Monday Poster Session
Category: Colon
Shannon Anglin, BS
St. George's University School of Medicine
Phoenix, AZ
A comprehensive collection of histopathological whole-slide images (n ≈ 200,000) from GI cancer cases was curated and labeled for MSI and MSS status. Images underwent standardized preprocessing, including resizing, normalization, and color adjustment. The dataset was randomly partitioned into training (60%), validation (20%), and testing (20%) sets. ResNet18 was trained to classify MSI versus MSS, and model performance was evaluated using accuracy, F1-score, F2-score, specificity, area under the ROC curve (AUC), and precision-recall metrics. These findings position ResNet18 as a highly effective tool for automated MSI/MSS subtyping in GI cancer histopathology. By reducing diagnostic subjectivity and accelerating molecular classification, this AI-driven approach supports the integration of precision biomarkers into routine workflows. Universal deployment may democratize access to advanced diagnostics, empower clinicians with actionable molecular insights, and ultimately enhance patient stratification and outcomes in GI oncology.
Results: ResNet18 demonstrated robust performance in distinguishing MSI from MSS phenotypes. Validation accuracy reached 89%, with a training and validation F1-score and F2-score of 0.99 and 0.88, respectively. The confusion matrix confirmed strong separation, with over 12,500 MSI and 21,000 MSS samples correctly classified. ROC analysis revealed AUC values of 0.95 for both classes. Loss curves indicated stable convergence, and precision-recall metrics further underscored the model’s discriminative capability.
Discussion:
Figure: Diagnostic performance of Resnet -1
Figure: Diagnostic performance of Resnet -1
Disclosures:
Shannon Anglin indicated no relevant financial relationships.
Ramya Elangovan indicated no relevant financial relationships.
Jansi Sethuraj indicated no relevant financial relationships.
Kavin Elangovan indicated no relevant financial relationships.
Tirth Patel indicated no relevant financial relationships.
Elangovan Krishnan indicated no relevant financial relationships.
Shannon Anglin, BS1, Ramya Elangovan, 2, Jansi Sethuraj, BSN, RN, CCRN3, Kavin Elangovan, 2, Tirth Patel, MBBS4, Elangovan Krishnan, MBBS, PhD, MS5. P2453 - ResNet18-Based Deep Learning for Accurate Classification of Microsatellite Instability in Gastrointestinal Cancers, ACG 2025 Annual Scientific Meeting Abstracts. Phoenix, AZ: American College of Gastroenterology.