A Unified Multimodal Framework for Dataset Construction and Model-Based Diagnosis of Ameloblastoma
Ajo Babu George, Anna Mariam John, Athul Anoop, Balu Bhasuran

TL;DR
This paper introduces a comprehensive multimodal dataset and a deep learning model for improved diagnosis and management of ameloblastoma, enhancing classification accuracy and supporting personalized surgical planning.
Contribution
The work presents a newly curated multimodal dataset and a novel AI framework specifically designed for ameloblastoma diagnosis and treatment planning.
Findings
Variant classification accuracy improved from 46.2% to 65.9%.
F1-score for abnormal tissue detection increased from 43.0% to 90.3%.
Demonstrated the effectiveness of multimodal data in maxillofacial pathology.
Abstract
Artificial intelligence (AI)-enabled diagnostics in maxillofacial pathology require structured, high-quality multimodal datasets. However, existing resources provide limited ameloblastoma coverage and lack the format consistency needed for direct model training. We present a newly curated multimodal dataset specifically focused on ameloblastoma, integrating annotated radiological, histopathological, and intraoral clinical images with structured data derived from case reports. Natural language processing techniques were employed to extract clinically relevant features from textual reports, while image data underwent domain specific preprocessing and augmentation. Using this dataset, a multimodal deep learning model was developed to classify ameloblastoma variants, assess behavioral patterns such as recurrence risk, and support surgical planning. The model is designed to accept clinical…
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Taxonomy
TopicsOral and Maxillofacial Pathology · Dental Radiography and Imaging · Head and Neck Surgical Oncology
