Monday Poster Session
Category: Colon
Annie Ajang, BS
St. George's University School of Medicine
Phoenix, AZ
EfficientNetB0 achieved exemplary diagnostic performance in classifying colorectal tissue. The model attained an exceptional accuracy, precision, and recall greater than 99% for both malignant and benign cases. The F1-score was 1.000 for both cancer and normal tissue. The AUC reached 1.000, underscoring the model’s discriminative power. These results highlight EfficientNetB0’s exceptional capacity to deliver robust, reproducible diagnostics in histopathology.
Discussion: EfficientNetB0’s high accuracy and efficiency exemplify a transformative leap in colorectal cancer diagnostics. By automating nuanced feature extraction, EfficientNetB0 reduces diagnostic subjectivity, accelerates clinical workflows, and enables equitable access to advanced diagnostics. For clinicians, integrating such AI tools augments decision-making and may improve outcomes through earlier, more precise detection of colorectal malignancy.
Figure: Diagnostic Performance of EfficientNetB0 -1
Figure: Diagnostic Performance of EfficientNetB0 -2
Disclosures:
Annie Ajang indicated no relevant financial relationships.
Ramya Elangovan indicated no relevant financial relationships.
Kavin Elangovan indicated no relevant financial relationships.
Jansi Sethuraj indicated no relevant financial relationships.
Tirth Patel indicated no relevant financial relationships.
Elangovan Krishnan indicated no relevant financial relationships.
Annie Ajang, BS1, Ramya Elangovan, 2, Kavin Elangovan, 2, Jansi Sethuraj, BSN, RN, CCRN3, Tirth Patel, MBBS4, Elangovan Krishnan, MBBS, PhD, MS5. P2454 - A New Era in Colorectal Cancer Diagnostics: EfficientNetB0’s Impeccable Performance in Histopathological Diagnosis, ACG 2025 Annual Scientific Meeting Abstracts. Phoenix, AZ: American College of Gastroenterology.