to
produce lower confidence when the information in its possession is unclear or insufficient.
This combination assists to enhance the consistency as well as reliability of the
outputs of the model. The performance of the proposed method is assessed with the
use of CT scan dataset to assess the classification performance and the quality of
uncertainty estimation. Additionally, four backbone architectures (EfficientNet-B0,
DenseNet121, ViT-B/16, and PVT-V2-B0) are evaluated, and Vision Transformer
(ViT) performs best among the hyperbolic models, achieving a False Negative Rate
of 0.0029 (approximately 99.7 percent sensitivity). The findings suggest that the
use of a hierarchical structure and recognizing uncertainty causes more reliable subtype
predictions and the improvement of more consistent confidence measures. In
general, the present study is expected to encourage more informed clinical decisions
and make a contribution to the safe and practical application of artificial intelligence
in the diagnosis of lung carcinoma.
Description
Cataloged from PDF version of thesis.
Includes bibliographical references (pages 51-53).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2026.
Includes bibliographical references (pages 51-53).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2026.
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Thesis