A Multi-Modal Deep Learning Framework for Colorectal Pathology Diagnosis: Integrating Histological and Colonoscopy Data in a Pilot Study
By: Krithik Ramesh, Ritvik Koneru
Potential Business Impact:
Helps doctors find gut diseases faster.
Colorectal diseases, including inflammatory conditions and neoplasms, require quick, accurate care to be effectively treated. Traditional diagnostic pipelines require extensive preparation and rely on separate, individual evaluations on histological images and colonoscopy footage, introducing possible variability and inefficiencies. This pilot study proposes a unified deep learning network that uses convolutional neural networks (CN N s) to classify both histopathological slides and colonoscopy video frames in one pipeline. The pipeline integrates class-balancing learning, robust augmentation, and calibration methods to ensure accurate results. Static colon histology images were taken from the PathMNIST dataset, and the lower gastrointestinal (colonoscopy) videos were drawn from the HyperKvasir dataset. The CNN architecture used was ResNet-50. This study demonstrates an interpretable and reproducible diagnostic pipeline that unifies multiple diagnostic modalities to advance and ease the detection of colorectal diseases.
Similar Papers
Multi-Scale Deep Learning for Colon Histopathology: A Hybrid Graph-Transformer Approach
CV and Pattern Recognition
Finds colon cancer from pictures faster and better.
Synthetic Data-Driven Multi-Architecture Framework for Automated Polyp Segmentation Through Integrated Detection and Mask Generation
CV and Pattern Recognition
Finds cancer in colon pictures faster.
Colorectal Cancer Histopathological Grading using Multi-Scale Federated Learning
Machine Learning (Stat)
Helps doctors grade cancer more accurately, privately.