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Time-dependent estimates of recurrence and survival in colon cancer: clinical decision support system tool development for adjuvant therapy and oncological outcome assessment

Authors :
Aviram Nissan
John Eberhardt
Bjoern L. D. M. Bruecher
Eric K. Johnson
Benjamin Petersen
George E. Peoples
Anton J. Bilchik
Alexander Stojadinovic
Mladjan Protic
Philip Kalina
Scott R. Steele
Itzhak Avital
Source :
Europe PubMed Central, Scopus-Elsevier

Abstract

e14500 Background: Unanswered questions remain regarding treatment efficacy in colon cancer (CC), especially those determining high-risk node-negative cohorts that may benefit from adjuvant therapy. We sought to evaluate the use of machine learning and classification modeling to estimate survival and recurrence in CC. Methods: We used the Department of Defense Automated Central Tumor Registry (ACTUR) to identify primary CC patients treated between January 1993 and December 2004. Cases with events or follow-up that passed quality control were stratified into one-, two-, three-, and five-year survival cohorts. ml-BBNs were trained using machine-learning algorithms and k-fold cross-validation, and receiver operating characteristic (ROC) curve analysis used for validation. Results: There were 5,301 cases stratified into cohorts. Survival cohort Areas-Under-the-Curve (AUCs) ranged from 0.85–0.90, positive-predictive-values (PPVs) for recurrence and mortality ranged from 78-84% and negative-predictive-values (NPVs) from 74-90%. Cross-validation showed that the ml-BBNs produce robust individual estimates of recurrence (p

Details

Database :
OpenAIRE
Journal :
Europe PubMed Central, Scopus-Elsevier
Accession number :
edsair.doi.dedup.....cf71b7e53c9b62fae0848d76604b0e10