Hybrid Deep Learning Model for The Classification of Bone Tumour

Authors

  • M. O. Odighi Ambrose Alli University, Ekpoma, Edo State, Nigeria.
  • M. I. Omogbhemhe Ambrose Alli University, Ekpoma, Edo State, Nigeria.

DOI:

https://doi.org/10.26437/0bpx6b49

Keywords:

Bone tumour. convolutional neural networks. deep learning. morphological. vision transformer

Abstract

Purpose: The purpose of this study is to propose a new hybrid deep learning model for classifying bone tumour histology.

Design/Methodology and Approach: The model uses 253 samples from both tumour and non-tumour datasets, with a ResNet-50 backbone to extract localised structural features and a Transformer head to capture global context. It then merges these features and runs them through a softmax classifier for binary tumour classification, which meets clinical needs for precise and understandable histopathological diagnoses. All images were resized to a fixed resolution of 224 × 224 pixels. After resizing, pixel values were normalised to a range of [0, 1] by dividing each pixel by 255. Further normalisation was done using the mean and standard deviation values from the ImageNet dataset: mean = [0.485, 0.456, 0.406] and standard deviation = [0.229, 0.224, 0.225].

Research Limitation: This study did not examine multi-class classification of bone tumour subtypes or leverage self-supervised pretraining to reduce reliance on labelled data.

Findings: The results suggest strong potential for clinical decision support, especially for accurately detecting malignant tissues, as demonstrated in an evaluation of a simulated dataset. The model achieved 99.0% accuracy, 100% recall, a 99.0% F1 score, and a perfect AUC of 1.00.

Practical Implication: This study provides solutions for complex bone tumour analysis, offering significant benefits to the medical industry.  

Social Implications: These demands include technical progress accompanied by inclusive data governance, transparent annotation practices, equitable deployment strategies, and sustained dialogue among technologists, clinicians, patients, and policymakers.

Originality / Value: This study lays the foundation for interpretable AI systems in digital pathology, demonstrating that combining CNNs, Transformers, and morphological knowledge can deliver powerful, interpretable solutions for complex medical image analysis.

Author Biographies

  • M. O. Odighi, Ambrose Alli University, Ekpoma, Edo State, Nigeria.

    Dr. Mathew Onojiasun Odighi is a Lecturer 1 in the Department of Computer Science, Faculty of Physical Sciences, at Ambrose Alli University, Ekpoma, Edo State, Nigeria.

  • M. I. Omogbhemhe, Ambrose Alli University, Ekpoma, Edo State, Nigeria.

    Dr Mike Izah Omogbhemhe is a Senior Lecturer  in the Department of Computer Science, Faculty of Physical Sciences, at Ambrose Alli University, Ekpoma, Edo State, Nigeria.

References

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Published

25-04-2026

How to Cite

Hybrid Deep Learning Model for The Classification of Bone Tumour. (2026). AFRICAN JOURNAL OF APPLIED RESEARCH, 12(3), 153-169. https://doi.org/10.26437/0bpx6b49

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