Improving disease classification on rare class distribution X-ray images using supervised and few shot hybrid learning

dc.contributor.advisorReza, Md Tanzim
dc.contributor.authorBiswas, Soumodeep
dc.contributor.authorNayeem, Jannatul
dc.contributor.authorRahman, Md Ifty
dc.contributor.authorSaad, Tanim Ahmed
dc.contributor.authorAyesha, Sabiha Salam
dc.date.accessioned2026-01-20T10:01:59Z
dc.date.available2026-01-20T10:01:59Z
dc.date.issued2025-10
dc.descriptionCataloged from PDF version of thesis.
dc.descriptionIncludes bibliographical references (pages 58-60).
dc.descriptionThis thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2025.
dc.description.abstractDisease diagnosis through medical image analysis using various transfer learning models and neural networks have made significant progress in recent years. However, Medical Image datasets are highly imbalanced due to the minimal number of cases of rare diseases. As a result of this imbalance, pre-trained CNN models perform poorly in detecting rare diseases in supervised classification tasks. Classes with a high number of data samples dominate in conventional supervised learning setup. Therefore, our research focused on trying to minimize the effect of this class imbalance. We proposed a hybrid architecture which put together supervised learning and few-shot learning. For common class detection, we used a pre-trained MobileNet-V2 as the base model of the classical supervised learning. For Rare classes, a few shot learning model, Relation Network was responsible for detecting rare disease classes. Our proposed hybrid architecture achieved an average of 90% F1 score on the rare classes. In contrast, we experimented with 3 pre-trained CNN models for traditional supervised learning and observed that all of them had scored poor recall or precision value with an average of 45% F1 score on the rare classes. Therefore, our findings highlighted that our proposed hybrid architectural approach is more impactful and can achieve good results. For that reason, we believe our work opens the door for researchers for future study that a hybrid approach of combining supervised and few-shot learning can be effective instead of relying on only one.
dc.identifier.otherID 21101291
dc.identifier.otherID 19301090
dc.identifier.otherID 24241357
dc.identifier.otherID 24241358
dc.identifier.otherID 20201060
dc.identifier.otherhttps://dspace.bracu.ac.bd/server/api/core/items/69c0a2de-4213-4a16-801a-f524f8a8f086
dc.identifier.urihttp://hdl.handle.net/10361/27466
dc.language.isoen
dc.publisherBRAC University
dc.sourceBRAC University Institutional Repository
dc.subjectSupervised learning
dc.subjectConvolutional neural networks
dc.subjectFeature embeddings
dc.subjectDisease detection
dc.subjectMedical imaging
dc.subjectImage analysis
dc.titleImproving disease classification on rare class distribution X-ray images using supervised and few shot hybrid learning
dc.typeThesis

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