Optimization of Ensemble Supervised Learning Algorithms for Increased Sensitivity, Specificity, and AUC of Population-Based Colorectal Cancer Screenings
Anirudh Kamath, Aditya Singh, Raj Ramnani, Ayush Vyas, Jay Shenoy

TL;DR
This paper develops an ensemble supervised learning algorithm to improve colorectal cancer screening accuracy, aiming for a cost-effective, fast, and reliable alternative to current tests.
Contribution
It introduces a novel ensemble classification method that integrates multiple patient data features to enhance sensitivity, specificity, and AUC in CRC screening.
Findings
Achieved 0.95 AUC in cross-validation
Attained 92% specificity and 89% sensitivity
Demonstrated potential for a cheaper, faster screening tool
Abstract
Over 150,000 new people in the United States are diagnosed with colorectal cancer each year. Nearly a third die from it (American Cancer Society). The only approved noninvasive diagnosis tools currently involve fecal blood count tests (FOBTs) or stool DNA tests. Fecal blood count tests take only five minutes and are available over the counter for as low as $15. They are highly specific, yet not nearly as sensitive, yielding a high percentage (25%) of false negatives (Colon Cancer Alliance). Moreover, FOBT results are far too generalized, meaning that a positive result could mean much more than just colorectal cancer, and could just as easily mean hemorrhoids, anal fissure, proctitis, Crohn's disease, diverticulosis, ulcerative colitis, rectal ulcer, rectal prolapse, ischemic colitis, angiodysplasia, rectal trauma, proctitis from radiation therapy, and others. Stool DNA tests, the…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Radiomics and Machine Learning in Medical Imaging · Diverticular Disease and Complications
