A Deep Learning Approach for Augmenting Perceptional Understanding of Histopathology Images
- URL: http://arxiv.org/abs/2503.06894v2
- Date: Wed, 19 Mar 2025 08:18:22 GMT
- Title: A Deep Learning Approach for Augmenting Perceptional Understanding of Histopathology Images
- Authors: Xiaoqian Hu,
- Abstract summary: This Paper Presents A Novel Approach To Enhancing The Analysis Of Histopathology Images.<n>A Mult-modal-Model That Combines Vision Transformers (Vit) With Gpt-2 For Image Captioning.
- Score: 0.1813006808606333
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In Recent Years, Digital Technologies Have Made Significant Strides In Augmenting-Human-Health, Cognition, And Perception, Particularly Within The Field Of Computational-Pathology. This Paper Presents A Novel Approach To Enhancing The Analysis Of Histopathology Images By Leveraging A Mult-modal-Model That Combines Vision Transformers (Vit) With Gpt-2 For Image Captioning. The Model Is Fine-Tuned On The Specialized Arch-Dataset, Which Includes Dense Image Captions Derived From Clinical And Academic Resources, To Capture The Complexities Of Pathology Images Such As Tissue Morphologies, Staining Variations, And Pathological Conditions. By Generating Accurate, Contextually Captions, The Model Augments The Cognitive Capabilities Of Healthcare Professionals, Enabling More Efficient Disease Classification, Segmentation, And Detection. The Model Enhances The Perception Of Subtle Pathological Features In Images That Might Otherwise Go Unnoticed, Thereby Improving Diagnostic Accuracy. Our Approach Demonstrates The Potential For Digital Technologies To Augment Human Cognitive Abilities In Medical Image Analysis, Providing Steps Toward More Personalized And Accurate Healthcare Outcomes.
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